• Skip to primary navigation
  • Skip to main content
IBIT

IBIT

Engages with industry to develop digital knowledge and talent

  • Home
  • Knowledge
    • AI Analytics Automation Case Competition
    • AI Opportunity Index
    • National Information Systems Job Index
    • Digital Innovation Foundry
      • Digital Innovation Foundry Workshops
    • Quantifying Impact
    • Case studies
    • Projects and Research
    • The IBIT Report
  • Talent
    • Mentoring Program
    • Scholarships
    • Professional Training
    • Prior Talent Development Activities
      • Temple Analytics Challenge
      • National Cyber Analyst Challenge
  • Engagement
    • Advisory Board
    • Executive-in-Residence
    • Symposiums and Conferences
    • Information Technology Awards
    • Prior Engagement Activities
      • Small Business and Non-Profit Digital Transformation
      • Digital Leader Fireside Chats
  • Partners
  • About
    • Mission
    • Annual Report
    • Impact Analysis
    • News
    • Staff
    • Advisory Board
    • Contact Us and Directions
  • Show Search
Hide Search

Fulton Bank – Data-Driven Prospect Identification Project

Fulton Bank, worked with the Digital Innovation Foundry (DIF) to develop a data-driven strategy for identifying prospective mass affluent customers. The DIF team, comprising Wei Wang (Associate Professor of Accounting), Sudipta Basu (Professor of Accounting), and Manoj Chacko, brings academic expertise to inform and guide the project.

This project analyzes how client age relates to deposit and loan balances at Fulton Bank using the bank’s proprietary, anonymized client data, combined with publicly available ZIP-code-level measures of neighborhood wealth and demographics. Using various statistical techniques including scatterplot. locally estimated scatterplot smoothing (LOESS), and regression analyses, we identify distinct life-cycle patterns in client behavior. Specifically, deposit balances increase steadily with age and rise disproportionately once clients enter their 50s, and this effect is more pronounced in ZIP codes with higher home values. Meanwhile, loan balances follow a hump-shaped pattern, peaking among clients in their 30s and declining thereafter. The patterns remain robust after controlling for neighborhood characteristics and state-level differences, indicating they reflect true life-cycle behavior rather than confounding geographical differences. Overall, the findings highlight distinct opportunities for the bank to expand lending relationships with existing and prospective clients.

FOX_Formal_Red_White-300x125

Institute for Business and Information Technology

207 Speakman Hall
1810 N. 13th Street
Philadelphia, PA 19122

About
Staff
Advisory Board
Partners
News
Contact us and directions
LinkedinFlickr

Copyright © 2026 IBIT · Fox School of Business · Temple University · contact us at ibit@temple.edu