OPERATION MANAGEMENT
2nd Edition
ISBN: 9781260242423
Author: CACHON
Publisher: MCG
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Chapter 15, Problem 7CQ
Summary Introduction
To explain: The intuition below the MAE metric.
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The intuition behind the MAE metric to evaluate old forecasts is:a. to sum up the forecast errors.b. to sum up the squared forecast errors.c. to sum up the absolute values of the forecast errors.d. to average the squared forecast errors.e. to average the absolute values of the forecast errors.
The intuition behind the MSE metric to evaluate old forecasts is:a. to sum up the forecast errors.b. to sum up the squared forecast errors.c. to sum up the absolute values of the forecast errors.d. to average the squared forecast errors.e. to average the absolute values of the forecast errors.
What type of analytics seeks to recognize what is going on as well as the likely forecast and make decisions to achieve the best performance possible?
domain
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descriptive
What does the robustness of a data mining method refer to?
its ability to construct a prediction model efficiently given a large amount of data
its speed of computation and computational costs in using the mode
its ability to overcome noisy data to make somewhat accurate predictions
its ability to predict the outcome of a previously unknown data set accurately
Chapter 15 Solutions
OPERATION MANAGEMENT
Ch. 15 - When creating a time seriesbased forecast for the...Ch. 15 - Prob. 2CQCh. 15 - Prob. 3CQCh. 15 - Prob. 4CQCh. 15 - Prob. 5CQCh. 15 - Prob. 6CQCh. 15 - Prob. 7CQCh. 15 - Prob. 8CQCh. 15 - Using the moving average forecast, is it possible...Ch. 15 - Prob. 10CQ
Ch. 15 - Prob. 11CQCh. 15 - Prob. 12CQCh. 15 - Prob. 13CQCh. 15 - Deseasonalizing old demand data is the process of...Ch. 15 - Prob. 15CQCh. 15 - Prob. 1PACh. 15 - Prob. 2PACh. 15 - Prob. 3PACh. 15 - A police station had to deploy police officers for...Ch. 15 - MyApp is a small but growing startup that sees...Ch. 15 - Prob. 6PACh. 15 - Prob. 7PACh. 15 - Prob. 1CCh. 15 - CASE INTERNATIONAL ARRIVALS The U.S. Department of...Ch. 15 - Prob. 3C
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