LINE

    Text:AAAPrint
    Sci-tech

    Chinese university aims to bring trust, resilience to next-generation AI

    1
    2019-05-14 15:50:43Xinhua Editor : Mo Hong'e ECNS App Download

    From voice assistant to face recognition; from defeating master players in Go to crushing professional gamers in strategy game StarCraft; the world has witnessed exciting progress in the development of artificial intelligence (AI).

    As AI is applied to higher-stake functions - like self-driving cars, automated surgical assistants, hedge fund management and power grid controls - how can we ensure it's trustworthy?

    China's prestigious Tsinghua University has announced it will step up basic research on third-generation AI, in the hope of building trust and preventing abuse and malicious behavior of AI models.

    Zhang Bo, director of the Tsinghua Institute for Artificial Intelligence and academician at the Chinese Academy of Sciences, unveiled the plan at the opening of Center for Fundamental Theories under the Institute for Artificial Intelligence on Monday.

    Tsinghua researchers have been talking about the future of AI since 2014 and expect it to enter the third stage of its development in coming years, said Zhang.

    The first-generation AI was driven by the knowledge that researchers themselves possessed and they tried to provide the AI model with clear logical rules. These systems were capable of solving well-defined problems, but incapable of learning.

    In the second-generation, AI started to learn. Machines learn by training a system on a data set and then testing it on another set. The system eventually becomes more precise and efficient.

    Zhang said the weakness of the second-generation lies in its explainability and robustness.

    AI robustness refers to an acceptably high performance even in worst-case scenarios.

    Although AI has already outperformed humans in certain areas like image recognition, nobody understands why these systems are doing so well.

    Machine learning and deep learning, the most common AI branches of recent years, suffer from the so-called "AI black box". People find it hard to interpret the AI-based decisions and cannot predict when the AI model will fail and how it will fail.

    Meanwhile, even accurate AI models can be vulnerable to "adversarial attacks" in which subtle differences are introduced to input data to manipulate AI "reasoning".

    For instance, an AI system might mistake a sloth for a racing car if some unnoticeable changes are made to a photo of sloth.

    Researchers therefore need to improve and verify the robustness of AI models, leaving no room for adversarial examples or even attacks to manipulate results.

    If AI technologies are deployed in security-sensitive or safety-critical scenarios, the next-generation needs to be comprehensible and more robust, said Zhang.

    Zhu Jun, director of the new center, said it will carry out interdisciplinary studies and expects to attract talent from around the world, providing them with a relaxed academic environment.

    He said Tsinghua University plans to host a high-level and fully-open AI meeting every year.

    "If anything helps innovation, we'll give it a try," said Zhu.

    "It's hard to predict the progress of research on fundamental theories. It could be explosive and trail-blazing."

    Related news

    MorePhoto

    Most popular in 24h

    MoreTop news

    MoreVideo

    News
    Politics
    Business
    Society
    Culture
    Military
    Sci-tech
    Entertainment
    Sports
    Odd
    Features
    Biz
    Economy
    Travel
    Travel News
    Travel Types
    Events
    Food
    Hotel
    Bar & Club
    Architecture
    Gallery
    Photo
    CNS Photo
    Video
    Video
    Learning Chinese
    Learn About China
    Social Chinese
    Business Chinese
    Buzz Words
    Bilingual
    Resources
    ECNS Wire
    Special Coverage
    Infographics
    Voices
    LINE
    Back to top Links | About Us | Jobs | Contact Us | Privacy Policy
    Copyright ©1999-2019 Chinanews.com. All rights reserved.
    Reproduction in whole or in part without permission is prohibited.
    主站蜘蛛池模板: 从江县| 武乡县| 洛浦县| 常宁市| 油尖旺区| 土默特右旗| 永新县| 琼中| 中方县| 明星| 黎川县| 六安市| 江达县| 宁强县| 兴城市| 满洲里市| 天全县| 湄潭县| 九江县| 吴江市| 怀柔区| 达州市| 鹤峰县| 横峰县| 明水县| 故城县| 重庆市| 株洲市| 寿阳县| 商河县| 临夏市| 温州市| 新田县| 通榆县| 营山县| 琼结县| 若羌县| 宁安市| 铁力市| 长海县| 溆浦县|