研究目的
To highlight distinctive features of the SP theory of intelligence and its apparent advantages compared with some AI-related alternatives, focusing on simplification and integration of observations and concepts in AI-related areas, and the potential to simplify and integrate structures and processes in computing systems.
研究成果
The SP system can provide a firm foundation for the long-term development of AI and related areas, and at the same time, it may deliver useful results on relatively short timescales. It is envisaged that a high-parallel, open-source version of the SP machine will be created, hosted on an existing high-performance computer, and derived from the existing SP computer model.
研究不足
The SP theory is not complete. The main shortcomings in the SP computer model are: the process for finding good full and partial matches between one-dimensional patterns needs to be generalized to patterns in two dimensions; a better understanding is needed of how the system may be applied to the discovery and recognition of low-level features in speech and images; in unsupervised learning, the model does not learn intermediate levels of abstraction or discontinuous dependencies in data; and a better understanding is needed of how the system may be applied in the representation and processing of numbers.