Commonsense Knowledge in Machine Intelligence

Niket Tandon, A. Varde, Gerard de Melo
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引用次数: 77

Abstract

There is growing conviction that the future of computing depends on our ability to exploit big data on theWeb to enhance intelligent systems. This includes encyclopedic knowledge for factual details, common sense for human-like reasoning and natural language generation for smarter communication. With recent chatbots conceivably at the verge of passing the Turing Test, there are calls for more common sense oriented alternatives, e.g., the Winograd Schema Challenge. The Aristo QA system demonstrates the lack of common sense in current systems in answering fourth-grade science exam questions. On the language generation front, despite the progress in deep learning, current models are easily confused by subtle distinctions that may require linguistic common sense, e.g.quick food vs. fast food. These issues bear on tasks such as machine translation and should be addressed using common sense acquired from text. Mining common sense from massive amounts of data and applying it in intelligent systems, in several respects, appears to be the next frontier in computing. Our brief overview of the state of Commonsense Knowledge (CSK) in Machine Intelligence provides insights into CSK acquisition, CSK in natural language, applications of CSK and discussion of open issues. This paper provides a report of a tutorial at a recent conference with a brief survey of topics.
机器智能常识性知识
越来越多的人相信,计算的未来取决于我们利用网络上的大数据来增强智能系统的能力。这包括关于事实细节的百科全书式知识,类似人类推理的常识,以及用于更智能交流的自然语言生成。随着最近聊天机器人即将通过图灵测试,人们呼吁更多以常识为导向的替代方案,例如Winograd模式挑战。Aristo QA系统证明了当前系统在回答四年级科学考试问题时缺乏常识。在语言生成方面,尽管深度学习取得了进展,但目前的模型很容易被可能需要语言常识的细微区别所混淆,例如快餐和快餐。这些问题与机器翻译等任务有关,应该使用从文本中获得的常识来解决。从大量数据中挖掘常识,并将其应用于智能系统,在几个方面,似乎是计算的下一个前沿。我们对机器智能中的常识知识(CSK)状态的简要概述提供了对CSK获取,自然语言中的CSK, CSK应用和开放问题讨论的见解。本文提供了最近一次会议上的一个辅导课的报告,并简要介绍了主题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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