Software Engineering & Artificial Intelligence

Recent paper related to SE and AI

ASE(#ase)

  • 2021
    • Deep GUI: Black-box GUI Input Generation with Deep Learning
    • DeepCVA: Automated Commit-level Vulnerability Assessment with Deep Multi-task Learning
    • DeepMemory: Model-based Memorization Analysis of Deep Neural Language Models
    • DeepMetis: Augmenting a Deep Learning Test Set to Increase its Mutation Score
    • FIGCPS: Effective Failure-inducing Input Generation for Cyber-Physical Systems with Deep Reinforcement Learning
    • Automated Testing for Machine Translation via Constituency Invariance
    • Efficient state synchronisation in model-based testing through reinforcement learning
    • FRUGAL: Unlocking Semi-supervised Learning for Software Analytics
    • On Multi-Modal Learning of Editing Source Code
  • 2020

    • Invited Talk: Smart Development of Mobile Apps with Deep Learning
    • Hybrid Deep Neural Networks to Infer State Models of Black-Box Systems
    • MARBLE: Model-Based Robustness Analysis of Stateful Deep Learning Systems
    • A Deep Multitask Learning Approach for Requirements Discovery and Annotation from Open Forum
    • Audee: Automated Testing for Deep Learning Frameworks
    • Safety and Robustness for Deep Learning with Provable Guarantees
    • When Deep Learning Meets Smart Contracts
    • Problems and Opportunities in Training Deep Learning Software Systems: An Analysis of Variance
    • BugPecker: Locating Faulty Methods with Deep Learning on Revision Graphs
    • Cats Are Not Fish: Deep Learning Testing Calls for Out-Of-Distribution Awareness
    • Towards Robust Production Machine Learning Systems: Managing Dataset Shift
    • A Machine Learning based Approach to Autogenerate Diagnostic Models for CNC machines
    • Emotion Detection in Roman Urdu Text using Machine Learning
    • Machine Learning meets Software Performance: Optimization, Transfer Learning, and Counterfactual Causal Inference
  • 2019

    • A Study of Oracle Approximations in Testing Deep Learning Libraries
    • An Empirical Study towards Characterizing Deep Learning Development and Deployment across Different Frameworks and Platforms
    • Apricot: A Weight-Adaptation Approach to Fixing Deep Learning Models
    • Property Inference for Deep Neural Networks
    • Wuji: Automatic Online Combat Game Testing Using Evolutionary Deep Reinforcement Learning
    • Machine Learning Based Automated Method Name Recommendation: How Far Are We

ISSTA

  • 2021

    • AdvDoor: Adversarial Backdoor Attack of Deep Learning System
    • Deep Just-in-Time Defect Prediction: How Far Are We?
    • DeepCrime: Mutation Testing of Deep Learning Systems Based on Real Faults
    • DeepHyperion: Exploring the Feature Space of Deep Learning-Based Systems through Illumination Search
    • Exposing Previously Undetectable Faults in Deep Neural Networks
    • Predoo: Precision Testing of Deep Learning Operators
    • TERA: Optimizing Stochastic Regression Tests in Machine Learning Projects
  • 2020

    • DeepGini: Prioritizing Massive Tests to Enhance the Robustness of Deep Neural Networks
    • DeepSQLi: Deep Semantic Learning for Testing SQL Injection
    • Effective White-Box Testing of Deep Neural Networks with Adaptive Neuron-Selection Strategy
    • Detecting Flaky Tests in Probabilistic and Machine Learning Applications
    • Detecting and Understanding Real-World Differential Performance Bugs in Machine Learning Libraries
    • Higher Income, Larger Loan? Monotonicity Testing of Machine Learning Models
  • 2019

    • DeepHunter: A Coverage-Guided Fuzz Testing Framework for Deep Neural Networks
    • Search-based Test and Improvement of Machine-Learning-Based Anomaly Detection Systems

ICSE

  • 2021
    • An Empirical Study on Deployment Faults of Deep Learning Based Mobile Applications
    • DeepBackdoor: Black-box Backdoor Attack on Deep Learning Models through Neural Payload Injection
    • DeepLV: Suggesting Log Levels Using Ordinal Based Neural Networks
    • DeepLocalize: Fault Localization for Deep Neural Networks
    • Graph-based Fuzz Testing for Deep Learning Inference Engines
    • Measuring Discrimination to Boost Comparative Testing for Multiple Deep Learning Models
    • Prioritizing Test Inputs for Deep Neural Networks via Mutation Analysis
    • RobOT: Robustness-Oriented Testing for Deep Learning Systems
    • Scalable Quantitative Verification For Deep Neural Networks
    • Self-Checking Deep Neural Networks in Deployment
    • An Empirical Study of Refactorings and Technical Debt in Machine Learning Systems
    • Are Machine Learning Cloud APIs Used Correctly?
    • Automatic Unit Test Generation for Machine Learning Libraries: How Far Are We?
    • CURE: Code-Aware Neural Machine Translation for Automatic Program Repair
    • Testing Machine Translation via Referential Transparency
    • White-Box Analysis over Machine Learning: Modeling Performance of Configurable Systems
  • 2020
    • An Empirical Study on Program Failures of Deep Learning Jobs
    • DISSECTOR: Input Validation for Deep Learning Applications by Crossing-layer Dissection
    • Detection of Hidden Feature Requests from Massive Chat Messages via Deep Siamese Network
    • Fuzz Testing based Data Augmentation to Improve Robustness of Deep Neural Networks
    • Importance-Driven Deep Learning System Testing
    • ReluDiff: Differential Verification of Deep Neural Networks
    • Repairing Deep Neural Networks: Fix Patterns and Challenges
    • Software Visualization and Deep Transfer Learning for Effective Software Defect Prediction
    • Taxonomy of Real Faults in Deep Learning Systems
    • Towards Characterizing Adversarial Defects of Deep Learning Software from the Lens of Uncertainty
    • Unblind Your Apps: Predicting Natural-Language Labels for Mobile GUI Components by Deep Learning
    • Automatic Testing and Improvement of Machine Translation
    • Structure-Invariant Testing for Machine Translation
  • 2019
    • Adversarial Sample Detection for Deep Neural Network through Model Mutation Testing
    • CRADLE: Cross-Backend Validation to Detect and Localize Bugs in Deep Learning Libraries
    • DeepPerf: Performance Prediction for Configurable Software with Deep Sparse Neural Network
    • Guiding Deep Learning System Testing using Surprise Adequacy
    • On Learning Meaningful Code Changes via Neural Machine Translation

ESEC/FSE

  • 2021

    • A Comprehensive Study of Deep Learning Compiler Bugs
    • Exposing Numerical Bugs in Deep Learning via Gradient Back-Propagation
    • Bias in Machine Learning Software: Why? How? What to Do?
    • Explaining Mispredictions of Machine Learning Models using Rule Induction
    • FLEX: Fixing Flaky Tests in Machine Learning Projects by Updating Assertion Bounds
    • Fair Preprocessing: Towards Understanding Compositional Fairness of Data Transformers in Machine Learning Pipeline
  • 2020

    • A Comprehensive Study on Challenges in Deploying Deep Learning Based Software
    • Correlations between Deep Neural Network Model Coverage Criteria and Model Quality
    • Deep Learning Library Testing via Effective Model Generation
    • DeepSearch: A Simple and Effective Blackbox Attack for Deep Neural Networks
    • Dynamic Slicing for Deep Neural Networks
    • Is Neuron Coverage a Meaningful Measure for Testing Deep Neural Networks?
    • Model-Based Exploration of the Frontier of Behaviours for Deep Learning System Testing
    • Object Detection for Graphical User Interface: Old Fashioned or Deep Learning or a Combination?
    • On Decomposing a Deep Neural Network into Modules
    • Do the Machine Learning Models on a Crowd Sourced Platform Exhibit Bias? An Empirical Study on Model Fairness
    • Machine Translation Testing via Pathological Invariance
    • Mining Assumptions for Software Components using Machine Learning
  • 2019

    • null

IJCAI

  • 2021

    • BOBCAT: Bilevel Optimization-Based Computerized Adaptive Testing
  • 2020

    • Metamorphic Testing and Certified Mitigation of Fairness Violations in NLP Models

AAAI

  • 2021

    • Group Testing on a Network
    • Testing Independence between Linear Combinations for Causal Discovery
  • 2020

    • A MaxSAT-based Framework for Group Testing
    • A New Framework for Online Testing of Heterogeneous Treatment Effect
  • 2019

    • On Testing of Samplers
    • DeepFuzz: Automatic Generation of Syntax Valid C Programs for Fuzz Testing

NeurIPS

  • 2020

    • On the Value of Out-of-Distribution Testing: An Example of Goodhart's Law
    • A/B Testing in Dense Large-Scale Networks: Design and Inference
  • 2019

    • Online Neural Connectivity Estimation with Noisy Group Testing
    • Private Identity Testing for High-Dimensional Distributions
    • Testing Determinantal Point Processes

ICML

  • 2021

    • Exploiting structured data for learning contagious diseases under incomplete testing
    • Robust Testing and Estimation under Manipulation Attacks
    • Active Testing: Sample-Efficient Model Evaluation
    • Testing DNN-based Autonomous Driving Systems under Critical Environmental Conditions
  • 2020

    • Is There a Trade-Off Between Fairness and Accuracy? A Perspective Using Mismatched Hypothesis Testing
    • Does the Markov Decision Process Fit the Data: Testing for the Markov Property in Sequential Decision Making
  • 2019

    • Conditional Independence in Testing Bayesian Networks
    • Adaptive Monte Carlo Multiple Testing via Multi-Armed Bandits

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