Farsi (Persian) is a low-resource language that suffers from the data sparsity problem and a lack of efficient processing tools. Due to their broad application in natural language processing tasks, part-of-speech (POS) taggers are one of those important tools that should be considered in this respect. Despite recent work on Farsi tagging, there is still room for improvement. The best reported accuracy so far is 96%, which in special cases can rise to 96.9%. The main problem with existing taggers is their inefficiency in coping with outof-vocabulary (OOV) words. Addressing both problems of accuracy and OOV words, we developed a neural network-based POS tagger (NPT) that performs efficiently on Farsi. Despite using less data, NPT provides bet...
A parts of speech (POS) tagging system using neural networks has been developed by Ma and colleagues...
One of the primary tools used in text processing tasks such as information retrieval, text extractio...
Proceedings of the 18th Nordic Conference of Computational Linguistics NODALIDA 2011. Editors: Bol...
Farsi (Persian) is a low-resource language that suffers from the data sparsity problem and a lack of...
In many applications of natural language processing (NLP) grammatically tagged corpora are needed. T...
Part of Speech (POS) tagging has a preliminary role in building natural language processing applicat...
Part-Of-Speech (POS) tagging is the proc-ess of marking-up the words in a text with their correspond...
This paper describes a method based on morphological analysis of words for a Persian Part-Of-Speech ...
Part-Of-Speech (POS) tagging is the process of marking-up the words in a text with their correspondi...
One of the fundamental tasks in natural language processing is part of speech (POS) tagging. A POS t...
Part of Speech (POS) tagging is an essential part of text processing applications. A POS tagger assi...
Uyghur is an agglutinative and a morphologically rich language; natural language processing tasks in...
Part of Speech (POS) tagging is an essential part of text processing applications. A POS tagging sys...
International audienceIn (Sagot and Walther, 2010), the authors introduce an advanced tokenizer and ...
Distributed word representations have recently been proven to be an invaluable resource for NLP. The...
A parts of speech (POS) tagging system using neural networks has been developed by Ma and colleagues...
One of the primary tools used in text processing tasks such as information retrieval, text extractio...
Proceedings of the 18th Nordic Conference of Computational Linguistics NODALIDA 2011. Editors: Bol...
Farsi (Persian) is a low-resource language that suffers from the data sparsity problem and a lack of...
In many applications of natural language processing (NLP) grammatically tagged corpora are needed. T...
Part of Speech (POS) tagging has a preliminary role in building natural language processing applicat...
Part-Of-Speech (POS) tagging is the proc-ess of marking-up the words in a text with their correspond...
This paper describes a method based on morphological analysis of words for a Persian Part-Of-Speech ...
Part-Of-Speech (POS) tagging is the process of marking-up the words in a text with their correspondi...
One of the fundamental tasks in natural language processing is part of speech (POS) tagging. A POS t...
Part of Speech (POS) tagging is an essential part of text processing applications. A POS tagger assi...
Uyghur is an agglutinative and a morphologically rich language; natural language processing tasks in...
Part of Speech (POS) tagging is an essential part of text processing applications. A POS tagging sys...
International audienceIn (Sagot and Walther, 2010), the authors introduce an advanced tokenizer and ...
Distributed word representations have recently been proven to be an invaluable resource for NLP. The...
A parts of speech (POS) tagging system using neural networks has been developed by Ma and colleagues...
One of the primary tools used in text processing tasks such as information retrieval, text extractio...
Proceedings of the 18th Nordic Conference of Computational Linguistics NODALIDA 2011. Editors: Bol...