• Business
  • Markets
  • Politics
  • Crypto
  • Finance
  • Intelligence
    • Policy Intelligence
    • Security Intelligence
    • Economic Intelligence
    • Fashion Intelligence
  • Energy
  • Technology
  • Taxes
  • Creator Economy
  • Wealth Management
  • LBNN Blueprints
  • Business
  • Markets
  • Politics
  • Crypto
  • Finance
  • Intelligence
    • Policy Intelligence
    • Security Intelligence
    • Economic Intelligence
    • Fashion Intelligence
  • Energy
  • Technology
  • Taxes
  • Creator Economy
  • Wealth Management
  • LBNN Blueprints

How ‘Learn to Optimize’ is reshaping algorithm design and configuration

Simon Osuji by Simon Osuji
May 16, 2024
in Artificial Intelligence
0
How ‘Learn to Optimize’ is reshaping algorithm design and configuration
0
SHARES
0
VIEWS
Share on FacebookShare on Twitter


The future of optimization: How "learn to optimize" is reshaping algorithm design and configuration
In the lower part of the figure, it can be seen that L2O leverages on a set of training problem instances from the target optimization problem class to gain knowledge. This knowledge can help identify algorithm (configurations) that perform well on unseen problem instances. Credit: Science China Press

Optimization algorithms are pivotal in machine learning and artificial intelligence (AI) in general. For a long time, it has been widely believed that the design/configuration of optimization algorithms is a task that heavily relies on human intelligence and requires customized design for specific problems.

Related posts

Anker’s Discounted Power Station Can Power Your Next Camping Trip

Anker’s Discounted Power Station Can Power Your Next Camping Trip

March 10, 2026
Pete Hegseth Is Pushing Defense Employees to Volunteer With DHS

Pete Hegseth Is Pushing Defense Employees to Volunteer With DHS

March 10, 2026

However, with the increasing demand for AI and the emergence of new and complex problems, the manual design paradigm is facing significant challenges. If machines can automatically or semi-automatically design optimization algorithms in some way, it will not only greatly alleviate these challenges but also substantially expand the horizons of AI.

In recent years, researchers have been exploring ways to automate the algorithm configuration and design process by learning from a set of training problem instances. These efforts, referred to as Learn to Optimize (L2O), utilize a large number of optimization problem instances as input and attempt to train optimization algorithms within a configuration space (or even code space) with generalization ability.

Results across fields such as SAT, machine learning, computer vision, and adversarial example generation have shown that the automatically/semi-automatically designed optimization algorithms can perform comparably to, or even outperform, manually designed ones. This suggests that the field of optimization algorithm design may have entered the dawn of “machine replacing human.”

The article reviews three main approaches for L2O: training performance prediction models, training a single solver, and training a portfolio of solvers. It also discusses theoretical guarantees for the training process, successful application cases, and the generalization issues of L2O. Finally, this article points to promising future research directions.

The study is published in the journal National Science Review.

The future of optimization: How "learn to optimize" is reshaping algorithm design and configuration
The top figure illustrates training performance prediction models, which can be used to predict the best-performing algorithm on unseen problem instances. The middle figure shows training a single solver, which is directly applied to any unseen problem instance. The bottom figure represents training a portfolio of solvers, which is directly applied to any unseen problem instance. Credit: Science China Press

“L2O is expected to grow into a critical technology that relieves increasingly unaffordable human labor in AI.” Tang says. However, he also points out that warranting reasonable generalization remains a challenge for L2O, especially when dealing with complex problem classes and solver classes.

“A second-stage fine-tuning might be necessary in many real-world scenarios,” Tang suggests. “The learned solver(s) could be viewed as foundation models for further fine-tuning.”

He believes that building a synergy between the training and fine-tuning of foundation models would be a critical direction for fully delivering the potential of L2O in future development.

More information:
Ke Tang et al, Learn to optimize—a brief overview, National Science Review (2024). DOI: 10.1093/nsr/nwae132

Provided by
Science China Press

Citation:
The future of optimization: How ‘Learn to Optimize’ is reshaping algorithm design and configuration (2024, May 15)
retrieved 15 May 2024
from https://techxplore.com/news/2024-05-future-optimization-optimize-reshaping-algorithm.html

This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no
part may be reproduced without the written permission. The content is provided for information purposes only.





Source link

Previous Post

The Arab-Africa Trade Bridges Program Announces the Membership of the Republic of Cote d’Ivoire

Next Post

Turkey Pushes to Expand Influence in Africa

Next Post
Turkey Pushes to Expand Influence in Africa

Turkey Pushes to Expand Influence in Africa

Leave a Reply Cancel reply

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

RECOMMENDED NEWS

Cathedra Bitcoin and Kungsleden Inc. Announce Merger to Create an Infrastructure Company for the Digital Economy

Cathedra Bitcoin and Kungsleden Inc. Announce Merger to Create an Infrastructure Company for the Digital Economy

2 years ago
New UWI research cluster initiative unites expertise to advance social entrepreneurship and community resilience

New UWI research cluster initiative unites expertise to advance social entrepreneurship and community resilience

1 year ago
Finnish President Signs off on Anti-Mine Treaty Withdrawal

Finnish President Signs off on Anti-Mine Treaty Withdrawal

8 months ago
The Army doesn’t know where a lot of its excess arms and gear are

The Army doesn’t know where a lot of its excess arms and gear are

2 years ago

POPULAR NEWS

  • Mahama attends Liberia’s 178th independence anniversary

    Mahama attends Liberia’s 178th independence anniversary

    0 shares
    Share 0 Tweet 0
  • Ghana to build three oil refineries, five petrochemical plants in energy sector overhaul

    0 shares
    Share 0 Tweet 0
  • The world’s top 10 most valuable car brands in 2025

    0 shares
    Share 0 Tweet 0
  • Top 10 African countries with the highest GDP per capita in 2025

    0 shares
    Share 0 Tweet 0
  • Global ranking of Top 5 smartphone brands in Q3, 2024

    0 shares
    Share 0 Tweet 0

Get strategic intelligence you won’t find anywhere else. Subscribe to the Limitless Beliefs Newsletter for monthly insights on overlooked business opportunities across Africa.

Subscription Form

© 2026 LBNN – All rights reserved.

Privacy Policy | About Us | Contact

Tiktok Youtube Telegram Instagram Linkedin X-twitter
No Result
View All Result
  • Home
  • Business
  • Politics
  • Markets
  • Crypto
  • Economics
    • Manufacturing
    • Real Estate
    • Infrastructure
  • Finance
  • Energy
  • Creator Economy
  • Wealth Management
  • Taxes
  • Telecoms
  • Military & Defense
  • Careers
  • Technology
  • Artificial Intelligence
  • Investigative journalism
  • Art & Culture
  • LBNN Blueprints
  • Quizzes
    • Enneagram quiz
  • Fashion Intelligence

© 2023 LBNN - All rights reserved.