Document detail
ID

oai:arXiv.org:2408.14504

Topic
Computer Science - Software Engine... Computer Science - Artificial Inte... Computer Science - Programming Lan...
Author
Chon, Heejae Lee, Seonghyeon Yeo, Jinyoung Lee, Dongha
Category

Computer Science

Year

2024

listing date

9/4/2024

Keywords
language similarity functional correctness diversity lms generated
Metrics

Abstract

Language models (LMs) have exhibited impressive abilities in generating codes from natural language requirements.

In this work, we highlight the diversity of code generated by LMs as a critical criterion for evaluating their code generation capabilities, in addition to functional correctness.

Despite its practical implications, there is a lack of studies focused on assessing the diversity of generated code, which overlooks its importance in the development of code LMs.

We propose a systematic approach to evaluate the diversity of generated code, utilizing various metrics for inter-code similarity as well as functional correctness.

Specifically, we introduce a pairwise code similarity measure that leverages large LMs' capabilities in code understanding and reasoning, demonstrating the highest correlation with human judgment.

We extensively investigate the impact of various factors on the quality of generated code, including model sizes, temperatures, training approaches, prompting strategies, and the difficulty of input problems.

Our consistent observation of a positive correlation between the test pass score and the inter-code similarity score indicates that current LMs tend to produce functionally correct code with limited diversity.

;Comment: 15pages, 6 figures, 8 tables

Chon, Heejae,Lee, Seonghyeon,Yeo, Jinyoung,Lee, Dongha, 2024, Is Functional Correctness Enough to Evaluate Code Language Models? Exploring Diversity of Generated Codes

Document

Open

Share

Source

Articles recommended by ES/IODE AI

SHMT2 regulates esophageal cancer cell progression and immune Escape by mediating m6A modification of c-myc
shmt2 ec m6a modification c-myc one carbon metabolism cancer progression escape immune experiments related c-myc expression ec modification