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首页> 外文期刊>Biomedical Engineering: Applications, Basis and Communications >INFERENCE OF BIOMEDICAL DATA SETS USING BAYESIAN MACHINE LEARNING
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INFERENCE OF BIOMEDICAL DATA SETS USING BAYESIAN MACHINE LEARNING

机译:使用贝叶斯机器学习的生物医学数据集推理

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摘要

Due to the advancement in data collection and maintenance strategies, the current clinical databases around the globe are rich in a sense that these contain detailed information not only about the individual’s medical conditions, but also about the environmental features, associated with the individual. Classification within this data could provide new medical insights. Data mining technology has become an attraction for researchers due to its affectivity and efficacy in the field of biomedicine research. Due to the diverse structure of such data sets, only few successful techniques and easy to use softwares, are available in literature. A Bayesian analysis provides a more intuitive statement of probability that hypothesis is true. Bayesian approach uses all available information and can give answers to complex questions more accurately. This means that Bayesian methods include prior information. In Bayesian analysis, no relevant information is excluded as prior represents all the available information apart from data itself. Bayesian techniques are specifically used for decision making. Uncertainty is the main hurdle in making decisions. Due to lack of information about relevant parameters, there is uncertainty about given decision. Bayesian methods measure these uncertainties by using probability. In this study, selected techniques of biostatistical Bayesian inference (the probability based inferencing approach, to identify uncertainty in databases) are discussed. To show the efficiency of a Hybrid technique, its application on two distinct data sets is presented in a novel way.
机译:由于数据收集和维护策略的进步,全球目前的临床数据库富裕,这不仅包含与个人有关的个人医疗条件的详细信息,还包含详细信息,也包含与个人相关的环境特征。此数据中的分类可以提供新的医疗见解。由于其生物医药研究领域的情感和疗效,数据挖掘技术已成为研究人员的吸引力。由于这种数据集的不同结构,只有很少的成功技术和易于使用的软件,可以在文献中提供。贝叶斯分析提供了更直观的概率陈述,即假设是真的。贝叶斯方法使用所有可用信息,可以更准确地给出复杂问题的回答。这意味着贝叶斯方法包括先前的信息。在贝叶斯分析中,除了从数据本身之外的所有可用信息中没有排除相关信息。贝叶斯技术专门用于决策。不确定性是做出决定的主要障碍。由于有关相关参数的信息,对给出的决定存在不确定性。贝叶斯方法通过使用概率来测量这些不确定性。在这项研究中,讨论了所选择的生物统计贝叶斯推断(基于概率的推断方法,以识别数据库中的不确定性)。为了展示混合技术的效率,其在两个不同的数据集上的应用以新颖的方式呈现。

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