From Bidirectional Associative Memory to a noise-tolerant, robust Protein Processor Associative Memory

Artificial Intelligence(2011)

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摘要
Protein Processor Associative Memory (PPAM) is a novel architecture for learning associations incrementally and online and performing fast, reliable, scalable hetero-associative recall. This paper presents a comparison of the PPAM with the Bidirectional Associative Memory (BAM), both with Kosko's original training algorithm and also with the more popular Pseudo-Relaxation Learning Algorithm for BAM (PRLAB). It also compares the PPAM with a more recent associative memory architecture called SOIAM. Results of training for object-avoidance are presented from simulations using player/stage and are verified by actual implementations on the E-Puck mobile robot. Finally, we show how the PPAM is capable of achieving an increase in performance without using the typical weighted-sum arithmetic operations or indeed any arithmetic operations.
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关键词
novel architecture,recent associative memory architecture,associations incrementally,e-puck mobile robot,typical weighted-sum arithmetic operation,bidirectional associative memory,protein processor associative memory,actual implementation,original training algorithm,arithmetic operation,robust protein processor associative,associative memory,mobile robot
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