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From Easy to Hard: Two-stage Selector and Reader for Multi-hop Question
  Answering

From Easy to Hard: Two-stage Selector and Reader for Multi-hop Question Answering

24 May 2022
Xin-Yi Li
Weixian Lei
Yubin Yang
    RALM
ArXivPDFHTML

Papers citing "From Easy to Hard: Two-stage Selector and Reader for Multi-hop Question Answering"

4 / 4 papers shown
Title
Bactrainus: Optimizing Large Language Models for Multi-hop Complex Question Answering Tasks
Bactrainus: Optimizing Large Language Models for Multi-hop Complex Question Answering Tasks
Iman Barati
Arash Ghafouri
B. Minaei-Bidgoli
LRM
44
0
0
10 Jan 2025
Rethinking Label Smoothing on Multi-hop Question Answering
Rethinking Label Smoothing on Multi-hop Question Answering
Zhangyue Yin
Yuxin Wang
Xiannian Hu
Yiguang Wu
Hang Yan
Xinyu Zhang
Bo Zhao
Xuanjing Huang
Xipeng Qiu
26
9
0
19 Dec 2022
Does Entity Abstraction Help Generative Transformers Reason?
Does Entity Abstraction Help Generative Transformers Reason?
Nicolas Angelard-Gontier
Siva Reddy
C. Pal
34
5
0
05 Jan 2022
Answering Complex Open-domain Questions Through Iterative Query
  Generation
Answering Complex Open-domain Questions Through Iterative Query Generation
Peng Qi
Xiaowen Lin
L. Mehr
Zijian Wang
Christopher D. Manning
RALM
ReLM
LRM
179
117
0
15 Oct 2019
1