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Sequence Alignment with Dynamic Divisor Generation for Keystroke Dynamics Based User Authentication

机译:基于动态除数生成的序列比对,用于基于击键动力学的用户身份验证

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Keystroke dynamics based authentication is one of the prevention mechanisms used to protect one's account from criminals' illegal access. In this authentication mechanism, keystroke dynamics are used to capture patterns in a user typing behavior. Sequence alignment is shown to be one of effective algorithms for keystroke dynamics based authentication, by comparing the sequences of keystroke data to detect imposter's anomalous sequences. In previous research, static divisor has been used for sequence generation from the keystroke data, which is a number used to divide a time difference of keystroke data into an equal-length subinterval. After the division, the subintervals are mapped to alphabet letters to form sequences. One major drawback of this static divisor is that the amount of data for this subinterval generation is often insufficient, which leads to premature termination of subinterval generation and consequently causes inaccurate sequence alignment. To alleviate this problem, we introduce sequence alignment of dynamic divisor (SADD) in this paper. In SADD, we use mean of Horner's rule technique to generate dynamic divisors and apply them to produce the subintervals with different length. The comparative experimental results with SADD and other existing algorithms indicate that SADD is usually comparable to and often outperforms other existing algorithms.
机译:基于击键动态的身份验证是一种保护机制,用于保护个人帐户免受犯罪分子的非法访问。在此身份验证机制中,击键动态用于捕获用户键入行为中的模式。通过比较击键数据的序列以检测冒名顶替者的异常序列,序列比对被证明是基于击键动力学的有效算法之一。在先前的研究中,静态除数已用于从击键数据生成序列,该数是用于将击键数据的时间差划分为等长子间隔的数字。划分之后,子间隔会映射到字母以形成序列。该静态除数的一个主要缺点是,用于该子间隔生成的数据量通常不足,这导致子间隔生成的过早终止,因此导致不正确的序列比对。为了缓解这个问题,我们在本文中介绍了动态除数(SADD)的序列比对。在SADD中,我们使用Horner规则技术的均值来生成动态除数,并将其应用于产生不同长度的子间隔。 SADD和其他现有算法的对比实验结果表明,SADD通常可与其他现有算法媲美,并且通常优于其他现有算法。

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