Data Skeptic

Cracking the Cold Start Problem

16 snips
Dec 8, 2025
Boya Xu, an Assistant Professor of Marketing at Virginia Tech, explores the intricacies of recommender systems. She delves into hybrid approaches that combine collaborative filtering and bandit learning to tackle challenges like the cold start problem for new users. Boya emphasizes using demographic information for bootstrapping recommendations and ensuring fairness for minority users. She also discusses how recommender systems affect consumer behavior and content creation across digital platforms, shedding light on the impact of algorithms in shaping user experiences.
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INSIGHT

Hybrid Methods Are Core

  • Recommender systems require hybrid approaches that combine dimensionality reduction, embeddings, and bandit learning.
  • Low-dimensional latent spaces unify diverse user/item features and make large-scale recommendation tractable.
ANECDOTE

Personal Spark From Shopping

  • Boya Xu began studying recommender systems from personal experience as an online shopper influenced by recommendations.
  • She noticed recommendations shaped her searches and purchases across platforms like Instagram and e-commerce sites.
INSIGHT

Two-Layer Scalability Challenge

  • Scalability has two dimensions: massive numbers of users/items and high-dimensional attributes per user/item.
  • Effective recommenders must reduce dimensionality while handling millions of entities efficiently.
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