“…Correlation, bivariate regression analysis, group comparison, and time series analysis only need to consider one independent variable to build the models, while methods, such as multiple regression analysis, system dynamics, and input-output analyses, consider the complicated interactions between multiple variables, making these models far more complex and difficult to validate. Some of the latest intelligent models, such as artificial neural network (ANN) (Noori et al, 2010), partial least square support vector machine (PLS-SVM) (Abbasi et al, 2012(Abbasi et al, , 2013, grey system theory, and fuzzy dynamic models (Chen and Chang, 2000), have been proved to have good prediction performances for weekly or monthly time series data. In addition, various prediction models, including seasonal autoregressive integrated moving average (sARIMA) model and fuzzy logic model, have been developed to forecast daily MSW generation (Navarro-Esbrı et al, 2002;Karadimas, et al, 2006).…”