Masked Autoencoders As The Unified Learners For Pre-Trained Sentence
Representation
- URL: http://arxiv.org/abs/2208.00231v1
- Date: Sat, 30 Jul 2022 14:34:55 GMT
- Title: Masked Autoencoders As The Unified Learners For Pre-Trained Sentence
Representation
- Authors: Alexander Liu, Samuel Yang
- Abstract summary: We extend the recently proposed MAE style pre-training strategy, RetroMAE, to support a wide variety of sentence representation tasks.
The first stage performs RetroMAE over generic corpora, like Wikipedia, BookCorpus, etc., from which the base model is learned.
The second stage takes place on domain-specific data, e.g., MS MARCO and NLI, where the base model is continuingly trained based on RetroMAE and contrastive learning.
- Score: 77.47617360812023
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Despite the progresses on pre-trained language models, there is a lack of
unified frameworks for pre-trained sentence representation. As such, it calls
for different pre-training methods for specific scenarios, and the pre-trained
models are likely to be limited by their universality and representation
quality. In this work, we extend the recently proposed MAE style pre-training
strategy, RetroMAE, such that it may effectively support a wide variety of
sentence representation tasks. The extended framework consists of two stages,
with RetroMAE conducted throughout the process. The first stage performs
RetroMAE over generic corpora, like Wikipedia, BookCorpus, etc., from which the
base model is learned. The second stage takes place on domain-specific data,
e.g., MS MARCO and NLI, where the base model is continuingly trained based on
RetroMAE and contrastive learning. The pre-training outputs at the two stages
may serve different applications, whose effectiveness are verified with
comprehensive experiments. Concretely, the base model are proved to be
effective for zero-shot retrieval, with remarkable performances achieved on
BEIR benchmark. The continuingly pre-trained models further benefit more
downstream tasks, including the domain-specific dense retrieval on MS MARCO,
Natural Questions, and the sentence embeddings' quality for standard STS and
transfer tasks in SentEval. The empirical insights of this work may inspire the
future design of sentence representation pre-training. Our pre-trained models
and source code will be released to the public communities.
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