A part of speech tagger for Yoruba language text using deep neural network

Chukwuemeka Christian Ugwu , Abisola Rukayat Oyewole , Olugbemiga Solomon Popoola , Adebayo Olusola Adetunmbi , Ayo Elebute
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Abstract

The pursuit of advancing Yoruba language in the realm of technology has underscored the necessity for an efficient foundational natural language processing (NLP) tool, notably the part-of-speech (POS) tagger. POS tagging serves as the building block to numerous NLP applications, as its capacity to recognize and assign appropriate syntactic tags to words is pivotal to the efficiency of NLP solutions. However, the existing POS taggers for Yoruba language either rely on rule-based approaches, which are limited by the comprehensiveness and accuracy of the defined rules; or stochastic approaches, which are extremely redundant in generating sequence of tags. Hence, this paper advocates the utilization of machine learning models to develop robust and highly effective POS taggers tailored to Yoruba text. Specifically, a Feed Forward Deep Neural Network (FF-DNN) was employed and trained using curated Yoruba tag set sourced from Yoruba religion and dictionary texts, comprising 20,795 words alongside their corresponding POS tags. The evaluation of the model demonstrates an accuracy of 99 % and a precision of 98 % in predicting appropriate tags, outperforming Random Forest (RF), Logistic Regression (LR), and K-Nearest Neighbour (k-NN) machine learning models.
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使用深度神经网络的约鲁巴语文本语音部分标记器
要在技术领域推动约鲁巴语的发展,就需要一个高效的基础自然语言处理(NLP)工具,特别是语音部分(POS)标记。POS 标记是众多 NLP 应用程序的基石,因为它识别单词并为其分配适当句法标记的能力对 NLP 解决方案的效率至关重要。然而,现有的约鲁巴语 POS 标记器要么依赖于基于规则的方法,而这种方法受限于所定义规则的全面性和准确性;要么依赖于随机方法,而这种方法在生成标记序列时冗余度极高。因此,本文主张利用机器学习模型来开发适合约鲁巴语文本的稳健、高效的 POS 标记器。具体来说,本文采用了前馈深度神经网络(FF-DNN),并使用从约鲁巴宗教和词典文本中获取的约鲁巴标记集进行了训练,该标记集包含 20,795 个单词及其相应的 POS 标记。该模型的评估结果表明,在预测适当标签方面,其准确率为 99%,精确率为 98%,优于随机森林 (RF)、逻辑回归 (LR) 和 K-Nearest Neighbour (k-NN) 机器学习模型。
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