Main menu

Pages

Approaching Human-Level Forecasting with Language Models

Forecasting future events is important for policy and decision making. In this work, we study whether language models (LMs) can forecast at the level of competitive human forecasters. Towards this goal, we develop a retrieval-augmented LM system designed to automatically search for relevant information, generate forecasts, and aggregate predictions. To facilitate our study, we collect a large dataset of questions from competitive forecasting platforms. Under a test set published after the knowledge cut-offs of our LMs, we evaluate the end-to-end performance of our system against the aggregates of human forecasts. On average, the system nears the crowd aggregate of competitive forecasters, and in some settings surpasses it. Our work suggests that using LMs to forecast the future could provide accurate predictions at scale and help to inform institutional decision making.

That is from a new paper by Danny Halawi, Fred Zhang, Chen Yueh-Han, and Jacob Steinhardt.  I hope you are all investing in that chrisma…

The post Approaching Human-Level Forecasting with Language Models appeared first on Marginal REVOLUTION.



Comments