2021
DOI: 10.15587/1729-4061.2021.238743
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Grammatical categories determination for Turkish and Kazakh languages based on machine learning algorithms and fulfilling dictionaries of link grammar parser

Abstract: This research is aimed at identifying the parts of speech for the Kazakh and Turkish languages in an information retrieval system. The proposed algorithms are based on machine learning techniques. In this paper, we consider the binary classification of words according to parts of speech. We decided to take the most popular machine learning algorithms. In this paper, the following approaches and well-known machine learning algorithms are studied and considered. We defined 7 dictionaries and tagged 135 million w… Show more

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“…The study makes a valuable contribution to the field of natural language processing for the Kazakh and Turkish languages, offering tools for the determination of grammatical categories. Its strengths lie in the use of machine learning algorithms and extensive datasets, which are balanced by the complexities of language processing and potential limitations in the applicability of the algorithms [3]. Similarly, pretrained transformers fine-tuned on downstream tasks have dominated leaderboards across various NLP benchmarks [4].…”
Section: Introductionmentioning
confidence: 99%
“…The study makes a valuable contribution to the field of natural language processing for the Kazakh and Turkish languages, offering tools for the determination of grammatical categories. Its strengths lie in the use of machine learning algorithms and extensive datasets, which are balanced by the complexities of language processing and potential limitations in the applicability of the algorithms [3]. Similarly, pretrained transformers fine-tuned on downstream tasks have dominated leaderboards across various NLP benchmarks [4].…”
Section: Introductionmentioning
confidence: 99%