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Language-Agnostic Representation Learning of Source Code from Structure
  and Context

Language-Agnostic Representation Learning of Source Code from Structure and Context

21 March 2021
Daniel Zügner
Tobias Kirschstein
Michele Catasta
J. Leskovec
Stephan Günnemann
ArXivPDFHTML

Papers citing "Language-Agnostic Representation Learning of Source Code from Structure and Context"

17 / 17 papers shown
Title
Deep Learning-Based Identification of Inconsistent Method Names: How Far Are We?
Deep Learning-Based Identification of Inconsistent Method Names: How Far Are We?
Taiming Wang
Yuxia Zhang
Lin Jiang
Yi Tang
Guangjie Li
Hui Liu
81
1
0
22 Jan 2025
Deep Learning for Code Intelligence: Survey, Benchmark and Toolkit
Deep Learning for Code Intelligence: Survey, Benchmark and Toolkit
Yao Wan
Yang He
Zhangqian Bi
Jianguo Zhang
Hongyu Zhang
Yulei Sui
Guandong Xu
Hai Jin
Philip S. Yu
20
20
0
30 Dec 2023
Neural Machine Translation for Code Generation
Neural Machine Translation for Code Generation
K. Dharma
Clayton T. Morrison
25
4
0
22 May 2023
Implant Global and Local Hierarchy Information to Sequence based Code
  Representation Models
Implant Global and Local Hierarchy Information to Sequence based Code Representation Models
Kechi Zhang
Zhuo Li
Zhi Jin
Ge Li
18
6
0
14 Mar 2023
A Survey on Natural Language Processing for Programming
A Survey on Natural Language Processing for Programming
Qingfu Zhu
Xianzhen Luo
Fang Liu
Cuiyun Gao
Wanxiang Che
15
1
0
12 Dec 2022
Representing LLVM-IR in a Code Property Graph
Representing LLVM-IR in a Code Property Graph
Alexander Kuechler
Christian Banse
17
3
0
09 Nov 2022
CAT-probing: A Metric-based Approach to Interpret How Pre-trained Models
  for Programming Language Attend Code Structure
CAT-probing: A Metric-based Approach to Interpret How Pre-trained Models for Programming Language Attend Code Structure
Nuo Chen
Qiushi Sun
Renyu Zhu
Xiang Li
Xuesong Lu
Ming Gao
31
10
0
07 Oct 2022
CSSAM:Code Search via Attention Matching of Code Semantics and
  Structures
CSSAM:Code Search via Attention Matching of Code Semantics and Structures
Y. Hu
Bowen Cai
Yaoxiang Yu
11
3
0
08 Aug 2022
InvAASTCluster: On Applying Invariant-Based Program Clustering to Introductory Programming Assignments
InvAASTCluster: On Applying Invariant-Based Program Clustering to Introductory Programming Assignments
Pedro Orvalho
Mikolávs Janota
Vasco M. Manquinho
17
7
0
28 Jun 2022
Multimodal Learning with Transformers: A Survey
Multimodal Learning with Transformers: A Survey
P. Xu
Xiatian Zhu
David A. Clifton
ViT
41
522
0
13 Jun 2022
StructCoder: Structure-Aware Transformer for Code Generation
StructCoder: Structure-Aware Transformer for Code Generation
Sindhu Tipirneni
Ming Zhu
Chandan K. Reddy
19
55
0
10 Jun 2022
A Neural Network Architecture for Program Understanding Inspired by
  Human Behaviors
A Neural Network Architecture for Program Understanding Inspired by Human Behaviors
Renyu Zhu
Lei Yuan
Xiang Li
Ming Gao
Wenyuan Cai
19
8
0
10 May 2022
DOM-LM: Learning Generalizable Representations for HTML Documents
DOM-LM: Learning Generalizable Representations for HTML Documents
Xiang Deng
Prashant Shiralkar
Colin Lockard
Binxuan Huang
Huan Sun
AI4TS
AI4CE
37
37
0
25 Jan 2022
Senatus -- A Fast and Accurate Code-to-Code Recommendation Engine
Senatus -- A Fast and Accurate Code-to-Code Recommendation Engine
Fran Silavong
Sean J. Moran
Antonios Georgiadis
Rohan Saphal
R. Otter
18
9
0
05 Nov 2021
Towards Learning (Dis)-Similarity of Source Code from Program Contrasts
Towards Learning (Dis)-Similarity of Source Code from Program Contrasts
Yangruibo Ding
Luca Buratti
Saurabh Pujar
Alessandro Morari
Baishakhi Ray
Saikat Chakraborty
8
36
0
08 Oct 2021
CodeT5: Identifier-aware Unified Pre-trained Encoder-Decoder Models for
  Code Understanding and Generation
CodeT5: Identifier-aware Unified Pre-trained Encoder-Decoder Models for Code Understanding and Generation
Yue Wang
Weishi Wang
Shafiq R. Joty
S. Hoi
210
1,485
0
02 Sep 2021
Do Transformers Really Perform Bad for Graph Representation?
Do Transformers Really Perform Bad for Graph Representation?
Chengxuan Ying
Tianle Cai
Shengjie Luo
Shuxin Zheng
Guolin Ke
Di He
Yanming Shen
Tie-Yan Liu
GNN
21
431
0
09 Jun 2021
1