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Main Authors: Højmark, Axel, Pimpale, Govind, Panickssery, Arjun, Hobbhahn, Marius, Scheurer, Jérémy
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.16125
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author Højmark, Axel
Pimpale, Govind
Panickssery, Arjun
Hobbhahn, Marius
Scheurer, Jérémy
author_facet Højmark, Axel
Pimpale, Govind
Panickssery, Arjun
Hobbhahn, Marius
Scheurer, Jérémy
contents To mitigate risks from AI systems, we need to assess their capabilities accurately. This is especially difficult in cases where capabilities are only rarely displayed. Phuong et al. propose two methods that aim to obtain better estimates of the probability of an AI agent successfully completing a given task. The milestone method decomposes tasks into subtasks, aiming to improve overall success rate estimation, while the expert best-of-N method leverages human guidance as a proxy for the model's independent performance. Our analysis of these methods as Monte Carlo estimators reveals that while both effectively reduce variance compared to naive Monte Carlo sampling, they also introduce bias. Experimental results demonstrate that the milestone method underestimates true solve rates for many real-world tasks due to its constraining assumptions. The expert best-of-N method exhibits even more severe underestimation across all tasks, attributed to an inherently flawed re-weighting factor. To enhance the accuracy of capability estimates of AI agents on difficult tasks, we suggest future work should leverage the rich literature on Monte Carlo Estimators.
format Preprint
id arxiv_https___arxiv_org_abs_2409_16125
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Analyzing Probabilistic Methods for Evaluating Agent Capabilities
Højmark, Axel
Pimpale, Govind
Panickssery, Arjun
Hobbhahn, Marius
Scheurer, Jérémy
Artificial Intelligence
To mitigate risks from AI systems, we need to assess their capabilities accurately. This is especially difficult in cases where capabilities are only rarely displayed. Phuong et al. propose two methods that aim to obtain better estimates of the probability of an AI agent successfully completing a given task. The milestone method decomposes tasks into subtasks, aiming to improve overall success rate estimation, while the expert best-of-N method leverages human guidance as a proxy for the model's independent performance. Our analysis of these methods as Monte Carlo estimators reveals that while both effectively reduce variance compared to naive Monte Carlo sampling, they also introduce bias. Experimental results demonstrate that the milestone method underestimates true solve rates for many real-world tasks due to its constraining assumptions. The expert best-of-N method exhibits even more severe underestimation across all tasks, attributed to an inherently flawed re-weighting factor. To enhance the accuracy of capability estimates of AI agents on difficult tasks, we suggest future work should leverage the rich literature on Monte Carlo Estimators.
title Analyzing Probabilistic Methods for Evaluating Agent Capabilities
topic Artificial Intelligence
url https://arxiv.org/abs/2409.16125