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Towards creating a reference based self-learning model for improving human machine interaction

机译:致力于创建基于参考的自学习模型以改善人机交互

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摘要

Machine learning is a field of computer science where a computer is provided a capability to learn rather being programmed every time. Machine learning is considered to be the next generation human machine interaction technology, where a machine will independently learn from users previous data and provide solution and better suggestions to the user. In this work a reference based self-learning model is proposed, which can learn classification on new data from its previous trained models. Here a classification problem is considered to have a series of events related to every class. For classification, all the events related feature vector of a class is fed to the model. Now instead of learning the classification for each event based feature separately, reference based learning is adopted, where the model is trained for only one event based feature and then it learns the classification for other event features by itself. A simulation is performed on three feature vectors as a process of events and the results are presented. The model achieves an accuracy of around 90% using reference based learning. The achieved result of reference based learning is encouraging as it is very close to separately trained model with increase in number of samples per class. This method of live training and classification reduces time required for database preparation and model training separately for each event based
机译:机器学习是计算机科学的一个领域,其中向计算机提供学习功能,而每次都对其进行编程。机器学习被认为是下一代人机交互技术,其中机器将独立地从用户那里学习以前的数据,并向用户提供解决方案和更好的建议。在这项工作中,提出了一个基于参考的自学习模型,该模型可以从以前的训练模型中学习新数据的分类。在这里,分类问题被认为具有与每个类别相关的一系列事件。为了分类,将类的所有与事件相关的特征向量馈入模型。现在,不再采用基于参考的学习,而是采用基于参考的学习,其中只针对一种基于事件的特征训练模型,然后自己学习其他事件特征的分类,而不是分别学习每个基于事件的特征的分类。作为事件的过程,对三个特征向量进行了仿真,并给出了结果。使用基于参考的学习,该模型可实现约90%的准确性。基于参考的学习取得的成就令人鼓舞,因为它非常接近于单独训练的模型,每班样本数量增加。这种实时培训和分类的方法减少了针对每个事件分别进行数据库准备和模型培训所需的时间

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