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Talent Scout

P

Phuc Nguyen

LinkedIn

B

Benjamin Zelditch

LinkedIn

J

Joyce Chen

LinkedIn

R

Rohit Patra

LinkedIn

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Founder's Pitch

""BanditLP: Optimize large-scale personalized recommendations with multi-stakeholder alignment and scalability in mind.""

AI for MarketingScore: 7View PDF ↗

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Why It Matters

This research addresses the need for efficient recommendation systems that maximize multi-stakeholder objectives under operational constraints, crucial for large-scale platforms like LinkedIn, which balance diverse needs in real-time interactions.

Product Angle

To productize BanditLP, integrate it as a feature in existing recommendation engines, offering enhanced capabilities for handling multi-objective constraints, scalable to user bases of platforms like LinkedIn.

Disruption

BanditLP could replace less sophisticated recommendation systems that struggle to manage multiple objectives and constraints, potentially opening new performance heights for large-scale platforms.

Product Opportunity

The demand for advanced recommendation systems in marketing and e-commerce is substantial, driven by the need for personalized content delivery and multi-objective optimization. Enterprises and advertisers will pay for systems that improve engagement while respecting diverse objectives.

Use Case Idea

Deploy BanditLP in email marketing platforms or online marketplaces like Amazon to optimize user engagement and advertiser objectives while respecting operational limits and fairness constraints.

Science

BanditLP combines neural Thompson sampling with large-scale linear programming, allowing for exploration-exploitation with constraints. It leverages neural networks to model rewards and costs, optimizing recommendations using LP solvers that manage billions of variables, integrating diverse stakeholder needs.

Method & Eval

It was tested on LinkedIn's email marketing and synthetic data, outperforming current baseline models through real-world business improvements demonstrated via A/B testing and online experiments.

Caveats

Reliability on synthetic benchmarks might not entirely capture real-world complexity. Its scalability is theoretically defined and tested in LinkedIn's context, but might encounter unforeseen issues elsewhere.

Author Intelligence

Phuc Nguyen

LinkedIn
honnguyen@linkedin.com

Benjamin Zelditch

LinkedIn
bzelditch@linkedin.com

Joyce Chen

LinkedIn
joychen@linkedin.com

Rohit Patra

LinkedIn
ropatra@linkedin.com

Changshuai Wei

LinkedIn
chawei@linkedin.com