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Generate, Transform, Answer: Question Specific Tool Synthesis for
  Tabular Data

Generate, Transform, Answer: Question Specific Tool Synthesis for Tabular Data

17 March 2023
Carlos Gemmell
Jeffrey Stephen Dalton
    LMTD
ArXivPDFHTML

Papers citing "Generate, Transform, Answer: Question Specific Tool Synthesis for Tabular Data"

12 / 12 papers shown
Title
AILS-NTUA at SemEval-2025 Task 8: Language-to-Code prompting and Error Fixing for Tabular Question Answering
Andreas Evangelatos
Giorgos Filandrianos
Maria Lymperaiou
Athanasios Voulodimos
Giorgos Stamou
LMTD
83
0
0
01 Mar 2025
FiDeLiS: Faithful Reasoning in Large Language Model for Knowledge Graph Question Answering
FiDeLiS: Faithful Reasoning in Large Language Model for Knowledge Graph Question Answering
Yuan Sui
Yufei He
Nian Liu
Xiaoxin He
Kun Wang
Bryan Hooi
LRM
49
10
0
20 Feb 2025
Source2Synth: Synthetic Data Generation and Curation Grounded in Real
  Data Sources
Source2Synth: Synthetic Data Generation and Curation Grounded in Real Data Sources
A. Lupidi
Carlos Gemmell
Nicola Cancedda
Jane Dwivedi-Yu
Jason Weston
Jakob Foerster
Roberta Raileanu
Maria Lomeli
SyDa
26
5
0
12 Sep 2024
Solving Data-centric Tasks using Large Language Models
Solving Data-centric Tasks using Large Language Models
Shraddha Barke
Christian Poelitz
Carina Negreanu
Ben Zorn
J. Cambronero
...
Nadia Polikarpova
Advait Sarkar
Brian Slininger
N. Toronto
Jack Williams
33
1
0
18 Feb 2024
TAT-LLM: A Specialized Language Model for Discrete Reasoning over
  Tabular and Textual Data
TAT-LLM: A Specialized Language Model for Discrete Reasoning over Tabular and Textual Data
Fengbin Zhu
Ziyang Liu
Fuli Feng
Chao Wang
Moxin Li
Tat-Seng Chua
LMTD
LRM
19
15
0
24 Jan 2024
TAP4LLM: Table Provider on Sampling, Augmenting, and Packing
  Semi-structured Data for Large Language Model Reasoning
TAP4LLM: Table Provider on Sampling, Augmenting, and Packing Semi-structured Data for Large Language Model Reasoning
Yuan Sui
Jiaru Zou
Mengyu Zhou
Xinyi He
Lun Du
Shi Han
Dongmei Zhang
LRM
LMTD
16
23
0
14 Dec 2023
On Evaluating the Integration of Reasoning and Action in LLM Agents with
  Database Question Answering
On Evaluating the Integration of Reasoning and Action in LLM Agents with Database Question Answering
Linyong Nan
Ellen Zhang
Weijin Zou
Yilun Zhao
Wenfei Zhou
Arman Cohan
LLMAG
33
13
0
16 Nov 2023
Effective Distillation of Table-based Reasoning Ability from LLMs
Effective Distillation of Table-based Reasoning Ability from LLMs
Bohao Yang
Chen Tang
Kangning Zhao
Chenghao Xiao
Chenghua Lin
LRM
27
22
0
22 Sep 2023
Investigating Table-to-Text Generation Capabilities of LLMs in
  Real-World Information Seeking Scenarios
Investigating Table-to-Text Generation Capabilities of LLMs in Real-World Information Seeking Scenarios
Yilun Zhao
Haowei Zhang
Shengyun Si
Linyong Nan
Xiangru Tang
Arman Cohan
LMTD
22
12
0
24 May 2023
From Words to Code: Harnessing Data for Program Synthesis from Natural
  Language
From Words to Code: Harnessing Data for Program Synthesis from Natural Language
Anirudh Khatry
Joyce Cahoon
Jordan Henkel
Shaleen Deep
Venkatesh Emani
...
Vu Le
Mohammad Raza
Sherry Shi
Mukul Singh
A. Tiwari
37
12
0
02 May 2023
Large Language Models are Zero-Shot Reasoners
Large Language Models are Zero-Shot Reasoners
Takeshi Kojima
S. Gu
Machel Reid
Yutaka Matsuo
Yusuke Iwasawa
ReLM
LRM
307
4,077
0
24 May 2022
Chain-of-Thought Prompting Elicits Reasoning in Large Language Models
Chain-of-Thought Prompting Elicits Reasoning in Large Language Models
Jason W. Wei
Xuezhi Wang
Dale Schuurmans
Maarten Bosma
Brian Ichter
F. Xia
Ed H. Chi
Quoc Le
Denny Zhou
LM&Ro
LRM
AI4CE
ReLM
349
8,457
0
28 Jan 2022
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