Minimum Distance Estimation on Time Series Analysis with Little Data - Hakan Tekin - 图书 - Biblioscholar - 9781288327713 - 2012年11月21日
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Minimum Distance Estimation on Time Series Analysis with Little Data

价格
元 159
不含税

远程仓调货

预计送达时间 年7月14日 - 年7月30日
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Minimum distance estimate is a statistical parameter estimate technique that selects model parameters that minimize a good-of-fit statistic. Minimum distance estimation has been demonstrated better standard approaches, including maximum likelihood estimators and least squares, in estimating statistical distribution parameters with very small data sets. This research applies minimum distance estimation to the task of making time series predictions with very few historical observations. In a Monte Carlo analysis, we test a variety of distance measures and report the results based on many different criteria. Our analysis tests the robustness of the approach by testing its ability to make predictions when the fitted time-series model does not match the data generation model. Our analysis indicates benefits in applying minimum distance estimation when making time series prediction based on less than 30 observations.


104 pages, Illustrations, black and white

介质类型 图书     Paperback Book   (平装胶订图书)
已发行 2012年11月21日
ISBN13 9781288327713
出版商 Biblioscholar
页数 104
商品尺寸 189 × 246 × 6 mm   ·   154 g
语言 英语