A Literature Survey and Analysis on Social Engineering Defense Mechanisms and Infosec Policies

Dalal N. Alharthi, A. Regan
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引用次数: 3

Abstract

Social engineering attacks can be severe and hard to detect. Therefore, to prevent such attacks, organizations should be aware of social engineering defense mechanisms and security policies. To that end, the authors developed a taxonomy of social engineering defense mechanisms, designed a survey to measure employee awareness of these mechanisms, proposed a model of Social Engineering InfoSec Policies (SE-IPs), and designed a survey to measure the incorporation level of these SE-IPs. After analyzing the data from the first survey, the authors found that more than half of employees are not aware of social engineering attacks. The paper also analyzed a second set of survey data, which found that on average, organizations incorporated just over fifty percent of the identified formal SE-IPs. Such worrisome results show that organizations are vulnerable to social engineering attacks, and serious steps need to be taken to elevate awareness against these emerging security threats.
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社会工程防御机制与信息安全政策的文献综述与分析
社会工程攻击可能很严重,而且很难检测到。因此,为了防止此类攻击,组织应该了解社会工程防御机制和安全策略。为此,作者制定了社会工程防御机制的分类,设计了一项调查来衡量员工对这些机制的认识,提出了社会工程信息安全政策(se - ip)模型,并设计了一项调查来衡量这些se - ip的纳入水平。在分析了第一次调查的数据后,作者发现超过一半的员工不知道社会工程攻击。该论文还分析了第二组调查数据,发现平均而言,组织将超过50%的已确定的正式se - ip纳入其中。这些令人担忧的结果表明,组织很容易受到社会工程攻击,需要采取严肃的步骤来提高对这些新出现的安全威胁的认识。
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