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METHOD AND SYSTEM FOR AUTOMATED CLASSIFICATION OF VARIABLES USING UNSUPERVISED DISTRIBUTION AGNOSTIC CLUSTERING

机译:使用无监督分布不可知群集的变量自动分类的方法和系统

摘要

The ability to comprehend the context of a given programming artifact and extracting the underlying functionality is a complex task extending beyond just syntactic and semantic analysis of code. All existing automation capabilities, hence heavily depend on manual involvement of domain experts. Even recent approaches leveraging Machine Learning Capabilities are supervised techniques, whereby the dependency on domain experts still remains - in preparing suitable training sets. A method and system for automated classification of variables using unsupervised distribution agnostic clustering has been provided. The present disclosure focuses to tap the flexibility of the code and presents a domain agnostic approach using unsupervised machine learning which automatically extracts the context from source code, by classifying the underlying elements of the code. The method and system do not require any manual intervention and opens a wide range of opportunities in reverse engineering and variable level analysis space.
机译:理解给定的编程工件和提取基础功能的上下文的能力是一个复杂的任务,超出了代码的句法和语义分析。所有现有的自动化功能,因此大量取决于领域专家的手动参与。即使是最近利用机器学习能力的方法也是监督技术,由此依赖域专家仍然存在 - 准备合适的培训集。提供了一种使用无监督分布不可知群集的自动分类的方法和系统。本公开侧重于利用代码的灵活性来利用代码的灵活性,并使用无监督的机器学习呈现域不可知方法,其通过对代码的基础元素进行分类,从源代码中自动提取上下文。该方法和系统不需要任何手动干预,并在逆向工程和可变级别分析空间中打开各种机会。

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