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首页> 外文期刊>International journal of mathematics in operational research >An effective movie recommender system enhanced with time series analysis of user rating behaviour
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An effective movie recommender system enhanced with time series analysis of user rating behaviour

机译:一个有效的电影推荐系统,随着时间序列分析的用户评级行为而增强

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Recommender system aims at improvising user satisfaction by taking decision on what movie or item to recommend next. Over time though, learners and learning behaviours shift regularly. This paper introduces a novel behaviour-inspired suggestion algorithm named the TimeFly-PPSE algorithm, which operates on the concept of changing user's motives around time. The suggested model takes temporal knowledge into account and monitors the progression of consumers and items that are useful in providing adequate recommendations. The latter outlines a framework that enrolls the user's shifting behaviour to include guidance for personalisation. TimeFly's findings are contrasted with those of other well-known algorithms. Simulation test on 100K MovieLens dataset shows that utilising TimeFly contributes to recommendations that are exceptionally efficient and reliable.
机译:推荐制度旨在通过决定接下来的电影或项目来提高用户满意度。 虽然,但学习者和学习行为定期转移。 本文介绍了一种名为TimeFly-PPSE算法的新的行为启发建议算法,其在随时更改用户动机的概念上运行。 建议的模型考虑了时间知识,并监测消费者和物品的进展,以提供适当的建议。 后者概述了一个框架,该框架注册了用户的转移行为,以包括个性化的指导。 Timefly的发现与其他众所周知的算法形成鲜明对比。 100K Movielens数据集的仿真测试显示,利用TimeFly有助于出于特别高效可靠的建议。

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