Common Sense, the Turing Test, and the Quest for Real AI (Hardcover)

Common Sense, the Turing Test, and the Quest for Real AI (Hardcover)

作者: Hector J. Levesque
出版社: MIT
出版在: 2017-02-24
ISBN-13: 9780262036047
ISBN-10: 0262036045
裝訂格式: Hardcover
總頁數: 192 頁





內容描述


What can artificial intelligence teach us about the mind? If AI's underlying concept is that thinking is a computational process, then how can computation illuminate thinking? It's a timely question. AI is all the rage, and the buzziest AI buzz surrounds adaptive machine learning: computer systems that learn intelligent behavior from massive amounts of data. This is what powers a driverless car, for example. In this book, Hector Levesque shifts the conversation to "good old fashioned artificial intelligence," which is based not on heaps of data but on understanding commonsense intelligence. This kind of artificial intelligence is equipped to handle situations that depart from previous patterns -- as we do in real life, when, for example, we encounter a washed-out bridge or when the barista informs us there's no more soy milk.
Levesque considers the role of language in learning. He argues that a computer program that passes the famous Turing Test could be a mindless zombie, and he proposes another way to test for intelligence -- the Winograd Schema Test, developed by Levesque and his colleagues. "If our goal is to understand intelligent behavior, we had better understand the difference between making it and faking it," he observes. He identifies a possible mechanism behind common sense and the capacity to call on background knowledge: the ability to represent objects of thought symbolically. As AI migrates more and more into everyday life, we should worry if systems without common sense are making decisions where common sense is needed.




相關書籍

Python 項目案例開發從入門到實戰 — 爬蟲、游戲和機器學習

作者 鄭秋生 夏敏捷 宋寶衛 李娟

2017-02-24

MATLAB/Simulink通信系統建模與模擬

作者 張德豐

2017-02-24

Programming Skills for Data Science: Start Writing Code to Wrangle, Analyze, and Visualize Data with R (Addison-Wesley Data & Analytics Series)

作者 Michael Freeman Joel Ross

2017-02-24