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Boosting a Hybrid Model Recommendation System for Sparse Data using Collaborative Filtering and Deep Learning

机译:使用协作过滤和深度学习促进用于稀疏数据的混合模型推荐系统

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摘要

The exponential increase in the volume of online data has generated a confront of overburden of data for online users, which slow down the suitable access to products of pursuit on the Web. This contributed to the need for recommendation systems. Recommender system is a special form of intelligent technique that takes advantage of past user transactions on products to give recommendations of products. Collaborative filtering has turn out to be the commonly adopted method of providing users with customized services, except that it endures the problem of sparsely rated inputs. For collaborative filtering, we introduce a deep learning-based architecture which evaluates a discrete factorisation of vectors from sparse inputs. The characteristics of the products are retrieved using a deep learning model, denoising auto encoders. The traditional collaborative filtering algorithm that predicts and uses the past history of consumer interest and product characteristics are updated with the characteristics obtained by deep learning model for sparse rated inputs. The results of sparse data problem tested on MovieLens data set will greatly enhance the user and product transaction.
机译:在线数据量的指数增加已经产生了在线用户的覆盖率的面对,这减慢了对网上追求产品的合适访问。这有助于建议制度。推荐系统是一种特殊形式的智能技术,可利用产品上的用户交易,以提供产品的建议。协作过滤已成为为用户提供定制服务的常用方法,除了它持续稀疏额定输入的问题。对于协作过滤,我们介绍了一种深入的学习架构,该架构评估了从稀疏输入的离散分子化。使用深度学习模型检索产品的特性,即去噪自动编码器。传统的协作过滤算法预测和使用过去历史的消费者兴趣和产品特征,并通过深入学习模型获得稀疏额定输入的特征来更新。在Movielens数据集上测试的稀疏数据问题的结果将大大增强用户和产品交易。

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