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Using Markov chain Monte Carlo and dynamic programming for event sequence data

机译:使用Markov链Monte Carlo和事件序列数据的动态编程

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摘要

Sequences of events are a common type of data in various scientific and business applications, e.g. telecommunication network management, study of web access logs, biostatistics and epidemiology. A natural approach to modelling event sequences is using time-dependent intensity functions, indicating the expected number of events per time unit. In Bayesian modelling, piecewise constant functions can be utilized to model continuous intensities, if the number of segments is a model parameter. The reversible jump Markov chain Monte Carlo (RJMCMC) methods can be exploited in the data analysis. With very large quantities, these approaches may be too slow. We study dynamic programming algorithms for finding the best fitting piecewise constant intensity function, given a number of pieces. We introduce simple heuristics for pruning the number of the potential change points of the functions. Empirical evidence from trials on real and artificial data sets is provided, showing that the developed methods yield high performance and they can be applied to very large data sets. We also compare the RJMCMC and dynamic programming approaches and show that the results correspond closely. The methods are applied to fault-alarm sequences produced by large telecommunication networks.
机译:事件序列是各种科学和商业应用程序中的常见数据类型,例如电信网络管理,网络访问日志,生物统计学和流行病学研究。对事件序列进行建模的自然方法是使用时间相关的强度函数,指示每个时间单位的预期事件数。在贝叶斯建模中,如果段数是模型参数,则可以使用分段常数函数对连续强度进行建模。可逆跳马尔可夫链蒙特卡罗(RJMCMC)方法可用于数据分析。如果数量很大,这些方法可能会太慢。我们研究了动态规划算法,以找到给定数量的最佳拟合分段恒定强度函数。我们介绍了简单的启发式方法,用于修剪函数的潜在更改点数。提供了来自对真实数据集和人工数据集进行试验的经验证据,表明所开发的方法具有很高的性能,可以应用于非常大的数据集。我们还比较了RJMCMC和动态编程方法,并表明结果密切相关。该方法适用于大型电信网络产生的故障报警序列。

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