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Evaluation of Mean Absolute Error in Collaborative Filtering for Sparsity Users and Items on Female Daily Network

机译:女性日常网络中稀疏用户和项目协同过滤的平均绝对误差评估

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Female Daily Network is a beauty platform company that has a feature to share women's experiences of beauty items by rating them and talk about that. Female Daily Network doesn't have a recommendation engine for the next user will review the beauty item. Collaborative Filtering is a method to make a recommendation based on users' reviews of items. Sparsity users and sparsity items are problems to make a recommendation engine based on collaborative filtering. Comparing it with cut the sparsity users and items can be used to find the best recommendation engine. In this paper observe the cut of sparsity users and sparsity items to find the best Mean Absolute Error for the recommendation engine. Experimental research shows us that the best minimal times users give rating is 3 and the minimal item rating given is 3 also with Mean Absolute Error Value: 0.548. But MAE results not significant tell us if the cutting data affect the sparsity users and items. Because of the difference MAE, only 0.05 average from other results of the test and also fluctuating.
机译:女性日报网是一家美容平台公司,其功能是通过对女性的美容项目进行评级和谈论来分享女性的体验。女性每日网络没有推荐引擎,下一用户将审核该美容产品。协作过滤是一种基于用户对项目的评论进行推荐的方法。稀疏用户和稀疏项是基于协作过滤创建推荐引擎的问题。将其与削减的稀疏度用户和项目进行比较可用于查找最佳推荐引擎。在本文中,观察稀疏性用户和稀疏性项目的切入,以为推荐引擎找到最佳的平均绝对误差。实验研究表明,用户给出的最佳最小次数是3,给出的最小商品等级也是3,平均绝对误差值为0.548。但是MAE结果并不显着,告诉我们切割数据是否会影响稀疏性用户和物品。由于MAE的差异,与其他测试结果的平均值仅为0.05,并且也有波动。

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