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Interactive Prompt Debugging with Sequence Salience

Authors :
Tenney, Ian
Mullins, Ryan
Du, Bin
Pandya, Shree
Kahng, Minsuk
Dixon, Lucas
Publication Year :
2024

Abstract

We present Sequence Salience, a visual tool for interactive prompt debugging with input salience methods. Sequence Salience builds on widely used salience methods for text classification and single-token prediction, and extends this to a system tailored for debugging complex LLM prompts. Our system is well-suited for long texts, and expands on previous work by 1) providing controllable aggregation of token-level salience to the word, sentence, or paragraph level, making salience over long inputs tractable; and 2) supporting rapid iteration where practitioners can act on salience results, refine prompts, and run salience on the new output. We include case studies showing how Sequence Salience can help practitioners work with several complex prompting strategies, including few-shot, chain-of-thought, and constitutional principles. Sequence Salience is built on the Learning Interpretability Tool, an open-source platform for ML model visualizations, and code, notebooks, and tutorials are available at http://goo.gle/sequence-salience.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.07498
Document Type :
Working Paper