Data analytics for clouds health-care and risk predictions based on ensemble classifiers and subjective projection

H. Fujita
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Abstract

Discovering patterns from big data attracts a lot of attention due to its importance in discovering accurate patterns and features that are used in predictions of decision making. The challenges in big data analytics are the high dimensionality and complexity in data representation. Granular computing and feature selection are among the challenge to deal with big data analytics that is used for Decision making. We will discuss these challenges in this talk and provide new projection on ensemble learning for health care risk prediction. In decision making most approaches are taking into account objective criteria, however the subjective correlation among different ensembles provided as preference utility is necessary to be presented to provide confidence preference additive among it reducing ambiguity and produce better utility preferences measurement for good quality predictions. Most models in Decision support systems are assuming criteria as independent. Different type of data (time series, linguistic values, interval data, etc.) imposes some difficulties to data analytics due to preprocessing and normalization processes which are expensive and difficult when data sets are raw and imbalanced. We will highlight these issues though project applied to health-care for elderly, by merging heterogeneous metrics for providing health care predictions for elderly at home. We have utilized ensemble learning as multi-classification techniques on multi-data streams that collected from multi-sensing devices. Subjectivity (i.e., service personalization) would be examined based on correlations between different contextual structures that are reflecting the framework of personal context, for example in nearest neighbor based correlation analysis fashion. Some of the attributes incompleteness also may lead to affect the approximation accuracy. Attributes with preference-ordered domain relations properties become one aspect in ordering properties in rough approximations. We outline issues on Virtual Doctor Systems, and highlights its innovation in interactions with elderly patients, also discuss these challenges in granular computing and decision support systems research domains. In this talk I will present the current state of art and focus it on health care risk analysis with examples from our experiments.
基于集成分类器和主观投影的云医疗保健和风险预测数据分析
从大数据中发现模式吸引了很多关注,因为它对于发现用于预测决策的准确模式和特征非常重要。大数据分析面临的挑战是数据表示的高维性和复杂性。颗粒计算和特征选择是处理用于决策的大数据分析的挑战之一。我们将在本次演讲中讨论这些挑战,并对集成学习在医疗风险预测中的应用提供新的展望。在决策中,大多数方法都考虑了客观标准,然而,作为偏好效用的不同集合之间的主观相关性是必要的,以提供其中的置信度偏好加法,减少歧义,并为高质量的预测产生更好的效用偏好测量。决策支持系统中的大多数模型都假定标准是独立的。不同类型的数据(时间序列、语言值、区间数据等)给数据分析带来了一些困难,因为当数据集是原始的和不平衡的时,预处理和规范化过程是昂贵和困难的。我们将强调这些问题,通过项目应用于老年人保健,通过合并异质指标,为在家的老年人提供保健预测。我们利用集成学习作为对从多传感设备收集的多数据流的多分类技术。主观性(即服务个性化)将根据反映个人上下文框架的不同上下文结构之间的相关性进行检查,例如以最近邻为基础的相关性分析方式。某些属性的不完备性也会影响逼近精度。具有优先顺序域关系属性的属性成为粗略近似中属性排序的一个方面。我们概述了虚拟医生系统的问题,强调了它在与老年患者互动方面的创新,也讨论了这些挑战在颗粒计算和决策支持系统研究领域。在这次演讲中,我将介绍目前的技术状况,并将重点放在医疗保健风险分析上,并举例说明我们的实验。
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