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Advisor(s)
Abstract(s)
Understanding the drivers underlying waste production in general, and source-segregated waste in particular, is of utmost
importance for waste managers. This work aims at evaluating the performance of support vector machines (SVM) models
in the prediction of separate collection yields for packaging waste at municipal level. Two SVM models were developed for
a case study of 42 municipalities simultaneously serviced by separate collection of packaging waste and by unsorted waste
collection. The “SVM-fxed” model used a fxed set of 5 variables to predict collection yields, whereas the “SVM-optimal”
model chose from a pool of 14 variables those that optimized performance, using a genetic algorithm. These SVM models
were compared with 3 traditional regression models: the ordinary least square linear (OLS-L), the ordinary least square
non-linear (OLS-NL) and robust regression. The robust regression model was further compared against the other regression
models in order to assess the infuence of the dataset outliers on the model performance. The coefcient of determination,
R2
, was used to evaluate the performance of these models. The highest performance was attained by the SVM-optimal model
(R2=0.918), compared to the SVM-fxed model (R2=0.670). The performance of the SVM-optimal model was 42% higher
than the best performing regression model, the OLS-NL model (R2=0.646). The diferences in performance among the 3
regression models are small (circa 3%), whereas the exclusion of outliers improved their performance by 13%, indicating that
outliers impacted more on performance than the type of traditional regression technique used. The results demonstrate that
SVM model can be a viable alternative for prediction of separate collection of packaging waste yields and that there are nine
important drivers that all together explain roughly 92% (R2=0.918) of the variability in the separate collection yields data.
Description
Keywords
Household packaging waste Regression Separate collection SVM Predictive model