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thông tin chi tiết - Software Development - # Automated Program Repair

Automatic Debugging and Repair of Answer Set Programming Using Large Language Models and Logic-Based Techniques


Khái niệm cốt lõi
FormHe is a novel tool that combines logic-based techniques and Large Language Models (LLMs) to automatically debug and repair Answer Set Programming (ASP) code, particularly targeting novice programmers in educational settings.
Tóm tắt

Bibliographic Information:

Brancas, R., Manquinho, V., & Martins, R. (2024). Combining Logic with Large Language Models for Automatic Debugging and Repair of ASP Programs. In Proceedings of the Thirty-Eighth AAAI Conference on Artificial Intelligence.

Research Objective:

This paper introduces FormHe, a tool designed to address the challenges novice programmers face when debugging ASP code. The research aims to demonstrate the effectiveness of combining logic-based debugging techniques with LLMs for automated fault localization and program repair in ASP.

Methodology:

FormHe employs a multi-pronged approach to fault localization, leveraging Minimal Strongly Inconsistent Correction Subsets (MSICSs), line matching algorithms, and fine-tuned LLMs as classifiers. The repair module then utilizes either a fine-tuned LLM or a program mutation enumerator to generate and verify potential fixes. The system was evaluated using both real student submissions from a university-level Automated Reasoning course and synthetically generated buggy programs.

Key Findings:

FormHe demonstrated high accuracy in fault localization, correctly identifying all faults in 85% of real student submissions and at least one fault in 94% of cases. The combined repair approach, utilizing both LLM and mutation-based techniques, successfully repaired 58% of incorrect submissions. Notably, the LLM-based repair significantly outperformed the mutation-based approach, highlighting the potential of LLMs in this domain.

Main Conclusions:

The research concludes that integrating logic-based techniques with LLMs offers a promising avenue for automated debugging and repair of ASP programs. FormHe provides valuable assistance to novice programmers by pinpointing errors and suggesting corrections, ultimately facilitating the learning process.

Significance:

This work contributes significantly to the field of automated program repair, particularly for declarative programming languages like ASP. FormHe's success in assisting novice programmers has the potential to improve educational outcomes and lower the barrier to entry for ASP and other declarative languages.

Limitations and Future Research:

While FormHe shows promise, the researchers acknowledge the limitations of relying on synthetic data for training LLMs. Future work could explore methods to improve performance on real-world code and investigate the generalization of FormHe to other declarative programming paradigms.

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Thống kê
FormHe accurately detects faults in 94% of cases. FormHe successfully repairs 58% of incorrect submissions. The LLM-based repair approach achieved a 56% repair rate. The mutation-based repair approach achieved a 19% repair rate. FormHe can repair 96% of instances with exactly identified faults. FormHe can repair 92% of instances with a superset of faults identified. FormHe can repair 71% of instances with some faults identified. FormHe can repair 50% of instances where faults were not identified or wrongly identified.
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Thông tin chi tiết chính được chắt lọc từ

by Ricardo Bran... lúc arxiv.org 10-29-2024

https://arxiv.org/pdf/2410.20962.pdf
Combining Logic with Large Language Models for Automatic Debugging and Repair of ASP Programs

Yêu cầu sâu hơn

How can the performance of FormHe be further improved for real-world, complex ASP programs beyond the scope of introductory courses?

While FormHe demonstrates promising results for introductory ASP programs, scaling its effectiveness to complex, real-world scenarios necessitates several advancements: Enhanced Handling of Program Complexity: Contextual Understanding: Current techniques, particularly the MSICS and Line Matching, operate on a relatively shallow understanding of the ASP program's structure and semantics. Integrating techniques from program analysis, such as data-flow analysis and abstract interpretation, can provide a deeper understanding of program behavior, enabling more precise fault localization in intricate programs. Scalable Reasoning: The efficiency of MSICS computation and SMT-based mutation enumeration can become bottlenecks for larger programs. Exploring modularization techniques for ASP programs and leveraging incremental solving capabilities of modern SMT solvers can significantly improve scalability. Leveraging Richer Program Representations: Graph Neural Networks (GNNs): Representing ASP programs as graphs, where nodes denote rules/predicates and edges capture dependencies, allows for the application of powerful GNNs. GNNs can learn complex relationships within the program structure, leading to more accurate fault localization and more context-aware repair suggestions. Program Embeddings: Learning semantic embeddings of ASP programs and their components can facilitate similarity-based reasoning at a deeper level. This can enhance the Line Matching approach and enable the identification of semantically similar code snippets for repair, even if their syntactic structure differs significantly. Incorporating Domain-Specific Knowledge: ASP-Specific LLMs: Training LLMs on a massive corpus of ASP code and incorporating domain-specific knowledge about common ASP idioms, patterns, and best practices can significantly improve their ability to reason about and repair ASP programs. Constraint-Based Repair: Integrating constraint solving techniques within the repair process can guide the search for repairs that satisfy both syntactic and semantic constraints of the ASP language and the specific problem domain. Adaptive and Interactive Learning: Reinforcement Learning: Training repair models using reinforcement learning, where rewards are provided for generating correct and efficient repairs, can lead to more intelligent and adaptive repair strategies over time. Interactive Debugging: Extending FormHe with interactive capabilities, allowing users to provide feedback on repair suggestions or guide the search process, can bridge the gap between automated analysis and human intuition, particularly for complex debugging scenarios.

Could the reliance on a reference implementation for comparison potentially limit the diversity of acceptable student solutions and hinder the exploration of alternative, equally valid approaches to problem-solving?

Yes, the reliance on a single reference implementation for comparison poses a significant risk of stifling creativity and penalizing students who develop innovative, yet equally correct, solutions. This approach can lead to: Overfitting to Reference Style: Students might prioritize replicating the reference solution's structure and style over exploring alternative approaches, hindering the development of their problem-solving skills and potentially masking deeper understanding. Rejecting Valid Solutions: FormHe might flag semantically equivalent solutions with different syntactic structures or auxiliary predicates as incorrect, leading to frustration and discouraging exploration. Limited Scope of Feedback: The feedback provided might focus on superficial differences from the reference, rather than addressing the underlying logic and correctness of the student's approach. To mitigate these limitations, FormHe could incorporate: Multiple Reference Implementations: Providing students with a diverse set of reference solutions, showcasing different approaches and coding styles, can encourage exploration and broaden their understanding of the problem space. Semantic Equivalence Checking: Integrating techniques to verify the semantic equivalence of ASP programs, even if their syntactic representations differ, can ensure that students are not penalized for alternative but correct solutions. Input-Output Based Evaluation: Shifting the evaluation focus towards the correctness of the output generated for a given set of inputs, rather than strict adherence to a reference implementation, can foster creativity and allow for a wider range of acceptable solutions.

What broader implications does the successful integration of LLMs in debugging and repair tools have for the future of programming education and the development of more intelligent coding assistance systems?

The successful integration of LLMs in tools like FormHe heralds a transformative shift in programming education and the development of intelligent coding assistance: Transforming Programming Education: Personalized Learning: LLMs can power adaptive learning platforms that tailor instruction and feedback to individual student needs, identifying areas of difficulty and providing targeted support. Demystifying Debugging: By providing clear explanations of errors and suggesting repairs, LLMs can help students develop a deeper understanding of programming concepts and debugging strategies. Lowering Barriers to Entry: Intelligent coding assistants can make programming more accessible to beginners, reducing frustration and enabling them to focus on problem-solving rather than syntax errors. Advancing Intelligent Coding Assistance: Proactive Bug Prevention: LLMs can analyze code in real-time, identifying potential errors and vulnerabilities before they manifest as bugs, leading to more robust and reliable software. Automated Code Refactoring: LLMs can suggest code improvements, such as simplifying complex logic or optimizing for performance, enhancing code quality and maintainability. Natural Language Code Interaction: The ability to interact with code using natural language can make programming more intuitive and efficient, enabling developers to express their intent more directly. Ethical Considerations: Bias and Fairness: It is crucial to address potential biases in LLM training data to ensure that coding assistance systems provide fair and equitable support to all learners. Over-Reliance and Skill Atrophy: Striking a balance between automated assistance and fostering critical thinking skills in students is essential to prevent over-reliance on tools and potential skill atrophy. The integration of LLMs in programming education and coding assistance holds immense promise for empowering learners and revolutionizing software development. However, careful consideration of ethical implications and a focus on fostering human ingenuity alongside technological advancements are paramount to harnessing the full potential of these transformative tools.
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