伊朗精神病患者的自杀行为

Sundupalli Rajesh
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引用次数: 0

摘要

物联网(IoT)技术的最新进展需要一种新型的物联网安全环境。各种异构智能设备容易接入物联网环境,随着用户数量的增加,物联网设备和物联网基础设施面临恶意攻击、恶意代码篡改数据等各种威胁。物联网中的恶意软件检测需要数据和模型来持续不断地学习智能设备。方法/统计分析:为了最大限度地减少这些安全威胁,研究了物联网安全领域的各种恶意软件检测技术。物联网环境下的恶意软件检测对于智能设备持续变化学习所需的数据推导和学习模型至关重要。恶意软件检测的元数据可以通过设备id、时间、行为、位置和状态的值进行规范化。本文提出了一种基于行为的恶意软件检测方法,该方法使用深度学习(BMD-DL)。发现:BMD-DL能够收集关于基于行为的恶意行为的元数据,并通过深度学习学习和检测恶意代码。此外,通过学习模型,通过断开在物联网环境中导致恶意行为的恶意设备来提供物联网安全。改进/应用:BMD-DL收集物联网中多个设备生成的行为数据,并将通过深度学习学习的结果应用于检测持续存在的恶意软件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Suicidal behavior among Iranian psychiatric patients
Recent advances in Internet of Things (IoT) technologies require a new type of IoT security environment. Various heterogeneous smart devices have easy access to IoT environment, and as the number of users increases, they are exposed to various threats such as malicious attacks on IoT devices and IoT infrastructure, and data tampering by malicious code. Malware detection in IoT requires data and models for continuous and changing learning of smart devices. Methods/Statistical analysis: To minimize these security threats, various malware detection techniques in the field of IoT security have been studied. Malware detection in IoT environment is important for data derivation and learning model required for continuous and changing learning of smart devices. The metadata of malware detection can be normalized by the value of device id, time, behavior, location and state. This paper proposes behavior-based malware detection using deep learning (BMD-DL). Findings: BMD-DL was able to collect metadata about behavior-based malicious behavior and learn and detect malicious codes through deep learning. In addition, through the learned model, IoT Security is provided by disconnecting malicious devices that cause malicious behavior in the IoT environment. Improvements/Applications: BMD-DL collects behavioral data generated from multiple devices in the IoT and applies the results learned through deep learning to detect persistent malware.
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