2023
DOI: 10.1109/tse.2023.3310874
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DexBERT: Effective, Task-Agnostic and Fine-Grained Representation Learning of Android Bytecode

Tiezhu Sun,
Kevin Allix,
Kisub Kim
et al.

Abstract: The automation of an increasingly large number of software engineering tasks is becoming possible thanks to Machine Learning (ML). One foundational building block in the application of ML to software artifacts is the representation of these artifacts (e.g., source code or executable code) into a form that is suitable for learning. Traditionally, researchers and practitioners have relied on manually selected features, based on expert knowledge, for the task at hand. Such knowledge is sometimes imprecise and gen… Show more

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Cited by 2 publications
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