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A Recommender System for Ordering Platform Based on an Improved Collaborative Filtering Algorithm

机译:基于改进协同过滤算法的订购平台推荐系统

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With the development of ordering platform, an increasing number of people are paying their attention to design a suitable recommender system. Most of the traditional recommender systems are based on the abundant rating information of users. However, Only historical order data can be provided to the recommender system in ordering platform as training data. This paper proposes an improved Collaborative Filtering algorithm based on historical order data of restaurants. The recommender system includes two parts: 1) rule generation module, we define a new method for measuring the similarity between dishes. Furthermore, we incorporate an incremental learning method in this module. 2) recommendation module, we design user interest vector and propose a noise filtering method. Experimental results demonstrate that the proposed algorithm can effectively improve the performance of recommendation in terms of the accuracy and coverage ratio. Moreover, our recommender system has been successfully put into service.
机译:随着订购平台的发展,越来越多的人开始关注设计合适的推荐系统。大多数传统推荐系统都是基于用户丰富的评分信息。但是,只能将历史订单数据作为培训数据提供给订购平台中的推荐系统。提出了一种基于饭店历史订单数据的改进协同过滤算法。推荐系统包括两部分:1)规则生成模块,我们定义了一种新的测量盘子之间相似度的方法。此外,我们在此模块中引入了增量学习方法。 2)推荐模块,设计用户兴趣向量,提出一种噪声过滤方法。实验结果表明,该算法在准确性和覆盖率方面可以有效地提高推荐性能。此外,我们的推荐系统已成功投入使用。

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