16/11/2020

Ad-hoc Document Retrieval using Weak-Supervision with BERT and GPT2

Yosi Mass, Haggai Roitman

Keywords: ad-hoc retrieval, manually data, weakly-supervised method, deep models

Abstract: We describe a weakly-supervised method for training deep learning models for the task of ad-hoc document retrieval. Our method is based on generative and discriminative models that are trained using weak-supervision just from the documents in the corpus. We present an end-to-end retrieval system that starts with traditional information retrieval methods, followed by two deep learning re-rankers. We evaluate our method on three different datasets: a COVID-19 related scientific literature dataset and two news datasets. We show that our method outperforms state-of-the-art methods; this without the need for the expensive process of manually labeling data.

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