Publication | Open Access
On the cross-modal transfer from natural language to code through adapter modules
17
Citations
11
References
2022
Year
Unknown Venue
Artificial IntelligenceLlm Fine-tuningEngineeringSoftware EngineeringMultilingual PretrainingSemanticsLarge Language ModelCorpus LinguisticsNatural Language ProcessingSyntaxLanguage AdaptationComputational LinguisticsGrammarCross-modal TransferLanguage StudiesLanguage ModelsCode Clone DetectionMachine TranslationNatural LanguageCode GenerationAdapter ModulesPre-trained ModelsComputer ScienceCode RepresentationIntermediate RepresentationLinguistics
Pre-trained neural Language Models (PTLM), such as CodeBERT, are recently used in software engineering as models pre-trained on large source code corpora. Their knowledge is transferred to downstream tasks (e.g. code clone detection) via fine-tuning. In natural language processing (NLP), other alternatives for transferring the knowledge of PTLMs are explored through using adapters, compact, parameter efficient modules inserted in the layers of the PTLM. Although adapters are known to facilitate adapting to many downstream tasks compared to fine-tuning the model that require retraining all of the models' parameters- which owes to the adapters' plug and play nature and being parameter efficient-their usage in software engineering is not explored.
| Year | Citations | |
|---|---|---|
Page 1
Page 1