ML Based Optimization Model Of Merchandise Product Mix
Using Neural Networks
The Challenge
Our client, a popular retailer in the United States, wanted to increase revenue from each of their stores by improving merchandise effectiveness in their physical stores . They wanted to determine what products should be introduced, stored, or discontinued at each store based on forecasted availability, revenue and profits from each product.
Hypothesis
- Online sales are a good proxy for demographics within catchments of physical stores.
- Sales of existing products, similar to a new product, can be used to forecast the sales potential of the new product and therefore make stocking decisions.
Execution
- Team decided to estimate sales ratio of each SKU to identify gaps in the merchandise mix.
- The ML model continuously optimizes the merchandize mix based on the correlation between product level demand forecasts and actual sales at individual stores.
Outcomes
- Successful integration of stocking recommendations for each store.
- The model show significant potential in improving the merchandise mix in the store leading to a significant increase in sales.
Project Highlights
23%
DECREASE IN “NO INVENTORY” ON PROMOTED PRODUCTS