基于机器学习的自动智能韩文语义识别与分析框架

Y. Dou
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引用次数: 0

摘要

本文实现了基于机器学习的自动智能韩文语义识别与分析框架。在本文的研究过程中,算法采用遗传系统编程范式的思想在初始系统中派生字符,而初始L系统则操作一组以字母表示的实际相关参数字符串来扩展语法。核心创新有以下几点。(1)随机优化算法只需要知道目标函数梯度的无偏估计,特别是对于有限样本的机器学习问题。因此,它被扩展到更高的复杂性。(2)随机优化方法只需要计算目标函数的梯度,因此可以提高整体效率。通过与最新方法的实验比较,验证了该方法的性能。
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Automatic Intelligent Korean Character Semantic Recognition and Analysis Framework based on Machine Learning
Automatic intelligent korean character semantic recognition and analysis framework based on machine learning is implemented in this manuscript. In the research process of this article, algorithm uses the idea of genetic system programming paradigm to derive characters in the initial system, while the initial L system operates a set of actual related parameter strings represented by letters to expand the grammar. There are core innovations as follows. (1) The random optimization algorithm is only required to know the unbiased estimation of the gradient of the objective function, especially for machine learning problem of finite samples. Hence, it is extended into higher complexity. (2) The random optimization method only needs to calculate the gradient of the objective function, it is therefore used to enhance the overall efficiency. The experiment compared with the latest methods have proven the performance.
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