Abstract
This paper highlights 20 significant problems in AI research, with potential solutions via the SP Theory of Intelligence (SPTI) and its realisation in the SP Computer Model. With other evidence referenced in the paper, this is strong evidence in support of the SPTI as a promising foundation for the development of human-level broad AI, aka artificial general intelligence. The 20 problems include: the tendency of deep neural networks to make major errors in recognition; the need for a coherent account of generalisation, over- and under-generalisation, and minimising the corrupting effect of ‘dirty data’; how to achieve one-trial learning; how to achieve transfer learning; the need for transparency in the representation and processing of knowledge; and how to eliminate the problem of catastrophic forgetting. In addition to its promise as a foundation for the development of AGI, the SPTI has potential as a foundation for the study of human learning, perception, and cognition. And it has potential as a foundation for mathematics, logic, and computing.
Reference64 articles.
1. Ford, M. Architects of Intelligence: The Truth about AI from the People Building It, Kindle ed., 2018.
2. Wolff, J.G. ISBNs: 0-9550726-0-3 (ebook edition), (print edition), 0-9550726-1-1. Unifying Computing and Cognition: The SP Theory and Its Applications, 2006.
3. The SP Theory of Intelligence: An overview;Wolff;Information,2013
4. Alan turing and the development of articial intelligence;Muggleton;AI Commun.,2014
5. Alan turing’s unorganized machines and artificial neural networks: His remarkable early work and future possibilities;Webster;Evolution. Intellig.,2012
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献