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NRF: Normalized Rating Frequency for Collaborative Filtering Paper

机译:NRF:协同过滤纸的标准化额定值频率

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摘要

The online system is rapidly developing and widely used for companies to market their products. The products can always be more diverse and abundant. However, it creates difficulties for the company to provide recommendations to users about products which are suitable with users interest. This condition encourages a recommendation system. One of the popular methods of this recommendation system is Collaborative Filtering (CF) by using rating-based and ranking-based approaches. Some of the ranking-based methods are Copeland method and Borda method. Both methods use a user-rating approach limited to the user preference profiling processes. Therefore, this research proposes the use of the user-rating to get the normalized rating frequency (NRF). Normalization process was done through the calculation of the frequency of a user-rating, which eventually generated a product ranking for recommendations to users. Experimental results of the NRF method can improve the performance of the recommendation system. This can be seen from the recommendations produced by the NRF method was more relevant in accordance with the wishes of the user, which is indicated by the average value of Normalized Discounted Cumulative Gain (NDCG) higher than Copeland and Borda methods. In addition, the NRF method has a faster computation time with a simpler algorithm than the Copeland and Borda methods.
机译:在线系统正在迅速开发和广泛用于公司推销产品。产品总是可以更加多样化和丰富。但是,它为公司创造了困难,为用户提供了适合用户兴趣的产品的建议。这种情况鼓励推荐系统。本推荐系统的流行方法之一是通过使用基于额定值和基于排名的方法的协作滤波(CF)。一些基于排名的方法是COPELAND方法和BORDA方法。两种方法都使用用户评级方法限于用户偏好分析过程。因此,该研究提出了使用用户评级来获得归一化额定值频率(NRF)。通过计算用户评级的频率来完成规范化过程,这最终为用户提供了推荐的产品排名。 NRF方法的实验结果可以提高推荐系统的性能。从NRF方法产生的建议可以看出,根据用户的意愿,这是由用户的愿望的平均值表示的,这是比截至槟榔和波尔巴方法的归一化折扣累积增益(NDCG)的平均值表示。此外,NRF方法的计算时间更快,算法比COPELAND和BORDA方法更简单。

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