低资源语言中复杂实体识别的新型集合模型

Preeti Vats, Nonita Sharma, Deepak Kumar Sharma
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摘要

对语音或文本数据进行预处理,使计算机能够理解人类语言的基本方法被称为自然语言处理。迄今为止,已经开发了许多模型来预处理英语数据,但印地语却不支持这些模型。印度的国语是印地语。为了帮助当地人,本研究的作者使用线性回归、SVM 和 Naive Bayes 算法等监督学习方法来研究印地语复杂术语的数据集。此外,还建议使用几种基于预测的方法以及随机森林、Adaboost 和决策树等集体学习策略,建立一个复杂的印地语单词分类模型。根据用户对语言的理解程度,建议的模型将有助于简化印地语文本。作者尝试在进一步处理中使用 Bi-LSTM 和 GRU 方法等深度学习算法对未知数据集进行分类。
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A Novel Ensemble Model for Complex Entities Identification in Low Resource Language
The fundamental method for pre-processing speech or text data that enables computers to comprehend human language is known as natural language processing. Numerous models have been developed to date to pre-process data in the English language; however, the Hindi language does not support these models. India's national tongue is Hindi. In order to help the locals, the authors of this study used supervised learning methods like Linear Regression, SVM, and Naive Bayes algorithm to investigate a dataset of complicated terms in the Hindi language. Additionally, a sophisticated Hindi word classification model is suggested employing several methods based on the forecasts as well as collective learning strategies like Random Forest, Adaboost, and Decision Tree. Depending on how well the user's language is understood, the suggested model will assist in simplifying Hindi text. Authors attempt to classify the uncharted dataset using deep learning algorithms like Bi-LSTM and GRU approaches in further processing.
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