Teaching AI agents to ask better questions by playing “Battleship” | MIT News
Teaching AI agents to ask better questions by playing “Battleship” | MIT News
https://news.mit.edu/2026/teaching-ai-agents-ask-better-questions-playing-battleship-0603
Publish Date: 2026-06-03 17:00:00
Source Domain: news.mit.edu
- Artificial intelligence agents show promise in executing well-defined tasks through language models, but struggle with complex problem-solving in fields like medical diagnosis and scientific discovery.
- Researchers from MIT’s CSAIL and Harvard’s SEAS designed a “Collaborative Battleship” game to study how language models can better inquire and answer complex, natural language questions.
- Their results indicated that large language models outperform humans in the game, while smaller models struggle, showing that many models lack the ability to form useful questions.
- By integrating a Monte Carlo inference strategy, researchers improved both large and small language models’ question-asking effectiveness, dramatically boosting smaller ones’ performance.
- The researchers converted questions into executable commands using Python, aiding smaller models to provide more accurate answers and improving the overall performance of all tested language models.
- Although models showed progress in games like “Guess Who?,” they still lag behind expert human performance in complex scenarios.
- The researchers believe this improved information-seeking capability could make language models excellent assistants for complex scientific discoveries, though they plan to test them in more complex, real-world settings.
- The study highlights the need for AI agents to improve their pragmatic reasoning and ability to collaborate effectively with humans for solving tougher problems.