A. Muhaimin, Prisma Hardi Aji Riyantoko, H. Prabowo, Trimono Trimono
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Negative Binomial Time Series Regression – Random Forest Ensemble in Intermittent Data
Intermittent dataset is a unique data that will be challenging to forecast. Because the data is
containing a lot of zeros. The kind of intermittent data can be sales data and rainfall data. Because both
sometimes no data recorded in a certain period. In this research, the model is created to overcome the
problem. The approach that is used in this research is the ensemble method. Mostly the intermittent data
comes from the Negative Binomial because the variance is over the mean. We use two datasets, which are
rainfall and sales data. So, our approach is creating the base model from the time series regression with
Negative Binomial based, and then we augmented the base model with a tree-based model which is random
forest. Furthermore, we compare the result with the benchmark method which is The Croston method and Single
Exponential Smoothing (SES). As the result, our approach can overcome the benchmark based on metric value by
1.79 and 7.18.