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Decision-tree induction to interpret lactation curves

机译:决策树归纳法解释泌乳曲线

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Decision-tree induction was used to leam to interpret parity-group average lactation curves automatically in dairy fanning. Three parity groups were involved consisting of cows in their first, second, or third and higher parity. A dairy-nutrition specialist analyzed 99 parity-group average lactation curves, representing 33 dairy herds, and classified these curves using predefined aspects of interpretation. For machine learning, seven main classification tasks and three secondary tasks, supporting oneof the main tasks, were identified. For each task, potentially predictive attributes were created, based on the graphical and numerical information available to the specialist. Five-fold cross validation was used to estimate the classification performance, and relative operating characteristic curves were used to visualize the achieved trade-off between sensitivity and specificity. For five of the seven main classification tasks, a series of three final decision trees was induced from the entire data set with increasing sensitivity, and associated with a low, medium, and high tendency of classifying new cases as abnormal. For the other two of the main tasks, alternative trees showed very similar performance. The medium tendency trees were chosen to lead to a probability of predicting new cases as abnormal, similar to the observed prevalence of abnormal cases, given a population of cases with that prevalence. The decision trees induced for the main classification tasks performed welt. For the medium tendency decision trees, the sensitivity was at least 80% and the number of truly abnormal cases (as a percentage of all cases predicted as abnormal) was at least 75%. For the secondary tasks, the performance was poor, and domain expertise was required toselect a plausible tree from alternative trees generated by the induction algorithm. The decision trees, ranging from two to seven leaf nodes, were evaluated by the domain specialist and, after a few adjustments, considered as plausible. This study suggested that automatically bduced decision trees are able to match the interpretation of parity-group average lactation curves closely as performed by a domain specialist. Machine-learning assisted knowledge acquisition is expected to be especially appropriate for problem domains where specialists have difficulty expressing decision rules, such as the analysis of graphical information.
机译:决策树归纳法被用来学习乳制品扇动中的奇偶组平均泌乳曲线。三个同等组涉及第一,第二,第三和更高同等水平的母牛。一位乳品营养专家分析了代表33个奶牛群的99个同等组的平均泌乳曲线,并使用预定义的解释方法对这些曲线进行了分类。对于机器学习,确定了支持主要任务之一的七个主要分类任务和三个次要任务。对于每个任务,根据专家可用的图形和数字信息创建潜在的预测属性。五倍交叉验证用于估计分类性能,相对工作特征曲线用于可视化灵敏度和特异性之间的平衡。对于七个主要分类任务中的五个,从整个数据集中导出了一系列三个最终决策树,它们具有更高的敏感性,并且与将新病例分类为异常的低,中和高趋势相关。对于其他两个主要任务,备用树表现出非常相似的性能。选择中等趋势树可导致将新病例预测为异常的可能性,与观察到的异常病例的患病率相似(给定患病率)。为主要分类任务引入的决策树进行了贴边。对于中等趋势决策树,敏感性至少为80%,真正异常情况的数量(占预测为异常的所有情况的百分比)至少为75%。对于次要任务,性能很差,并且需要领域专家来从归纳算法生成的替代树中选择合理的树。决策树的范围从2到7个叶节点,由领域专家进行评估,经过一些调整后,才被认为是合理的。这项研究表明,自动引诱的决策树能够与领域专家执行的奇偶组平均泌乳曲线的解释相匹配。机器学习辅助的知识获取特别适合于专家难以表达决策规则(例如图形信息分析)的问题领域。

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