Publication | Closed Access
On the transferability of pre-trained language models for low-resource programming languages
38
Citations
19
References
2022
Year
Unknown Venue
Llm Fine-tuningEngineeringMultilingualismCode SummarizationSoftware EngineeringMultilingual PretrainingLarge Language ModelSoftware AnalysisCorpus LinguisticsLow-resource Language ProcessingNatural Language ProcessingComputational LinguisticsLanguage StudiesCode SwitchingMachine TranslationPre-trained Language ModelsProgramming LanguagesCode GenerationPre-trained ModelsComputer ScienceDomain-specific LanguageLow-resource Programming LanguagesCode RepresentationCode SearchProgram AnalysisLinguisticsSoftware Language Engineering
A recent study by Ahmed and Devanbu reported that using a corpus of code written in multilingual datasets to fine-tune multilingual Pre-trained Language Models (PLMs) achieves higher performance as opposed to using a corpus of code written in just one programming language. However, no analysis was made with respect to fine-tuning monolingual PLMs. Furthermore, some programming languages are inherently different and code written in one language usually cannot be interchanged with the others, i.e., Ruby and Java code possess very different structure. To better understand how monolingual and multilingual PLMs affect different programming languages, we investigate 1) the performance of PLMs on Ruby for two popular Software Engineering tasks: Code Summarization and Code Search, 2) the strategy (to select programming languages) that works well on fine-tuning multilingual PLMs for Ruby, and 3) the performance of the fine-tuned PLMs on Ruby given different code lengths.
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