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YOUNG CHILD INJURY ANALYSIS BY THE CLASSIFICATION ENTROPY METHOD

机译:用分类熵法分析小儿伤害

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摘要

The project 'The Register and Preventive Programs for Accidents and Injuries' enabled data collection on all the injured who sought medical aid in Koprivnica County (population 61,052), Croatia, since 1992. Children aged 1-4 years are 5.03/100 of the whole population of the district. Complex injury attributes were analysed. Binary attributes were classified as input: age, gender, place of injury, and output f severity of injury. A new application of information entropy was introduced and applied to the classification of injury-causes attributes. The information entropy was calculated for the classification of input attributes according to the minimum information content. The decision procedure is given as a sequential procedure separating important from unimportant causes of injury at each decision level. Thus a decision tree with increasing entropy, i.e. decreasing determinism, was obtained showing that age (0.5347 N), place (0.6062 N ) and gender (0.6105 N) are measurable attributes in child injury ascertainment in a descending pattern. It was shown that this method is, at the same time, an optimal way of using an attribute decision process of injury causes classification.
机译:自1992年以来,“事故和伤害事故登记与预防计划”项目就能够收集克罗地亚科普里夫尼察县(人口61,052人)中所有寻求医疗救助的受伤人员的数据。1-4岁的儿童占整体的5.03 / 100该地区的人口。分析了复杂的损伤属性。二元属性分类为输入:年龄,性别,受伤地点和伤害严重程度的输出。引入了信息熵的新应用,并将其应用于伤害原因属性的分类。计算信息熵,以根据最小信息内容对输入属性进行分类。决策程序以顺序程序的形式给出,在每个决策级别将重要和不重要的伤害原因分开。因此,获得了具有增加的熵,即确定性降低的决策树,其显示出年龄(0.5347 N),位置(0.6062 N)和性别(0.6105 N)是儿童伤害确定中的可测量属性,并且呈下降趋势。结果表明,该方法是同时利用损伤原因属性决策过程的最优方法。

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