2021
DOI: 10.3390/math9131458
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Supervised Classification of Diseases Based on an Improved Associative Algorithm

Abstract: The linear associator is a classic associative memory model. However, due to its low performance, it is pertinent to note that very few linear associator applications have been published. The reason for this is that this model requires the vectors representing the patterns to be orthonormal, which is a big restriction. Some researchers have tried to create orthogonal projections to the vectors to feed the linear associator. However, this solution has serious drawbacks. This paper presents a proposal that effec… Show more

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