Friday, May 9, 2025
News PouroverAI
Visit PourOver.AI
No Result
View All Result
  • Home
  • AI Tech
  • Business
  • Blockchain
  • Data Science & ML
  • Cloud & Programming
  • Automation
  • Front-Tech
  • Marketing
  • Home
  • AI Tech
  • Business
  • Blockchain
  • Data Science & ML
  • Cloud & Programming
  • Automation
  • Front-Tech
  • Marketing
News PouroverAI
No Result
View All Result

Enhancing Language Model Reasoning with Expert Iteration: Bridging the Gap Through Reinforcement Learning

March 12, 2024
in AI Technology
Reading Time: 4 mins read
0 0
A A
0
Share on FacebookShare on Twitter


The capabilities of LLMs are advancing rapidly, evidenced by their performance across various benchmarks in mathematics, science, and coding tasks. Concurrently, advancements in Reinforcement Learning from Human Feedback (RLHF) and instruction fine-tuning are aligning LLMs more closely with human preferences. This progress enhances the apparent abilities of LLMs, making complex behaviors more accessible through instruction prompting. Innovative prompting strategies like Chain-of-Thought or Tree-of-Thoughts further augment LLM reasoning. Drawing from successes in RL techniques seen in gaming environments, integrating RL into LLM reasoning represents a natural progression, leveraging interactive problem-solving dynamics for enhanced performance.

Researchers from Meta, Georgia Institute of Technology, StabilityAI, and UC Berkeley have investigated various RL algorithms’ effectiveness in enhancing the reasoning capabilities of LLMs across diverse reward schemes, model sizes, and initializations. Expert Iteration (EI) consistently outperforms other methods, displaying competitive sample efficiency. EI’s performance approaches that of more complex algorithms like Proximal Policy Optimization (PPO), even requiring fewer samples for convergence. The study highlights the significance of RL fine-tuning in bridging the performance gap between pre-trained and supervised fine-tuned LLMs. Exploration emerges as a critical factor impacting RL fine-tuning efficacy for LLMs, with implications for RL from Human Feedback and the future of LLM fine-tuning.

Various studies showcase the growing prowess of LLMs in tackling complex reasoning tasks, supported by advancements like CoT and Tree of Thought techniques. These methods enable LLMs to defer final answers by generating intermediate computations. Combining LLMs with planning algorithms and tools further enhances their reasoning capabilities. RLHF is a prominent method for fine-tuning LLMs, while expert iteration algorithms show comparable performance. Despite extensive research in RL for LLM improvement, understanding the most impactful factors still needs to be discovered.

Researchers approach reasoning tasks for LLMs as RL problems, examining the performance and sample complexity of various RL algorithms for fine-tuning LLMs. The study analyzes EI, PPO, and Return-Conditioned RL (RCRL). Each algorithm aims to maximize the expected future return of a student policy on a given task. The study details the methodologies of PPO, EI, and RCRL, including exploration strategies, training procedures, and reward mechanisms. Researchers also present results from experiments conducted with these algorithms on reasoning tasks, showcasing their effectiveness in improving LLM performance.

Experiments on GSM8K and SVAMP datasets evaluate various models using different metrics. Supervised fine-tuning (SFT) data is utilized initially, followed by experiments without SFT data. EI outperforms other methods, showing a significant improvement over the baseline. EI models perform better than PPO models despite further training. Results indicate that RL fine-tuning, particularly EI, provides better generalization and diversity in solution paths than static SFT fine-tuning. Larger models engage in more diverse exploration, impacting model performance during training. These findings shed light on the effectiveness of RL fine-tuning in improving model performance and generalization.

In conclusion, the study findings indicate that EI outperforms other RL algorithms in reasoning tasks. EI and PPO converge quickly without supervised fine-tuning, benefiting little from additional guidance or denser rewards. RL fine-tuning improves single- and multi-step accuracy, leveraging dynamic synthetic data generation. The study highlights the importance of pretrained models in enabling exploration and suggests limitations in current exploration strategies. Further advancements in prompting techniques and model exploration are crucial for improving Language Model reasoning capabilities.

Check out the Paper. All credit for this research goes to the researchers of this project. Also, don’t forget to follow us on Twitter and Google News. Join our 38k+ ML SubReddit, 41k+ Facebook Community, Discord Channel, and LinkedIn Group.

If you like our work, you will love our newsletter.

Don’t Forget to join our Telegram Channel

You may also like our FREE AI Courses.

Sana Hassan, a consulting intern at Marktechpost and dual-degree student at IIT Madras, is passionate about applying technology and AI to address real-world challenges. With a keen interest in solving practical problems, he brings a fresh perspective to the intersection of AI and real-life solutions.

🐝 Join the Fastest Growing AI Research Newsletter Read by Researchers from Google + NVIDIA + Meta + Stanford + MIT + Microsoft and many others…



Source link

Tags: BridgingEnhancingexpertgapIterationlanguageLearningmodelReasoningreinforcement
Previous Post

InVision is shutting down — where does that leave design collaboration services?

Next Post

The Latest Tech Tools to Mitigate Risks in Manufacturing Units

Related Posts

How insurance companies can use synthetic data to fight bias
AI Technology

How insurance companies can use synthetic data to fight bias

June 10, 2024
From Low-Level to High-Level Tasks: Scaling Fine-Tuning with the ANDROIDCONTROL Dataset
AI Technology

From Low-Level to High-Level Tasks: Scaling Fine-Tuning with the ANDROIDCONTROL Dataset

June 10, 2024
Decoding Decoder-Only Transformers: Insights from Google DeepMind’s Paper
AI Technology

Decoding Decoder-Only Transformers: Insights from Google DeepMind’s Paper

June 9, 2024
How Game Theory Can Make AI More Reliable
AI Technology

How Game Theory Can Make AI More Reliable

June 9, 2024
Buffer of Thoughts (BoT): A Novel Thought-Augmented Reasoning AI Approach for Enhancing Accuracy, Efficiency, and Robustness of LLMs
AI Technology

Buffer of Thoughts (BoT): A Novel Thought-Augmented Reasoning AI Approach for Enhancing Accuracy, Efficiency, and Robustness of LLMs

June 9, 2024
Deciphering Doubt: Navigating Uncertainty in LLM Responses
AI Technology

Deciphering Doubt: Navigating Uncertainty in LLM Responses

June 9, 2024
Next Post
The Latest Tech Tools to Mitigate Risks in Manufacturing Units

The Latest Tech Tools to Mitigate Risks in Manufacturing Units

Norway begins trial for Pride gay bar shooting By Reuters

Norway begins trial for Pride gay bar shooting By Reuters

AMC Entertainment Holdings provides settlement notice (NYSE:AMC)

AMC Entertainment Holdings provides settlement notice (NYSE:AMC)

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

  • Trending
  • Comments
  • Latest
Is C.AI Down? Here Is What To Do Now

Is C.AI Down? Here Is What To Do Now

January 10, 2024
Porfo: Revolutionizing the Crypto Wallet Landscape

Porfo: Revolutionizing the Crypto Wallet Landscape

October 9, 2023
A Complete Guide to BERT with Code | by Bradney Smith | May, 2024

A Complete Guide to BERT with Code | by Bradney Smith | May, 2024

May 19, 2024
A faster, better way to prevent an AI chatbot from giving toxic responses | MIT News

A faster, better way to prevent an AI chatbot from giving toxic responses | MIT News

April 10, 2024
Part 1: ABAP RESTful Application Programming Model (RAP) – Introduction

Part 1: ABAP RESTful Application Programming Model (RAP) – Introduction

November 20, 2023
Saginaw HMI Enclosures and Suspension Arm Systems from AutomationDirect – Library.Automationdirect.com

Saginaw HMI Enclosures and Suspension Arm Systems from AutomationDirect – Library.Automationdirect.com

December 6, 2023
Can You Guess What Percentage Of Their Wealth The Rich Keep In Cash?

Can You Guess What Percentage Of Their Wealth The Rich Keep In Cash?

June 10, 2024
AI Compared: Which Assistant Is the Best?

AI Compared: Which Assistant Is the Best?

June 10, 2024
How insurance companies can use synthetic data to fight bias

How insurance companies can use synthetic data to fight bias

June 10, 2024
5 SLA metrics you should be monitoring

5 SLA metrics you should be monitoring

June 10, 2024
From Low-Level to High-Level Tasks: Scaling Fine-Tuning with the ANDROIDCONTROL Dataset

From Low-Level to High-Level Tasks: Scaling Fine-Tuning with the ANDROIDCONTROL Dataset

June 10, 2024
UGRO Capital: Targeting to hit milestone of Rs 20,000 cr loan book in 8-10 quarters: Shachindra Nath

UGRO Capital: Targeting to hit milestone of Rs 20,000 cr loan book in 8-10 quarters: Shachindra Nath

June 10, 2024
Facebook Twitter LinkedIn Pinterest RSS
News PouroverAI

The latest news and updates about the AI Technology and Latest Tech Updates around the world... PouroverAI keeps you in the loop.

CATEGORIES

  • AI Technology
  • Automation
  • Blockchain
  • Business
  • Cloud & Programming
  • Data Science & ML
  • Digital Marketing
  • Front-Tech
  • Uncategorized

SITEMAP

  • Disclaimer
  • Privacy Policy
  • DMCA
  • Cookie Privacy Policy
  • Terms and Conditions
  • Contact us

Copyright © 2023 PouroverAI News.
PouroverAI News

No Result
View All Result
  • Home
  • AI Tech
  • Business
  • Blockchain
  • Data Science & ML
  • Cloud & Programming
  • Automation
  • Front-Tech
  • Marketing

Copyright © 2023 PouroverAI News.
PouroverAI News

Welcome Back!

Login to your account below

Forgotten Password? Sign Up

Create New Account!

Fill the forms bellow to register

All fields are required. Log In

Retrieve your password

Please enter your username or email address to reset your password.

Log In