基于个性化偏好转移的跨域电影推荐系统

S. Soundariya, S. Manisekaran, S. Ramakrishnan, Aiswarya Ganesh, R. Keerthi
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引用次数: 0

摘要

推荐系统比以往任何时候都更加个性化。然而,它受到冷启动和数据稀疏性问题的困扰。跨域推荐(CDR)是一种基于源域用户的特征和个性化偏好在目标域产生推荐的方法,是一种很有前途和可行的方法。由于每个用户的喜好不同,他们的口味桥梁也会不同。当涉及到传递系统中所有用户的首选项时,大多数知名的现有模型都使用公共首选项桥接。个性化偏好转移(PPT),使用特征编码器(CE)对用户偏好进行个性化,其中用户特征映射到初始化映射,用于冷启动用户,用于热启动用户的书籍。在该模型中,使用具有用户属性的元网络来获得单个用户的桥接偏好。深度神经网络(Deep Neural Network, DNN)是一种神经网络模型,用于向用户提供优化的推荐。通过对不同模型和训练/测试比率的比较,利用MAE (Mean Absolute Error)和RMSD (Root Mean Squared Deviation)两个评价指标,确定个性化用户偏好转移的准确性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross Domain Movie Recommendation System using Personalized Preference Transfer
Recommendation System has become more customized than ever. However, it suffers from cold start and data sparsity issues. Cross Domain Recommendation (CDR) has been proposed as a promising and feasible approach which yields recommendations in the destination domain based on the characteristic and personalized preferences of the users in the source domain. Since the fondness varies for each user, their taste bridge would also be different. Most of the well-known existing models make use of common preference bridge when it comes to transferring preferences for all the users in the system. Personalized Preference Transfer (PPT) for personalizing user preferences using Characteristic Encoder (CE) where user characteristic is mapped to initializing maps is pro-posed for cold start users and from books for warm start users. In this model, a Meta net-work with user attributes is used to attain the bridge preferences for individual users. The Deep Neural Network (DNN) which is a neural network model is used to provide optimized recommendations to the users. The accuracy and efficiency of personalized user preferences transfer is determined based on the comparisons from different models and train/test ratios, making use of two evaluation metrics MAE (Mean Absolute Error) and RMSD (Root Mean Squared Deviation).
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