* . *
  • About
  • Advertise
  • Privacy & Policy
  • Contact
Saturday, May 23, 2026
Earth-News
  • Home
  • Business
  • Entertainment

    AMC Entertainment Stock Surges After CEO Buys Thousands of Shares – TIKR.com

    After a Hopeful ‘Elsbeth’ Finale, Which Characters Are Coming Back for Season 4?

    Downtown St. Louis Entertainment District to Unveil Enhanced Security Measures This July

    Explore Stunning New Images of Reno Neon Line’s Exciting Next Phase

    Get Ready for an Exciting Summer with the Kid’s Art Club!

    90s Hitmakers Say Farewell: The Band Behind the Iconic Anthem Bids Goodbye at Just the Right Moment

  • General
  • Health
  • News

    Cracking the Code: Why China’s Economic Challenges Aren’t Shaking Markets, Unlike America’s” – Bloomberg

    Trump’s Narrow Window to Spread the Truth About Harris

    Trump’s Narrow Window to Spread the Truth About Harris

    Israel-Gaza war live updates: Hamas leader Ismail Haniyeh assassinated in Iran, group says

    Israel-Gaza war live updates: Hamas leader Ismail Haniyeh assassinated in Iran, group says

    PAP Boss to Niger Delta Youths, Stay Away from the Protest

    PAP Boss to Niger Delta Youths, Stay Away from the Protest

    Court Restricts Protests In Lagos To Freedom, Peace Park

    Court Restricts Protests In Lagos To Freedom, Peace Park

    Fans React to Jazz Jennings’ Inspiring Weight Loss Journey

    Fans React to Jazz Jennings’ Inspiring Weight Loss Journey

    Trending Tags

    • Trump Inauguration
    • United Stated
    • White House
    • Market Stories
    • Election Results
  • Science
  • Sports
  • Technology

    Teberg Empowers Future Innovators with Exciting New Sponsorship for NDSCS Electrical Technology Program

    Kitsap County introduces AI-assisted 911 technology – KIRO 7 News Seattle

    Machine Learning Personalizes Depression Treatment with the Help of Wearable Technology – UC San Diego Today

    Figure Technology Solutions to Unveil Exciting Innovations at Upcoming New York Investor Conferences

    Credo Technology (CRDO) Soars 8% as Investors Gear Up for Earnings – Yahoo Finance

    Is Now the Perfect Moment to Invest in Micron Technology, or Is It Better to Hold Out for a Price Drop?

    Trending Tags

    • Nintendo Switch
    • CES 2017
    • Playstation 4 Pro
    • Mark Zuckerberg
No Result
View All Result
  • Home
  • Business
  • Entertainment

    AMC Entertainment Stock Surges After CEO Buys Thousands of Shares – TIKR.com

    After a Hopeful ‘Elsbeth’ Finale, Which Characters Are Coming Back for Season 4?

    Downtown St. Louis Entertainment District to Unveil Enhanced Security Measures This July

    Explore Stunning New Images of Reno Neon Line’s Exciting Next Phase

    Get Ready for an Exciting Summer with the Kid’s Art Club!

    90s Hitmakers Say Farewell: The Band Behind the Iconic Anthem Bids Goodbye at Just the Right Moment

  • General
  • Health
  • News

    Cracking the Code: Why China’s Economic Challenges Aren’t Shaking Markets, Unlike America’s” – Bloomberg

    Trump’s Narrow Window to Spread the Truth About Harris

    Trump’s Narrow Window to Spread the Truth About Harris

    Israel-Gaza war live updates: Hamas leader Ismail Haniyeh assassinated in Iran, group says

    Israel-Gaza war live updates: Hamas leader Ismail Haniyeh assassinated in Iran, group says

    PAP Boss to Niger Delta Youths, Stay Away from the Protest

    PAP Boss to Niger Delta Youths, Stay Away from the Protest

    Court Restricts Protests In Lagos To Freedom, Peace Park

    Court Restricts Protests In Lagos To Freedom, Peace Park

    Fans React to Jazz Jennings’ Inspiring Weight Loss Journey

    Fans React to Jazz Jennings’ Inspiring Weight Loss Journey

    Trending Tags

    • Trump Inauguration
    • United Stated
    • White House
    • Market Stories
    • Election Results
  • Science
  • Sports
  • Technology

    Teberg Empowers Future Innovators with Exciting New Sponsorship for NDSCS Electrical Technology Program

    Kitsap County introduces AI-assisted 911 technology – KIRO 7 News Seattle

    Machine Learning Personalizes Depression Treatment with the Help of Wearable Technology – UC San Diego Today

    Figure Technology Solutions to Unveil Exciting Innovations at Upcoming New York Investor Conferences

    Credo Technology (CRDO) Soars 8% as Investors Gear Up for Earnings – Yahoo Finance

    Is Now the Perfect Moment to Invest in Micron Technology, or Is It Better to Hold Out for a Price Drop?

    Trending Tags

    • Nintendo Switch
    • CES 2017
    • Playstation 4 Pro
    • Mark Zuckerberg
No Result
View All Result
Earth-News
No Result
View All Result
Home Science

What Is Machine Learning?

July 9, 2024
in Science
What Is Machine Learning?
Share on FacebookShare on Twitter

By now, many people think they know what machine learning is: You “feed” computers a bunch of “training data” so that they “learn” to do things without our having to specify exactly how. But computers aren’t dogs, data isn’t kibble, and that previous sentence has way too many air quotes. What does that stuff really mean?

Machine learning is a subfield of artificial intelligence, which explores how to computationally simulate (or surpass) humanlike intelligence. While some AI techniques (such as expert systems) use other approaches, machine learning drives most of the field’s current progress by focusing on one thing: using algorithms to automatically improve the performance of other algorithms.

Here’s how that can work in practice, for a common kind of machine learning called supervised learning. The process begins with a task — say, “recognize cats in photos.” The goal is to find a mathematical function that can accomplish the task. This function, which is called the model, will take one kind of numbers as input — in this case, digitized photographs — and transform them into more numbers as output, which might represent labels saying “cat” or “not cat.” The model has a basic mathematical form, or shape, that provides some structure for the task, but it’s not likely to produce accurate results at first.

Now it’s time to train the model, which is where another kind of algorithm takes over. First, a different mathematical function (called the objective) computes a number representing the current “distance” between the model’s outputs and the desired result. Then, the training algorithm uses the objective’s distance measurement to adjust the shape of the original model. It doesn’t have to “know” anything about what the model represents; it simply nudges parts of the model (called the parameters) in certain mathematical directions that minimize that distance between actual and desired output.

Once these adjustments are made, the process restarts. The updated model transforms inputs from the training examples into (slightly better) outputs, then the objective function indicates yet another (slightly better) adjustment to the model. And so on, back and forth, back and forth. After enough iterations, the trained model should be able to produce accurate outputs for most of its training examples. And here’s the real trick: It should also maintain that performance on new examples of the task, as long as they’re not too dissimilar from the training.

Using one function to repeatedly nudge another function may sound more like busywork than “machine learning.” But that’s the whole point. Setting this mindless process in motion lets a mathematical approximation of the task emerge automatically, without human beings having to specify which details matter. With efficient algorithms, well-chosen functions and enough examples, machine learning can create powerful computational models that do things we have no idea how to program.

Classification and prediction tasks — like identifying cats in photos or spam in emails — usually rely on supervised machine learning, which means the training data is already sorted in advance: The photos containing cats, for example, are labeled “cat.” The training process shapes a function that can map as much of the input onto its corresponding (known) output as possible. After that, the trained model labels unfamiliar examples.

Unsupervised learning, meanwhile, finds structure within unlabeled examples, clustering them into groups that are not specified in advance. Content-recommendation systems that learn from a user’s past behavior, as well as some object-recognition tasks in computer vision, can rely on unsupervised learning. Some tasks, like the language modeling performed by systems like GPT-4, use clever combinations of supervised and unsupervised techniques known as self- and semi-supervised learning.

Finally, reinforcement learning shapes a function by using a reward signal instead of examples of desired results. By maximizing this reward through trial and error, a model can improve its performance on dynamic, sequential tasks like playing games (like chess and Go) or controlling the behavior of real and virtual agents (like self-driving cars or chatbots).

To put these approaches into practice, researchers use a variety of exotic-sounding algorithms, from kernel machines to Q-learning. But since the 2010s, artificial neural networks have taken center stage. These algorithms — so named because their basic shape is inspired by the connections between brain cells — have succeeded at many complex tasks once considered impractical. Large language models, which use machine learning to predict the next word (or word fragment) in a string of text, are built with “deep” neural networks with billions or even trillions of parameters.

But even these behemoths, like all machine learning models, are just functions at heart — mathematical shapes. In the right context, they can be extremely powerful tools, but they also have familiar weaknesses. An “overfitted” model fits its training examples so snugly that it can’t reliably generalize, like a cat-recognizing system that fails when a photo is turned upside-down. Biases in data can be amplified by the training process, leading to distorted — or even unjust — results. And even when a model does work, it’s not always clear why. (Deep learning algorithms are particularly plagued by this “interpretability” problem.)

Still, the process itself is easy to recognize. Deep down, these machines all learn the same way: back and forth, back and forth.

>>> Read full article>>>
Copyright for syndicated content belongs to the linked Source : Quanta Magazine – https://www.quantamagazine.org/what-is-machine-learning-20240708/

Tags: learningmachinescience
Previous Post

10 Famous Writers Who Were Hypocritical

Next Post

Best ZZZ Bangboo for Each Agent

AMC Entertainment Stock Surges After CEO Buys Thousands of Shares – TIKR.com

May 22, 2026

Tulsi Gabbard Stuns the Nation with Unexpected Resignation from Trump Cabinet

May 22, 2026

Teberg Empowers Future Innovators with Exciting New Sponsorship for NDSCS Electrical Technology Program

May 22, 2026

Chiefs’ 2026 Schedule Unveiled: Top Highlights and Toughest Challenges Ahead

May 22, 2026

New “happy-face” spider species discovered in the Indian Himalayas – EurekAlert!

May 22, 2026

Your Weekend in NH: Fashion Field Trips, the Science of Nostalgia, and a Rubber Duck Regatta

May 22, 2026

Why an immense marine heatwave off the US west coast has alarmed scientists – The Guardian

May 22, 2026

Healthy SA: How physical exercise, healthy lifestyle is crucial for brain health amid aging – kens5.com

May 22, 2026

World Health Assembly Unites to Champion Groundbreaking Precision Medicine Resolution

May 22, 2026

Watch CNBC’s full interview with White House National Economic Council Director Kevin Hassett – CNBC

May 22, 2026

Categories

Archives

May 2026
M T W T F S S
 123
45678910
11121314151617
18192021222324
25262728293031
« Apr    
Earth-News.info

The Earth News is an independent English-language daily published Website from all around the World News

Browse by Category

  • Business (20,132)
  • Ecology (1,226)
  • Economy (1,249)
  • Entertainment (22,127)
  • General (21,658)
  • Health (10,282)
  • Lifestyle (1,260)
  • News (22,149)
  • People (1,250)
  • Politics (1,269)
  • Science (16,463)
  • Sports (21,746)
  • Technology (16,234)
  • World (1,240)

Recent News

AMC Entertainment Stock Surges After CEO Buys Thousands of Shares – TIKR.com

May 22, 2026

Tulsi Gabbard Stuns the Nation with Unexpected Resignation from Trump Cabinet

May 22, 2026
  • About
  • Advertise
  • Privacy & Policy
  • Contact

© 2023 earth-news.info

No Result
View All Result

© 2023 earth-news.info

No Result
View All Result

© 2023 earth-news.info

Go to mobile version