On the Effect of Low-Ranked Documents: A New Sampling Function for Selective Gradient Boosting

IF 0.4 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied Computing Review Pub Date : 2023-03-27 DOI:10.1145/3555776.3577597
C. Lucchese, Federico Marcuzzi, S. Orlando
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Abstract

Learning to Rank is the task of learning a ranking function from a set of query-documents pairs. Generally, documents within a query are thousands but not all documents are informative for the learning phase. Different strategies were designed to select the most informative documents from the training set. However, most of them focused on reducing the size of the training set to speed up the learning phase, sacrificing effectiveness. A first attempt in this direction was achieved by Selective Gradient Boosting a learning algorithm that makes use of customisable sampling strategy to train effective ranking models. In this work, we propose a new sampling strategy called High_Low_Sampl for selecting negative examples applicable to Selective Gradient Boosting, without compromising model effectiveness. The proposed sampling strategy allows Selective Gradient Boosting to compose a new training set by selecting from the original one three document classes: the positive examples, high-ranked negative examples and low-ranked negative examples. The resulting dataset aims at minimizing the mis-ranking risk, i.e., enhancing the discriminative power of the learned model and maintaining generalisation to unseen instances. We demonstrated through an extensive experimental analysis on publicly available datasets, that the proposed selection algorithm is able to make the most of the negative examples within the training set and leads to models capable of obtaining statistically significant improvements in terms of NDCG, compared to the state of the art.
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关于低排序文档的效果:一种新的用于选择性梯度增强的抽样函数
学习排序是从一组查询文档对中学习排序函数的任务。通常,一个查询中的文档有数千个,但并不是所有文档都对学习阶段提供信息。设计了不同的策略来从训练集中选择信息量最大的文档。然而,他们中的大多数人都专注于减少训练集的大小来加快学习阶段,牺牲了效率。在这个方向上的第一次尝试是通过选择性梯度增强学习算法实现的,该算法利用可定制的采样策略来训练有效的排名模型。在这项工作中,我们提出了一种新的采样策略,称为High_Low_Sampl,用于选择适用于选择性梯度增强的负例,而不影响模型的有效性。所提出的采样策略允许选择性梯度增强从原始的三个文档类别中选择一个新的训练集:正例、高阶负例和低阶负例。生成的数据集旨在最大限度地降低错误排序的风险,即增强学习模型的判别能力,并保持对未见实例的泛化。通过对公开可用数据集的广泛实验分析,我们证明了所提出的选择算法能够在训练集中充分利用负面示例,并导致模型能够在NDCG方面获得统计上显着的改进,与最先进的状态相比。
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来源期刊
Applied Computing Review
Applied Computing Review COMPUTER SCIENCE, INFORMATION SYSTEMS-
自引率
40.00%
发文量
8
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