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Sliding Hidden Markov Model for Evaluating Discrete Data

机译:滑动隐马尔可夫模型用于离散数据评估

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The possibility of handling infrequent, higher density, additional loads, used mainly for on-line characterization of workloads, is considered. This is achieved through a sliding version of a hidden Markov model (SlidHMM). Essentially, a SlidHMM keeps track of processes that change with time and the constant size of the observation set helps reduce the space and time complexity of the Baum-Welch algorithm, which now need only deal with the new observations. Practically, an approximate Baum-Welch algorithm, which is incremental and partly based on the simple moving average technique, is obtained, where new data points are added to an input trace without re-calculating model parameters, whilst simultaneously discarding any outdated points. The success of this technique could cut processing times significantly, making HMMs more efficient and thence synthetic workloads computationally more cost effective. The performance of our SlidHMM is validated in terms of means and standard deviations of observations (e.g. numbers of operations of certain types) taken from the original and synthetic traces.
机译:考虑了处理不频繁,更高密度,额外负载的可能性,这些负载主要用于工作负载的在线表征。这是通过隐藏马尔可夫模型(SlidHMM)的滑动版本实现的。本质上,SlidHMM跟踪随时间变化的过程,并且观察集的恒定大小有助于减少Baum-Welch算法的空间和时间复杂度,该算法现在只需要处理新的观察即可。实际上,获得了一种增量式的Baum-Welch算法,该算法部分基于简单的移动平均技术,该算法将新数据点添加到输入迹线中,而无需重新计算模型参数,同时丢弃任何过时的点。该技术的成功可以大大缩短处理时间,使HMM更加高效,从而使合成工作负载在计算上更具成本效益。 SlidHMM的性能已根据从原始迹线和合成迹线获得的观测值的平均值和标准偏差(例如某些类型的操作次数)进行了验证。

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