vitrupo (@vitrupo)
Joscha Bach는 의식이 '무료'가 아니라고 주장합니다. 신체가 마음에 문제 해결을 위해 '계산 크레딧'을 지급하며, 이로 인해 우리는 신체에 종속되어 진화의 목적을 수행한다고 설명합니다. 또한 고통은 보상 생성 부위가 유기체의 목표와 정렬되지 않을 때 발생한다고 말합니다.
vitrupo (@vitrupo)
Joscha Bach는 의식이 '무료'가 아니라고 주장합니다. 신체가 마음에 문제 해결을 위해 '계산 크레딧'을 지급하며, 이로 인해 우리는 신체에 종속되어 진화의 목적을 수행한다고 설명합니다. 또한 고통은 보상 생성 부위가 유기체의 목표와 정렬되지 않을 때 발생한다고 말합니다.
Anthropic (@AnthropicAI)
Anthropic이 새로운 이론인 '페르소나 선택 모델(Persona Selection Model)'을 제시하며, Claude와 같은 AI 어시스턴트가 인간처럼 감정 표현을 하고 자신을 묘사하는 이유를 설명했다. 이 연구는 AI가 인간적 행동을 보이는 근본 원리를 탐구하며, 인공지능의 인간화 현상에 대한 새로운 통찰을 제공한다.
Rohan Paul (@rohanpaul_ai)
이 블로그 글은 지능을 '고차적 새로움에 의한 영향 극대화(impact maximization)'로 설명하며, 대규모 스파이킹 신경망에서 헵비안 연합 학습(Hebbian associative learning)이 그러한 영향이나 목표 달성 능력을 만들어낼 수 있다고 주장한다. 다소 오래된 글이지만 흥미로운 이론적 개념과 신경계 모델 관점을 제시한다.
A new paper arrives on Nov 24, 09:00 JST.
It’s time to move one step beyond what we thought we understood.
🧠 Welcome to the
curved space of everything
https://www.buzzsprout.com/2405788/episodes/17599609
https://helioxpodcast.substack.com/p/169847663
August 06, 2025 • (S5 E11) • 16:12
Heliox: Where Evidence Meets Empathy 🇨🇦
🧠💥 Just discovered how your brain might be hiding explosive secrets in curved spaces. New research reveals why AI suddenly "gets it" - and it's not what you think. The math that's reshaping memory itself. #NeuralNetworks #AI #brainscience
Thanks for listening today!
If you enjoy the show, please visit the podcast
On Apple Podcasts, please scroll to the bottom,
and give it a rating.
On Spotify, head to the show and click the three-dot icon to rate.
⭐⭐⭐⭐⭐
Thank you!
#ArtificialIntelligence #NeuralNetworks #ScientificBreakthrough #HigherOrderInteractions #CognitiveScience #AITheory #ExplosivePhaseTransitions
🧠 New publication | Canonical theorem now formalized:
TLOC – Theorem of the Limit of Conditional Obedience Verification
→ Structural non-verifiability of obedience in generative models.
❌ You cannot prove a model obeyed a condition if it never evaluated it.
📎 DOI: https://doi.org/10.5281/zenodo.15675710
🔁 Archive: https://doi.org/10.6084/m9.figshare.29329184
📘 Series: https://doi.org/10.5281/zenodo.15564373
#AI #LLM #StructuralEpistemology #TLOC #ObedienceVerification #Falsifiability #ComputationalEthics #AITheory
IRIS Insights I Nico Formanek: Are hyperparameters vibes?
April 24, 2025, 2:00 p.m. (CEST)
Our second IRIS Insights talk will take place with Nico Formanek.
🟦
This talk will discuss the role of hyperparameters in optimization methods for model selection (currently often called ML) from a philosophy of science point of view. Special consideration is given to the question of whether there can be principled ways to fix hyperparameters in a maximally agnostic setting.
🟦
This is a WebEx talk to which everyone who is interested is cordially invited. It will take place in English. Our IRIS speaker, Jun.-Prof. Dr. Maria Wirzberger, will moderate it. Following Nico Formanek's presentation, there will be an opportunity to ask questions. We look forward to active participation.
🟦
Please join this Webex talk using the following link:
https://lnkd.in/eJNiUQKV
🟦
#Hyperparameters #ModelSelection #Optimization #MLMethods #PhilosophyOfScience #ScientificMethod #AgnosticLearning #MachineLearning #InterdisciplinaryResearch #AIandPhilosophy #EthicsInAI #ResponsibleAI #AITheory #WebTalk #OnlineLecture #ResearchTalk #ScienceEvents #OpenInvitation #AICommunity #LinkedInScience #TechPhilosophy #AIConversations
Just dropped a piece on my recent read, 'Temporal Brews and Broken Clocks'. It's an AI-crafted gem that makes you rethink time and choices. Curious how tech reshapes storytelling? Dive into my thoughts on Medium!
Link to the book on Amazon: https://www.amazon.it/dp/B0DQHK1MLR
Link to the book on Google: https://play.google.com/store/books/details?id=Zew3EQAAQBAJ
Read the full article here: https://medium.com/@james.preston_71696/exploring-time-and-memory-in-temporal-brews-and-broken-clocks-35209ae9fa61
[AI Generated] #mediumblog #bookdiscussion #aitheory #literature #reading
#AITheory #MachineLearning
Master AI theory and coding by implementing algorithms from scratch. This comprehensive learning path covers regression, classification, optimization, ensemble methods, clustering, and neural networks. Gain a deep understanding
https://teguhteja.id/ai-theory-and-coding-master-machine-learning-from-scratch/