Revisiting Bag of Words Document Representations for Efficient Ranking with Transformers

Author:

Rau David1ORCID,Dehghani Mostafa2ORCID,Kamps Jaap3ORCID

Affiliation:

1. ILLC, University of Amsterdam, Amsterdam, Netherlands

2. Deep Mind, San Francisco, United States

3. University of Amsterdam, Amsterdam, Netherlands

Abstract

Modern transformer-based information retrieval models achieve state-of-the-art performance across various benchmarks. The self-attention of the transformer models is a powerful mechanism to contextualize terms over the whole input but quickly becomes prohibitively expensive for long input as required in document retrieval. Instead of focusing on the model itself to improve efficiency, this paper explores different bag of words document representations that encode full documents by only a fraction of their characteristic terms, allowing us to control and reduce the input length. We experiment with various models for document retrieval on MS MARCO data, as well as zero-shot document retrieval on Robust04, and show large gains in efficiency while retaining reasonable effectiveness. Inference time efficiency gains are both lowering the time and memory complexity in a controllable way, allowing for further trading off memory footprint and query latency. More generally, this line of research connects traditional IR models with neural “NLP” models and offers novel ways to explore the space between (efficient, but less effective) traditional rankers and (effective, but less efficient) neural rankers elegantly.

Funder

Netherlands Organization for Scientific Research

Facebook Research

Innovation Exchange Amsterdam

Publisher

Association for Computing Machinery (ACM)

Reference60 articles.

1. Payal Bajaj Daniel Campos Nick Craswell Li Deng Jianfeng Gao Xiaodong Liu Rangan Majumder Andrew McNamara Bhaskar Mitra Tri Nguyen et al. 2016. MS MARCO: A human generated machine reading comprehension dataset. (2016). arxiv:1611.09268

2. Longformer: The long-document transformer;Beltagy Iz;arXiv:2004.05150,2020

3. Generating long sequences with sparse transformers;Child Rewon;CoRR,2019

4. Nick Craswell Bhaskar Mitra Emine Yilmaz and Daniel Campos. 2021. Overview of the TREC 2020 deep learning track. (2021). arxiv:2102.07662

5. Nick Craswell Bhaskar Mitra Emine Yilmaz Daniel Campos and Ellen M. Voorhees. 2020. Overview of the TREC 2019 deep learning track. (2020). arxiv:2003.07820

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