基于前后滤波方法的混合上下文感知推荐系统

Mugdha Sharma, Laxmi Ahuja, Vinay Kumar
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引用次数: 3

摘要

上下文感知推荐方法领域在过去十年中取得了实质性进展,但许多应用程序在提供推荐时仍然没有包含上下文信息。上下文信息对于各种应用领域都是至关重要的,不应该被忽视。通常有三种算法可用于包含上下文,它们是:预过滤方法,后过滤方法和上下文建模。每种算法都有自己的缺点。该方法对后过滤方法进行了改进,并根据用户提供的上下文属性的重要性将后过滤方法与预过滤方法相结合。实验结果表明,该系统提高了用户推荐的精度和排序。这种混合方法消除了预滤波算法存在的稀疏性问题,并且比传统的后滤波方法有了性能上的提高。
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A Hybrid Context Aware Recommender System with Combined Pre and Post-Filter Approach
The domain of context aware recommender approaches has made substantial advancement over the last decade, but many applications still do not include contextual information while providing recommendations. Contextual information is crucial for various application areas and should not be ignored. There are generally three algorithms which can be used to include context and those are: pre-filter approach, post-filter approach, and contextual modeling. Each of the algorithms has their own drawbacks. The proposed approach modifies the post filter approach to rectify its shortcomings and combines it with the pre-filter approach based on the importance of contextual attribute provided by the user. The results of experimental setup also demonstrate that the proposed system improves the precision and ranking of the recommendations provided to user. With the help of this hybrid approach, the proposed system eliminates the problem of sparsity which is present in the pre-filter algorithm, and has performance improvement over the traditional post-filter approach.
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