We are independent & ad-supported. We may earn a commission for purchases made through our links.
Advertiser Disclosure
Our website is an independent, advertising-supported platform. We provide our content free of charge to our readers, and to keep it that way, we rely on revenue generated through advertisements and affiliate partnerships. This means that when you click on certain links on our site and make a purchase, we may earn a commission. Learn more.
How We Make Money
We sustain our operations through affiliate commissions and advertising. If you click on an affiliate link and make a purchase, we may receive a commission from the merchant at no additional cost to you. We also display advertisements on our website, which help generate revenue to support our work and keep our content free for readers. Our editorial team operates independently of our advertising and affiliate partnerships to ensure that our content remains unbiased and focused on providing you with the best information and recommendations based on thorough research and honest evaluations. To remain transparent, we’ve provided a list of our current affiliate partners here.
Software

Our Promise to you

Founded in 2002, our company has been a trusted resource for readers seeking informative and engaging content. Our dedication to quality remains unwavering—and will never change. We follow a strict editorial policy, ensuring that our content is authored by highly qualified professionals and edited by subject matter experts. This guarantees that everything we publish is objective, accurate, and trustworthy.

Over the years, we've refined our approach to cover a wide range of topics, providing readers with reliable and practical advice to enhance their knowledge and skills. That's why millions of readers turn to us each year. Join us in celebrating the joy of learning, guided by standards you can trust.

What Are the Different Artificial Intelligence Approaches?

By Marco Sumayao
Updated: May 16, 2024
Views: 11,927
Share

The different artificial intelligence approaches can be classified into three distinct groups: brain simulation, symbolic and sub-symbolic, and statistical. The symbolic and sub-symbolic approaches can be further classified into their own groups: cognitive simulation, logic-based intelligence and knowledge-based intelligence fall under the symbolic approach, while bottom-up and computational intelligence theories are identified as sub-symbolic artificial intelligence approaches. Years of advancement in the research and application of these theories has led to the formation of integrated approaches, combining principles from multiple schools of thought to generate more sophisticated artificial intelligence (AI) systems.

AI development first hit major developmental strides during the 1940s. By utilizing principles from neurology, cybernetics, and basic cognitive processing theories, researchers were able to build robots with primitive levels of intelligence based on brain simulation, allowing the avoidance of certain obstacles through sensory detection. Limited advancement between the 1940s and the 1960s, however, led to the abandonment of this paradigm, with researchers opting to develop other, more promising artificial intelligence approaches.

In the mid-1950s to early 1960s, AI researchers attempted to simplify human intelligence into symbol manipulation, believing that the ability of humans to learn about and adapt to objects in their environment revolves around the interpretation and reinterpretation of objects as basic symbols. A chair, for example, could be simplified into a symbol defining it as an object to sit on. This symbol could then be manipulated and projected onto other objects. Researchers were able to create a number of flexible and dynamic artificial intelligence approaches by incorporating this symbolic approach into AI development.

The ability to simulate the different cognitive approaches to symbolic thought allowed AI developers to create logic-based and knowledge-based intelligence. The logic-based approach worked on the underlying principles of logical thinking, focused almost entirely on solving problems rather than replicating human-like thinking ability. Logic was eventually balanced by "scruffy" logic, which took into account the fact that solutions can be found outside of a given logical algorithm. Knowledge-based intelligence, on the other hand, took advantage of a computer's ability to store, process, and recall vast amounts of data to provide solutions to problems.

Interest in brain simulation was revived in the 1980s after advancement in symbolic intelligence slowed. This led to the creation of sub-symbolic systems, artificial intelligence approaches that revolved around combining thinking with the more basic intelligence needed for movement and self-preservation. This allowed models to relate the environment around them to data in their memory stores. The statistical approach developed in the 1990s helped polish both the symbolic and sub-symbolic artificial intelligence approaches by using sophisticated mathematical algorithms to determine the course of action most likely to result in the machine's success. Research often tackles AI development using principles from all approaches.

Share
EasyTechJunkie is dedicated to providing accurate and trustworthy information. We carefully select reputable sources and employ a rigorous fact-checking process to maintain the highest standards. To learn more about our commitment to accuracy, read our editorial process.
Discussion Comments
Share
https://www.easytechjunkie.com/what-are-the-different-artificial-intelligence-approaches.htm
Copy this link
EasyTechJunkie, in your inbox

Our latest articles, guides, and more, delivered daily.

EasyTechJunkie, in your inbox

Our latest articles, guides, and more, delivered daily.