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Learning to Represent Programs with Heterogeneous Graphs
v1v2v3 (latest)

Learning to Represent Programs with Heterogeneous Graphs

8 December 2020
Kechi Zhang
Wenhan Wang
Huangzhao Zhang
Ge Li
Zhi Jin
    GNN
ArXiv (abs)PDFHTML

Papers citing "Learning to Represent Programs with Heterogeneous Graphs"

15 / 15 papers shown
ObscuraCoder: Powering Efficient Code LM Pre-Training Via Obfuscation Grounding
ObscuraCoder: Powering Efficient Code LM Pre-Training Via Obfuscation GroundingInternational Conference on Learning Representations (ICLR), 2025
Indraneil Paul
Haoyi Yang
Goran Glavaš
Kristian Kersting
Iryna Gurevych
AAMLSyDa
282
3
0
27 Mar 2025
TCProF: Time-Complexity Prediction SSL Framework
TCProF: Time-Complexity Prediction SSL FrameworkNorth American Chapter of the Association for Computational Linguistics (NAACL), 2025
Joonghyuk Hahn
Hyeseon Ahn
Jungin Kim
Soohan Lim
Yo-Sub Han
361
1
0
10 Feb 2025
Learn from Heterophily: Heterophilous Information-enhanced Graph Neural
  Network
Learn from Heterophily: Heterophilous Information-enhanced Graph Neural Network
Yilun Zheng
Jiahao Xu
Lihui Chen
454
3
0
26 Mar 2024
IRCoder: Intermediate Representations Make Language Models Robust
  Multilingual Code Generators
IRCoder: Intermediate Representations Make Language Models Robust Multilingual Code Generators
Indraneil Paul
Goran Glavaš
Iryna Gurevych
562
22
0
06 Mar 2024
BinGo: Identifying Security Patches in Binary Code with Graph
  Representation Learning
BinGo: Identifying Security Patches in Binary Code with Graph Representation LearningACM Asia Conference on Computer and Communications Security (AsiaCCS), 2023
Xu He
Shu Wang
Pengbin Feng
Xinda Wang
Shiyu Sun
Qi Li
Kun Sun
213
4
0
13 Dec 2023
ZC3: Zero-Shot Cross-Language Code Clone Detection
ZC3: Zero-Shot Cross-Language Code Clone DetectionInternational Conference on Automated Software Engineering (ASE), 2023
Jia Li
Chongyang Tao
Zhi Jin
Fan Liu
Jia Li
Ge Li
269
13
0
26 Aug 2023
Heterogeneous Directed Hypergraph Neural Network over abstract syntax tree (AST) for Code Classification
Heterogeneous Directed Hypergraph Neural Network over abstract syntax tree (AST) for Code ClassificationInternational Conference on Software Engineering and Knowledge Engineering (SEKE), 2023
Guang Yang
Tiancheng Jin
Liang Dou
421
5
0
07 May 2023
Knowledge Transfer for Pseudo-code Generation from Low Resource
  Programming Language
Knowledge Transfer for Pseudo-code Generation from Low Resource Programming Language
Ankita Sontakke
Kanika Kalra
Manasi Patwardhan
Lovekesh Vig
Raveendra Kumar Medicherla
Ravindra Naik
Shrishti Pradhan
177
3
0
16 Mar 2023
Implant Global and Local Hierarchy Information to Sequence based Code
  Representation Models
Implant Global and Local Hierarchy Information to Sequence based Code Representation ModelsIEEE International Conference on Program Comprehension (ICPC), 2023
Kechi Zhang
Zhuo Li
Zhi Jin
Ge Li
209
9
0
14 Mar 2023
xASTNN: Improved Code Representations for Industrial Practice
xASTNN: Improved Code Representations for Industrial Practice
Zhiwei Xu
Min Zhou
Xibin Zhao
Yang Chen
Xi Cheng
Hongyu Zhang
AI4TS
354
9
0
13 Mar 2023
Stealthy Backdoor Attack for Code Models
Stealthy Backdoor Attack for Code ModelsIEEE Transactions on Software Engineering (TSE), 2023
Zhou Yang
Bowen Xu
Jie M. Zhang
Hong Jin Kang
Jieke Shi
Junda He
David Lo
AAML
359
96
0
06 Jan 2023
Learning Program Representations with a Tree-Structured Transformer
Learning Program Representations with a Tree-Structured TransformerIEEE International Conference on Software Analysis, Evolution, and Reengineering (SANER), 2022
Wenhan Wang
Kechi Zhang
Ge Li
Shangqing Liu
Anran Li
Zhi Jin
Yang Liu
278
12
0
18 Aug 2022
A Library for Representing Python Programs as Graphs for Machine
  Learning
A Library for Representing Python Programs as Graphs for Machine Learning
David Bieber
Kensen Shi
Petros Maniatis
Charles Sutton
Vincent J. Hellendoorn
Daniel D. Johnson
Daniel Tarlow
GNNAI4CE
174
6
0
15 Aug 2022
A Survey of Deep Learning Models for Structural Code Understanding
A Survey of Deep Learning Models for Structural Code Understanding
Ruoting Wu
Yuxin Zhang
Qibiao Peng
Liang Chen
Zibin Zheng
299
9
0
03 May 2022
Code Summarization with Structure-induced Transformer
Code Summarization with Structure-induced TransformerFindings (Findings), 2020
Hongqiu Wu
Hai Zhao
Min Zhang
323
99
0
29 Dec 2020
1
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