使用深度学习技术培养好习惯

H. Aksasse, B. Aksasse, M. Ouanan
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引用次数: 0

摘要

在目前的工作中,我们强调了关于成功的主要问题:为什么有些人似乎是成功的,而我们大多数人似乎不是?更具体地说,这项工作的挑战是提出一个新的系统来帮助人们使用深度学习技术培养良好的习惯。为了实现这一目标,我们建议使用循环神经网络(RNN)和卷积神经网络(CNN)。两种最有名的监督式学习方法。第一步包括使用深度RNN神经网络来执行用户活动的字幕。然后根据第一个网络的结果,使用另一个深度CNN对活动进行分类,然后判断用户正在做的事情是否是一个好习惯。据我们所知,以前还没有通过计算机科学的视角来处理这个话题的作品,这对于大多数对培养新的好习惯感兴趣的人来说将是更有价值的。这一体系还将为一般意义上的成功,特别是良好习惯的基础研究和应用研究指明新的方向。
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Developing Good Habits Using Deep Learning Techniques
in this present work, we emphasize the main question about success: why do some people seem to be successful while the great majority of the rest of us seem not to be? To be more specific, the challenge of this work is to propose a novel system to assist people in developing good habits using deep learning techniques. To achieve this goal, we propose the use of Recurrent Neural Networks (RNN) and Convolutional Neural Networks (CNN). The two best-known supervised learning method. The first step consists of using a deep RNN neural network to perform the captioning of the user’s activities. Then use another deep CNN to do the classification of the activity based on the result of the first network and then decide whether what the user is doing is a good habit or not. To our knowledge, there is no previous work dealing with this topic through a computer science lens, and this will be of greater value to most of the people who are interested in developing new good habits. This system will also suggest new directions for basic and applied research on success in general and good habits in particular.
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