CLJun 30, 2015

A complex network approach to stylometry

arXiv:1506.09107v284 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of enhancing text analysis for researchers in computational linguistics and NLP, though it appears incremental as it builds on existing physical models.

The paper tackled the problem of improving natural language processing tasks by combining complex network methods with traditional statistical approaches, showing that hybrid methods outperformed using either method alone in several cases.

Statistical methods have been widely employed to study the fundamental properties of language. In recent years, methods from complex and dynamical systems proved useful to create several language models. Despite the large amount of studies devoted to represent texts with physical models, only a limited number of studies have shown how the properties of the underlying physical systems can be employed to improve the performance of natural language processing tasks. In this paper, I address this problem by devising complex networks methods that are able to improve the performance of current statistical methods. Using a fuzzy classification strategy, I show that the topological properties extracted from texts complement the traditional textual description. In several cases, the performance obtained with hybrid approaches outperformed the results obtained when only traditional or networked methods were used. Because the proposed model is generic, the framework devised here could be straightforwardly used to study similar textual applications where the topology plays a pivotal role in the description of the interacting agents.

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