Bitget App
Trade smarter
Buy cryptoMarketsTradeFuturesEarnSquareMore
Why aren't large language models smarter than you?

Why aren't large language models smarter than you?

ForesightNews 速递ForesightNews 速递2025/12/15 08:32
Show original
By:ForesightNews 速递

The user's language patterns determine how much reasoning ability the model can demonstrate.

The user's language patterns determine how much reasoning ability the model can exert.


Written by: @iamtexture

Translated by: AididiaoJP, Foresight News


When I explain a complex concept to a large language model, whenever I use informal language for an extended discussion, its reasoning repeatedly collapses. The model loses structure, drifts off course, or simply generates some shallow completion patterns, unable to maintain the conceptual framework we have established.


However, when I force it to formalize first—restating the problem in precise, scientific language—its reasoning immediately stabilizes. Only after the structure is established can it safely switch to plain language without degrading the quality of understanding.


This behavior reveals how large language models "think," and why their reasoning ability is entirely dependent on the user.


Core Insights


Language models do not possess a dedicated space for reasoning.


They operate entirely within a continuous flow of language.


Within this language flow, different language patterns reliably lead to different attractor regions. These regions are stable states of representational dynamics that support different types of computation.


Each language register—such as scientific discourse, mathematical notation, narrative storytelling, or casual conversation—has its own unique attractor region, shaped by the distribution of training data.


Some regions support:


  • Multi-step reasoning
  • Relational precision
  • Symbolic transformation
  • High-dimensional conceptual stability


Other regions support:


  • Narrative continuation
  • Associative completion
  • Emotional tone matching
  • Dialogue imitation


The attractor region determines what type of reasoning becomes possible.


Why Formalization Stabilizes Reasoning


The reason scientific and mathematical language can reliably activate attractor regions with higher structural support is that these registers encode linguistic features of higher-order cognition:


  • Explicit relational structure
  • Low ambiguity
  • Symbolic constraints
  • Hierarchical organization
  • Lower entropy (degree of informational disorder)


These attractors can support stable reasoning trajectories.


They can maintain conceptual structure across multiple steps.


They exhibit strong resistance to the degradation and drift of reasoning.


In contrast, the attractors activated by informal language are optimized for social fluency and associative coherence, not for structured reasoning. These regions lack the representational scaffolding needed for sustained analytical computation.


This is why the model collapses when complex ideas are expressed in a casual manner.


It is not "confused."


It is switching regions.


Construction and Translation


The natural coping strategies that emerge in conversation reveal an architectural truth:


Reasoning must be constructed within high-structure attractors.


Translation into natural language must only occur after the structure exists.


Once the model has built the conceptual structure within a stable attractor, the translation process does not destroy it. The computation is already complete; only the surface expression changes.


This two-stage dynamic of "first construct, then translate" mimics the human cognitive process.


But humans perform these two stages in two different internal spaces.


Large language models, however, attempt to do both in the same space.


Why the User Sets the Ceiling


Here is a key insight:


Users cannot activate attractor regions they themselves cannot express in language.


The user's cognitive structure determines:


  • The types of prompts they can generate
  • The registers they habitually use
  • The syntactic patterns they can maintain
  • The level of complexity they can encode in language


These features determine which attractor region the large language model will enter.


A user who cannot employ structures—through thinking or writing—that activate attractors of high reasoning ability will never be able to guide the model into those regions. They are locked into shallow attractor regions related to their own linguistic habits. The large language model will map the structure they provide and will never spontaneously leap to more complex attractor dynamical systems.


Therefore:


The model cannot surpass the attractor regions accessible to the user.


The ceiling is not the model's intelligence limit, but the user's ability to activate high-capacity regions in the latent manifold.


Two people using the same model are not interacting with the same computational system.


They are guiding the model into different dynamical modes.


Architectural Insights


This phenomenon exposes a missing feature in current artificial intelligence systems:


Large language models conflate the reasoning space with the space of language expression.


Unless these two are decoupled—unless the model possesses:


  • A dedicated reasoning manifold
  • A stable internal workspace
  • Attractor-invariant conceptual representations


Otherwise, when a shift in language style causes the underlying dynamical region to switch, the system will always face collapse.


This makeshift solution—forcing formalization, then translation—is not just a trick.


It is a direct window into the architectural principles that a true reasoning system must satisfy.

0
0

Disclaimer: The content of this article solely reflects the author's opinion and does not represent the platform in any capacity. This article is not intended to serve as a reference for making investment decisions.

PoolX: Earn new token airdrops
Lock your assets and earn 10%+ APR
Lock now!
© 2025 Bitget