LGAICLMLDec 24, 2024

Consistency Checks for Language Model Forecasters

arXiv:2412.18544v213 citationsh-index: 14
AI Analysis

This provides a method for benchmarking AI forecasters in real-time, addressing a key challenge in forecasting evaluation.

The paper tackles the problem of evaluating language model forecasters without waiting for future ground truth by proposing a consistency check framework based on arbitrage, showing that their instantaneous consistency metrics correlate with future Brier scores.

Forecasting is a task that is difficult to evaluate: the ground truth can only be known in the future. Recent work showing LLM forecasters rapidly approaching human-level performance begs the question: how can we benchmark and evaluate these forecasters instantaneously? Following the consistency check framework, we measure the performance of forecasters in terms of the consistency of their predictions on different logically-related questions. We propose a new, general consistency metric based on arbitrage: for example, if a forecasting AI illogically predicts that both the Democratic and Republican parties have 60% probability of winning the 2024 US presidential election, an arbitrageur can trade against the forecaster's predictions and make a profit. We build an automated evaluation system that generates a set of base questions, instantiates consistency checks from these questions, elicits the predictions of the forecaster, and measures the consistency of the predictions. We then build a standard, proper-scoring-rule forecasting benchmark, and show that our (instantaneous) consistency metrics correlate with LLM forecasters' ground truth Brier scores (which are only known in the future). We also release a consistency benchmark that resolves in 2028, providing a long-term evaluation tool for forecasting.

Foundations

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