Emerging-Technologies
Auto Added by WPeMatico
Auto Added by WPeMatico
Alphabet’s Waymo autonomous driving company announced a new milestone at TechCrunch Sessions: Mobility on Wednesday: 10 billion miles driving in simulation. This is a significant achievement for the company, because all those simulated miles on the road for its self-driving software add up to considerable training experience.
Waymo also probably has the most experience when it comes to actual, physical road miles driven — the company is always quick to point out that it’s been doing this far longer than just about anyone else working in autonomous driving, thanks to its head start as Google’s self-driving car moonshot project.
“At Waymo, we’ve driven more than 10 million miles in the real world, and over 10 billion miles in simulation,” Waymo CTO Dmitri Dolgov told TechCrunch’s Kirsten Korosec on the Sessions: Mobility stage. “And the amount of driving you do in both of those is really a function of the maturity of your system, and the capability of your system. If you’re just getting started, it doesn’t matter – you’re working on the basics, you can drive a few miles or a few thousand or tens of thousands of miles in the real world, and that’s plenty to tell you and give you information that you need to know to improve your system.”
Dolgov’s point is that the more advanced your autonomous driving system becomes, the more miles you actually need to drive to have impact, because you’ve handled the basics and are moving on to edge cases, advanced navigation and ensuring that the software works in any and every scenario it encounters. Plus, your simulation becomes more sophisticated and more accurate as you accumulate real-world driving miles, which means the results of your virtual testing is more reliable for use back in your cars driving on actual roads.
This is what leads Dolgov to the conclusion that Waymo’s simulation is likely better than a lot of comparable simulation training at other autonomous driving companies.
“I think what makes it a good simulator, and what makes it powerful is two things,” Dolgov said onstage. “One [is] fidelity. And by fidelity, I mean, not how good it looks. It’s how well it behaves, and how representative it is of what you will encounter in the real world. And then second is scale.”
In other words, experience isn’t beneficial in terms of volume — it’s about sophistication, maturity and readiness for commercial deployment.
Powered by WPeMatico
Startup SafeAI, powered by a founding talent team with experience across Apple, Ford and Caterpillar, is emerging from stealth today with a $5 million funding announcement. The company’s focus is on autonomous vehicle technology, designed and built specifically for heavy equipment used in the mining and construction industries.
Out the gate, SafeAI is working with Doosan Bobcat, the South Korean equipment company that makes Bobcat loaders and excavators, and it’s already demonstrating and testing its software on a Bobcat skid loader at the SafeAI testing ground in San Jose. The startup believes that applying advances in autonomy and artificial intelligence to mining and construction can do a lot to not only make work sites safer, but also increase efficiencies and boost productivity — building on what’s already been made possible with even the most basic levels of autonomy currently available on the market.
What SafeAI hopes to add is an underlying architecture that acts as a fully autonomous (Level 4 by SAE standards, so no human driver) platform for a variety of equipment. Said platform is designed with openness, modularity and upgradeability in mind to help ensure that its clients can take advantage of new advances in autonomy and AI as they become available.
“We have seen and experienced deploying autonomous mining truck in production for last 10 years,” explained SafeAI Founder and CEO, Bibhrajit Halder in an email. “Now it’s time to take it to next level. At SafeAI, we are super excited to built the future of autonomous mine by creating autonomous mining equipment that just works.”
While SafeAI doesn’t have product in market yet, it is running its software on actual construction hardware at its proving ground, as mentioned, and it’s working with an as-yet unnamed large global mining company to deploy SafeAI in a mining truck, according to Halder. The company’s plan is to focus its efforts entirely on deploying fully Level 4 autonomy as its first available commercial product, with a vision of a future where multiple pieces of mining equipment are working together “seamlessly,” the CEO says.
Today’s $5 million round includes investment led by Autotech Ventures, and includes participation from Brick & Mortar Ventures, Embark Ventures and existing investor Monta Vista Capital.
Powered by WPeMatico
This is it. The final call for all the mobility and transportation startuppers who want to save a solid Benjamin on their ticket to the TC Sessions: Mobility 2019 conference in San Jose, Calif. on July 10. The early-bird ticket price disappears tonight, June 14 at 11:59 p.m. (PT). Beat that deadline and buy a ticket — or pay full freight.
Get ready to experience a full day devoted to the revolution that’s taking place within the mobility and transportation industries. More than 1,000 people — the greatest minds, biggest names and influential thinkers, makers and investors — will attend a day packed with interviews, panel discussions, fireside chats, demos and workshops.
Along with TechCrunch editors, speakers will question assumptions and examine complex technological and regulatory issues. They’ll discuss capital investment concerns and look at the ethics and human factors in a future of autonomous cars, delivery robots and flying taxis.
Here’s a small sample of the programming that’s on tap. The event agenda can help you plan your day, although you may have to clone yourself to catch it all.
Building Business and Autonomy: Co-founder and CTO Jesse Levinson will be on hand to talk about Zoox, an independent autonomous vehicle company. Its cars can navigate tricky San Francisco streets — including the notoriously iconic Lombard Street. We’ll hear how Zoox plans to navigate the challenging road to business success.
The Future of Freight: The trucking industry is in serious trouble, and startups and OEMs are scrambling to come up with a solution. Volvo’s Jenny Elfsberg and Stefan Seltz-Axmacher of Starsky Robotics will join us to debate whether autonomous trucks are the fix we need or if another near-term technology can pave the way to a more efficient and profitable industry.
Will Venture Capital Drive the Future of Mobility? Michael Granoff of Maniv Mobility, Ted Serbinski of Techstars and Bain Capital’s Sarah Smith will debate the uncertain future of mobility tech and whether VC dollars are enough to push the industry forward.
Today’s the last day you can save $100 on your pass to the TC Sessions: Mobility 2019 conference in San Jose, Calif. on July 10. Buy your ticket by 11:59 p.m. (PT) tonight, June 14 or kiss that early bird — and $100 — goodbye.
Is your company interested in sponsoring or exhibiting at TC Sessions: Mobility? Contact our sponsorship sales team by filling out this form.
Powered by WPeMatico
Twitter has just announced it has picked up London-based Fabula AI. The deep learning startup has been developing technology to try to identify online disinformation by looking at patterns in how fake stuff vs genuine news spreads online — making it an obvious fit for the rumor-riled social network.
Social media giants remain under increasing political pressure to get a handle on online disinformation to ensure that manipulative messages don’t, for example, get a free pass to fiddle with democratic processes.
Twitter says the acquisition of Fabula will help it build out its internal machine learning capabilities — writing that the UK startup’s “world-class team of machine learning researchers” will feed an internal research group it’s building out, led by Sandeep Pandey, its head of ML/AI engineering.
This research group will focus on “a few key strategic areas such as natural language processing, reinforcement learning, ML ethics, recommendation systems, and graph deep learning” — now with Fabula co-founder and chief scientist, Michael Bronstein, as a leading light within it.
Bronstein is chair in machine learning & pattern recognition at Imperial College, London — a position he will remain while leading graph deep learning research at Twitter.
Fabula’s chief technologist, Federico Monti — another co-founder, who began the collaboration that underpin’s the patented technology with Bronstein while at the University of Lugano, Switzerland — is also joining Twitter.
“We are really excited to join the ML research team at Twitter, and work together to grow their team and capabilities. Specifically, we are looking forward to applying our graph deep learning techniques to improving the health of the conversation across the service,” said Bronstein in a statement.
“This strategic investment in graph deep learning research, technology and talent will be a key driver as we work to help people feel safe on Twitter and help them see relevant information,” Twitter added. “Specifically, by studying and understanding the Twitter graph, comprised of the millions of Tweets, Retweets and Likes shared on Twitter every day, we will be able to improve the health of the conversation, as well as products including the timeline, recommendations, the explore tab and the onboarding experience.”
Terms of the acquisition have not been disclosed.
We covered Fabula’s technology and business plan back in February when it announced its “new class” of machine learning algorithms for detecting what it colloquially badged ‘fake news’.
Its approach to the problem of online disinformation looks at how it spreads on social networks — and therefore who is spreading it — rather than focusing on the content itself, as some other approaches do.
Fabula has patented algorithms that use the emergent field of “Geometric Deep Learning” to detect online disinformation — where the datasets in question are so large and complex that traditional machine learning techniques struggle to find purchase. Which does really sound like a patent designed with big tech in mind.
Fabula likens how ‘fake news’ spreads on social media vs real news as akin to “a very simplified model of how a disease spreads on the network”.
One advantage of the approach is it looks to be language agnostic (at least barring any cultural differences which might also impact how fake news spread).
Back in February the startup told us it was aiming to build an open, decentralised “truth-risk scoring platform” — akin to a credit referencing agency, just focused on content not cash.
It’s not clear from Twitter’s blog post whether the core technologies it will be acquiring with Fabula will now stay locked up within its internal research department — or be shared more widely, to help other platforms grappling with online disinformation challenges.
The startup had intended to offer an API for platforms and publishers later this year.
But of course building a platform is a major undertaking. And, in the meanwhile, Twitter — with its pressing need to better understand the stuff its network spreads — came calling.
A source close to the matter told us that Fabula’s founders decided that selling to Twitter instead of pushing for momentum behind a vision of a decentralized, open platform because the exit offered them more opportunity to have “real and deep impact, at scale”.
Though it is also still not certain what Twitter will end up doing with the technology it’s acquiring. And it at least remains possible that Twitter could choose to make it made open across platforms.
“That’ll be for the team to figure out with Twitter down the line,” our source added.
A spokesman for Twitter did not respond directly when we asked about its plans for the patented technology but he told us: “There’s more to come on how we will integrate Fabula’s technology where it makes sense to strengthen our systems and operations in the coming months. It will likely take us some time to be able to integrate their graph deep learning algorithms into our ML platform. We’re bringing Fabula in for the team, tech and mission, which are all aligned with our top priority: Health.”
Powered by WPeMatico
DNA Script has raised $38.5 million in new financing to commercialize a process that it claims is the first big leap forward in manufacturing genetic material.
The revolution in synthetic biology that’s reshaping industries from medicine to agriculture rests on three, equally important pillars.
They include: analytics — the ability to map the genome and understand the function of different genes; synthesis — the ability to manufacture DNA to achieve certain functions; and gene editing — the CRISPR-based technologies that allow for the addition or subtraction of genetic code.
New technologies have already been introduced to transform the analytics and editing of genomes, but little progress has been made over the past 50 years in the ways in which genetic material is manufactured. That’s exactly the problem that DNA Script is trying to solve.
Traditionally, making DNA involved the use of chemical compounds to synthesize (or write) DNA in chains that were limited to around 200 nucleotide bases. Those synthetic pieces of genetic code are then assembled to make a gene.
DNA Script’s technology holds the promise of making longer chains of nucleotides by mirroring the enzymatic process through which DNA is assembled within cells — with fewer errors and no chemical waste material. The enzymatic process can accelerate commercial applications in healthcare, chemical manufacturing and agriculture.
“Any technology that can make that faster is going to be very valuable,” says Christopher Voigt, a synthetic biologist at the Massachusetts Institute of Technology in Cambridge, told the journal Nature.
DNA Script isn’t the only company in the market that’s looking to make the leap forward in enzymatic DNA production. Nuclear, a startup working with Harvard University’s famed geneticist, George Church, and Ansa Bio, a startup affiliated with Jay Keasling’s Berkeley lab at the University of California, are also moving forward with the technology.
But the Paris-based company has achieved some milestones that would make its technology potentially the first to come to market with a commercially viable approach.
At least, that’s what new investors LSP and Bpifrance, through its Large Venture fund, are hoping. They’re joined by previous investors Illumina Ventures, M. Ventures, Sofinnova Partners, Kurma Partners and Idinvest Partners in backing the company’s latest funding.
The company said the money would be used to accelerate the development of its first products and establish a presence in the United States.
“As we announced earlier this year at the AGBT General Meeting, DNA Script was the first company to enzymatically synthesize a 200mer oligo de novo with an average coupling efficiency that rivals the best organic chemical processes in use today,” said Thomas Ybert, chief executive and co-founder of DNA Script. “Our technology is now reliable enough for its first commercial applications, which we believe will deliver the promise of same-day results to researchers everywhere, with DNA synthesis that can be completed in just a few hours.”
Powered by WPeMatico
Innowatts, an automated toolkit for energy monitoring and management targeting utilities, has raised $18.2 million in a new round of funding from investors led by Energy Impact Partners .
Previous investors Shell Ventures, Iberdrola and Energy and Environment Investment participated along with another new investor, Evergy Ventures.
As utilities respond to new, renewable power coming online and adapt to the challenges presented by natural disasters and intermittent energy sources stressing old power grid assets, they are increasingly turning to new software toolkits to adapt.
Innowatts and its software fit squarely into that category of offering.
“Competing in today’s complex and evolving marketplace requires utility companies use data and intelligence to drive business and customer value,” said Siddhartha Sachdeva, founder and chief executive of Innowatts, in a statement.
The company’s technology is used to analyze meter data from 21 million customers globally in 13 regional energy markets.
Innowatts boasts that it’s the largest body of customer intelligence data consumed by a software company. How that data will be used is an open question.
“We invest in companies driving the transformation of the energy sector towards an increasingly decarbonized, digitized, and electrified future – solutions that our utility partners can commercialize at scale and have the greatest impact,” said Michael Donnelly, partner and chief risk officer at EIP, in a statement. “Innowatts is poised to become a key building block in the software-driven, intelligent grid of the future, and we look forward to working closely with them alongside our utility partners.”
The company uses the data it collects to predict the potential for outages or problems created by surges in energy demand so that utilities can dispatch resources to meet that demand without sacrificing reliability for customers.
“Utilities have the opportunity to deliver more value to customers, at lower costs and with greater personalization than ever before, while helping streamline the complex energy marketplace,” said Geert van de Wouw, vice president of Shell Ventures.
Powered by WPeMatico
This Thursday, we’ll be hosting our third annual Robotics + AI TechCrunch Sessions event at UC Berkeley’s Zellerbach Hall. The day is packed start-to-finish with intimate discussions on the state of robotics and deep learning with key founders, investors, researchers and technologists.
The event will dig into recent developments in robotics and AI, which startups and companies are driving the market’s growth and how the evolution of these technologies may ultimately play out. In preparation for our event, TechCrunch’s Brian Heater spent time over the last several months visiting some of the top robotics companies in the country. Brian will be on the ground at the event, alongside Lucas Matney, who will also be on the scene. Friday at 11:00 am PT, Brian and Lucas will be sharing with Extra Crunch members (on a conference call) what they saw and what excited them most.
Tune in to find out about what you might have missed and to ask Brian and Lucas anything else robotics, AI or hardware. And want to attend the event in Berkeley this week? It’s not too late to get tickets.
To listen to this and all future conference calls, become a member of Extra Crunch. Learn more and try it for free.
Powered by WPeMatico
San Diego-based Edgybees today announced the launch of Argus, its API-based developer platform that makes it easy to add augmented reality features to live video feeds.
The service has long used this capability to run its own drone platform for first responders and enterprise customers, which allows its users to tag and track objects and people in emergency situations, for example, to create better situational awareness for first responders.
I first saw a demo of the service a year ago, when the team walked a group of journalists through a simulated emergency, with live drone footage and an overlay of a street map and the location of ambulances and other emergency personnel. It’s clear how these features could be used in other situations as well, given that few companies have the expertise to combine the video footage, GPS data and other information, including geographic information systems, for their own custom projects.
Indeed, that’s what inspired the team to open up its platform. As the Edgybees team told me during an interview at the Ourcrowd Summit last month, it’s impossible for the company to build a new solution for every vertical that could make use of it. So instead of even trying (though it’ll keep refining its existing products), it’s now opening up its platform.
“The potential for augmented reality beyond the entertainment sector is endless, especially as video becomes an essential medium for organizations relying on drone footage or CCTV,” said Adam Kaplan, CEO and co-founder of Edgybees. “As forward-thinking industries look to make sense of all the data at their fingertips, we’re giving developers a way to tailor our offering and set them up for success.”
In the run-up to today’s launch, the company has already worked with organizations like the PGA to use its software to enhance the live coverage of its golf tournaments.

Powered by WPeMatico
The European Commission’s digital commissioner has warned the mobile industry to expect it to act over security concerns attached to Chinese network equipment makers.
The Commission is considering a defacto ban on kit made by Chinese companies including Huawei in the face of security and espionage concerns, per Reuters.
Appearing on stage at the Mobile World Congress tradeshow in Barcelona today, Mariya Gabriel, European commissioner for digital economy and society, flagged network “cybersecurity” during her scheduled keynote, warning delegates it’s stating the obvious for her to say that “when 5G services become mission critical 5G networks need to be secure”.
Geopolitical concerns between the West and China are being accelerated and pushed to the fore as the era of 5G network upgrades approach, as well as by ongoing tensions between the U.S. and China over trade.
“I’m well away of the unrest among all of you key actors in the telecoms sectors caused by the ongoing discussions around the cybersecurity of 5G,” Gabriel continued, fleshing out the Commission’s current thinking. “Let me reassure you: The Commission takes your view very seriously. Because you need to run these systems everyday. Nobody is helped by premature decisions based on partial analysis of the facts.
“However it is also clear that Europe has to have a common approach to this challenge. And we need to bring it on the table soon. Otherwise there is a risk that fragmentation rises because of diverging decisions taken by Member States trying to protect themselves.”
“We all know that this fragmentation damages the digital single market. So therefore we are working on this important matter with priority. And to the Commission we will take steps soon,” she added.
The theme of this year’s show is “intelligent connectivity”; the notion that the incoming 5G networks will not only create links between people and (many, many more) things but understand the connections they’re making at a greater depth and resolution than has been possible before, leveraging the big data generated by many more connections to power automated decision-making in near real time, with low latency another touted 5G benefit (as well as many more connections per cell).
Futuristic scenarios being floated include connected cars neatly pulling to the sides of the road ahead of an ambulance rushing a patient to hospital — or indeed medical operations being aided and even directed remotely in real-time via 5G networks supporting high resolution real-time video streaming.
But for every touted benefit there are easy to envisage risks to network technology that’s being designed to connect everything all of the time — thereby creating a new and more powerful layer of critical infrastructure society will be relying upon.
Last fall the Australia government issued new security guidelines for 5G networks that essential block Chinese companies such as Huawei and ZTE from providing equipment to operators — justifying the move by saying that differences in the way 5G operates compared to previous network generations introduces new risks to national security.
New Zealand followed suit shortly after, saying kit from the Chinese companies posed a significant risk to national security.
While in the U.S. President Trump has made 5G network security a national security priority since 2017, and a bill was passed last fall banning Chinese companies from supplying certain components and services to government agencies.
The ban is due to take effect over two years but lawmakers have been pressuring to local carriers to drop 5G collaborations with companies such as Huawei.
In Europe the picture is so far more mixed. A UK government report last summer investigating Huawei’s broadband and mobile infrastructure raised further doubts, and last month Germany was reported to be mulling a 5G ban on the Chinese kit maker.
But more recently the two EU Member States have been reported to no longer be leaning towards a total ban — apparently believing any risk can be managed and mitigated by oversight and/or partial restrictions.
It remains to be seen how the Commission could step in to try to harmonize security actions taken by Member States around nascent 5G networks. But it appears prepared to set rules.
That said, Gabriel gave no hint of its thinking today, beyond repeating the Commission’s preferred position of less fragmentation, more harmonization to avoid collateral damage to its overarching Digital Single Market initiative — i.e. if Member States start fragmenting into a patchwork based on varying security concerns.
We’ve reached out to the Commission for further comment and will update this story with any additional context.
During the keynote she was careful to talk up the transformative potential of 5G connectivity while also saying innovation must work in lock-step with European “values”.
“Europe has to keep pace with other regions and early movers while making sure that its citizens and businesses benefit swiftly from the new infrastructures and the many applications that will be built on top of them,” she said.
“Digital is helping us and we need to reap its opportunities, mitigate its risks and make sure it is respectful of our values as much as driven by innovation. Innovation and values. Two key words. That is the vision we have delivered in terms of the defence for our citizens in Europe. Together we have decided to construct a Digital Single Market that reflects the values and principles upon which the European Union has been built.”
Her speech also focused on AI, with the commissioner highlighting various EC initiatives to invest in and support private sector investment in artificial intelligence — saying it’s targeting €20BN in “AI-directed investment” across the private and public sector by 2020, with the goal for the next decade being “to reach the same amount as an annual average” — and calling on the private sector to “contribute to ensure that Europe reaches the level of investment needed for it to become a world stage leader also in AI”.
But again she stressed the need for technology developments to be thoughtfully managed so they reflect the underlying society rather than negatively disrupting it. The goal should be what she dubbed “human-centric AI”.
“When we talk about AI and new technologies development for us Europeans it is not only about investing. It is mainly about shaping AI in a way that reflects our European values and principles. An ethical approach to AI is key to enable competitiveness — it will generate user trust and help facilitate its uptake,” she said.
“Trust is the key word. There is no other way. It is only by ensuring trustworthiness that Europe will position itself as a leader in cutting edge, secure and ethical AI. And that European citizens will enjoy AI’s benefits.”
Powered by WPeMatico
UK startup Fabula AI reckons it’s devised a way for artificial intelligence to help user generated content platforms get on top of the disinformation crisis that keeps rocking the world of social media with antisocial scandals.
Even Facebook’s Mark Zuckerberg has sounded a cautious note about AI technology’s capability to meet the complex, contextual, messy and inherently human challenge of correctly understanding every missive a social media user might send, well-intentioned or its nasty flip-side.
“It will take many years to fully develop these systems,” the Facebook founder wrote two years ago, in an open letter discussing the scale of the challenge of moderating content on platforms thick with billions of users. “This is technically difficult as it requires building AI that can read and understand news.”
But what if AI doesn’t need to read and understand news in order to detect whether it’s true or false?
Step forward Fabula, which has patented what it dubs a “new class” of machine learning algorithms to detect “fake news” — in the emergent field of “Geometric Deep Learning”; where the datasets to be studied are so large and complex that traditional machine learning techniques struggle to find purchase on this ‘non-Euclidean’ space.
The startup says its deep learning algorithms are, by contrast, capable of learning patterns on complex, distributed data sets like social networks. So it’s billing its technology as a breakthrough. (Its written a paper on the approach which can be downloaded here.)
It is, rather unfortunately, using the populist and now frowned upon badge “fake news” in its PR. But it says it’s intending this fuzzy umbrella to refer to both disinformation and misinformation. Which means maliciously minded and unintentional fakes. Or, to put it another way, a photoshopped fake photo or a genuine image spread in the wrong context.
The approach it’s taking to detecting disinformation relies not on algorithms parsing news content to try to identify malicious nonsense but instead looks at how such stuff spreads on social networks — and also therefore who is spreading it.
There are characteristic patterns to how ‘fake news’ spreads vs the genuine article, says Fabula co-founder and chief scientist, Michael Bronstein.
“We look at the way that the news spreads on the social network. And there is — I would say — a mounting amount of evidence that shows that fake news and real news spread differently,” he tells TechCrunch, pointing to a recent major study by MIT academics which found ‘fake news’ spreads differently vs bona fide content on Twitter.
“The essence of geometric deep learning is it can work with network-structured data. So here we can incorporate heterogenous data such as user characteristics; the social network interactions between users; the spread of the news itself; so many features that otherwise would be impossible to deal with under machine learning techniques,” he continues.
Bronstein, who is also a professor at Imperial College London, with a chair in machine learning and pattern recognition, likens the phenomenon Fabula’s machine learning classifier has learnt to spot to the way infectious disease spreads through a population.
“This is of course a very simplified model of how a disease spreads on the network. In this case network models relations or interactions between people. So in a sense you can think of news in this way,” he suggests. “There is evidence of polarization, there is evidence of confirmation bias. So, basically, there are what is called echo chambers that are formed in a social network that favor these behaviours.”
“We didn’t really go into — let’s say — the sociological or the psychological factors that probably explain why this happens. But there is some research that shows that fake news is akin to epidemics.”
The tl;dr of the MIT study, which examined a decade’s worth of tweets, was that not only does the truth spread slower but also that human beings themselves are implicated in accelerating disinformation. (So, yes, actual human beings are the problem.) Ergo, it’s not all bots doing all the heavy lifting of amplifying junk online.
The silver lining of what appears to be an unfortunate quirk of human nature is that a penchant for spreading nonsense may ultimately help give the stuff away — making a scalable AI-based tool for detecting ‘BS’ potentially not such a crazy pipe-dream.
Although, to be clear, Fabula’s AI remains in development at this stage, having been tested internally on Twitter data sub-sets at this stage. And the claims it’s making for its prototype model remain to be commercially tested with customers in the wild using the tech across different social platforms.
It’s hoping to get there this year, though, and intends to offer an API for platforms and publishers towards the end of this year. The AI classifier is intended to run in near real-time on a social network or other content platform, identifying BS.
Fabula envisages its own role, as the company behind the tech, as that of an open, decentralised “truth-risk scoring platform” — akin to a credit referencing agency just related to content, not cash.
Scoring comes into it because the AI generates a score for classifying content based on how confident it is it’s looking at a piece of fake vs true news.
A visualisation of a fake vs real news distribution pattern; users who predominantly share fake news are coloured red and users who don’t share fake news at all are coloured blue — which Fabula says shows the clear separation into distinct groups, and “the immediately recognisable difference in spread pattern of dissemination”.
In its own tests Fabula says its algorithms were able to identify 93 percent of “fake news” within hours of dissemination — which Bronstein claims is “significantly higher” than any other published method for detecting ‘fake news’. (Their accuracy figure uses a standard aggregate measurement of machine learning classification model performance, called ROC AUC.)
The dataset the team used to train their model is a subset of Twitter’s network — comprised of around 250,000 users and containing around 2.5 million “edges” (aka social connections).
For their training dataset Fabula relied on true/fake labels attached to news stories by third party fact checking NGOs, including Snopes and PolitiFact. And, overall, pulling together the dataset was a process of “many months”, according to Bronstein, He also says that around a thousand different stories were used to train the model, adding that the team is confident the approach works on small social networks, as well as Facebook-sized mega-nets.
Asked whether he’s sure the model hasn’t been trained to identified patterns caused by bot-based junk news spreaders, he says the training dataset included some registered (and thus verified ‘true’) users.
“There is multiple research that shows that bots didn’t play a significant amount [of a role in spreading fake news] because the amount of it was just a few percent. And bots can be quite easily detected,” he also suggests, adding: “Usually it’s based on some connectivity analysis or content analysis. With our methods we can also detect bots easily.”
To further check the model, the team tested its performance over time by training it on historical data and then using a different split of test data.
“While we see some drop in performance it is not dramatic. So the model ages well, basically. Up to something like a year the model can still be applied without any re-training,” he notes, while also saying that, when applied in practice, the model would be continually updated as it keeps digesting (ingesting?) new stories and social media content.
Somewhat terrifyingly, the model could also be used to predict virality, according to Bronstein — raising the dystopian prospect of the API being used for the opposite purpose to that which it’s intended: i.e. maliciously, by fake news purveyors, to further amp up their (anti)social spread.
“Potentially putting it into evil hands it might do harm,” Bronstein concedes. Though he takes a philosophical view on the hyper-powerful double-edged sword of AI technology, arguing such technologies will create an imperative for a rethinking of the news ecosystem by all stakeholders, as well as encouraging emphasis on user education and teaching critical thinking.
Let’s certainly hope so. And, on the educational front, Fabula is hoping its technology can play an important role — by spotlighting network-based cause and effect.
“People now like or retweet or basically spread information without thinking too much or the potential harm or damage they’re doing to everyone,” says Bronstein, pointing again to the infectious diseases analogy. “It’s like not vaccinating yourself or your children. If you think a little bit about what you’re spreading on a social network you might prevent an epidemic.”
So, tl;dr, think before you RT.
Returning to the accuracy rate of Fabula’s model, while ~93 per cent might sound pretty impressive, if it were applied to content on a massive social network like Facebook — which has some 2.3BN+ users, uploading what could be trillions of pieces of content daily — even a seven percent failure rate would still make for an awful lot of fakes slipping undetected through the AI’s net.
But Bronstein says the technology does not have to be used as a standalone moderation system. Rather he suggests it could be used in conjunction with other approaches such as content analysis, and thus function as another string on a wider ‘BS detector’s bow.
It could also, he suggests, further aid human content reviewers — to point them to potentially problematic content more quickly.
Depending on how the technology gets used he says it could do away with the need for independent third party fact-checking organizations altogether because the deep learning system can be adapted to different use cases.
Example use-cases he mentions include an entirely automated filter (i.e. with no human reviewer in the loop); or to power a content credibility ranking system that can down-weight dubious stories or even block them entirely; or for intermediate content screening to flag potential fake news for human attention.
Each of those scenarios would likely entail a different truth-risk confidence score. Though most — if not all — would still require some human back-up. If only to manage overarching ethical and legal considerations related to largely automated decisions. (Europe’s GDPR framework has some requirements on that front, for example.)
Facebook’s grave failures around moderating hate speech in Myanmar — which led to its own platform becoming a megaphone for terrible ethnical violence — were very clearly exacerbated by the fact it did not have enough reviewers who were able to understand (the many) local languages and dialects spoken in the country.
So if Fabula’s language-agnostic propagation and user focused approach proves to be as culturally universal as its makers hope, it might be able to raise flags faster than human brains which lack the necessary language skills and local knowledge to intelligently parse context.
“Of course we can incorporate content features but we don’t have to — we don’t want to,” says Bronstein. “The method can be made language independent. So it doesn’t matter whether the news are written in French, in English, in Italian. It is based on the way the news propagates on the network.”
Although he also concedes: “We have not done any geographic, localized studies.”
“Most of the news that we take are from PolitiFact so they somehow regard mainly the American political life but the Twitter users are global. So not all of them, for example, tweet in English. So we don’t yet take into account tweet content itself or their comments in the tweet — we are looking at the propagation features and the user features,” he continues.
“These will be obviously next steps but we hypothesis that it’s less language dependent. It might be somehow geographically varied. But these will be already second order details that might make the model more accurate. But, overall, currently we are not using any location-specific or geographic targeting for the model.
“But it will be an interesting thing to explore. So this is one of the things we’ll be looking into in the future.”
Fabula’s approach being tied to the spread (and the spreaders) of fake news certainly means there’s a raft of associated ethical considerations that any platform making use of its technology would need to be hyper sensitive to.
For instance, if platforms could suddenly identify and label a sub-set of users as ‘junk spreaders’ the next obvious question is how will they treat such people?
Would they penalize them with limits — or even a total block — on their power to socially share on the platform? And would that be ethical or fair given that not every sharer of fake news is maliciously intending to spread lies?
What if it turns out there’s a link between — let’s say — a lack of education and propensity to spread disinformation? As there can be a link between poverty and education… What then? Aren’t your savvy algorithmic content downweights risking exacerbating existing unfair societal divisions?
Bronstein agrees there are major ethical questions ahead when it comes to how a ‘fake news’ classifier gets used.
“Imagine that we find a strong correlation between the political affiliation of a user and this ‘credibility’ score. So for example we can tell with hyper-ability that if someone is a Trump supporter then he or she will be mainly spreading fake news. Of course such an algorithm would provide great accuracy but at least ethically it might be wrong,” he says when we ask about ethics.
He confirms Fabula is not using any kind of political affiliation information in its model at this point — but it’s all too easy to imagine this sort of classifier being used to surface (and even exploit) such links.
“What is very important in these problems is not only to be right — so it’s great of course that we’re able to quantify fake news with this accuracy of ~90 percent — but it must also be for the right reasons,” he adds.
The London-based startup was founded in April last year, though the academic research underpinning the algorithms has been in train for the past four years, according to Bronstein.
The patent for their method was filed in early 2016 and granted last July.
They’ve been funded by $500,000 in angel funding and about another $500,000 in total of European Research Council grants plus academic grants from tech giants Amazon, Google and Facebook, awarded via open research competition awards.
(Bronstein confirms the three companies have no active involvement in the business. Though doubtless Fabula is hoping to turn them into customers for its API down the line. But he says he can’t discuss any potential discussions it might be having with the platforms about using its tech.)
Focusing on spotting patterns in how content spreads as a detection mechanism does have one major and obvious drawback — in that it only works after the fact of (some) fake content spread. So this approach could never entirely stop disinformation in its tracks.
Though Fabula claims detection is possible within a relatively short time frame — of between two and 20 hours after content has been seeded onto a network.
“What we show is that this spread can be very short,” he says. “We looked at up to 24 hours and we’ve seen that just in a few hours… we can already make an accurate prediction. Basically it increases and slowly saturates. Let’s say after four or five hours we’re already about 90 per cent.”
“We never worked with anything that was lower than hours but we could look,” he continues. “It really depends on the news. Some news does not spread that fast. Even the most groundbreaking news do not spread extremely fast. If you look at the percentage of the spread of the news in the first hours you get maybe just a small fraction. The spreading is usually triggered by some important nodes in the social network. Users with many followers, tweeting or retweeting. So there are some key bottlenecks in the network that make something viral or not.”
A network-based approach to content moderation could also serve to further enhance the power and dominance of already hugely powerful content platforms — by making the networks themselves core to social media regulation, i.e. if pattern-spotting algorithms rely on key network components (such as graph structure) to function.
So you can certainly see why — even above a pressing business need — tech giants are at least interested in backing the academic research. Especially with politicians increasingly calling for online content platforms to be regulated like publishers.
At the same time, there are — what look like — some big potential positives to analyzing spread, rather than content, for content moderation purposes.
As noted above, the approach doesn’t require training the algorithms on different languages and (seemingly) cultural contexts — setting it apart from content-based disinformation detection systems. So if it proves as robust as claimed it should be more scalable.
Though, as Bronstein notes, the team have mostly used U.S. political news for training their initial classifier. So some cultural variations in how people spread and react to nonsense online at least remains a possibility.
A more certain challenge is “interpretability” — aka explaining what underlies the patterns the deep learning technology has identified via the spread of fake news.
While algorithmic accountability is very often a challenge for AI technologies, Bronstein admits it’s “more complicated” for geometric deep learning.
“We can potentially identify some features that are the most characteristic of fake vs true news,” he suggests when asked whether some sort of ‘formula’ of fake news can be traced via the data, noting that while they haven’t yet tried to do this they did observe “some polarization”.
“There are basically two communities in the social network that communicate mainly within the community and rarely across the communities,” he says. “Basically it is less likely that somebody who tweets a fake story will be retweeted by somebody who mostly tweets real stories. There is a manifestation of this polarization. It might be related to these theories of echo chambers and various biases that exist. Again we didn’t dive into trying to explain it from a sociological point of view — but we observed it.”
So while, in recent years, there have been some academic efforts to debunk the notion that social media users are stuck inside filter bubble bouncing their own opinions back at them, Fabula’s analysis of the landscape of social media opinions suggests they do exist — albeit, just not encasing every Internet user.
Bronstein says the next steps for the startup is to scale its prototype to be able to deal with multiple requests so it can get the API to market in 2019 — and start charging publishers for a truth-risk/reliability score for each piece of content they host.
“We’ll probably be providing some restricted access maybe with some commercial partners to test the API but eventually we would like to make it useable by multiple people from different businesses,” says requests. “Potentially also private users — journalists or social media platforms or advertisers. Basically we want to be… a clearing house for news.”
Powered by WPeMatico