Abstract
In this paper, we propose to combine stylometric features and neural networks for authorship de-identification. Our research mainly focuses on scientific publications, because scholarly journals are publicly available with plenty of labeled data to learn an author's style or traits. The main challenge of authorship de-identification is to identify features which can properly capture an author's writing style. In the proposed design, we choose a combination of stylometric features, including lexical, syntactic, structural and content-specific features, to represent each author's style and use them to build classification models. We manually collect publications from computer science and biomedicine domains and validate our designs by using a number of classification methods. Our experiments show that among four well-known classifiers, Multilayer Perceptron (MLP) classifiers achieve the best performance for authorship de-identification.