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Using Factor Decomposition Machine Learning Method to Music Recommendation

机译:使用因子分解机学习方法到音乐推荐

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The user data mining was introduced into the model construction process, and the user behavior was decomposed by analyzing various influencing factors through the factorization machine (FM) learning method. In the recommendation screening stage, the collaborative filtering recommendation is combined to screen the recommendation candidate set. The idea of user-based collaborative filtering (CF) is used for reference to obtain music works favored by similar users. On the other hand, we learn from item-based CF, which ensures that the candidate set covers user preference. Firstly, the user’s interest value is predicted by using dynamic interest model. Then, the common problems such as cold start and hot items processing are fully considered. The frequent pattern growth algorithm is compared with the association rule algorithm based on the collaborative filtering recommendation algorithm and the content-based recommendation algorithm, which proves the superiority of the algorithm and its role in solving the recommendation problem after applying the recommendation. The music data in the database data conversion effectively improve the efficiency and accuracy of mining. According to the implementation of the algorithm described in this article, the accuracy of the music recommendation results used to recommend user satisfaction is proved. And the recommended music is indeed feasible and practical.
机译:用户数据挖掘被引入模型施工过程中,通过分解机(FM)学习方法分析各种影响因素来分解用户行为。在推荐筛选阶段,合作过滤推荐组合以筛选推荐候选集。基于用户的协作滤波(CF)的想法用于参考,以获得由类似用户受到的音乐作品。另一方面,我们从基于项目的CF学习,这确保了候选集涵盖了用户偏好。首先,通过使用动态兴趣模型来预测用户的兴趣值。然后,完全考虑诸如冷启动和热项目处理之类的常见问题。将频繁的模式生长算法与基于协同过滤推荐算法的关联规则算法和基于内容的建议算法进行了比较,证明了算法的优势及其在应用推荐后解决推荐问题的作用。数据库数据转换中的音乐数据有效提高挖掘的效率和准确性。根据本文中描述的算法的实现,证明了用于推荐用户满意度的音乐推荐结果的准确性。建议的音乐确实可行和实用。

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