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Machine Learning with Templates

机译:带有模板的机器学习

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摘要

New methods are presented for the machine recognition and learning of categories, patterns, and knowledge. A probabilistic machine learning algorithm is described that scales favorably to extremely large datasets, avoids local minima problems, and provides fast learning and recognition speeds. Templates may be created using an evolutionary algorithm described here, constructed with other machine learning methods, designed by a human expert or synthesized using a combination of these methods. Each template has a prototype and matching function which can help improve generalization. These methods have applications in bioinformatics, financial data mining, goal-based planners, handwriting recognition, machine vision, natural language processing / understanding, search engines, strategy such as business and games and voice recognition.
机译:提出了用于机器识别和学习类别,模式和知识的新方法。描述了一种概率机器学习算法,该算法可很好地缩放至超大型数据集,避免了局部极小问题,并提供了快速的学习和识别速度。可以使用此处描述的进化算法来创建模板,可以使用其他机器学习方法来构建模板,可以由人类专家设计模板,也可以使用这些方法的组合来合成模板。每个模板都有一个原型和匹配功能,可以帮助提高通用性。这些方法可应用于生物信息学,金融数据挖掘,基于目标的计划者,手写识别,机器视觉,自然语言处理/理解,搜索引擎,诸如商业和游戏的策略以及语音识别。

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