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Versatility of Artificial Hydrocarbon Networks for Supervised Learning

机译:人工碳氢化合物网络在监督学习中的多功能性

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Surveys on supervised machine show that each technique has strengths and weaknesses that make each of them more suitable for a particular domain or learning task. No technique is capable to tackle every supervised learning task, and it is difficult to comply with all possible desirable features of each particular domain. However, it is important that a new technique comply with the most requirements and desirable features of as many domains and learning tasks as possible. In this paper, we presented artificial hydrocarbon networks (AHN) as versatile and efficient supervised learning method. We determined the ability of AHN to solve different problem domains, with different data-sources and to learn different tasks. The analysis considered six applications in which AHN was successfully applied.
机译:对受监督机器的调查表明,每种技术都有其优点和缺点,这使每种方法都更适合于特定领域或学习任务。没有一种技术能够解决每一个有监督的学习任务,并且很难遵守每个特定领域的所有可能期望的功能。但是,重要的是,新技术必须符合尽可能多的领域和学习任务的大多数要求和合意的功能。在本文中,我们提出了人工碳氢化合物网络(AHN)作为一种通用且有效的监督学习方法。我们确定了AHN解决不同问题领域,使用不同数据源并学习不同任务的能力。分析考虑了成功应用AHN的六个应用程序。

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