How Self-Correction in Large Language Models(LLMs) Can Be Improved
Author(s): Richard Warepam
Originally published on Towards AI.
A Deep Dive into βSCoReβ (From a Research Paper That I Liked, from September 2024)
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We are aware that in recent times, large language models (LLMs) have completely changed how we interact with technology, enabling applications in natural language processing, coding, and reasoning.
However, one significant challenge remains the ability of these models to self-correct their mistakes.
This article explores a groundbreaking approach called SCoRe (Self-Correction via Multi-Turn Reinforcement Learning), which enhances the self-correction capabilities of LLMs.
We will break down the key concepts, findings, and implications of this research in a simplified manner. If you want to read the full paper, here is the research paper.
Self-correction refers to the ability of a model to identify and rectify its errors during the response generation process. This capability is crucial for tasks that require reasoning, such as solving mathematical problems or writing code.
Traditional LLMs often struggle with self-correction, especially when they lack external feedback or guidance.
This is how a standard LLM is trained.
Source: Research paperThis limitation can lead to incorrect or suboptimal responses, which is a significant hurdle in deploying these models in real-world applications.
SCoRe introduces a method for teaching LLMs to self-correct using a multi-turn reinforcement learning (RL) framework.
Unlike previous approaches that relied on supervised fine-tuning (SFT)… Read the full blog for free on Medium.
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Published via Towards AI