信息安全应用机器学习

Sagar Samtani, Edward Raff, Hyrum Anderson
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引用次数: 0

摘要

信息安全无疑已成为现代网络安全实践的一个重要方面。在过去的半个多世纪里,众多学术和行业团体都在努力将机器学习、深度学习和其他人工智能分析领域发展到信息安全实践中。应用机器学习会议(CAMLIS)是一个新兴的会议场所,旨在聚集研究人员和从业人员,讨论机器学习在信息安全应用方面的应用和基础研究。2021 年,CAMLIS 与 ACM Digital Threats:研究与实践》(DTRAP)合作,为已录用 CAMLIS 论文的作者提供机会,通过《信息安全应用机器学习》特刊将其研究成果提交 ACM DTRAP 审议。本社论总结了该特刊的成果。
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Applied Machine Learning for Information Security
Information security has undoubtedly become a critical aspect of modern cybersecurity practices. Over the last half-decade, numerous academic and industry groups have sought to develop machine learning, deep learning, and other areas of artificial intelligence-enabled analytics into information security practices. The Conference on Applied Machine Learning (CAMLIS) is an emerging venue that seeks to gather researchers and practitioners to discuss applied and fundamental research on machine learning for information security applications. In 2021, CAMLIS partnered with ACM Digital Threats: Research and Practice (DTRAP) to provide opportunities for authors of accepted CAMLIS papers to submit their research for consideration into ACM DTRAP via a Special Issue on Applied Machine Learning for Information Security. This editorial summarizes the results of this Special Issue.
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