High Performance Associative Neural Networks: Overview and Library
نویسندگان
چکیده
Associative neural networks are regaining the popularity due to their recent successful application to the problem of real-time memorization and recognition in video. This paper presents a comparative overview of several most popular models of these networks, such as those learnt by the Projective Learning rules and having Sparse architecture, and introduces an Open Source Associative Neural Network Library which allows one to implement these models.
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