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license: mit |
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# README |
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## Introduction |
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This repository is designed for the AgentRecBench project, which aims to provide a comprehensive benchmark for evaluating the performance of recommendation agents. The code for this project can be found at [AgentSocietyChallenge](https://github.com/tsinghua-fib-lab/AgentSocietyChallenge/tree/final). |
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## Directory Structure |
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### `task/` |
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This folder contains three major types of recommendation tasks: |
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- **Classic Tasks**: These tasks focus on traditional recommendation scenarios where the goal is to provide accurate recommendations based on historical user-item interactions. |
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- **Evolving Interest Tasks**: These tasks are designed to capture the dynamic nature of user preferences over time, requiring agents to adapt to changing interests. |
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- **Cold-Start Tasks**: These tasks address the challenge of making recommendations for new users or items with limited interaction history. |
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### dataset |
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The following three folders contain the datasets for each task, processed and formatted for retrieval by the agent: |
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- **process_data_all**: Contains datasets for both classic and cold-start tasks. |
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- **process_data_long**: Contains datasets for long-term evolving interest tasks. |
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- **process_data_short**: Contains datasets for short-term evolving interest tasks. |