A review on cross domain recommendation

Aman Bansal, Shubham Kumar, R. Yadav, Nikita Dhage
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Abstract

Social market, consumers frequently connect from ecommerce websites to social networking sites such as Facebook and Twitter. There have been few determinations on accepting the connections between users' community media profiles and their e-commerce activities. Consumers can also post their newly bought products on micro blogs with links to the e-commerce product web pages. Review on Prediction user's buying activities on user's social media profile from the e-commerce. Extract all feature and use for recommendation. Collaborative Filtering does not have several user ratings to base recommendations on, which indications to the cold-start problem. Influence merchandise adopter information for recommendation, we are facing two major challenges. First, review data are actual deafening and often contain dialect, mistakes and emoticons. Product Demo graphic info of many product adopters can be used to describe both products and users, which can be unified into a recommendation. Predict a user's follow-up buying behavior at a specific period with lineage accuracy. Purchase possibility can be leveraged by recommender systems in different circumstances, as well as the zero-query pull-based endorsement consequence. Matrix Factorization to consider user aspects, and show that our protracted yields better analytical correctness compared to traditional Matrix Factorization and to a non-personalized baseline for cold-start product recommendation.
跨领域推荐研究综述
社交市场,消费者经常从电子商务网站连接到Facebook和Twitter等社交网站。在接受用户的社区媒体资料与其电子商务活动之间的联系方面,几乎没有决定。消费者还可以在微博上发布他们新买的产品,并链接到电子商务产品页面。从电商角度分析预测用户在社交媒体上的购买行为。提取所有功能和用途以供推荐。协同过滤没有几个用户评分作为推荐的基础,这表明冷启动问题。影响商品采用者信息的推荐,我们面临两大挑战。首先,审查数据实际上震耳欲聋,经常包含方言、错误和表情符号。许多产品采用者的产品演示图形信息可以用来描述产品和用户,这些信息可以统一为推荐。准确预测用户在特定时期的后续购买行为。在不同的情况下,推荐系统可以利用购买可能性,以及基于零查询拉的背书结果。矩阵分解考虑用户方面,并表明与传统的矩阵分解和冷启动产品推荐的非个性化基线相比,我们的延迟产生了更好的分析正确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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