2023
DOI: 10.1007/s44244-022-00002-y
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A case weighted similarity deep measurement method based on a self-attention Siamese neural network

Abstract: To improve the accuracy of similarity measures in case-based reasoning, in this paper, we propose a deep metric learning method based on a self-attention mechanism and a Siamese neural network to realize the weighted similarity measure between cases. In this method, weight assignment and similarity measurement processes are integrated into a deep network. The method can map cases to a new feature space through nonlinear processing of the network layer to obtain better feature representation. The inner relation… Show more

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Cited by 2 publications
(1 citation statement)
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“…Feature weights have a substantial impact on similarity calculations. They regulate the impact or signi cance of each attribute in determining the overall similarity between users(Cheng & Yan, 2023;Shantal et al, 2023). For instance, the attribute 'Number of followers' has a weight of 0.5, while "Number of tweets" has a weight of 0.2.…”
mentioning
confidence: 99%
“…Feature weights have a substantial impact on similarity calculations. They regulate the impact or signi cance of each attribute in determining the overall similarity between users(Cheng & Yan, 2023;Shantal et al, 2023). For instance, the attribute 'Number of followers' has a weight of 0.5, while "Number of tweets" has a weight of 0.2.…”
mentioning
confidence: 99%