TomTom has partnered with AI security startup Loop to connection sum that weighs driving habits implicit demographics.
TomTom unveiled a multiyear concern Wednesday with Loop, an Austin, Texas-based security tech startup, to supply better, much transparent car security prices, the companies said.
According to the announcement, Loop volition supply instrumentality learning information and TomTom, the Netherlands-based mapmaker and determination exertion specialty firm, volition proviso Loop with specified things arsenic velocity profiles, postulation stats and maps services, each successful the effort to optimize Loop's AI capabilities for improving operator information to assistance little security rates.
Keeping automobile coverage, and however the complaint is calculated, tin beryllium frustrating and each excessively often unfair for consumers. When imaginable customers inquire astir a complaint punctuation for coverage, the astir fashionable bequest security companies typically usage accusation specified arsenic an individual's yearly income, recognition score, acquisition level and adjacent marital status. And arsenic a result, according to Loop, specified metrics hinder low-income drivers with outsized rates and subpar coverage.
SEE: Hiring Kit: Video Game Programmer (TechRepublic Premium)
Loop, which bills itself arsenic a community-first brand, is hoping to alteration specified circumstances by removing the bias it says is embedded successful specified standards via a data-driven security approach. In particular, it wants to employment AI and telematics — a strategy wherever information transmission from the conveyance to a institution volition support costs down. How good and wherever you thrust volition beryllium cardinal — not a complaint that isn't inflated due to the fact that the operator doesn't person a master's grade oregon an impeccable FICO score.
Moreover, TomTom said successful a property merchandise that it wants to springiness Loop AI assistance for analyzing roadworthy and operator data, which successful crook volition assistance the startup to amended recognize operator behaviour and besides promote those insured with taking safer routes. The payoff would beryllium lowering security hazard and costs for drivers.
This data-driven attack for providing consumers a much adjacent playing tract is, of course, making its mode into an array of concern models. For example, according to Vidya Phalke, the main innovation serviceman astatine the hazard resilient steadfast MetricStream, "artificial quality is helping companies successful fiscal services erstwhile it comes to GRC (governance, hazard and compliance) - particularly for empowering their beforehand enactment employees - who are often the archetypal people of cyberattacks."
"AI allows companies to interruption down barriers and silos," helium adds, "by creating a broad presumption crossed departments and introducing cognitive hunt functions truthful that fiscal institutions tin find data, and benignant and analyse immoderate hazard arsenic it develops. When searches are faster, front-line and second-line users tin trim redundancy, and determination toward tighter information and smoother compliance."
Some experts caution that AI unsocial cannot region intrinsic bias. According to AI adept Roman Yampolskiy, a prof of machine subject and engineering astatine the University of Louisville, creating instrumentality learning systems that are 100% impartial is unfeasible. "Researchers usually effort to de-bias their AI," helium said, "but determination are proven mathematical results showing that immoderate bias is intolerable to remove."
Still, determination is an statement to beryllium made that the usage of AI tin nevertheless supply fiscal inclusion for much underserved individuals. For example, Moutusi Sau, Gartner probe VP, argues that wrong the banking services industry, "increasing adoption of AI models successful lending would assistance summation fiscal inclusion into underbanked populations." In particular, helium maintains successful his probe that much fairness tin travel astir successful the lending process by utilizing AI to assistance explicate the presumption of agreements and assistance banks measure a wider population.
"From a information and exemplary perspective, explainability helps fiscal institutions place immoderate systemic bias successful exemplary output and retrain arsenic necessary," helium says. While adding: "Although it is not a cleanable solution, explainability is simply a prerequisite to summation diverseness and inclusion. To summation the desired outcome, work should beryllium intrinsically included successful the algorithm design."
And backmost to the automobile security front, Ali Salhi, the main exertion serviceman astatine Loop, says that AI-driven information tin lone payment drivers — if they are committed to harmless driving.
For Salhi, utilizing TomTom's representation exertion and extended determination information volition let his institution to "underwrite and complaint hazard with pinpoint precision that's ne'er earlier been seen successful private-passenger car insurance." As Loop sees it, via algorithms, determination is simply a way to spiking a question that rattles an manufacture that brings successful $254 cardinal annually.
Innovation Newsletter
Be successful the cognize astir astute cities, AI, Internet of Things, VR, AR, robotics, drones, autonomous driving, and much of the coolest tech innovations. Delivered Wednesdays and Fridays
Sign up todayAlso see
- DevOps: A cheat sheet (TechRepublic)
- C++ programming language: How it became the instauration for everything, and what's adjacent (free PDF) (TechRepublic)
- Video crippled vocation snapshot: Industry insights and jobs for IT pros (TechRepublic Premium)
- Technology that changed us: The 1970s, from Pong to Apollo (ZDNet)
- Tom Merritt's Top 5 series (TechRepublic connected Flipboard)