An automated text categorization framework based on hyperparameter optimization

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摘要

A great variety of text tasks such as topic or spam identification, user profiling, and sentiment analysis can be posed as a supervised learning problem and tackled using a text classifier. A text classifier consists of several subprocesses, some of them are general enough to be applied to any supervised learning problem, whereas others are specifically designed to tackle a particular task using complex and computational expensive processes such as lemmatization, syntactic analysis, etc. Contrary to traditional approaches, we propose a minimalist and multi-propose text-classifier able to tackle tasks independently of domain and language. We named our approach μTC. Our approach is composed of several easy-to-implement text transformations, text representations, and a supervised learning algorithm. These pieces produce a competitive classifier in several challenging domains such as informally written text. We provide a detailed description of μTC along with an extensive experimental comparison with relevant state-of-the-art methods, i.e., μTC was compared on 30 different datasets. Regarding accuracy, μTC obtained the best performance in 20 datasets while achieves competitive results in the remaining ones. The compared datasets include several problems like topic and polarity classification, spam detection, user profiling and authorship attribution. Furthermore, our approach allows the usage of the technology even without an in-depth knowledge of machine learning and natural language processing.

论文关键词:Text classification,Hyperparameter optimization,Text modelling

论文评审过程:Received 20 September 2017, Revised 10 January 2018, Accepted 1 March 2018, Available online 2 March 2018, Version of Record 19 March 2018.

论文官网地址:https://doi.org/10.1016/j.knosys.2018.03.003