2015
DOI: 10.1007/s12652-015-0284-9
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Improved collaborative filtering with intensity-based contraction

Abstract: Recommendation systems are essential tools for piquing consumers' interests and stimulating consumption in today's electronic commerce, and the quality of these systems depends on the employed filtering algorithms. Therefore, improving the performance of these algorithms is an important issue. In this paper, we design an intensity-based contraction (IC) algorithm that works in combination with other machine-learning algorithms in model-based collaborative filtering, which is currently the most popular filterin… Show more

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Cited by 8 publications
(2 citation statements)
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“…These features can capture the semantic and contextual information of the text and provide input for subsequent recommendation algorithms.As shown in Figure 1, the execution flow of the proposed algorithm for the calculation area is as follows: Recommendation model construction:The intellectual property retrieval model based on recommendation algorithm can adopt a variety of algorithms, such as collaborative filtering, content recommendation, deep learning, etc. These algorithms can make use of existing intellectual property data to build recommendation models according to users' query intention and text features [7]. The goal of the model is to recommend relevant IP documents or information to users according to their query requirements.As shown in Formula 2, is the gradient calculation process in the directional propagation algorithm:…”
Section: Jewelry Design Methods Based On Genetic Algorithmmentioning
confidence: 99%
“…These features can capture the semantic and contextual information of the text and provide input for subsequent recommendation algorithms.As shown in Figure 1, the execution flow of the proposed algorithm for the calculation area is as follows: Recommendation model construction:The intellectual property retrieval model based on recommendation algorithm can adopt a variety of algorithms, such as collaborative filtering, content recommendation, deep learning, etc. These algorithms can make use of existing intellectual property data to build recommendation models according to users' query intention and text features [7]. The goal of the model is to recommend relevant IP documents or information to users according to their query requirements.As shown in Formula 2, is the gradient calculation process in the directional propagation algorithm:…”
Section: Jewelry Design Methods Based On Genetic Algorithmmentioning
confidence: 99%
“…After forwarding by the server, the remote monitoring device can call flexibly. Different terminal videos can be used to view the current surveillance video in real time, meeting the requirements of common video surveillance [7] .…”
Section: Face Recognition Algorithm Based On Deep Learningmentioning
confidence: 99%