What Does It Take to Be a Good AI Research Agent? Studying the Role of Ideation Diversity
Abstract
Ideation diversity significantly enhances the performance of AI research agents across various models and scaffolds on the MLE-bench benchmark.
AI research agents offer the promise to accelerate scientific progress by automating the design, implementation, and training of machine learning models. However, the field is still in its infancy, and the key factors driving the success or failure of agent trajectories are not fully understood. We examine the role that ideation diversity plays in agent performance. First, we analyse agent trajectories on MLE-bench, a well-known benchmark to evaluate AI research agents, across different models and agent scaffolds. Our analysis reveals that different models and agent scaffolds yield varying degrees of ideation diversity, and that higher-performing agents tend to have increased ideation diversity. Further, we run a controlled experiment where we modify the degree of ideation diversity, demonstrating that higher ideation diversity results in stronger performance. Finally, we strengthen our results by examining additional evaluation metrics beyond the standard medal-based scoring of MLE-bench, showing that our findings still hold across other agent performance metrics.
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The analysis reveals that different models and agent scaffolds yield varying degrees of ideation diversity, and that higher-performing agents tend to have increased ideation diversity. There is also a controlled experiment where degree of ideation diversity is varied and it demonstrates that higher ideation diversity results in stronger performance. We also propose additional evaluation metrics beyond the standard medal-based scoring of MLE-bench.
impressive results! any chance of a code release?
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