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Sequential network change detection with its applications to ad impact relation analysis

机译:顺序网络更改检测及其在广告影响关系分析中的应用

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摘要

We are concerned with the issue of tracking changes of variable dependencies from multivariate time series. Conventionally, this issue has been addressed in the batch scenario where the whole data set is given at once, and the change detection must be done in a retrospective way. This paper addresses this issue in a sequential scenario where multivariate data are sequentially input and the detection must be done in a sequential fashion. We propose a new method for sequential tracking of variable dependencies. In it we employ a Bayesian network as a representation of variable dependencies. The key ideas of our method are: (1) we extend the theory of dynamic model selection, which has been developed in the batch-learning scenario, into the sequential setting, and apply it to our issue, (2) we conduct the change detection sequentially using dynamic programming per a window where we employ the Hoeffding's bound to automatically determine the window size. We empirically demonstrate that our proposed method is able to perform change detection more efficiently than a conventional batch method. Further, we give a new framework of an application of variable dependency change detection, which we call Ad Impact Relation analysis (AIR). In it, we detect the time point when a commercial message advertisement has given an impact on the market and effectively visualize the impact through network changes. We employ real data sets to demonstrate the validity of AIR.
机译:我们关注的是跟踪多元时间序列中变量相关性变化的问题。常规上,此问题已在批处理方案中得到解决,在该方案中,一次给出了整个数据集,并且必须以追溯方式进行更改检测。本文在顺序场景中解决了这个问题,在这种情况下,顺序输入多元数据,并且必须以顺序方式进行检测。我们提出了一种用于顺序跟踪变量依赖关系的新方法。在其中,我们采用贝叶斯网络作为变量依赖关系的表示。我们方法的关键思想是:(1)我们将在批量学习方案中开发的动态模型选择理论扩展到顺序设置中,并将其应用于我们的问题;(2)我们进行更改对每个窗口使用动态编程顺序进行检测,其中我们采用霍夫丁定律来自动确定窗口大小。我们凭经验证明,我们提出的方法比常规的批处理方法能够更有效地执行更改检测。此外,我们提供了变量依赖关系更改检测应用程序的新框架,我们称之为广告影响关系分析(AIR)。在其中,我们可以检测商业消息广告对市场产生影响的时间点,并通过网络变化有效地可视化影响。我们使用真实的数据集来证明AIR的有效性。

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