An Experimental Study on Pretraining Transformers from Scratch for IR

Carlos Lassance, Herv'e D'ejean, S. Clinchant
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引用次数: 6

Abstract

Finetuning Pretrained Language Models (PLM) for IR has been de facto the standard practice since their breakthrough effectiveness few years ago. But, is this approach well understood? In this paper, we study the impact of the pretraining collection on the final IR effectiveness. In particular, we challenge the current hypothesis that PLM shall be trained on a large enough generic collection and we show that pretraining from scratch on the collection of interest is surprisingly competitive with the current approach. We benchmark first-stage ranking rankers and cross-encoders for reranking on the task of general passage retrieval on MSMARCO, Mr-Tydi for Arabic, Japanese and Russian, and TripClick for specific domain. Contrary to popular belief, we show that, for finetuning first-stage rankers, models pretrained solely on their collection have equivalent or better effectiveness compared to more general models. However, there is a slight effectiveness drop for rerankers pretrained only on the target collection. Overall, our study sheds a new light on the role of the pretraining collection and should make our community ponder on building specialized models by pretraining from scratch. Last but not least, doing so could enable better control of efficiency, data bias and replicability, which are key research questions for the IR community.
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基于IR的变压器从零开始预训练实验研究
预训练语言模型(PLM)自几年前取得突破性成效以来,实际上已成为IR的标准实践。但是,这种方法被理解了吗?在本文中,我们研究了预训练集合对最终IR有效性的影响。特别是,我们挑战了当前的假设,即PLM必须在足够大的通用集合上进行训练,并且我们表明,在感兴趣的集合上从头开始预训练与当前方法相比具有惊人的竞争力。我们对第一阶段排名排名器和交叉编码器进行基准测试,以对MSMARCO上的一般段落检索任务进行重新排名,Mr-Tydi用于阿拉伯语,日语和俄语,TripClick用于特定域。与普遍的看法相反,我们表明,对于微调第一阶段排名器,仅对其集合进行预训练的模型与更一般的模型相比具有同等或更好的有效性。然而,对于只在目标集合上预训练的重新排名者来说,有轻微的有效性下降。总的来说,我们的研究揭示了预训练集合的作用,并应该让我们的社区思考通过从头开始预训练来构建专门的模型。最后但并非最不重要的是,这样做可以更好地控制效率、数据偏差和可复制性,这些都是IR社区的关键研究问题。
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