Development of automated customer feedback monitoring systems for retailers
- Our customer
- Popular clothing brand
One of the largest hypermarkets of building supplies - Context
- Casual, simplistic analysis of customer reviews
- Poor understanding of customer problems and attitudes towards stores and services
- Lack of benchmarking against competitors
- Industry
- Retail
Tasks
Solution
Result
- Develop an algorithm to automatically classify and process reviews
- Create an analytical tool to study customer attitudes towards stores and products
- Identify customer attitudes towards stores and services compared to competitors
Tasks
Solution
Result
- Natural Language Processing (NLP) tools and the Random Forest machine learning algorithm, which combines a set of independent models, were used to solve the tasks. Internal store data and comments from open sources were used as a source of information
- An algorithm for classifying, processing and analyzing customer reviews has been created
- The attitudes and preferences of buyers have been analyzed, problem areas have been identified
- An analysis of attitudes towards stores and services in comparison with competitors has been fulfilled
Tasks
Solution
Result
- Provided store ratings based on customer satisfaction
- Identified key issues and suggested ways to address them
- Assessed the speed and quality of staff responses to reviews and identified areas for growth
- Provided an analysis of store ratings against competitors