The goal of similar Language IDentification (LID) is to quickly and accurately identify the language of the text. It plays an important role in several Natural Language Processing (NLP) applications where it is frequently used as a pre-processing technique. For example, information retrieval systems use LID as a filtering technique to provide users with documents written only in a given language. Although different approaches to this problem have been proposed, similar language identification, in particular applied to short texts, remains a challenging task in NLP. In this paper, a method that combines word vectors representation and Long Short-Term Memory (LSTM) has been implemented. The experimental evaluation on public and well-known datasets has shown that the proposed method improves accuracy and precision of language identification tasks.
Language Identification of Similar Languages using Recurrent Neural Networks
Ermelinda Oro;Massimo Ruffolo;
2018
Abstract
The goal of similar Language IDentification (LID) is to quickly and accurately identify the language of the text. It plays an important role in several Natural Language Processing (NLP) applications where it is frequently used as a pre-processing technique. For example, information retrieval systems use LID as a filtering technique to provide users with documents written only in a given language. Although different approaches to this problem have been proposed, similar language identification, in particular applied to short texts, remains a challenging task in NLP. In this paper, a method that combines word vectors representation and Long Short-Term Memory (LSTM) has been implemented. The experimental evaluation on public and well-known datasets has shown that the proposed method improves accuracy and precision of language identification tasks.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.