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An Approach to Content Based Recommender Systems Using Decision List Based Classification with k-DNF Rule Set

机译:一种基于内容的推荐系统的方法,该方法使用基于决策列表的k-DNF规则集进行分类

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Recommender systems are the software or technical tools that help user to find out items/things according to his/her preferences from a wide range of items/things. For example, selecting a movie from a large database of movies from on-line or selecting a song of his/her own kind from a large number of songs available in the internet and much more. In order to generate recommendations for the users the system has to first learn the user preferences from the user's past behaviours so that it can predict new items/things that are suitable for the respective user. These systems generally learn user's preferences from user's past experiences, using any machine learning algorithm and predict new items/things for the user using the learned preferences. In this paper we introduce a different approach to recommender system which will learn rules for user preferences using classification based on Decision Lists. We have followed two Decision List based classification algorithms like Repeated Incremental Pruning to Produce Error Reduction and Predictive Rule Mining, for learning rules for users past behaviours. We also list out our proposed recommendation algorithm and discuss the advantages as well as disadvantages of our approach to recommender system with the traditional approaches. We have validated our recommender system with the movie lens data set that contains hundred thousand movie ratings from different users, which is the bench mark dataset for recommender system testing.
机译:推荐系统是可以帮助用户根据自己的喜好从各种物品/物品中找到物品/物品的软件或技术工具。例如,从在线电影的大型数据库中选择电影,或者从互联网上可用的大量歌曲等中选择他/她自己类型的歌曲。为了为用户产生推荐,系统必须首先从用户的过去行为中学习用户偏好,以便它可以预测适合于各个用户的新项目/事物。这些系统通常使用任何机器学习算法从用户过去的经验中学习用户的偏好,并使用所学习的偏好为用户预测新的物品/事物。在本文中,我们为推荐系统引入了一种不同的方法,该系统将使用基于决策列表的分类来学习用户偏好的规则。我们遵循了两种基于决策列表的分类算法,例如重复增量修剪以减少错误和预测规则挖掘,以为用户的过去行为学习规则。我们还列出了我们提出的推荐算法,并讨论了采用传统方法的推荐系统的优缺点。我们已经使用包含来自不同用户的十万部电影评级的电影镜头数据集验证了推荐器系统,这是推荐器系统测试的基准数据集。

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