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Hybrid Context Aware Recommender Systems

机译:混合上下文感知推荐系统

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摘要

Recommender systems and context awareness is currently a vital field of research. Most hybrid recommendation systems implement content based and collaborative filtering techniques whereas this work combines context and collaborative filtering. The paper presents a hybrid context aware recommender system for books and movies that gives recommendations based on the user context as well as user or item similarity. It also addresses the issue of dimensionality reduction using weighted pre filtering based on dynamically entered user context and preference of context. This unique step helps to reduce the size of dataset for collaborative filtering. Bias subtracted collaborative filtering is used so as to consider the relative rating of a particular user and not the absolute values. Cosine similarity is used as a metric to determine the similarity between users or items. The unknown ratings are calculated and evaluated using MSE (Mean Squared Error) in test and train datasets. The overall process of recommendation has helped to personalize recommendations and give more accurate results with reduced complexity in collaborative filtering.
机译:推荐系统和背景知识目前是一个重要的研究领域。大多数混合推荐系统实现基于内容和协作过滤技术,而该工作组合了上下文和协作滤波。本文介绍了用于书籍和电影的混合语境意识推荐系统,它基于用户上下文以及用户或项目相似性给出了建议。它还根据基于动态输入的用户上下文和上下文的偏好,解决了使用加权前筛选的维度减少问题的问题。此唯一步骤有助于减小数据集的大小以进行协同过滤。偏置减去协作滤波,以便考虑特定用户的相对额定值而不是绝对值。余弦相似度用作指标以确定用户或物品之间的相似性。使用测试和列车数据集中的MSE(均方误差)计算和评估未知的额定值。建议的整体过程有助于个性化建议,并在合作过滤中减少复杂性的更准确的结果。

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