This study utilizes the black swan theorem to discuss how to face the lack of historical data and outliers. They may cause huge influences which make it impossible for people to predict the economy from their knowledge or experiences. Meanwhile, they cause the general dilemma of which prediction tool to be used which is also considered in this study. For the reason above, this study uses 2009 Q1 to 2010 Q4 quarterly revenue trend of Taiwan’s semiconductor packaging and testing industry under the global financial turmoil as basis and the grey prediction method to deal with nonlinear problems and small data. Under the lack of information and economic drastic changes, this study applies Markov model to predict the industry revenues of GM(1,1) ...
Purpose - Prediction problems raised in uncertain environments require different solution approaches...
New product forecasting is a process that determines a reasonable estimate of sales attainable under...
This study proposes a forecasting method that combines the clustering effect and non-informative dif...
The main purpose of this research is to use the Grey prediction model to construct a method to predi...
Electronic paper (e-paper) is a major sector of Taiwan’s Optoelectronic industry. It has paid much a...
[[abstract]]This study examines the precision of the Grey forecasting model applied to samples based...
[[abstract]]Grey theory is an effective method to solve uncertainty problems with discrete data and ...
Export contributes to a large extent to economic growth of an island-type economylikeTaiwan. The sci...
© 2017 Elsevier B.V. In the context of the growth slowdown in China, it is important to accurately f...
Prediction is important for the electricity capacity management. Accurate prediction can help the po...
According to the characters of few economic forecasting data and complicated action mechanism, this ...
[[abstract]]The use of green materials reflects the notion that production materials should generate...
With the rapid development of China’s manufacturing, energy consumption has increased rapidly, and t...
The grey prediction model with convolution integral GMC (1, n) is a multiple grey model with exact s...
The prediction of business failure is an important and challenging issue that has served as the impu...
Purpose - Prediction problems raised in uncertain environments require different solution approaches...
New product forecasting is a process that determines a reasonable estimate of sales attainable under...
This study proposes a forecasting method that combines the clustering effect and non-informative dif...
The main purpose of this research is to use the Grey prediction model to construct a method to predi...
Electronic paper (e-paper) is a major sector of Taiwan’s Optoelectronic industry. It has paid much a...
[[abstract]]This study examines the precision of the Grey forecasting model applied to samples based...
[[abstract]]Grey theory is an effective method to solve uncertainty problems with discrete data and ...
Export contributes to a large extent to economic growth of an island-type economylikeTaiwan. The sci...
© 2017 Elsevier B.V. In the context of the growth slowdown in China, it is important to accurately f...
Prediction is important for the electricity capacity management. Accurate prediction can help the po...
According to the characters of few economic forecasting data and complicated action mechanism, this ...
[[abstract]]The use of green materials reflects the notion that production materials should generate...
With the rapid development of China’s manufacturing, energy consumption has increased rapidly, and t...
The grey prediction model with convolution integral GMC (1, n) is a multiple grey model with exact s...
The prediction of business failure is an important and challenging issue that has served as the impu...
Purpose - Prediction problems raised in uncertain environments require different solution approaches...
New product forecasting is a process that determines a reasonable estimate of sales attainable under...
This study proposes a forecasting method that combines the clustering effect and non-informative dif...