Unsupervised Item-Related Recommendation Method Combining BERT and Collaborative Filtering

Jing Yu, Jingjing Shi, Mingxing Zhou, Wenhai Liu, Yunwen Chen, Fan Xiong
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Abstract

Item-related recommendation is widely used in e-commerce, news, video, and other business scenarios, but there are problems such as sparse data, a large amount of implicit feedback data, limited sample annotation, cold start of items, poor serendipity, insufficient real-time performance, and the recommendation effect needs to be continuously improved. An unsupervised recommendation method is proposed. The method included four recall strategies. The first was to use the search engine and BM25 for real-time text matching recommendation about multi fields, and the second was to combine pre-trained language model BERT and ANN algorithm for real-time semantic matching recommendation about multi fields, and the third was to calculate the similarity by reducing the influence of popular items and active users to optimize the item-based collaborative filtering recommendation algorithm, and the fourth was to introduce the heat index based on Wilson Confidence Intervals to assist the recommendation ranking. Finally, the four recall results were merged and sorted to generate the final recommendation result. Through multiple sets of comparative experiments by the AlB test in the online recommendation system, it is shown that the proposed unsupervised recommendation method is superior to the baseline method in multiple indicators and can effectively improve the recommendation effect and user satisfaction.
结合BERT和协同过滤的无监督项目相关推荐方法
商品类推荐广泛应用于电商、新闻、视频等业务场景,但存在数据稀疏、隐式反馈数据量大、样本标注有限、商品冷启动、偶然性差、实时性不够等问题,推荐效果有待不断提高。提出了一种无监督推荐方法。该方法包括四种召回策略。第一个是利用搜索引擎和BM25进行多字段的实时文本匹配推荐,第二个是结合预训练语言模型BERT和ANN算法进行多字段的实时语义匹配推荐,第三个是通过减少热门项目和活跃用户的影响计算相似度来优化基于项目的协同过滤推荐算法。四是引入基于Wilson置信区间的热度指数来辅助推荐排序。最后,对四个召回结果进行合并和排序,生成最终的推荐结果。通过在线推荐系统中AlB测试的多组对比实验表明,所提出的无监督推荐方法在多个指标上都优于基线方法,能够有效提高推荐效果和用户满意度。
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