"Weak AI" is Likely to Never Become "Strong AI", So What is its Greatest
Value for us?
- URL: http://arxiv.org/abs/2103.15294v1
- Date: Mon, 29 Mar 2021 02:57:48 GMT
- Title: "Weak AI" is Likely to Never Become "Strong AI", So What is its Greatest
Value for us?
- Authors: Bin Liu
- Abstract summary: Many researchers argue that little substantial progress has been made for AI in recent decades.
Author explains why controversies about AI exist; (2) discriminates two paradigms of AI research, termed "weak AI" and "strong AI"
- Score: 4.497097230665825
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: AI has surpassed humans across a variety of tasks such as image
classification, playing games (e.g., go, "Starcraft" and poker), and protein
structure prediction. However, at the same time, AI is also bearing serious
controversies. Many researchers argue that little substantial progress has been
made for AI in recent decades. In this paper, the author (1) explains why
controversies about AI exist; (2) discriminates two paradigms of AI research,
termed "weak AI" and "strong AI" (a.k.a. artificial general intelligence); (3)
clarifies how to judge which paradigm a research work should be classified
into; (4) discusses what is the greatest value of "weak AI" if it has no chance
to develop into "strong AI".
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