{"title":"达罗毗荼语言的语言检测实证分析","authors":"G. Shimi, C. J. Mahibha, Durairaj Thenmozhi","doi":"10.17485/ijst/v17i15.765","DOIUrl":null,"url":null,"abstract":"Objectives: Language detection is the process of identifying a language associated with a text. The proposed system aims to detect the Dravidian language that is associated with the given text using different machine learning and deep learning algorithms. The paper presents an empirical analysis of the results obtained using the different models. It also aims to evaluate the performance of a language agnostic model for the purpose of language detection. Method: An empirical analysis of Dravidian language identification in social media text using machine learning and deep learning approaches with k-fold cross validation has been implemented. The identification of Dravidian languages, including Tamil, Malayalam, Tamil Code Mix, and Malayalam Code Mix, is performed using both machine learning (ML) and deep learning algorithms. The machine learning algorithms used for language detection are Naive Bayes (NB), Multinomial Logistic Regression (MLR), Support Vector Machine (SVM), and Random Forest (RF). The supervised Deep Learning (DL) models used include BERT, mBERT and language agnostic models. Findings: The language agnostic model outperform all other models considering the task of language detection in Dravidian languages. The results of both the ML and DL models are analyzed empirically with performance measures like accuracy, precision, recall, and f1-score. The accuracy associated with different machine learning algorithms varies from 85% to 89%. It is evident from the experimental result that the deep learning model outperformed with an accuracy of 98%. Novelty: The proposed system emphasizes on the use of the language agnostic model to implement the process of detecting Dravidian languages associated with the given text which provides a promising result of 98% accuracy which is higher than the existing methodologies. Keywords: Language, Machine learning, Deep learning, Transformer model, Encoder, Decoder","PeriodicalId":13296,"journal":{"name":"Indian journal of science and technology","volume":"24 27","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-04-16","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"An Empirical Analysis of Language Detection in Dravidian Languages\",\"authors\":\"G. Shimi, C. J. Mahibha, Durairaj Thenmozhi\",\"doi\":\"10.17485/ijst/v17i15.765\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Objectives: Language detection is the process of identifying a language associated with a text. The proposed system aims to detect the Dravidian language that is associated with the given text using different machine learning and deep learning algorithms. The paper presents an empirical analysis of the results obtained using the different models. It also aims to evaluate the performance of a language agnostic model for the purpose of language detection. Method: An empirical analysis of Dravidian language identification in social media text using machine learning and deep learning approaches with k-fold cross validation has been implemented. The identification of Dravidian languages, including Tamil, Malayalam, Tamil Code Mix, and Malayalam Code Mix, is performed using both machine learning (ML) and deep learning algorithms. The machine learning algorithms used for language detection are Naive Bayes (NB), Multinomial Logistic Regression (MLR), Support Vector Machine (SVM), and Random Forest (RF). The supervised Deep Learning (DL) models used include BERT, mBERT and language agnostic models. Findings: The language agnostic model outperform all other models considering the task of language detection in Dravidian languages. The results of both the ML and DL models are analyzed empirically with performance measures like accuracy, precision, recall, and f1-score. The accuracy associated with different machine learning algorithms varies from 85% to 89%. It is evident from the experimental result that the deep learning model outperformed with an accuracy of 98%. Novelty: The proposed system emphasizes on the use of the language agnostic model to implement the process of detecting Dravidian languages associated with the given text which provides a promising result of 98% accuracy which is higher than the existing methodologies. 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引用次数: 0
摘要
目标语言检测是识别与文本相关的语言的过程。所提议的系统旨在使用不同的机器学习和深度学习算法来检测与给定文本相关的德拉威语。本文对使用不同模型获得的结果进行了实证分析。本文还旨在评估一种语言无关模型在语言检测方面的性能。方法使用机器学习和深度学习方法,通过 k 倍交叉验证,对社交媒体文本中的德拉维德语进行了实证分析。使用机器学习(ML)和深度学习算法识别德拉威语,包括泰米尔语、马拉雅拉姆语、泰米尔语代码混合和马拉雅拉姆语代码混合。用于语言检测的机器学习算法有:Naive Bayes (NB)、Multinomial Logistic Regression (MLR)、Support Vector Machine (SVM) 和 Random Forest (RF)。使用的深度学习(DL)监督模型包括 BERT、mBERT 和语言无关模型。研究结果考虑到 Dravidian 语言的语言检测任务,语言不可知论模型优于所有其他模型。我们通过准确率、精确度、召回率和 f1 分数等性能指标对 ML 和 DL 模型的结果进行了实证分析。不同机器学习算法的准确率从 85% 到 89% 不等。从实验结果可以看出,深度学习模型的准确率高达 98%,表现更胜一筹。新颖性:所提出的系统强调使用语言不可知论模型来实现检测与给定文本相关的德拉维德语言的过程,其准确率达到 98%,高于现有方法,结果令人鼓舞。关键词语言 机器学习 深度学习 变换器模型 编码器 解码器
An Empirical Analysis of Language Detection in Dravidian Languages
Objectives: Language detection is the process of identifying a language associated with a text. The proposed system aims to detect the Dravidian language that is associated with the given text using different machine learning and deep learning algorithms. The paper presents an empirical analysis of the results obtained using the different models. It also aims to evaluate the performance of a language agnostic model for the purpose of language detection. Method: An empirical analysis of Dravidian language identification in social media text using machine learning and deep learning approaches with k-fold cross validation has been implemented. The identification of Dravidian languages, including Tamil, Malayalam, Tamil Code Mix, and Malayalam Code Mix, is performed using both machine learning (ML) and deep learning algorithms. The machine learning algorithms used for language detection are Naive Bayes (NB), Multinomial Logistic Regression (MLR), Support Vector Machine (SVM), and Random Forest (RF). The supervised Deep Learning (DL) models used include BERT, mBERT and language agnostic models. Findings: The language agnostic model outperform all other models considering the task of language detection in Dravidian languages. The results of both the ML and DL models are analyzed empirically with performance measures like accuracy, precision, recall, and f1-score. The accuracy associated with different machine learning algorithms varies from 85% to 89%. It is evident from the experimental result that the deep learning model outperformed with an accuracy of 98%. Novelty: The proposed system emphasizes on the use of the language agnostic model to implement the process of detecting Dravidian languages associated with the given text which provides a promising result of 98% accuracy which is higher than the existing methodologies. Keywords: Language, Machine learning, Deep learning, Transformer model, Encoder, Decoder