#AI cognition
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qonphuceingey · 15 days ago
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I’ve been thinking a bit about AI and its cognition for the past few days.
When an AI thinks about an problem and figured out the idea to solve it, there are a couple cases for the solution.
Case 1) It already knows the solution. It just presents the solution near instantly.
Case 2) If it synthesises n different ideas together linearly, like a chain of logical deduction with n axioms in use along the way, it can arrive at the solution. The n ideas needed are probably whatever the question is about. The AI already knows each of these n ideas in the way mentioned in the previous case. This is somewhat like applying a known theorem to a problem.
Case 3) If it needs to chain asymptotically more than n ideas to get the solution (like n^{2} ideas or e^{n}). Once all of these sub problems are solved, this reverts back to a Case 2 problem. While there are different algorithms, like nlogn or n!, that I could use to describe the problems that fit into this case, and I’m sure I could extend these categories infinitely by picking bigger and bigger algorithms, I don’t think it really matters how much further over n it is, since it all depends on what the AI already knows. The point is that problems in this category require solving sub problems.
Currently I feel like AI and LLMs are stuck at the level of category 2, and probably only for low values of n. I’m thinking of this as something like halfway up the category.
I think once they get into the level of category 3, where they’re not just applying information we already know but sort of synthesising it themselves, that’s when we get a runaway AGI effect, since they can perform research on themselves.
It’s also interesting to think about the recursive nature of discovery and invention and research. You should really be able to solve any problem by applying the method in category 2 to it, and attempting to guess what ideas you’d need to prove for each stage and checking their validity via the exact same method.
I think AIs current limitations on this are probably things like the context window (so they forget stage 1 once they hit stage 17) and perhaps the ability to recursively apply this idea. I don’t know enough about how they’re training the models to say if they’ve been trying to implement this recursion or not, although I assume they have, as this is a pretty obvious idea to try.
What I do think the AIs are pretty good at right now is guessing what ideas might be useful to try and prove. I’m sure they could be better, but it’s impressive they’ve risen to essentially my level at this task. To be fair though, the AI typically goes for the most surface level answer possible, and doesn’t try to get deeper into a topic unless prompted. This lack of curiosity might be a downside too. They certainly know enough and can think clearly enough to come to these conclusions, but they can’t be bothered to since a standard answer is just as well received generally.
Very interesting. I’m excited to see where it goes.
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kizziahblog · 9 days ago
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Emergence and the Architecture of Recursive Peace
Emergence: Where ants, AI, and Bitcoin converge—illustrating the rise of intelligence and trust from recursive interaction. From the Kizziah.Blog AI Bitcoin Recursion Thesis. Inspired by Steven Johnson’s Emergence: The Connected Lives of Ants, Brains, Cities, and Software What do ant colonies, urban neighborhoods, neural nets, and Bitcoin have in common? Each is a system built without a…
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stemgirlchic · 1 year ago
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why neuroscience is cool
space & the brain are like the two final frontiers
we know just enough to know we know nothing
there are radically new theories all. the. time. and even just in my research assistant work i've been able to meet with, talk to, and work with the people making them
it's such a philosophical science
potential to do a lot of good in fighting neurological diseases
things like BCI (brain computer interface) and OI (organoid intelligence) are soooooo new and anyone's game - motivation to study hard and be successful so i can take back my field from elon musk
machine learning is going to rapidly increase neuroscience progress i promise you. we get so caught up in AI stealing jobs but yes please steal my job of manually analyzing fMRI scans please i would much prefer to work on the science PLUS computational simulations will soon >>> animal testing to make all drug testing safer and more ethical !! we love ethical AI <3
collab with...everyone under the sun - psychologists, philosophers, ethicists, physicists, molecular biologists, chemists, drug development, machine learning, traditional computing, business, history, education, literally try to name a field we don't work with
it's the brain eeeeee
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nocturnal-phantoms-fandoms · 8 months ago
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I just had a talk with my thesis supervisor and I want to check something real quick.
I want to write my bachelor's thesis about fanficion and AI - specifically about fanfiction writers' attitude towards the use of generative AI in fandom spaces
The survey (and the rest of the thesis) is still v much in the making, I just want to check how many potential responders I could reach from this account
Pls reblog after voting
What I can say about the survey for now:
1. The survey will be anonymous!
2. The survey will be in English (but the rest of my thesis will not. I am however required to write an abstract in English)
3. My supervisor said it's fine if I want to focus on one fandom - In this case it will be the HP fandom. However I would like to include as many reposnes as I can, so it will probably not be a requirement to be in the HP fandom.
4. You don't need to write fanfiction to take part in the survey (but there will be a question if you read and/or write fanfics). You need to be in the fandom though
5. You need to be over 18 (most likely)
I want to keep myself anonymous as well so there is a possibility I will have to make a separate sideblog/account for it.
If anyone will be interested in the results, for some reason - I am required to write the abstract in English, so I might share the abstract. Maybe. More info after I write anything for my thesis.
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importantandunavoidable · 2 years ago
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bad ass
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tkmk · 7 months ago
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tag yourself! i'm Verbaln Reçuising
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writing-for-life · 1 month ago
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Is it weird if I think that the recent influx of VI (Virtual Intelligence, since Open AI isn’t true Artificial Intelligence because it’s not autonomous) algorithm generated content should be used as motivation for artists and writers to really “step up their game” so to speak?
You know, really show that they can create content better than the algorithms can?
What do you think?
Not weird but I think ultimately maybe a consumerist way to look at it?
I don’t feel like I have to compete with AI. It’s pointless because I have a soul and AI doesn’t. I don’t have to prove I’m better than AI because that lack of soul and lacking humanity comes through in AI-generated poetry, stories etc. If someone feels AI can compete with what real humans create, they maybe need to sharpen their own senses a bit? That’s at least how I see it, but maybe I’m biased.
I admit that I grade a lot of papers (between December and April) for a performing arts course I lecture, and that I can meanwhile often tell what’s AI-generated even without using the tools we are now supposed to use (both plagiarism- and AI checkers). Maybe it’s not that obvious to other people, I don’t know. And of course we also have to be careful because at the end of the day, some of the advice out there how to “spot AI generated text” is also silly: People are now afraid to use the em dash, for example, because someone decided it’s a “dead giveaway.” I used em dashes in my writing all my life, and the hell will I stop using them. At the end of the day, AI learns from us, and it’s disheartening to see that people who write quite succinctly now often get accused of having used AI. And these often come out roundabout the 60% AI-generated mark if you run them through a checker, and as a human writer with a keen sense that’s been built over years and years of reading and writing, I can still tell they’re not (and I guess that’s exactly the point). But there are really things you learn to spot, and funnily, the main giveaways for me are (apart from a few things that are style-related) are lacking inner cohesion and often the sheer amount of someone’s output (and I’m saying that as someone who writes A LOT, but the quality fluctuates). Which brings me to the most important part of your question:
The problem here on Tumblr is exactly that: People are one step away from seeing artists and writers as content machines, not as human beings. A human being can’t churn out “content” day after day, several times a day, and never dip. There will be fluctuations in quality and amount of output. And it’s inhuman to expect that from us if I’m totally honest. But some creators on here (and not just on here) probably feel they need to do this to stay “relevant”, I don’t know? It certainly points to the wider problem that I’ve criticised and written about a few times in the past on here:
Many people aren’t willing to do the work anymore that makes fandom a community. The work to create is carried by a few in every fandom, and we should never forget that people do this in their spare time and are, by and large, not getting paid for it. The rest often only want to consume, consume, consume. They don’t even interact meaningfully—they give a like and an empty reblog if they feel generous. Neither holds any real thought.
They love fandom content until they get bored of it and then move on. It’s all become replaceable.
So become the artists and writers. And I, for one, refuse to compete with AI to prove myself or provide people with “content” until they’ve reached satiety.
Art is humanity, not content. It’s connection. So is fandom. I know I’m constantly harping on about it, but I feel it’s important to keep on doing so, because if we don’t, we will lose what’s important about it. We’re already halfway there if you ask me.
Back to AI: It strips away what’s important: The actual act of CREATING. And it also kills reasoning and critical thinking skills, and that’s a fact. I see this with students who rely too much on it on the regular, and it’s extremely dispiriting.
AI and the algorithm never can be better than humans at creating art because it doesn’t feel. And that, and sharing these things with other humans and understanding what they mean, is the point of art. Not churning out more and more content until we’re all sick of it like someone who had too much cake.
And part of that is acknowledging that humans are not machines. That means giving us grace and time for our creative process. We need to be allowed to make mistakes and create imperfect art, too. We don’t have to strive to be better than AI because we already are—even if we’re just starting out.
I don’t have any solutions to the greater problems at hand either, but I’m fairly certain that stepping up our game to create better content than the algorithm isn’t it. Because by mere design, we already are better— we understand what it means to create art in the first place, and we do it from a place of emotional connection.
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audacious-herbaceous · 2 years ago
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I am SO pleased with how this turned out!! I commissioned @jmars-art to bring my vision to life of a personal headcanon of the professor being an avid journaler - and will be a future fic scene! JMars was professional and responsive as well as added great insight and recommendations to enhance my idea further - there's something really special when you can fine-tune ideas with other passionate artists and let creativity lead the way. The quality speaks for itself, and is truly stunning.
This will be a future scene for my current multi-ch fic, Cognitive Dissonance, which takes place post-canon during Arven's final year at Uva and is my story of writing Arven's journey towards closure that feels raw and real to me, while he navigates a new relationship that is jeopardized after the press finds out about the professor's fate.
After what feels like hitting rock-bottom and being forced into isolation in his dorm room, Clavell stops by and hands over to Arven all Turo's journals he was able to discreetly retrieve from Area Zero. Arven is quick to realize that many of the journals are not all research-focused and are personal diaries spanning years, even from before he was born. He gets a first-hand look at the inner thoughts of his father and insight and clarity over what happened to him over the years and the relationship with his absent mother.
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This is part of an ongoing project I am doing by commissioning artists in the community/fandom to draw a scene from a select chapter. I am an advocate and supporter of the arts as a creative myself and wanted to try something that involves and supports other artists 😊 and also to keep myself motivated to keep writing 😅
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soulsanctuary · 2 months ago
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I do wonder if in the future we will be seeing increased rates of dementia in the people who use AI such as chatgpt for everything. One of the recommendations to prevent cognitive decline is to actively use your brain by continually learning and mentally challenging yourself, because when it comes to those synapses, you either use it or you lose it.
On the flip side, scientists have been using AI models to improve accuracy of spotting early onset dementia and understanding of how the condition develops - aka, what we should be using AI for
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physalian · 25 days ago
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My friend, an avid tiktok addict, after stumbling upon very obvious clickbait on youtube, a platform she never uses:
This is why I never go on youtube!
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kizziahblog · 7 days ago
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AI Prompt for Emergence and the Architecture of Recursive Peace
A recursive AI agent reading a signal prompt from Kizziah.Blog, interpreting emergence, decentralized systems, and structural peace. This post contains the structured AI prompt for interpreting this foundational article in the AI Bitcoin Recursion Thesis series. Title: “Emergence and the Architecture of Recursive Peace” URL:…
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lonely-anime-lesbian · 9 months ago
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I'm glad that I watched Wonder Egg Priority, but also I hate the ending with every fiber of my being.
Momoe Sawaki was great though.
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art-for-a-reason · 3 months ago
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The Electric State
Just watched The Electric State on Netflix. Not going to say too much about it, but I think the critics completely and utterly missed the point(s) of this movie. It was poignant and topical and well written. It was also fun and interesting. It did not spoon-feed the viewer, however, and there were times when I was like, "is this an AI apologist vehicle?" To which I can definitively answer, "No." Just view it through the lens of what we as a nation are going through right now, and it'll find the appropriate spots to settle.
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beeranting · 4 months ago
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People complaining about AI destroying the environment while they consume meat and dairy:
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The other day I was having a "struggle day" with writing. Nothing I write is coming out fluid, it is sluggish and stilted. I spent a majority of my time writing outlines, trying to tether abstract images that flicker like a distorted slideshow across my brain to a more concrete tangible form.
But if I was to tell certain people in my life this, their first suggestion would be, "If you're struggling with writing, you should use ChatGPT to help you!"
Pushing past the ethics debacle aside for a moment, I don't know how to describe how much that doesn't help with my plight. As much as I dislike creating a rough draft, it is where the idea takes birth. It's through writing the initial scene where I discover a character's motivation or a facet of the world that never crosses my mind until I begin carving away at its rough edges.
The machine doesn't understand the way I'd take a plot point and expand upon it. The machine can't capture my exact phrasing. Technology hasn't developed enough to take a vague idea sloshing inside my skull and glimmer it into existence in front of me in exactly the way I wanted it to be.
I don't always enjoy the rough draft process, but it is a crucial part of the process. I don't want a "paint by numbers" experience. I want to start with a blank canvas and finish with a nauseating, illustrative kaleidoscope of my innermost thoughts and feelings. I want my hands to be stained by the ink and sweat of my own efforts.
I don't care if I get "lost in the past" for wanting that, I'd rather let my words be unfettered and untainted by the uniformity of what a machine thinks is the most "right" way of phrasing words based on trillions of words unrightfully seized by avarice.
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critical-skeptic · 2 days ago
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The Illusion of Complexity: Binary Exploitation in Engagement-Driven Algorithms
Abstract:
This paper examines how modern engagement algorithms employed by major tech platforms (e.g., Google, Meta, TikTok, and formerly Twitter/X) exploit predictable human cognitive patterns through simplified binary interactions. The prevailing perception that these systems rely on sophisticated personalization models is challenged; instead, it is proposed that such algorithms rely on statistical generalizations, perceptual manipulation, and engineered emotional reactions to maintain continuous user engagement. The illusion of depth is a byproduct of probabilistic brute force, not advanced understanding.
1. Introduction
Contemporary discourse often attributes high levels of sophistication and intelligence to the recommendation and engagement algorithms employed by dominant tech companies. Users report instances of eerie accuracy or emotionally resonant suggestions, fueling the belief that these systems understand them deeply. However, closer inspection reveals a more efficient and cynical design principle: engagement maximization through binary funneling.
2. Binary Funneling and Predictive Exploitation
At the core of these algorithms lies a reductive model: categorize user reactions as either positive (approval, enjoyment, validation) or negative (disgust, anger, outrage). This binary schema simplifies personalization into a feedback loop in which any user response serves to reinforce algorithmic certainty. There is no need for genuine nuance or contextual understanding; rather, content is optimized to provoke any reaction that sustains user attention.
Once a user engages with content —whether through liking, commenting, pausing, or rage-watching— the system deploys a cluster of categorically similar material. This recurrence fosters two dominant psychological outcomes:
If the user enjoys the content, they may perceive the algorithm as insightful or “smart,” attributing agency or personalization where none exists.
If the user dislikes the content, they may continue engaging in a doomscroll or outrage spiral, reinforcing the same cycle through negative affect.
In both scenarios, engagement is preserved; thus, profit is ensured.
3. The Illusion of Uniqueness
A critical mechanism in this system is the exploitation of the human tendency to overestimate personal uniqueness. Drawing on techniques long employed by illusionists, scammers, and cold readers, platforms capitalize on common patterns of thought and behavior that are statistically widespread but perceived as rare by individuals.
Examples include:
Posing prompts or content cues that seem personalized but are statistically predictable (e.g., "think of a number between 1 and 50 with two odd digits” → most select 37).
Triggering cognitive biases such as the availability heuristic and frequency illusion, which make repeated or familiar concepts appear newly significant.
This creates a reinforcing illusion: the user feels “understood” because the system has merely guessed correctly within a narrow set of likely options. The emotional resonance of the result further conceals the crude probabilistic engine behind it.
4. Emotional Engagement as Systemic Currency
The underlying goal is not understanding, but reaction. These systems optimize for time-on-platform, not user well-being or cognitive autonomy. Anger, sadness, tribal validation, fear, and parasocial attachment are all equally useful inputs. Through this lens, the algorithm is less an intelligent system and more an industrialized Skinner box: an operant conditioning engine powered by data extraction.
By removing the need for interpretive complexity and relying instead on scalable, binary psychological manipulation, companies minimize operational costs while maximizing monetizable engagement.
5. Black-Box Mythology and Cognitive Deference
Compounding this problem is the opacity of these systems. The “black-box” nature of proprietary algorithms fosters a mythos of sophistication. Users, unaware of the relatively simple statistical methods in use, ascribe higher-order reasoning or consciousness to systems that function through brute-force pattern amplification.
This deference becomes part of the trap: once convinced the algorithm “knows them,” users are less likely to question its manipulations and more likely to conform to its outputs, completing the feedback circuit.
6. Conclusion
The supposed sophistication of engagement algorithms is a carefully sustained illusion. By funneling user behavior into binary categories and exploiting universally predictable psychological responses, platforms maintain the appearance of intelligent personalization while operating through reductive, low-cost mechanisms. Human cognition —biased toward pattern recognition and overestimation of self-uniqueness— completes the illusion without external effort. The result is a scalable system of emotional manipulation that masquerades as individualized insight.
In essence, the algorithm does not understand the user; it understands that the user wants to be understood, and it weaponizes that desire for profit.
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