Counterfactual Explanations for Models of Code
Wed 11 May 2022 11:10 - 11:15 at ICSE room 1-odd hours - Machine Learning with and for SE 10 Chair(s): Preetha Chatterjee
Wed 25 May 2022 09:50 - 09:55 at Room 301+302 - Papers 2: Software Engineering in Practice Chair(s): Ipek Ozkaya
Wed 25 May 2022 13:30 - 15:00 at Ballroom Gallery - Posters 1
Machine learning (ML) models play an increasingly prevalent role in many software engineering tasks. However, because most models are now powered by opaque deep neural networks, it can be difficult for developers to understand why the model came to a certain conclusion and how to act upon the model’s prediction. Motivated by this problem, this paper explores counterfactual explanations for models of source code. Such counterfactual explanations constitute minimal changes to the source code under which the model ``changes its mind". We integrate counterfactual explanation generation to models of source code in a real-world setting. We describe considerations that impact both the ability to find realistic and plausible counterfactual explanations, as well as the usefulness of such explanation to the user of the model. In a series of experiments we investigate the efficacy of our approach on three different models, each based on a BERT-like architecture operating over source code.
Mon 9 MayDisplayed time zone: Eastern Time (US & Canada) change
Wed 11 MayDisplayed time zone: Eastern Time (US & Canada) change
11:00 - 12:00 | Machine Learning with and for SE 10Technical Track / SEIP - Software Engineering in Practice / Journal-First Papers at ICSE room 1-odd hours Chair(s): Preetha Chatterjee Drexel University, USA | ||
11:00 5mTalk | Defect Reduction Planning (using TimeLIME) Journal-First Papers Authorizer link Pre-print Media Attached | ||
11:05 5mTalk | Automatic Fault Detection for Deep Learning Programs Using Graph Transformations Journal-First Papers Amin Nikanjam École Polytechnique de Montréal, Houssem Ben Braiek École Polytechnique de Montréal, Mohammad Mehdi Morovati École Polytechnique de Montréal, Foutse Khomh Polytechnique Montréal Link to publication DOI Media Attached | ||
11:10 5mTalk | Counterfactual Explanations for Models of Code SEIP - Software Engineering in Practice Jürgen Cito TU Wien and Meta, Işıl Dillig University of Texas at Austin, Vijayaraghavan Murali Meta Platforms, Inc., Satish Chandra Facebook Pre-print Media Attached | ||
11:15 5mTalk | VarCLR: Variable Semantic Representation Pre-training via Contrastive Learning Technical Track Qibin Chen Carnegie Mellon University, Jeremy Lacomis Carnegie Mellon University, Edward J. Schwartz Carnegie Mellon University Software Engineering Institute, Graham Neubig Carnegie Mellon University, Bogdan Vasilescu Carnegie Mellon University, USA, Claire Le Goues Carnegie Mellon University DOI Pre-print Media Attached | ||
11:20 5mTalk | Towards Training Reproducible Deep Learning Models Technical Track Boyuan Chen Centre for Software Excellence, Huawei Canada, Mingzhi Wen Huawei Technologies, Yong Shi Huawei Technologies, Dayi Lin Centre for Software Excellence, Huawei, Canada, Gopi Krishnan Rajbahadur Centre for Software Excellence, Huawei, Canada, Zhen Ming (Jack) Jiang York University Pre-print Media Attached | ||
11:25 5mTalk | Learning to Reduce False Positives in Analytic Bug Detectors Technical Track Anant Kharkar Microsoft, Roshanak Zilouchian Moghaddam Microsoft, Matthew Jin Microsoft Corporation, Xiaoyu Liu Microsoft Corporation, Xin Shi Microsoft Corporation, Colin Clement Microsoft, Neel Sundaresan Microsoft Corporation Pre-print Media Attached |
Wed 25 MayDisplayed time zone: Eastern Time (US & Canada) change
09:30 - 10:30 | Papers 2: Software Engineering in PracticeJournal-First Papers / SEIP - Software Engineering in Practice at Room 301+302 Chair(s): Ipek Ozkaya Carnegie Mellon Software Engineering Institute | ||
09:30 5mTalk | The Agile Success Model: A Mixed-methods Study of a Large-scale Agile Transformation Journal-First Papers Daniel Russo Department of Computer Science, Aalborg University Link to publication DOI Pre-print | ||
09:35 5mTalk | Automatically Identifying Shared Root Causes of Test Breakages in SAP HANA SEIP - Software Engineering in Practice Gabin An KAIST, Juyeon Yoon Korea Advanced Institute of Science and Technology, Jeongju Sohn University of Luxembourg, Jingun Hong SAP Labs, Dongwon Hwang SAP Labs, Shin Yoo KAIST Pre-print Media Attached | ||
09:40 5mTalk | Automatic Anti-Pattern Detection in Microservice Architectures based on Distributed Tracing SEIP - Software Engineering in Practice Tim Hubener ING Bank N.V., Yaping Luo ING; Eindhoven University of Technology, Pieter Vallen ING, Jonck van der Kogel ING Bank N.V., Tom Liefheid ING Bank N.V., Michel Chaudron Eindhoven University of Technology, The Netherlands Media Attached | ||
09:45 5mTalk | Toward Among-Device AI from On-Device AI with Stream Pipelines SEIP - Software Engineering in Practice MyungJoo Ham Samsung Electronics, Sangjung Woo Samsung Electronics, Jaeyun Jung Samsung Electronics, Wook Song Samsung Electronics, Gichan Jang Samsung Electronics, Yongjoo Ahn Samsung Electronics, Hyoungjoo Ahn Samsung Electronics Pre-print Media Attached | ||
09:50 5mTalk | Counterfactual Explanations for Models of Code SEIP - Software Engineering in Practice Jürgen Cito TU Wien and Meta, Işıl Dillig University of Texas at Austin, Vijayaraghavan Murali Meta Platforms, Inc., Satish Chandra Facebook Pre-print Media Attached | ||
09:55 5mTalk | The Unexplored Terrain of Compiler Warnings SEIP - Software Engineering in Practice Gunnar Kudrjavets University of Groningen, Aditya Kumar Snap, Inc., Nachiappan Nagappan Microsoft Research, Ayushi Rastogi University of Groningen, The Netherlands DOI Pre-print Media Attached |