SortNet: learning to rank by a neural preference function.

IEEE transactions on neural networks Pub Date : 2011-09-01 Epub Date: 2011-07-18 DOI:10.1109/TNN.2011.2160875
Leonardo Rigutini, Tiziano Papini, Marco Maggini, Franco Scarselli
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引用次数: 62

Abstract

Relevance ranking consists in sorting a set of objects with respect to a given criterion. However, in personalized retrieval systems, the relevance criteria may usually vary among different users and may not be predefined. In this case, ranking algorithms that adapt their behavior from users' feedbacks must be devised. Two main approaches are proposed in the literature for learning to rank: the use of a scoring function, learned by examples, that evaluates a feature-based representation of each object yielding an absolute relevance score, a pairwise approach, where a preference function is learned to determine the object that has to be ranked first in a given pair. In this paper, we present a preference learning method for learning to rank. A neural network, the comparative neural network (CmpNN), is trained from examples to approximate the comparison function for a pair of objects. The CmpNN adopts a particular architecture designed to implement the symmetries naturally present in a preference function. The learned preference function can be embedded as the comparator into a classical sorting algorithm to provide a global ranking of a set of objects. To improve the ranking performances, an active-learning procedure is devised, that aims at selecting the most informative patterns in the training set. The proposed algorithm is evaluated on the LETOR dataset showing promising performances in comparison with other state-of-the-art algorithms.

SortNet:通过神经偏好函数学习排序。
相关性排序是指根据给定的标准对一组对象进行排序。然而,在个性化检索系统中,相关标准通常因不同用户而异,可能不是预先定义的。在这种情况下,必须设计出根据用户反馈调整其行为的排名算法。文献中提出了两种主要的学习排名的方法:使用评分函数,通过示例学习,评估每个对象的基于特征的表示,产生绝对相关分数;两两方法,其中学习偏好函数来确定在给定对中必须排名第一的对象。本文提出了一种学习排序的偏好学习方法。比较神经网络(CmpNN)是一种从实例中训练的神经网络,用来逼近一对对象的比较函数。CmpNN采用了一种特殊的体系结构,旨在实现偏好函数中自然存在的对称性。学习到的偏好函数可以作为比较器嵌入到经典排序算法中,以提供一组对象的全局排名。为了提高排序性能,设计了一种主动学习过程,旨在从训练集中选择信息量最大的模式。该算法在LETOR数据集上进行了评估,与其他最先进的算法相比,显示出有希望的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IEEE transactions on neural networks
IEEE transactions on neural networks 工程技术-工程:电子与电气
自引率
0.00%
发文量
2
审稿时长
8.7 months
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