Ensemble Sales Forecasting Study in Semiconductor Industry
Qiuping Xu, Vikas Sharma

TL;DR
This study develops an ensemble forecasting approach for Intel's CPU sales, integrating multiple models and variables to improve accuracy and responsiveness to market changes in the semiconductor industry.
Contribution
It introduces a novel ensemble modeling framework that combines diverse models and variable importance analysis for improved sales forecasting accuracy.
Findings
Ensemble models outperformed individual models in forecasting accuracy.
The approach effectively captured market fluctuations with weekly updates.
Variable importance analysis enhanced model interpretability.
Abstract
Sales forecasting plays a prominent role in business planning and business strategy. The value and importance of advance information is a cornerstone of planning activity, and a well-set forecast goal can guide sale-force more efficiently. In this paper CPU sales forecasting of Intel Corporation, a multinational semiconductor industry, was considered. Past sale, future booking, exchange rates, Gross domestic product (GDP) forecasting, seasonality and other indicators were innovatively incorporated into the quantitative modeling. Benefit from the recent advances in computation power and software development, millions of models built upon multiple regressions, time series analysis, random forest and boosting tree were executed in parallel. The models with smaller validation errors were selected to form the ensemble model. To better capture the distinct characteristics, forecasting models…
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Taxonomy
TopicsAdvanced Statistical Process Monitoring · Forecasting Techniques and Applications · Advanced Statistical Methods and Models
