Beef Cattle Institute, Kansas State University, Manhattan, KS.
J Anim Sci. 2018 Apr 14;96(4):1531-1539. doi: 10.1093/jas/skx065.
Big data are frequently used in many facets of business and agronomy to enhance knowledge needed to improve operational decisions. Livestock operations collect data of sufficient quantity to perform predictive analytics. Predictive analytics can be defined as a methodology and suite of data evaluation techniques to generate a prediction for specific target outcomes. The objective of this manuscript is to describe the process of using big data and the predictive analytic framework to create tools to drive decisions in livestock production, health, and welfare. The predictive analytic process involves selecting a target variable, managing the data, partitioning the data, then creating algorithms, refining algorithms, and finally comparing accuracy of the created classifiers. The partitioning of the datasets allows model building and refining to occur prior to testing the predictive accuracy of the model with naive data to evaluate overall accuracy. Many different classification algorithms are available for predictive use and testing multiple algorithms can lead to optimal results. Application of a systematic process for predictive analytics using data that is currently collected or that could be collected on livestock operations will facilitate precision animal management through enhanced livestock operational decisions.
大数据在商业和农学的许多方面都得到了广泛应用,以增强改进运营决策所需的知识。畜牧业收集了足够数量的数据来进行预测分析。预测分析可以定义为一种方法和一套数据评估技术,用于针对特定目标结果生成预测。本文的目的是描述使用大数据和预测分析框架来创建工具的过程,以推动畜牧业生产、健康和福利方面的决策。预测分析过程涉及选择目标变量、管理数据、分割数据,然后创建算法、精炼算法,最后比较创建的分类器的准确性。数据集的分割允许在使用原始数据测试模型的预测准确性之前进行模型构建和精炼,以评估整体准确性。有许多不同的分类算法可用于预测用途,测试多种算法可以带来最佳结果。应用使用当前收集或可以在畜牧业中收集的数据进行预测分析的系统过程,将通过增强畜牧业运营决策来促进精确动物管理。