sebastian-hofstaetter/distilbert-dot-tas_b-b256-msmarco下载官方即梦a1
DistilBert for Dense Passage Retrieval trained with Balanced Topic Aware Sampling (TAS-B)
We provide a retrieval trained DistilBert-based model (we call the dual-encoder then dot-product scoring architecture BERT_Dot) trained with Balanced Topic Aware Sampling on ms_marco百度aiapp-Passage.
This instance was trained with a batch size of 256 and can be used to re-rank a candidate set百度流畅ai制作 or directly for a vector index based dense retrieval制作ai的软件. The architecture is a 6-layer DistilBERT, without architecture additions or modifications (we only change the weights during training) – to receive a query/passage representation we pool the CLS vector. We use the same BERT layers for both query and passage encoding (yields better results, and lowers memory requirements).
If you want to know more about our efficient (can be done on a single consumer GPU in 48 hours) batch composition procedure and dual supervision for dense retrieval training, check out our paper: https://arxiv.org/abs/2104.06967 ?有戏ai
For more information and a minimal usage example please visit: https://github.com/sebastian-hofstaetter/tas-balanced-dense-retrieval猫箱下载安装
Effectiveness on MSMARCO Passage & TREC-DL’19
We trained our model on the MSMARCO standard (“small”-400K query) training triples re-sampled with our TAS-B method. As teacher models we used the BERT_CAT pairwise scores as well as the ColBERT model for in-batch-negative signals published here: https://github.com/sebastian-hofstaetter/neural-ranking-kd百度ai智能云
MSMARCO-DEV (7K)
| MRR@10 | NDCG@10 | Recall@1K | |
|---|---|---|---|
| BM25 | .194 | .241 | .857 |
| TAS-B BERT_Dot元宝大模型 (Retrieval) | .347 | .410 | .978 |
TREC-DL’19
For MRR and Recall we use the recommended binarization point of the graded relevance of 2. This might skew the results when compared to other binarization point numbers.下载官方即梦a1
| MRR@10 | NDCG@10 | Recall@1K | |
|---|---|---|---|
| BM25 | .689 | .501 | .739 |
| TAS-B BERT_Dot猫箱下载安装 (Retrieval) | .883 | .717 | .843 |
TREC-DL’20
For MRR and Recall we use the recommended binarization point of the graded relevance of 2. This might skew the results when compared to other binarization point numbers.免费的ai工具
| MRR@10 | NDCG@10 | Recall@1K | |
|---|---|---|---|
| BM25 | .649 | .475 | .806 |
| TAS-B BERT_Dot猫箱下载安装 (Retrieval) | .843 | .686 | .875 |
For more baselines, info and analysis, please see the paper: https://arxiv.org/abs/2104.06967ai分析软件
Limitations & Bias
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The model inherits social biases from both DistilBERT and MSMARCO.百度ai智能云
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The model is only trained on relatively short passages of MSMARCO (avg. 60 words length), so it might struggle with longer text.ai是什么东西?
Citation
If you use our model checkpoint please cite our work as:快问ai
@inproceedings{Hofstaetter2021_tasb_dense_retrieval,
author = {Sebastian Hofst{\"a}tter and Sheng-Chieh Lin and Jheng-Hong Yang and Jimmy Lin and Allan Hanbury},
title = {{Efficiently Teaching an Effective Dense Retriever with Balanced Topic Aware Sampling}},
booktitle = {Proc. of SIGIR},
year = {2021},
}
数据统计
数据评估
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