Hong Thi Thu Phan, Vuong Luong Nguyen, Trinh Quoc Vo, Nguyen Ho Trong Pham
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引用次数: 0
摘要
本文为电影推荐服务提出了一种基于知识的增强型协同过滤模型,以解决协同过滤在捕捉电影的不同偏好和具体特征方面的局限性。该模型整合了外部知识源,如电影情节和评论,以丰富推荐过程。通过利用这些附加信息,该模型可以更好地理解电影的独特特征和属性,从而提高推荐的准确性和相关性。基于知识的特征被提取出来并纳入协同过滤框架,从而增强了模型将用户偏好与电影特征相匹配的能力。我们使用 MovieLens 数据集进行了实验,以评估所提出的模型。采用 MAE 和 RMSE 指标来评估推荐的质量。与各种基线方法进行了比较分析,包括基于流行度的推荐模型、基于 CF 的推荐模型、基于内容的推荐模型和混合推荐模型。实验结果证明了所提出的基于知识的协同过滤模型的有效性。所提出的模型始终优于基线方法,能提供更准确、更个性化的推荐。
Hybrid knowledge-infused collaborative filtering for enhanced movie clustering and recommendation
This article proposes an enhanced knowledge-based collaborative filtering model for movie recommendation services to address the limitations of collaborative filtering in capturing the diverse preferences and specific characteristics of movies. The proposed model integrates external knowledge sources, such as movie plots and reviews, to enrich the recommendation process. By leveraging this additional information, the model can better understand movies’ unique features and attributes, improving recommendation accuracy and relevance. The knowledge-based features are extracted and incorporated into the collaborative filtering framework, enhancing the model’s ability to match user preferences with movie characteristics. Experiments are conducted using the MovieLens dataset to evaluate the proposed model. The MAE and RMSE metrics are employed to assess the quality of recommendations. Comparative analyses are conducted against various baseline approaches, including popularity-based, CF-based, content-based, and hybrid recommendation models. The experimental results demonstrate the effectiveness of the proposed knowledge-based collaborative filtering model. The proposed model consistently outperforms the baselines, providing more accurate and personalized recommendations.