Agent4Rec
Description
Agent4Rec is a cutting-edge recommender system simulator that leverages the power of Large Language Models (LLMs) to create 1,000 generative agents. These agents, initialized from the MovieLens-1M dataset, simulate realistic user interactions with movie recommendations, providing unprecedented insights into human behavior in recommendation environments.
Key Features
- 1,000 LLM-Empowered Agents: Each agent embodies unique social traits and preferences, mimicking real-world diversity.
- Realistic Interactions: Agents engage with personalized movie recommendations in a page-by-page manner.
- Diverse Actions: Simulated users can watch, rate, evaluate, exit, and even conduct interviews about recommended content.
- Flexible Configuration: Supports various recommender systems and simulation settings.
Use Cases
- Research Tool: Ideal for studying user behavior in recommendation systems.
- Algorithm Testing: Test and refine recommendation algorithms with realistic user simulations.
- User Experience Optimization: Gain insights to improve recommendation interfaces and strategies.
- Scalable Testing: Simulate large-scale user interactions without the need for real user studies.
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Details
- Category: Research
- Industry: Technology
- Access Model: Open Source
- Pricing Model: Free
- Created By: Agent4Rec