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TTQA-RS- A break-down prompting approach for Multi-hop Table-Text
  Question Answering with Reasoning and Summarization

TTQA-RS- A break-down prompting approach for Multi-hop Table-Text Question Answering with Reasoning and Summarization

20 June 2024
Jayetri Bardhan
Bushi Xiao
Daisy Zhe Wang
    LRM
    LMTD
ArXivPDFHTML

Papers citing "TTQA-RS- A break-down prompting approach for Multi-hop Table-Text Question Answering with Reasoning and Summarization"

4 / 4 papers shown
Title
Multi-granular Training Strategies for Robust Multi-hop Reasoning Over Noisy and Heterogeneous Knowledge Sources
Multi-granular Training Strategies for Robust Multi-hop Reasoning Over Noisy and Heterogeneous Knowledge Sources
Jackson Coleman
Isaiah Lawrence
Benjamin Turner
LRM
38
0
0
09 Feb 2025
MFORT-QA: Multi-hop Few-shot Open Rich Table Question Answering
MFORT-QA: Multi-hop Few-shot Open Rich Table Question Answering
Che Guan
Mengyu Huang
Peng Zhang
RALM
LMTD
26
3
0
28 Mar 2024
MATE: Multi-view Attention for Table Transformer Efficiency
MATE: Multi-view Attention for Table Transformer Efficiency
Julian Martin Eisenschlos
Maharshi Gor
Thomas Müller
William W. Cohen
LMTD
67
93
0
09 Sep 2021
Dual Reader-Parser on Hybrid Textual and Tabular Evidence for Open
  Domain Question Answering
Dual Reader-Parser on Hybrid Textual and Tabular Evidence for Open Domain Question Answering
A. Li
Patrick K. L. Ng
Peng-Tao Xu
Henghui Zhu
Zhiguo Wang
Bing Xiang
LMTD
119
31
0
05 Aug 2021
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