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In this work, we develop T2API, a statistical machine translation-based tool that takes a given English description of a programming task as a query, and synthesizes the API usage template for the task by learning from training data. T2API works in two steps. First, it derives the API elements relevant to the task described in the input by statistically learning from a StackOverflow corpus of text descriptions and corresponding code. To infer those API elements, it also considers the context of the words in the textual input and the context of API elements that often go together in the corpus. The inferred API elements with their relevance scores are ensembled into an API usage by our novel API usage synthesis algorithm that learns the API usages from a large code corpus via a graph-based language model. Importantly, T2API is capable of generating new API usages from smaller, previously-seen usages.
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Nguyen et al. (Tue,) studied this question.
synapsesocial.com/papers/6a207d19c38d4935b3a5dfaa — DOI: https://doi.org/10.1145/2950290.2983931
Thanh V. Nguyen
National Economics University
Peter C. Rigby
Meta (United States)
Anh Tuan Nguyen
Le Quy Don Technical University
Iowa State University
Concordia University
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