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Phenotypic identification of farm animal genetic resources using computer learning with scoring function.

机译:使用具有评分功能的计算机学习对农场动物遗传资源进行表型鉴定。

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摘要

A precise identification of a given animal as belonging to a given breed is essential for livestock census, and developing policies for selection, improvement and conservation of animal genetic resources. It consists of assigning animals to a breed on the basis of certain phenotypic traits and basically forms a classification problem. Existing computer learning algorithms require a learning data set for predicting the class of a new case. The available information on a breed consists of analysed survey data on a number of its phenotypic traits. Usually this information is presented in the form of breed descriptors as has been prepared for several breeds. This paper reports a learning approach in the form of a scoring function that aggregates trait values to provide a score for identifying breed of the given animal on the basis of breed descriptor. Experiments with the scoring function on both simulated and actual data of four Indian cattle breeds revealed high accuracy of identification. Its performance was comparable to the results obtained with PNC2 (Haendel, 2003, Ph.D. Thesis, University of Dortmund), a recent instance-based learning algorithm. The scoring function technique has been extended to make a decision on breed classification of an animal when breed descriptor of a single breed is available, and also in case the new animal does not belong to any of the breeds under comparison. The technique involves generation of one thousand animals' simulated data from the available breed descriptors and locating the score of new animal in the range of scores of the generated animals for decision support on breed of the new animal.
机译:对于牲畜普查以及对动物遗传资源的选择,改良和保存制定政策,准确识别特定动物是否属于特定品种至关重要。它包括根据某些表型特征将动物分配给一个品种,并基本上形成一个分类问题。现有的计算机学习算法需要用于预测新案件类别的学习数据集。一个品种的可用信息包括有关其许多表型性状的分析调查数据。通常,该信息以为多个品种准备的品种描述符的形式呈现。本文以评分函数的形式报告了一种学习方法,该函数汇总了特征值以提供基于品种描述符的识别给定动物品种的分数。对四种印度牛品种的模拟和实际数据进行计分功能的实验表明,该方法具有很高的识别精度。它的性能可与最近基于实例的学习算法PNC2获得的结果相媲美(Haendel,2003年,多特蒙德大学博士学位论文)。当可获得单个品种的品种描述符时,以及在新动物不属于所比较的任何品种的情况下,计分功能技术已被扩展为决定动物的品种分类。该技术涉及从可用的品种描述符中生成一千只动物的模拟数据,并将新动物的得分定位在所生成动物的得分范围内,以为新动物的品种决策提供支持。

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