TY - GEN
T1 - Content-Based Textual File Type Detection at Scale
AU - Bonifro, Francesca Del
AU - Gabbrielli, Maurizio
AU - Zacchiroli, Stefano
N1 - Publisher Copyright:
© 2021 ACM.
PY - 2021/2/26
Y1 - 2021/2/26
N2 - Programming language detection is a common need in the analysis of large source code bases. It is supported by a number of existing tools that rely on several features, and most notably file extensions, to determine file types. We consider the problem of accurately detecting the type of files commonly found in software code bases, based solely on textual file content. Doing so is helpful to classify source code that lack file extensions (e.g., code snippets posted on the Web or executable scripts), to avoid misclassifying source code that has been recorded with wrong or uncommon file extensions, and also shed some light on the intrinsic recognizability of source code files. We propose a simple model that (a) use a language-agnostic word tokenizer for textual files, (b) group tokens in 1-/2-grams, (c) build feature vectors based on N-gram frequencies, and (d) use a simple fully connected neural network as classifier. As training set we use textual files extracted from GitHub repositories with at least 1000 stars, using existing file extensions as ground truth. Despite its simplicity the proposed model reaches ≈ 85% in our experiments for a relatively high number of recognized classes (more than 130 file types).
AB - Programming language detection is a common need in the analysis of large source code bases. It is supported by a number of existing tools that rely on several features, and most notably file extensions, to determine file types. We consider the problem of accurately detecting the type of files commonly found in software code bases, based solely on textual file content. Doing so is helpful to classify source code that lack file extensions (e.g., code snippets posted on the Web or executable scripts), to avoid misclassifying source code that has been recorded with wrong or uncommon file extensions, and also shed some light on the intrinsic recognizability of source code files. We propose a simple model that (a) use a language-agnostic word tokenizer for textual files, (b) group tokens in 1-/2-grams, (c) build feature vectors based on N-gram frequencies, and (d) use a simple fully connected neural network as classifier. As training set we use textual files extracted from GitHub repositories with at least 1000 stars, using existing file extensions as ground truth. Despite its simplicity the proposed model reaches ≈ 85% in our experiments for a relatively high number of recognized classes (more than 130 file types).
U2 - 10.1145/3457682.3457756
DO - 10.1145/3457682.3457756
M3 - Conference contribution
AN - SCOPUS:85109215796
T3 - ACM International Conference Proceeding Series
SP - 485
EP - 492
BT - 2021 13th International Conference on Machine Learning and Computing, ICMLC 2021
PB - Association for Computing Machinery
T2 - 2021 13th International Conference on Machine Learning and Computing, ICMLC 2021
Y2 - 26 February 2021 through 1 March 2021
ER -