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Recommendations for Car Selection System Using Item-Based Collaborative Filtering (CF)

机译:使用基于项目的协同过滤(CF)的选车系统的建议

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摘要

Car is a four or more wheels transportation that have many benefits for humanity, one of which can carry passengers and stuffs. The technology that has been developed brings a lot of information, this is aligned with information related to the car. It often happens when someone who wants to choose a car becomes confused because so many cars information are available on the internet. Therefore, we need a system that can help provide information about cars that are in accordance with the user's wishes, namely the recommendation system. The recommendation system requires the right recommendation In this research will focus on the problem of recommending the car selection system by building a recommendation system through an item-based Collaborative Filtering approach. To help provide solutions to the above problems, this recommendation system has 9 parameters. The application of item-based Collaborative Filtering algorithm produces a recommendation system that has a Mean Absolute Error (MAE) of 0.202 and has an accuracy rate of 95.955%.
机译:汽车是四轮或四轮以上的交通工具,对人类有很多好处,其中之一可以载客和载物。已开发的技术带来了很多信息,这与与汽车有关的信息保持一致。当想要选择汽车的人感到困惑时,通常会发生这种情况,因为互联网上提供了很多汽车信息。因此,我们需要一个系统,该系统可以帮助提供符合用户意愿的汽车信息,即推荐系统。推荐系统需要正确的推荐。在本研究中,我们将重点研究通过基于项目的协作过滤方法构建推荐系统来推荐汽车选择系统的问题。为了帮助解决上述问题,此推荐系统具有9个参数。基于项目的协同过滤算法的应用产生了一个推荐系统,该系统的平均绝对误差(MAE)为0.202,准确率为95.955%。

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