Data Augmentation for Sample Efficient and Robust Document Ranking

IF 5.4 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Abhijit Anand, Jurek Leonhardt, Jaspreet Singh, Koustav Rudra, Avishek Anand
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引用次数: 1

Abstract

Contextual ranking models have delivered impressive performance improvements over classical models in the document ranking task. However, these highly over-parameterized models tend to be data-hungry and require large amounts of data even for fine-tuning. In this paper, we propose data-augmentation methods for effective and robust ranking performance. One of the key benefits of using data augmentation is in achieving sample efficiency or learning effectively when we have only a small amount of training data. We propose supervised and unsupervised data augmentation schemes by creating training data using parts of the relevant documents in the query-document pairs. We then adapt a family of contrastive losses for the document ranking task that can exploit the augmented data to learn an effective ranking model. Our extensive experiments on subsets of the MS MARCO and TREC-DL test sets show that data augmentation, along with the ranking-adapted contrastive losses, results in performance improvements under most dataset sizes. Apart from sample efficiency, we conclusively show that data augmentation results in robust models when transferred to out-of-domain benchmarks. Our performance improvements in in-domain and more prominently in out-of-domain benchmarks show that augmentation regularizes the ranking model and improves its robustness and generalization capability.

基于样本高效鲁棒排序的数据增强
在文档排序任务中,上下文排序模型比经典模型提供了令人印象深刻的性能改进。然而,这些高度过度参数化的模型往往需要大量数据,甚至需要大量数据进行微调。在本文中,我们提出了有效和稳健的排名性能的数据增强方法。使用数据增强的主要好处之一是在我们只有少量训练数据的情况下实现样本效率或有效学习。我们通过使用查询文档对中相关文档的部分创建训练数据,提出了有监督和无监督的数据增强方案。然后,我们为文档排序任务调整了一系列对比损失,可以利用增强的数据来学习有效的排序模型。我们对MS MARCO和TREC-DL测试集的子集进行了广泛的实验,结果表明,在大多数数据集大小下,数据增强以及与排名相适应的对比损失都能提高性能。除了样本效率之外,我们最后表明,当转移到域外基准测试时,数据增强会产生鲁棒模型。我们在域内和域外的性能改进表明,增强使排名模型规范化,提高了其鲁棒性和泛化能力。
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来源期刊
ACM Transactions on Information Systems
ACM Transactions on Information Systems 工程技术-计算机:信息系统
CiteScore
9.40
自引率
14.30%
发文量
165
审稿时长
>12 weeks
期刊介绍: The ACM Transactions on Information Systems (TOIS) publishes papers on information retrieval (such as search engines, recommender systems) that contain: new principled information retrieval models or algorithms with sound empirical validation; observational, experimental and/or theoretical studies yielding new insights into information retrieval or information seeking; accounts of applications of existing information retrieval techniques that shed light on the strengths and weaknesses of the techniques; formalization of new information retrieval or information seeking tasks and of methods for evaluating the performance on those tasks; development of content (text, image, speech, video, etc) analysis methods to support information retrieval and information seeking; development of computational models of user information preferences and interaction behaviors; creation and analysis of evaluation methodologies for information retrieval and information seeking; or surveys of existing work that propose a significant synthesis. The information retrieval scope of ACM Transactions on Information Systems (TOIS) appeals to industry practitioners for its wealth of creative ideas, and to academic researchers for its descriptions of their colleagues'' work.
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