GKB: Geodemographics Knowledge Base
 

The MRS Census and GeoDems group champions new thinking and new talent; one area they have been particularly impressed with is the CDRC Masters Dissertation Scheme (MDS)

This programme offers an exciting opportunity to link students on Masters courses with leading retail companies on projects which are important to the retail industry. The scheme provides the opportunity to work directly with an industrial partner and to link students’ research to important retail and ‘open data’ sources. The project titles are devised by retailers and are open to students from a wide range of disciplines.

MRS CGG are proud to have been granted permission to publish abstracts from the dissertations and we are sure the students have a great future ahead of them.

This abstract is by Ethan Chew

Title: Tracking a Company’s Performance – a Natural Language Processing approach

Academic Institution: City, University of London

Industry Sponsor: Kainos

Background and Motivation
With digitisation and globalisation, choices have never been more abundant.
Organisations are threatened by emerging players and thus, it is in a company’s best interest to continuously improve upon their capabilities to stay one step ahead of others. This study aimed to design and build an endto-end Natural Language Processing (NLP) pipeline to obtain insights on performing and trailing capabilities (relatively) through customer reviews - a publicly-available and information rich dataset. Through our pipeline we looked to tag reviews autonomously from a taxonomy of topics.

Data and Methods

Data Source:
• We looked at reviews surrounding UK’s major banks – Barclays, Monzo, and HSBC for example.
• 300,000 reviews were scraped from TrustPilot in total, including supplementary data like review ratings (1-5 stars) and bank replies.

Methods:
Feature Extraction:
• Employed a series of unsupervised learning techniques to group and derive topics for similar reviews. Collectively, these form a taxonomy of topics specific to our domain.
• As seen in Figure 1, similar reviews are clustered together and projected onto a low-order representation of the semantic space.
• Topic modelling then provided a broad understanding of each cluster.

Classification:
• Using topics as labels, developed a multi-label classification model which tags reviews with multiple topics.
• A set of Binary Random Forest classifiers are trained and applied. Existing transformer-based LLMs were subsequently fine-tuned for multi-label classification through transfer-learning.

Key Findings
1. Conventional banks have a much smaller presence online (on TrustPilot) as compared to challenger banks – challenger banks boast 15 times more reviews and reply to 80%, versus 0%, of their unsatisfactory reviews (1-3 stars).
2. Customer service and account issues are the main challenges faced by all banks, collectively making up close to 50% of all unsatisfactory reviews.
3. As an example of internal monitoring, Revolut's app interface takes higher priority for improvements compared to its refund capabilities - each making up
3.3% and 1.6% of unsatisfactory reviews respectively.
4. As an example of benchmarking, Wise saw its app-interface lagging behind Revolut’s with unsatisfactory reviews (regarding app-interface) leading up to 2023, from 2022, increasing by 140% and decreasing by 42% respectively.

Value of the research
This study provided a practical approach to process unstructured reviews into actionable insights. The learnings from this study are applicable across several domains and allow for companies to understand the performance of their functions, as well as their competitors. Through it, companies can adopt best practices, capitalise upon missed opportunities, proactively identify, prioritise areas for further development, and continue to maintain a marginal edge.

Ethan Chew Fig 1

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