Project Details
Fordham University – Data-Driven Marketing Decisions (Simulated Project)
PSS, Excel, RFM Modeling, Two-Step Cluster Analysis, Persona Design, Customer Profiling, Data Transformation
As part of Fordham’s Data-Driven Marketing Decisions course, I conducted an in-depth segmentation and strategy simulation for M.A.C Cosmetics using dummy datasets. The objective was to analyze customer behavior and design data-backed targeting strategies to drive engagement and product innovation in a declining brand context.
I led the data analysis process — merging and transforming synthetic datasets with customer profiles and transaction history. Using SPSS, I conducted multiple two-step cluster analyses, testing segment stability through silhouette scores and managerial relevance. I engineered new variables including Recency, Frequency, and Profit and applied RFM modeling to enhance strategic clarity. I also developed detailed personas aligned to each cluster to guide product, messaging, and channel decisions.
Marketing Strategist
This project demonstrated my ability to apply rigorous statistical techniques to marketing strategy — bridging data science and consumer insight to deliver actionable outcomes, even in simulated environments.
The segmentation strategy revealed high-value customer clusters and untapped growth segments, enabling targeted messaging and bundling opportunities. The project provided a data-backed framework for revitalizing M.A.C’s marketing efforts and demonstrated how analytics-driven personas could guide product innovation and regional rollout plans.
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