New Tool Assesses Brand Reputation in Real Time and in the Long Term
For Immediate Release
An international team of researchers has developed a framework for assessing brand reputation in real time and over time, and built a tool for implementing the framework. In a proof of concept demonstration looking at leading brands, the researchers found that changes in a given brand’s stock shares reflected real-time changes in the brand’s reputation.
“We’ve developed something we call the Brand Reputation Tracker that mines social media text on Twitter and uses 11 different measures to give us an in-depth understanding of how users feel about individual brands,” says Bill Rand, co-lead author of the paper and an associate professor of marketing in North Carolina State University’s Poole College of Management.
The Brand Reputation Tracker is a way of implementing a framework based on the Rust-Zeithaml-Lemon value-brand-relationship framework. Measures include things like “coolness,” “goods quality,” “social responsibility,” and “trustworthiness,” but are then aggregated into three scores: value driver, brand driver and relationship driver.
The value driver score effectively measures whether stakeholders think a brand is a good value. The relationship driver score assesses how closely stakeholders identify themselves with the brand. And the brand driver score accounts for pretty much everything else, such as style and popularity.
“The text mining allows us to give a numeric value to each of the measures and each of the driver scores,” says Rand, who is also executive director of NC State’s Business Analytics Initiative. “And we are able to place those numeric values in context by comparing them to the measures and aggregate scores of other brands.”
Because social media data are updated constantly, the researchers were able to identify changes in brand reputation in real time – as well as looking at trend data across days, weeks, months and years.
For this paper, the researchers looked at 100 popular brands as a proof of concept, demonstrating not just how the tool works but that it works. For example, the researchers found that – for those brands that were publicly traded on the stock market – changes in value, relationship and brand driver score were reflected in each brand’s stock valuation.
“One possible path forward is to significantly expand the dataset of brands that we’re assessing to get a broader understanding of the brand landscape,” Rand says. “And because we lay out the methodology we used, this paper allows users to create their own versions of the tool. For example, users could choose to look only at brands within a given industry category. Or users could modify the tool to focus on other aspects of brand, such as using a framework to assess the extent to which a brand is viewed as ‘green’ or ‘sustainable.’”
Rand also notes that previous ways of assessing brand reputation in a meaningful way required either access to a tremendous amount of corporate data or the ability to survey thousands of people on a regular basis.
“But the approach we’ve developed here is more accessible to medium-sized businesses. It requires only the creation of the initial tool – which is very doable. Then you can plug in publicly available user data from Twitter and start getting usable brand assessment information in real time.”
The paper, “Real-Time Brand Reputation Tracking Using Social Media,” appears in the Journal of Marketing. Co-lead authors of the paper are Roland T. Rust, Distinguished University Professor and David Bruce Smith Chair in Marketing at the University of Maryland’s Robert H. Smith School of Business; and Ming-Hui Huang, Distinguished Professor of Electronic Commerce at National Taiwan University. Co-authors of the paper are Andrew Stephen, associate dean of research and L’Oreal Professor of Marketing at the Säid Business School at the University of Oxford; Gillian Brooks, assistant professor in marketing at King’s Business School at King’s College London; and Timur Chabuk, vice president of machine learning and advanced analytics at Perceptronics Solutions, Inc.
This work was done with support from the University of Oxford’s Centre for Corporate Reputation, the Center for Excellence in Service at the University of Maryland, and Taiwan’s Ministry of Science and Technology.
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Note to Editors: The study abstract follows.
“Real-Time Brand Reputation Tracking Using Social Media”
Authors: Roland T. Rust, University of Maryland; William Rand, North Carolina State University; Ming-Hui Huang, National Taiwan University; Andrew T. Stephen, University of Oxford; Gillian Brooks, King’s College London; Timur Chabuk, Perceptronics Solutions, Inc.
Published: Feb. 1, Journal of Marketing
DOI: 10.1177/0022242921995173
Abstract: How can we know what stakeholders think and feel about brands in real-time and over time? Most brand reputation measures are at the aggregate level (e.g., the Interbrand “Best Global Brands” list) or rely on customer brand perception surveys on a periodical basis (e.g., the Y&R Brand Asset Valuator). To answer this question, brand reputation measures must capture the voice of the stakeholders (not just ratings on brand attributes), must reflect important brand events in real-time, and must connect to a brand’s financial value to the firm. This paper develops a new social media-based brand reputation tracker by mining Twitter comments for the world’s top 100 brands using Rust-Zeithaml-Lemon’s value-brand-relationship framework, on a weekly, monthly, and quarterly basis. The paper demonstrates that brand reputation can be monitored in real-time and longitudinally, managed by leveraging the reciprocal and virtuous relationships between the drivers, and connected to firm financial performance. The resulting measures are housed in an online longitudinal database and may be accessed by brand reputation researchers.