Latest on Business Analytics
- Type
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Columbia Business
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Artificial Intelligence in Healthcare: Insights from Columbia Business School Professor Carrie Chan
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Designing Smarter Economic Systems: A New Approach to Mechanism Design
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How Gen AI Is Transforming Market Research
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How Real-Time Click Data Drives Smarter Personalization
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AI-Generated Digital Twins: Shaping the Future of Business
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Tracking AI’s Impact on Creativity, Leadership, and Innovation
Could Rent Guarantee Insurance Help Solve the Housing Crisis?
Business Analytics Faculty
Latest Business Analytics Research
Has Government Counterparty Risk Become The Biggest Risk Today?
- Authors
- Date
- April 8, 2025
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Newspaper/Magazine Article
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- Forbes.com
The US government has a massive footprint on any US company that goes way beyond just the impact of tariffs. How the government chooses to use that influence can make or break the company. Read the full article on Forbes.com
Words That Matter: Analyzing the Causal Effect of Words
Language plays a crucial role in marketing, influencing outcomes such as consumer engagement and decision-making. Although prior research has extensively analyzed the relationship between linguistic features and business outcomes, most approaches have been descriptive or predictive, limiting their value for crafting more effective content. Understanding the causal effects of specific linguistic features is essential but challenging because, in real-world settings, the focal textual feature often changes simultaneously with other confounding factors.
Wikipedia Contributions in the Wake of ChatGPT
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- Date
- March 2, 2025
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Journal Article
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- The ACM Web Conference 2025 (Formerly WWW)
How has Wikipedia activity changed for articles with content similar to ChatGPT following its introduction? We estimate the impact using differences-in-differences models, with dissimilar Wikipedia articles as a baseline for comparison, to examine how changes in voluntary knowledge contributions and information-seeking behavior differ by article content. Our analysis reveals that newly created, popular articles whose content overlaps with ChatGPT 3.5 saw a greater decline in editing and viewership after the November 2022 launch of ChatGPT than dissimilar articles did.
The welfare impact of recommendation algorithms
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Laura Doval and Alex Smolin
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- March 1, 2025
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Journal Article
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- ACM SIGecom Exchanges
In this letter, we summarize our recent work on the welfare impact of recommendation algorithms and propose questions for further study. We model recommendation algorithms as an information structure, which shapes how a third party takes actions that affect the welfare of different individuals in a population. Each recommendation algorithm thus induces a welfare profile, describing the expected payoffs of different individuals when the third party takes actions following the algorithm.
Better Innovation for a Better World
We aim to stimulate discussion on how innovation research within marketing can use a better world (BW) perspective to help innovation become a driver of positive change in the world. In this "Challenging the Boundaries" series paper, we hope to provide purposeful research opportunities for scholars seeking to bridge innovation research with the BW movement. We frame our discussion with four areas of innovation research in marketing that are particularly relevant to BW objectives.
Personalized Game Design for Improved User Retention and Monetization in Freemium Games
- Authors
- Date
- Forthcoming
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Journal Article
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- International Journal of Research in Marketing
One of the most crucial aspects and significant levers that gaming companies possess in designing digital games is setting the level of difficulty, which essentially regulates the user’s ability to progress within the game. This aspect is particularly significant in free-to-play (F2P) games, where the paid version often aims to enhance the player’s experience and to facilitate faster progression.
Using natural language processing to analyse text data in behavioural science
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Stefan Feuerriegel, Abdurahman Maarouf, Dominik Bär, Dominique Geissler, Jonas Schweisthal, Nicolas Pröllochs, Claire E. Robertson, Steve Rathje, Jochen Hartmann, Saif M. Mohammad, Oded Netzer, Alexandra A. Siegel, Barbara Plank, and Jay J. Van Bavel
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- January 2, 2025
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Journal Article
- Journal
- Nature Reviews Psychology
Language is a uniquely human trait at the core of human interactions. The language people use often reflects their personality, intentions and state of mind. With the integration of the Internet and social media into everyday life, much of human communication is documented as written text. These online forms of communication (for example, blogs, reviews, social media posts and emails) provide a window into human behaviour and therefore present abundant research opportunities for behavioural science.
Does High CAPE Predict Low Market Returns?
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- Date
- December 15, 2024
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Newspaper/Magazine Article
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- Quant Street Capital
The cyclically adjusted price-to-earnings ratio is now elevated. But should that lead you to exit the stock market? Perhaps not. The predictive power of CAPE has waned meaningfully in recent years.
Policy-Aware Experimentation: Strategic Sampling for Optimized Targeting Policies
With unprecedented access to consumer information, firms are increasingly interested in designing highly effective data-driven targeting policies based on detailed consumer data. The current standard for implementing such policies involves the “test-then-learn” approach, where randomized experiments are used to estimate the differential impact of marketing interventions on various customers. However, this method fails to incorporate the firm’s ultimate business objectives, leading to inefficient experimentation and suboptimal targeting strategies.