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Positive unlabeled learning for building recommender systems in a parliamentary setting

机译:在议会环境中建立推荐制度的积极未标记的学习

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AbstractOur goal is to learn about the political interests and preferences of Members of Parliament (MPs) by mining their parliamentary activity in order to develop a recommendation/filtering system to determine how relevant documents should be distributed among MPs. We propose the use of positive unlabeled learning to tackle this problem since we only have information about relevant documents (the interventions of each MP in debates) but not about irrelevant documents and so it is not possible to use standard binary classifiers which have been trained with positive and negative examples. Additionally, we have also developed a new positive unlabeled learning algorithm that compares favorably with: (a) a baseline approach which assumes that every intervention by any other MP is irrelevant; (b) another well-known positive unlabeled learning method; and (c) an approach based on information retrieval methods that matches documents and legislators’ representations. The experiments have been conducted with data from the regional Spanish Andalusian Parliament.]]>
机译:<![cdata [ 抽象 我们的目标是通过挖掘其议会活动来了解议会(MPS)的政治利益和偏好,以制定建议/过滤系统以确定相关文件应如何在MPS中分发。我们建议使用积极的未标记的学习来解决这个问题,因为我们只有有关相关文件的信息(辩论中每个MP的干预措施),而且没有关于无关的文件,因此不可能使用已培训的标准二进制分类器正面和消极的例子。此外,我们还开发了一种新的正面未标记的学习算法,可利益地比较:(a)一种基线方法,它假设任何其他MP的每次干预都是无关紧要的; (b)另一种众所周知的正面未标记的学习方法; (c)一种基于信息检索方法的方法,符合文件和立法者的陈述。该实验已经通过来自区域西班牙安达卢西亚议会的数据进行了数据。 ]]>

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