Almost 3 years ago I wrote a post entitled "If Applied Econometrics Were Easy LLMs Could Do it." Since then the technical capabilities of AI have progressed, but the advancements only reinforce some of the main takeaways from that post:
"There are risks when these tools are used like Dunning-Kruger-as-a-Service (DKaaS), where the critical thinking and actual learning begins and ends with prompt engineering and a response. We have to be very careful to recognize as Philip Tetlock describes in his book "Superforecasters" that there is a difference between mimicking and reflecting meaning vs. originating meaning. To recognize that it’s not just what you know that matters, but how you know what you know. The second-handed tendency to believe that we can or should be outsourcing, nay, sacrificing our thinking to AI in exchange for misleading if not false promises about value, is philosophically and epistemically disturbing."
The Main Takeaway or BLUF:
The overall implication of this post is that how we use AI can impact what we learn and how we learn. At a certain point the how starts to matter more than the what, undermining our long term growth and capabilities as individuals, profitability of businesses, and eventually in society overall.
In this post I want to expand on this epistemically disturbing theme from my prior post given how rapidly AI capabilities are advancing. This is a long post - some may want to skip to the summary and conclusions at the end of the post and then come back to sections of interest. Or use AI to summarize the main points :)
Disclaimer: AI was not used in any direct way to write this post. Any related Google searches were appended with '-ai' to avoid inadvertent influence of default AI summaries generated by a search.
Background:
My prior post also gets into lots of other things like AI and causality and working with AI mostly in the context of on doing applied econometrics. If you want to get a flavor of just how much AI may be influencing the way econometrics gets done, check out some of Scott Cunningham's work or Claude Blattman by Chris Blattman.
Tyler Cowen at Marginal Revolution has had several posts discussing how AI is impacting economic research like this post - Will AI Kill the Research Paper? In her post AI, Price Theory, and the Future of Economics Research, Lynn Kiesling offers a perspective focusing on the impact of AI on workflows and what skills will become differentiators for economists of the future, with a Hayekian take of course. Brian Albrecht chimes in on this too. Both Kiesling and Albrecht discuss how AI can change workflows and reduce the costs of execution, but this will actually make economic reasoning more important.
Albrecht states: "The question I would focus on is...whether the world still needs people who can hear a claim about the economy and ask whether it makes sense."
His post makes the answer an obvious yes: "Those are not questions that more data answers. They require economic reasoning about what’s generating the patterns in the first place...automating the technique doesn’t automate the reasoning about whether the technique’s output makes sense. It increases the volume of output that needs reasoning applied to it."
I think the question behind the question Albrecht asks above, and a key theme of this post is, whether the use of AI will eventually erode our ability to provide that kind of mainline economic reasoning? Or human reasoning in general for that matter?
So What's New Besides Even More Advanced AI?
Since my last post, recent publications in this space have expanded on the consequences of use of more advanced AI in society. Specifically I will be drawing from a recent NBER working paper: AI, Human Cognition and Knowledge Collapse as well as other related work. In this paper authors consider how generative AI, and in particular agentic AI, shapes human learning incentives and the long-run evolution of society’s information ecosystem. In this paper they build a dynamic model of learning and decision-making and discuss the implications. They discuss how there is dynamic tension in that AI can improve decision quality today, but erode learning incentives that sustain long term collective knowledge, potentially even leading to a total knowledge collapse where "in the long-run equilibrium all human knowledge is destroyed."
I will be drawing a lot from the paper and other work they cited along with a few other resources.
In this post I am not setting out to prove anything, or empirically defend any specific hypotheses (I'll leave that to the AI researchers and academic economists). My goal is to only to draw parallels between this recent work and build on my prior thoughts on the implications of the use of AI and knowledge in society.
First I will give a brief overview of my understanding of the paper and their model. Then I want to discuss both micro-level and macro-level implications. At the micro level I want to discuss the impacts on the individuals and businesses. At the macro level I want to discuss implications for society as a whole.
AI, Human Cognition, and Knowledge Collapse - Summary
The paper discusses the role of substitution effects, complements, economies of scope, and externalities in the production and use of knowledge and decision making as it relates to AI. When people put forth the effort to learn without AI, there is a private benefit in that what is learned helps make better decisions. This private knowledge is also complemented by the existing stock of public knowledge. AI can leverage public knowledge and produce context specific (local) knowledge and recommendations to individuals. This also supports better decision making, but at a lower cost because AI substitutes for individual learning effort. It is important to note that without AI, individual learning often contributes a marginal amount of new knowledge to society's stock of general knowledge. This joint production of individually useful specific and public general knowledge represents economies of scope in the production of knowledge. We know that new knowledge plays an important role in human progress and sustainable economic growth over time as pointed out by Arrow and his work related to learning and doing and the role of knowledge (1962) and more recently Romer's growth models with endogenous technological change. At the same time, individuals don't necessarily directly benefit from their contribution of new knowledge to the public stock of knowledge (also discussed in Arrow). So private production of public knowledge comes at an uncompensated cost resulting in a positive externality to society. The private benefit and lower cost of learning that AI delivers reduces individual effort in knowledge production given the uncompensated positive externality. I'll stop there and return to the paper's treatment of macro level impacts later. First I want to discuss micro level implications of the model.
A Microeconomic Persepective of the Use of Knowledge in Society
Individual Level Impacts
In my last post I called out a few examples of how we might use AI at the individual level and where things can go wrong. One example is attempting to use AI as a research assistant:
[What this leaves out is] how much you get out of putting your hands on a paper or book and going through it and wrestling with the ideas, the paths leading from from hypotheses to the conclusions, and how the cited references let you retrace the steps of the authors to understand why, either slowly nudging your priors in new directions or reinforcing your existing perspective, and synthesizing these ideas with your own. Then summarizing and applying and communicating this synthesis with others. ChatGPT might give the impression that is what it is doing in a fraction of the time you could do it (literally seconds vs. hours or days)....There is a big difference between the learning that takes place when you go through this process of integrative complex thinking vs. just reading a summary delivered on a silver platter from chatGPT. I’m skeptical what I’m describing can be outsourced to AI without losing something important....How much knowledge and important nuance is lost with every [updated query to AI]? What is missed? Thinking! [and learning]
This parallels much of what is discussed in the NBER working paper. They state these sorts of issues more formally in their modeling assumptions as they relate to the substitution and crowding out effects of AI and knowledge generation.
There is also other evidence related to negative individual effects of using AI called out within the NBER paper.
In Your Brain on ChatGPT: Accumulation of Cognitive Debt when Using an AI Assistant for Essay Writing Task, Kosmyna et. al discuss the impact of using AI for writing tasks:
While LLMs offer immediate convenience, our findings highlight potential cognitive costs. Over four months, LLM users consistently underperformed at neural, linguistic, and behavioral levels. These results raise concerns about the long-term educational implications of LLM reliance and underscore the need for deeper inquiry into AI's role in learning.
In AI Tools in Society: Impacts on Cognitive Offloading and the Future of Critical Thinking, Gerlich finds a significant negative correlation between frequent AI tool usage and critical thinking abilities with a worse effect among younger learners compared to older subjects. Other researchers Budiyono et al. (2025) have made similar findings:
"Reliance on AI writing tools significantly reduced cognitive effort and creativity, overshadowed personal writing styles, and led to a decline in confidence and skill retention. These results suggest that, while AI tools enhance efficiency and technical accuracy, over-reliance on them may hinder the development of critical thinking, creativity, and independent writing skills"
This surfaces the importance of critical thinking in the face of increased reliance on AI tools and the need to mitigate the negative effects of AI on those thinking skills. As Kiesling notes in her blog post, "the profession will have to rethink how it cultivates judgment when many traditional apprenticeship tasks have been automated." That likely goes for all professions and something businesses need to think about when it comes to developing talent in our future workforce.
Impact at the Business Level
In my pior post I noted:
AI is not capable of doing these things [actual thinking tasks], and believing and even attempting or pretending that we can get these things on a second-handed basis from an AI tool will ultimately erode the real human skills and capabilities essential to real productivity and growth over the long run. If we fail to accept this we will hear a giant sucking sound that is the ROI we thought we were going to get from AI in the short run by attempting to automate what can't be automated. That is the false promise of a tools and technology mindset.
These seem to be related to the implications of substitution effects and crowding out in the paper, but impacting the firm level.
I also discussed a point made by Cassie Kozrykov in a video where she discussed these issues:
"that may be the biggest problem, that management has not learned how to manage thinking...vs. what you can measure easily....thinking is something you can't force, you can only get in the way of it."
She elaborates a bit more about this in her LinkedIn post: "A misguided view of productivity could mean lost jobs for workers without whom organizations won't be able to thrive in the long run - what a painful mistake for everyone."
In her blog post mentioned earlier, Kiesling makes an important observation related to this line of thinking: "If AI cheapens formalized information processing, then tacit knowledge, local knowledge, judgment, and institutional understanding may rise in relative value." But recent research (Ide, 2025) indicates that one of the downsides of reliance on AI is that "tools that automate entry-level tasks" are "likely to disrupt the diffusion of tacit knowledge" especially to novice workers.
This could eventually lead to less productive firms as overtime the work force becomes less knowledgeable than the least knowledgeable pre-AI solvers. In other words, AI will put a premium on expertise, but if the level of available expertise erodes over time with the use of AI, it could ultimately erode productivity and firm value. (see also Ide and Talamas, 2025 for more implications). Next I will turn to the potential aggregate impact of these forces on society overall.
Impacts on Society
The paper discusses how more accurate AI benefits the individual and reduces their required effort to learn (direct effect). However this reduction in private effort comes at a potential cost to society - the loss or crowding out of of any marginal production of new knowledge (indirect effect).
The substitution and crowding out effects of AI can lead to long term reductions in the stock of public knowledge, and in certain situations the author's model shows this can lead to a knowledge collapse.
Specifically this is tied to the level of AI accuracy. When AI recommendations exceed an accuracy threshold, the economy can tip into a knowledge collapse steady state in which general knowledge vanishes ultimately despite high quality personalized advice. That implies the better and more accurate the AI the worse things can get.
I'll have more to discuss about societal impacts below.
Conclusions
So what is my perspective on the takeaways for individuals, firms, and society? First an important distinction. In my earlier post I talked about the distinctions Cassie Kozrykov made between thinking and what she called thunking:
"[thunking includes] things that consume our time and resources but don't require thinking. Having done your homework, the kind of summary information you get from an LLM can help reinforce your thinking and learnings and save time in terms of manually googling or looking up a lot of things you once knew but have forgotten."
So when AI is used for thunking, for example scanning a form to make sure it is complete or checking for errors, or extracting key topics from a chat or call transcript, etc., the substitution and crowding out effects in the paper would be minimal and so would not have the detrimental impacts on learning and society's stock of knowledge. The negative effects of AI arise when AI is used for thinking tasks.
Impacts on Early Career Individuals
For those early in their career the substitution and crowding out effects mentioned above may be challenging and require making strategic tradeoffs. They need to think carefully about how they use AI. Fully embracing AI for thunking makes sense, but they should be cautious about using it for thinking tasks where they may miss out on learning, personal growth and development opportunities. A bigger challenge may be that opportunities for learning and development could be eliminated through automation (as discussed in Ide, 2025).
Impacts on Seasoned Professionals and Expertise
I might speculate that for those that have already gained lots of training and experience before AI, the substitution and crowding out effects would be minimal. They might use AI for thinking tasks, and going forward not notice overtime any depreciation in their skills. In other words, they already have sufficient human capital to draw on and could complement that with AI giving them a competitive advantage (capital complements labor). However I think their personal contribution to society's stock of knowledge would be ambiguous.
Will AI reduce the demand for expertise? In the short term we might be deluded by AI to think that it is mimicking expertise. So at first returns to expertise may drop as companies try to cut costs in the short run. However, as noted in Ide (2025) and if we think about the points made by Albrecht and Kiesling above, as AI shifts margins, certain kinds of expertise become important, the kinds of knowledge and judgment that isn't going to be in any training data for AI to access and learn from.
"In a world where production becomes abundant, discernment becomes relatively scarce and thus relatively more valuable. What matters more is the ability to decide....what assumptions are plausible, which results travel across contexts, and what pattern in the evidence actually matters."
This really gets to the heart of Hayek's knowledge problem, know how and know what are still going to be dispersed across many minds, and unavailable to any centralized decision maker with or without AI no matter how powerful AI becomes. The problem of managing dispersed knowledge remains. And one of the key points to this whole discussion is accepting the fact that how you know what you know matters as much as what you know when it comes to making better decisions. So expertise focused on managing and solving these problems ('solvers' as denoted in Ide, 2025) and the need for advice will still command a premium in a world with AI - especially if AI leads to an erosion of the general stock of knowledge and expertise in the future according to the model discussed above. As Ide and Talamas (2025) note - more knowledgeable workers will likely benefit disproportionately from AI. This is emphasized more in the discussion about implications for businesses below.
Impacts on Businesses
The use of AI for thunking tasks will be areas where there is obvious business value from AI. But a big challenge for business firms will be how do you take adavantage of productivity gains of AI and remain competitive while cultivating knowledge and judgment among employees if you are also automating away opportunities to learn? How do you avoid eroding the stock of knowledge at the firm level?
We know, taking a knowledge based theory of the firm, that the value of the firm is the sum of its decisions, and better decisions require knowledge. A firm's portfolio of knowledge assets becomes a source of value and competitive advantage (Grant, 2010). If the model in the NBER article is realistic, and there are substitution, externalities, and crowding out effects from AI, how do firms manage this portfolio in an age of AI without cannibalizing their most precious assets?
Comments from Kiesling are worth repeating: "If AI cheapens formalized information processing, then tacit knowledge, local knowledge, judgment, and institutional understanding may rise in relative value."
Ide (2025) emphasizes the importance of "expanding novices’ access to high-quality mentorship" from experts that have likely accumulated tacit knowledge and expertise over their careers prior to relying on AI. This will put a premium on expertise and experience, while at the same time require investing in the professional development of novices whose learning opportunities are being automated away. How do firms encourage workers to invest in learning and producing knowledge essential to growth and competitive advantage? Without the right incentive structures and professional development strategies, opportunities will likely be automated away and/or workers will take advantage of the substitution effects of AI. If this is the direction AI takes us, the next generation of workers will lack expertise, and they won't contribute to the growing stock of knowledge necessary for sustained competitive advantage at the firm level.
Impacts on Society
If we think about growth models in economics we have to wonder if AI will enhance economic growth through technological change, or will the use of AI actually lead to knowledge collapse (as in the NBER paper) and stagnation? As Robert Lucas once said regarding economic growth and development: "The consequences for human welfare involved in questions like these are simply staggering: Once one starts to think about them, it is hard to think about anything else."
Going back to my original post - I think again Cassie Kozrykov makes an important point:
"when you are not the one making the decision and it looks like the machine is doing it, there is someone who is actually making that decision for you...and I think that we have been complacent and we have allowed our technology to be faceless....how will we hold them accountable....for wisdom...thinking is our responsibility"
As I said in that post - thinking is a moral responsibility. Outsourcing our thinking and fooling ourselves into believing that we can get knowledge and wisdom and judgment second-handed from a summary written by an AI tool, believing that is the same thing and provides the same value as what we could produce as thinking humans, is a dangerous illusion.
Thinking is the means by which the human race and civil society thrives and survives. That may not be a solution that can easily be turned into a business strategy or law, but it is the answer.
Afterward: Some Connections in Literature, Philosophy, and Religion
In this section I want to discuss some loose but related connections I have made from literature, philosophy and religion.
- In many thoughts and discussions about AI, I can't help but think about this quote from Dune, by Frank Herbert: “Once men turned their thinking over to machines in the hope that this would set them free. But that only permitted other men with machines to enslave them.”
- Who is John Galt? This is a reference to Atlas Shrugged by Ayn Rand. In her description, this novel was about what happens to the world when society abandons reason and the producers and 'thinkers' go on strike. According to the Atlas Society, the phrase 'who is John Galt ?' was was a kind of verbal shrug, an expression of a resigned futility in the face of a world falling apart. A despairing admission that things are unknowable and unfixable. You could imagine that as a valid response in a future world with knowledge collapse and fading wisdom. https://www.atlassociety.org/post/who-is-john-galt-2
This excerpt gives an idea:
"The source of all evil is that nameless act which all of you practice...the act of blanking out, the willful suspension of one's consiousness, the refusal to think, not blindness, not ignorance, the refusal to know. It is the act of unfocusing your mind and inducing an inner fog to evade the responsibility of judgment."
- In The Fountainhead, Rand emphasizes the importance of individuality and thinking for oneself vs. relying on others to think for you - an act she refers to as second-handedness:
“That, precisely, is the deadliness of second-handers… Not to judge, but to repeat. Not to do, but to give the impression of doing….What would happen to the world without those who do, think, work, produce?…You don't think through another's brain and you don't work through another's hands. When you suspend your faculty of independent judgment, you suspend consciousness. To stop consciousness is to stop life.”
- In his article "Idols of the Valley", Yuval Levin writes about Pope Leo XIV's encyclical about AI, Magnifica Humanitas. He discusses, in a sense, the moral and religious implications of the substitution effects (or shortcuts) of AI, as a form of idolatry:
"...the danger to which Pope Leo is pointing...is the danger of turning our tools into idols, and thereby of becoming little more than tools ourselves. It is a danger that afflicts those who make these idols, and also threatens those who put their trust in them. The appeal of idols has always been that they offer shortcuts. The God of the Bible demands that you live in a way that forms your mind and heart and soul toward your fullest human potential. This requires hard work but it yields a kind of person both capable and worthy of a flourishing life. The idol offers the material benefits of such a life without that formative work...This plainly rhymes with some of the deepest moral challenges posed to us by artificial intelligence. AI, at least used a certain way, offers us shortcuts around formative work, matching outputs with inputs without the need for the interceding effort of mind, heart, and soul. If all you care about are the outputs, not the form of your mind, heart, and soul, then the offer is awfully hard to resist....various idolatries offer us shortcuts that promise the benefit without the work: Just turn yourself into a tool and you will be more productive without more effort. This is of course just what Magnifica Humanitas warns of. It is what AI at its most idolatrous and dangerous can offer. That doesn’t have to be what AI is in our experience — not at all. But it can be if we aren’t careful."
- Can AI actually think? A lot of the discussion in all of the above is in a sense about the tensions between using AI for thinking vs. thunking. Again, Cassie Kozrykov has a position on this: "AI does not automate thinking. It doesn't! There is a lot of strange rumblings about this that sound very odd to me who has been in this space for 2 decades." That may be a good reason why she advocates for using AI for what she calls thunking tasks but against thinking tasks.
- From a purely metaphysical perspective, there may be good reason to believe that no matter what advancements are made in neuroscience or computer science, machines will never truly be able to think as humans do. In his book Immortal Souls, philosopher Ed Feser makes this case.
- In his critique of AI, Feser states: "The contemporary obsession with computers as a model for the human mind is a wild goose chase." If I were to crudely summarize some of his arguments I would start by considering what does it mean to think? Thoughts are required to think. What do thoughts require? Thoughts require things like abstract concepts and universals all of which are immaterial - they have no matter and take up no space. It follows that formal thought processes cannot be material. Ergo machines, which are wholly material cannot have thought processes and cannot think.
- Another way of thinking about this is in terms of immanent vs. transuent causation which Feser discusses in more detail in his book Aristotle's Revenge: The Metaphysical Foundations of Physical and Biological Science. Feser describes an immanent causal process as one that originates within an agent on its own. It is a teleological process that points to or aims toward the realization of ends. It is basically having an intention and acting on it - which is what we think of minds being able to do. Transuent causal processes are imposed on objects and terminate outside an agent. This would be like a boulder rolling down a hill or gears in clocks keeping time,..physical processes like computers executing code. Thinking he argues, requires immanent causal processes.
- But with advances in computer science and our understanding of neuroscience, could machines actually think if we make them complex enough? Could thinking be an emergent property of physical processes? Feser Argues that increasing complexity is simply a matter of increasing the complexity of transuent causal processes. He states: "you can add to a transuent causal process all the further transuent causal processes you like but you will never get immanent causation out of it. The most you will get is something that might look like immanent causation, just as a polygon with sufficiently many sides might look like a circle...thinking is an activity that cannot be coherently analyzed in terms of transuent causation alone." As philosopher J.P Morland states: "pointing to emergence is simply to slap a label on a problem rather than solve it."
- One might attempt to bypass Feser's arguments by denying the distinction between transuent and immanent causal processes and simply eliminate immanent causal processes from our picture of reality. But this is hard to do coherently. As Feser argues: "the eliminativist has to carry out immanent causal activity in the very act of denying that there is such a thing as immanent causal activity. His position is incoherent." As M.R. Bennett and P.M.S. Hacker have noted "the eliminativist saws off the branch on which he is seated."
Related Posts
If Applied Econometrics Were Easy, LLMs Could Do It https://econometricsense.blogspot.com/2023/07/if-applied-econometrics-were-easy-llms.html
Statistics is a Way of Thinking Not a Just a Box of Tools. https://econometricsense.blogspot.com/2020/04/statistics-is-way-of-thinking-not-just.html
Will There Be a Credibility Revolution in Data Science and AI? https://econometricsense.blogspot.com/2018/03/will-there-be-credibility-revolution-in.html
R.A. Fisher, Big Data, and Pretended Knowledge. https://econometricsense.blogspot.com/2021/07/ra-fisher-big-data-and-thinking-like.html
Experimentation and Causal Inference Meet the Knowledge Problem. https://econometricsense.blogspot.com/2020/04/the-value-of-business-experiments-and.html
References
Kenneth J Arrow. The economic implications of learning by doing. The review of economic studies, 29(3):155–173, 1962a.
Philosophical Foundations of Neuroscience. 1st Ed. M. R. Bennett, P. M. S. Hacker. Blackwell. 2003
Herman Budiyono, M Pudjaningsih, B Prastio, and A Maulidina. Exploring the long-term impact of ai writing tools on independent writing skills: a case study of indonesian language education students. International Journal of Information and Education Technology, 15(5):1003–1013, 2025.
Aristotle's Revenge: The Metaphysical Foundations of Physical and Biological Science. Edward Feser. 2019.
Immortal Souls: A Treatise on Human Nature. Edward Feser. 2024.
Grant, Robert M. Contemporary Strategy Analysis. 7th Edition. John Wiley and Sons. U.K. (2010).
The Use of Knowledge in Society. F. A. Hayek. The American Economic Review, Vol. 35, No. 4. (Sep., 1945), pp. 519-530
Enrique Ide. Automation, ai, and the intergenerational transmission of knowledge. arXiv preprint arXiv:2507.16078, 2025. Journal of Political Economy, 133(12):3762–3800, 2025.
Enrique Ide and Eduard Talam`as. Artificial intelligence in the knowledge economy. Journal of Political Economy, 133(12):3762–3800, 2025.
Nataliya Kosmyna, Eugene Hauptmann, Ye Tong Yuan, Jessica Situ, Xian-Hao Liao, Ashly Vivian Beresnitzky, Iris Braunstein, and Pattie Maes. Your brain on chatgpt: Accumulation of cognitive debt when using an ai assistant for essay writing task. arXiv preprint arXiv:2506.08872, 2025.
Thunking vs Thinking: Whose Job Does AI Automate? Which tasks are on AI’s chopping block? Cassie Kozrykov. https://kozyrkov.medium.com/thunking-vs-thinking-whose-job-does-ai-automate-959e3585877b