LGAICPJun 12, 2023

Making forecasting self-learning and adaptive -- Pilot forecasting rack

arXiv:2306.07305v1h-index: 3
Originality Synthesis-oriented
AI Analysis

This addresses inventory and planning inefficiencies for retailers, but it is incremental as it applies an existing method to a specific domain.

The paper tackled low forecast accuracy in retail sales for product categories like Knitwear, where non-AI models had 60% accuracy, and improved it by 20% to 80% using a dynamic algorithm selection rack.

Retail sales and price projections are typically based on time series forecasting. For some product categories, the accuracy of demand forecasts achieved is low, negatively impacting inventory, transport, and replenishment planning. This paper presents our findings based on a proactive pilot exercise to explore ways to help retailers to improve forecast accuracy for such product categories. We evaluated opportunities for algorithmic interventions to improve forecast accuracy based on a sample product category, Knitwear. The Knitwear product category has a current demand forecast accuracy from non-AI models in the range of 60%. We explored how to improve the forecast accuracy using a rack approach. To generate forecasts, our decision model dynamically selects the best algorithm from an algorithm rack based on performance for a given state and context. Outcomes from our AI/ML forecasting model built using advanced feature engineering show an increase in the accuracy of demand forecast for Knitwear product category by 20%, taking the overall accuracy to 80%. Because our rack comprises algorithms that cater to a range of customer data sets, the forecasting model can be easily tailored for specific customer contexts.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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