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GENETIC APPROACH FOR ARABIC PART OF SPEECH TAGGING
With the growing number of textual resources available, the ability to understand them becomes critical. An essential first step in understanding these sources is the ability to identify the part of speech in each sentence. Arabic is a morphologically rich language, wich presents a challenge for part of speech tagging.
Ali, Bilel Ben, Jarray, Fethi
core +4 more sources
Improving part-of-speech tagging in Amharic language using deep neural network [PDF]
To date, several POS taggers have been introduced to facilitate the success of semantic analysis for different languages. However, the task of POS tagging becomes a bit intricate in morphologically complex languages, like Amharic.
Sintayehu Hirpassa, G.S. Lehal
doaj +2 more sources
Methods for Amharic part-of-speech tagging [PDF]
The paper describes a set of experiments involving the application of three state-of-the-art part-of-speech taggers to Ethiopian Amharic, using three different tagsets. The taggers showed worse performance than previously reported results for English, in particular having problems with unknown words.
Gambäck, Björn +3 more
openaire +7 more sources
Data-Driven Part-of-Speech Tagging of Kiswahili [PDF]
In this paper we present experiments with data-driven part-of-speech taggers trained and evaluated on the annotated Helsinki Corpus of Swahili Using four of the current state-of-the-art data-driven taggers, TnT, MBT, SVMTool and MXPOST, we observe the latter as being the most accurate tagger for the Kiswahili dataset.We further improve on the ...
De Pauw, G +2 more
openaire +6 more sources
Setswana Part of Speech Tagging
Part of speech tagging is one of the basic steps in natural language processing. Although it has been investigated for many languages around the world, very little has been done for Setswana language. Setswana language is written disjunctively and some words play multiple functions in a sentence.
Gabofetswe Malema +2 more
openaire +2 more sources
Hidden Markov Model Based Part of Speech Tagger for Sinhala Language
In this paper we present a fundamental lexical semantics of Sinhala language and a Hidden Markov Model (HMM) based Part of Speech (POS) Tagger for Sinhala language.
Dias, N. G. J. +1 more
core +2 more sources
A Comprehensive Part-of-Speech Tagging to Standardize Central-Kurdish Language: A Research Guide for Kurdish Natural Language Processing Tasks [PDF]
The field of natural language processing (NLP) has undergone significant expansion over the last decade. Many human-being applications are conducted daily via NLP tasks, starting from machine translation, speech recognition, text generation and ...
Shadan Shukr Sabr +16 more
doaj +2 more sources
Development of tag sets for part-of-speech tagging [PDF]
This article discusses tag sets used when PoS-tagging a corpus, that is, enriching a corpus by adding a part-of-speech tag to each word. This requires a tag-set, a list of grammatical category labels; a tagging scheme, practical definitions of each tag or label, showing words and contexts where each tag applies; and a tagger, a program for assigning a ...
Eric Atwell
openaire +2 more sources
Multilingual Part-of-Speech Tagging: Two Unsupervised Approaches
We demonstrate the effectiveness of multilingual learning for unsupervised part-of-speech tagging. The central assumption of our work is that by combining cues from multiple languages, the structure of each becomes more apparent. We consider two ways of applying this intuition to the problem of unsupervised part-of-speech tagging: a model that directly
Naseem, Tahira +3 more
openaire +5 more sources
Part of Speech Tagging of Zhuang Language Based on Reinforcement Learning [PDF]
Currently,intelligent information processing of the Zhuang language is in its fancy and lacks automatic tagging methods for parts of speech.To address the lack of Zhuang corpus,arduousness of manual tagging,and poor performance of machine tagging,this ...
TANG Suqin, SUN Yaru, LI Zhixin, ZHANG Canlong
doaj +1 more source

