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Intelligent Data Mining for Translator Correctness Prediction

机译:智能数据挖掘转换器正确性预测

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This paper presents a new approach to predictive data analytics, called Radius of Neighbors (RN), and its mobile application, a multilingual RN-Chatter, devoted to improve communication among people, speaking different languages. RN is a modeless method of unsupervised machine learning, what makes it a fairly simple but effective way of analyzing big amounts of data while keeping acceptable speed of execution and taking up little run-time space. In the first preparatory stage of our research, we discovered that RN gives better results than well-known K-Nearest Neighbors (KNN) in some cases. We then extended our research to simulating the adjustments of floating radiuses, various volumes of the training data sets and ups and downs of the dimensions to tune RN for its optimum accuracy. We took experimental approach of not only extending the number of dimensions, but, instead, shrinking and modifying them in order to keep the predicted value' neighbors close by.
机译:本文介绍了一种新的预测数据分析方法,称为邻居半径(RN),以及其移动应用程序,这是一个多语种RN喋喋不休,致力于改善人们之间的沟通,说出不同的语言。 RN是一种无监督机器学习的型号,是什么使其成为一种相当简单但有效的方式来分析大量数据,同时保持可接受的执行速度和占用几乎没有运行时空。在我们研究的第一次预备阶段,我们发现RN在某些情况下,RN优于着名的K-最近邻居(KNN)更好的结果。然后,我们将研究扩展了模拟浮动半径的调整,培训数据集和UPS和尺寸的各种卷的调整,以便为其最佳精度调谐RN。我们采取了实验方法,不仅延长了尺寸的数量,而是缩小和修改它们,以便保持预测值的邻居关闭。

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