Unlocking the Secrets of AI Mind Reading
Last Updated on March 28, 2024 by Editorial Team
Author(s): Meng Li
Originally published on Towards AI.
How to Make AI Understand Your Inner Voice?
Created by Meng Li
Recently, I have been researching large language models with the goal of using them to score samples.
Initially, I attempted to have the model rate on a scale from 1 to 5, but it consistently gave out only the lowest or highest scores, lacking nuance in its evaluations.
So, I switched tactics, moving away from numerical scores to descriptive phrases ranging from βvery poorβ to βexcellent.β
This change immediately diversified the modelβs ratings, moving away from simplistic extreme judgments.
I went a step further and tried scoring with a percentage system, from 1 to 100. This broader range allowed the model to more precisely assess the quality of samples.
These experiments were essentially about reward models in reinforcement learning.
Through these experiments, I discovered that different scoring methods significantly impact the modelβs performance.
Now, I want to share a case study with everyone.
We will explore how these various scoring methods differ in practical applications.
The Likert Scale features five levels, ranging from 1 to 5, representing attitudes from βstrongly disagreeβ to βstrongly agree.β
I have created a template of prompt words based on this scale.
Evaluate the score of a novel excerpt; if the score is low, modify it based on keywords.
Please assess the overall quality of… Read the full blog for free on Medium.
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Published via Towards AI