Supervised and Unsupervised Neural Approaches to Text Readability

Author:

Martinc Matej12,Pollak Senja3,Robnik-Šikonja Marko4

Affiliation:

1. Jožef Stefan Institute, Ljubljana, Slovenia

2. Jožef Stefan International Postgraduate School, Ljubljana, Slovenia. matej.martinc@ijs.si

3. Jožef Stefan Institute, Ljubljana, Slovenia. senja.pollak@ijs.si

4. University of Ljubljana, Faculty of Computer and Information Science, Ljubljana, Slovenia. marko.robnik@fri.uni-lj.si

Abstract

Abstract We present a set of novel neural supervised and unsupervised approaches for determining the readability of documents. In the unsupervised setting, we leverage neural language models, whereas in the supervised setting, three different neural classification architectures are tested. We show that the proposed neural unsupervised approach is robust, transferable across languages, and allows adaptation to a specific readability task and data set. By systematic comparison of several neural architectures on a number of benchmark and new labeled readability data sets in two languages, this study also offers a comprehensive analysis of different neural approaches to readability classification. We expose their strengths and weaknesses, compare their performance to current state-of-the-art classification approaches to readability, which in most cases still rely on extensive feature engineering, and propose possibilities for improvements.

Publisher

MIT Press - Journals

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Language and Linguistics

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