Enhancing the Text Production and Assisting Disable Users in Developing Word Prediction and Completion in Afan Oromo

Workineh Tesema Gudisa, D. Tamirat
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引用次数: 1

Abstract

This work presents a word prediction and completion for disable users. The idea behind this work is to open a chance to interact with computer software and file editing for disable users in their mother tongue languages. Like normal persons, disable users are also needs to access technology in their life. In order to develop the model we have used unsupervised machine learning. The algorithm that used in this work was N-grams algorithms (Unigram, Bigram and Trigram) for auto completing a word by predicting a correct word in a sentence which saves time, reduces misspelling, keystrokes of typing and assisting disables. This work describes how we improve word entry information, through word prediction, as an assistive technology for people with motion impairment using the regular keyboard, to eliminate the overhead needed for the learning process. We also present evaluation metrics to compare different models being used in our work. The result argued that prediction yields an accuracy of 90% in unsupervised machine learning approach. This work particularly helps disable users who have poor spelling knowledge or printing press, institutions or government organizations, repetitive stress injuries to their (wrist, hand and arm) but it needs more further investigation for users who have visual problems.
加强阿法奥罗莫语文本生产,帮助残疾人发展词语预测和补全
这项工作提出了一个词的预测和补全为残疾人用户。这项工作背后的想法是为残疾用户提供一个用母语与计算机软件和文件编辑互动的机会。与正常人一样,残障用户在生活中也需要接触技术。为了开发这个模型,我们使用了无监督机器学习。在这项工作中使用的算法是n -gram算法(Unigram, Bigram和Trigram),通过预测句子中的正确单词来自动完成单词,从而节省时间,减少拼写错误,打字按键和辅助禁用。这项工作描述了我们如何通过单词预测来改善单词输入信息,作为一种辅助技术,为使用常规键盘的运动障碍患者提供帮助,以消除学习过程所需的开销。我们还提出了评估指标来比较我们工作中使用的不同模型。结果表明,在无监督机器学习方法中,预测的准确率为90%。这项工作特别有助于那些拼写知识差或印刷机,机构或政府组织,他们(手腕,手和手臂)重复性应力损伤的残疾用户,但对于有视觉问题的用户需要进一步的研究。
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