通过使用词法语义来发展对黑客语言的理解

Victor A. Benjamin, Hsinchun Chen
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引用次数: 18

摘要

近年来,有必要对在线黑客社区进行更多的研究,这是一个普遍的建议。然而,研究人员和实践者在尝试这样做时面临许多挑战。特别是,他们可能会遇到特定于黑客的术语、概念、工具和其他不熟悉且难以理解的项目。由于这些原因,我们有动力开发一种自动化的方法来开发对黑客语言的理解。我们利用递归神经网络语言模型(rnnlm)的最新进展,开发了一种用于学习黑客语言的无监督机器学习技术。所选的RNNLM生成最先进的词嵌入,这对于理解不同黑客术语和概念之间的关系非常有用。我们通过测试rnnlm学习已知黑客术语之间相关关系的能力来评估我们的工作。结果表明,rnnlm的最新工作可以帮助建模黑客语言,为未来的研究提供了有希望的方向。
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Developing understanding of hacker language through the use of lexical semantics
The need for more research scrutinizing online hacker communities is a common suggestion in recent years. However, researchers and practitioners face many challenges when attempting to do so. In particular, they may encounter hacking-specific terms, concepts, tools, and other items that are unfamiliar and may be challenging to understand. For these reasons, we are motivated to develop an automated method for developing understanding of hacker language. We utilize the latest advancements in recurrent neural network language models (RNNLMs) to develop an unsupervised machine learning technique for learning hacker language. The selected RNNLM produces state-of-the-art word embeddings that are useful for understanding the relations between different hacker terms and concepts. We evaluate our work by testing the RNNLMs ability to learn relevant relations between known hacker terms. Results suggest that the latest work in RNNLMs can aid in modeling hacker language, providing promising direction for future research.
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