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Learning to Rank based on Analogical Reasoning

28 November 2017
Mohsen Ahmadi Fahandar
Eyke Hüllermeier
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Abstract

Object ranking or "learning to rank" is an important problem in the realm of preference learning. On the basis of training data in the form of a set of rankings of objects represented as feature vectors, the goal is to learn a ranking function that predicts a linear order of any new set of objects. In this paper, we propose a new approach to object ranking based on principles of analogical reasoning. More specifically, our inference pattern is formalized in terms of so-called analogical proportions and can be summarized as follows: Given objects A,B,C,DA,B,C,DA,B,C,D, if object AAA is known to be preferred to BBB, and CCC relates to DDD as AAA relates to BBB, then CCC is (supposedly) preferred to DDD. Our method applies this pattern as a main building block and combines it with ideas and techniques from instance-based learning and rank aggregation. Based on first experimental results for data sets from various domains (sports, education, tourism, etc.), we conclude that our approach is highly competitive. It appears to be specifically interesting in situations in which the objects are coming from different subdomains, and which hence require a kind of knowledge transfer.

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