This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.
ApartSprints
Women in AI Safety Hackathon
679781551b57b97e23660edd
Women in AI Safety Hackathon
March 10, 2025
Accepted at the 
679781551b57b97e23660edd
 research sprint on 

Beyond Statistical Parrots: Unveiling Cognitive Similarities and Exploring AI Psychology through Human-AI Interaction

Recent critiques labeling large language models as mere "statistical parrots" overlook essential parallels between machine computation and human cognition. This work revisits the notion by contrasting human decision-making—rooted in both rapid, intuitive judgments and deliberate, probabilistic reasoning (System 1 and 2) —with the token-based operations of contemporary AI. Another important consideration is that both human and machine systems operate under constraints of bounded rationality. The paper also emphasizes that understanding AI behavior isn’t solely about its internal mechanisms but also requires an examination of the evolving dynamics of Human-AI interaction. Personalization is a key factor in this evolution, as it actively shapes the interaction landscape by tailoring responses and experiences to individual users, which functions as a double-edged sword. On one hand, it introduces risks, such as over-trust and inadvertent bias amplification, especially when users begin to ascribe human-like qualities to AI systems. On the other hand, it drives improvements in system responsiveness and perceived relevance by adapting to unique user profiles, which is highly important in AI alignment, as there is no common ground truth and alignment should be culturally situated. Ultimately, this interdisciplinary approach challenges simplistic narratives about AI cognition and offers a more nuanced understanding of its capabilities.

By 
Aisulu Zhussupbayeva
🏆 
4th place
3rd place
2nd place
1st place
 by peer review
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.

This project is private