Hughes G, McRoberts N, Burnett F J
First and third authors: Crop and Soil Systems Research Group, SRUC, The King's Buildings, West Mains Road, Edinburgh EH9 3JG, UK; second author: Plant Pathology Department, University of California, Davis 95616-8751.
Phytopathology. 2017 Feb;107(2):158-162. doi: 10.1094/PHYTO-07-16-0256-R. Epub 2016 Dec 13.
Predictive systems in disease management often incorporate weather data among the disease risk factors, and sometimes this comes in the form of forecast weather data rather than observed weather data. In such cases, it is useful to have an evaluation of the operational weather forecast, in addition to the evaluation of the disease forecasts provided by the predictive system. Typically, weather forecasts and disease forecasts are evaluated using different methodologies. However, the information theoretic quantity expected mutual information provides a basis for evaluating both kinds of forecast. Expected mutual information is an appropriate metric for the average performance of a predictive system over a set of forecasts. Both relative entropy (a divergence, measuring information gain) and specific information (an entropy difference, measuring change in uncertainty) provide a basis for the assessment of individual forecasts.
疾病管理中的预测系统通常将天气数据纳入疾病风险因素之中,有时这是以天气预报数据而非观测到的天气数据的形式呈现。在这种情况下,除了评估预测系统提供的疾病预测之外,对业务天气预报进行评估也是很有用的。通常,天气预报和疾病预测是使用不同的方法进行评估的。然而,信息理论量期望互信息为评估这两种预测提供了基础。期望互信息是预测系统在一组预测上平均性能的合适度量。相对熵(一种散度,衡量信息增益)和特定信息(一种熵差,衡量不确定性的变化)都为评估单个预测提供了基础。