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vwb2022 t1_ja91ff5 wrote

The title of the post and the article is misleading. The issue discussed is not that AI needs to understands consequences, it's that AI can't differentiate between correlation and causation. Which it can't because it's not intelligent, it's a correlation-finding algorithm. It's working as intended.

Researchers just discuss the need for new models, because current models are not "smart" enough and will need to be replaced with something new that will be able to differentiate between correlation and causation.

TLDR; Article discussed flaws of current AI models, rather AI needing to understand anything.

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RichardsLeftNipple t1_ja9bwz6 wrote

Causation is a difficult thing for even humans to comprehend. If it wasn't such a challenge we would have a whole lot less confusion and debate on many many things.

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Kahoots113 t1_ja9ibw6 wrote

Let's start with humans understanding this concept before AI.

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rherbom2k OP t1_ja912p3 wrote

The article explores the significance of integrating causality into machine learning algorithms and how it could impact different fields, including medicine, robotics, and natural language processing. By enabling machines to comprehend cause and effect, they would be better equipped to make informed decisions, learn more effectively, and adapt to changing situations. In medicine, for instance, integrating causality could aid in discovering new and improved treatments for ailments, creating new diagnostic tools, and personalizing treatment for patients. Additionally, integrating causality into robots could enhance their ability to navigate their surroundings, while in natural language processing, it could ensure that algorithms generate coherent and factually accurate text. With the continued advancement of causal inference, the potential applications of this technology are extensive and diverse. By providing machines with a comprehension of causality, researchers could unlock new prospects for artificial intelligence, resulting in a future where machines are more capable and versatile than ever before.

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FuturologyBot t1_ja95bpg wrote

The following submission statement was provided by /u/rherbom2k:


The article explores the significance of integrating causality into machine learning algorithms and how it could impact different fields, including medicine, robotics, and natural language processing. By enabling machines to comprehend cause and effect, they would be better equipped to make informed decisions, learn more effectively, and adapt to changing situations. In medicine, for instance, integrating causality could aid in discovering new and improved treatments for ailments, creating new diagnostic tools, and personalizing treatment for patients. Additionally, integrating causality into robots could enhance their ability to navigate their surroundings, while in natural language processing, it could ensure that algorithms generate coherent and factually accurate text. With the continued advancement of causal inference, the potential applications of this technology are extensive and diverse. By providing machines with a comprehension of causality, researchers could unlock new prospects for artificial intelligence, resulting in a future where machines are more capable and versatile than ever before.


Please reply to OP's comment here: https://old.reddit.com/r/Futurology/comments/11djqxa/why_artificial_intelligence_needs_to_understand/ja912p3/

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rogert2 t1_jaaomts wrote

I would settle for the electorate understanding consequences.

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