自动生命状态识别和聚类

Sam Smith, Gavin Smith, John Harvey
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摘要

介绍,摘要由于大量数据收集已成为大多数领域的常规工作,跨多个实体对高维时间序列数据进行汇总是一个日益普遍的问题。我们提出了一种自动总结高维数据的方法。 目标,在这种情况下,方法总结既涉及到高维观测值的减少,也涉及到大量的时间点。虽然存在许多分割和/或总结时间序列的方法,但这些属性通常与摘要使用者的需求不一致,或者需要不切实际的参数设置。为了解决这个问题,我们定义了一组广泛的属性,这些属性在广泛的领域类别中导致高效用,这些属性由信息理论的最优性概念决定。直观地,这些属性反映了这些数据对生命状态的总结,其中(1)可能的生命状态的数量是有限的,并在实体之间共享,以允许解释和比较;(2)生命状态转换的数量是共同控制的,以提供高样本和时间维度的无参数、最佳总结。 与数字足迹的相关性示例数据包括:定期调查收集,来自交易数据的消费者购买历史(可供选择的商品数量很高),或其他重复采样的数字数据。在数字足迹领域,高维数据(摘要)的简明描述是极其重要的。例如,可以识别健康记录中的生命状态,并用于发现患者衰退或恢复的关键模式。 结论,这项工作旨在找到最优地权衡人类必须解释的状态和片段数量的分割,同时仍然捕获显著的状态变化。在先前工作的基础上,我们提出了一个由归一化最大似然(NML)控制复杂性的模型。简而言之,根据信息论(数学的一个分支),所提出的模型生成的自动摘要既简明又信息丰富。
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Automatic Lifestate Identification and Clustering
Introduction & BackgroundSummarising high-dimensional time series data across multiple entities is an increasingly prevalent problem because mass data collection has become routine in most domains. We propose a method of automatically summarising high-dimensional data. Objectives & ApproachSummarization in such a context is both with regard to a reduction of the high-dimensional observations and large number of temporal points. While numerous methods to segment and/or summarise time series exist, the properties often do not align with the needs of consumers of the summaries or require the unrealistic setting of parameters. Addressing this, we define a set of broad properties that lead to high utility in a broad class of domains, which are determined by an information theoretic notion of optimality. Intuitively these properties reflect the summarization of such data into lifestates where (1) the number of possible lifestates is limited and shared across entities to allow interpretation and comparison and (2) the number of lifestate-transitions is jointly controlled to provide a parameterless, optimal summarization of both the high sample and temporal dimensionality. Relevance to Digital FootprintsExample data include: regular survey collection, consumer purchasing history from transactional data (where the number of possible items to choose from is high), or other repeatedly sampled digital data. Within the Digital Footprints domain, concise descriptions of high-dimensional data (summarizations) are extremely important. For example, lifestates within health records could be identified and used to find critical patterns in the decline or recovery of patients. Conclusions & ImplicationsThis work aims to find segmentations that optimally trade off the number of states and segments that humans must then interpret, while still capturing salient state changes. Building on prior work, we propose a model with complexity controlled by normalised maximum likelihood (NML). In short, the proposed model generates automated summarizations that are both optimally concise and informationally rich, according to information theory, a branch of mathematics.
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