The Algorithmic Self-Portrait: Deconstructing Memory in ChatGPT
Abstract
To enable personalized and context-aware interactions, conversational AI systems have introduced a new mechanism: Memory. Memory creates what we refer to as the Algorithmic Self-portrait - a new form of personalization derived from users' self-disclosed information divulged within private conversations. While memory enables more coherent exchanges, the underlying processes of memory creation remain opaque, raising critical questions about data sensitivity, user agency, and the fidelity of the resulting portrait. To bridge this research gap, we analyze 2,050 memory entries from 80 real-world ChatGPT users. Our analyses reveal three key findings: (1) A striking 96% of memories in our dataset are created unilaterally by the conversational system, potentially shifting agency away from the user; (2) Memories, in our dataset, contain a rich mix of GDPR-defined personal data (in 28% memories) along with psychological insights about participants (in 52% memories); and (3)~A significant majority of the memories (84%) are directly grounded in user context, indicating faithful representation of the conversations. Finally, we introduce a framework-Attribution Shield-that anticipates these inferences, alerts about potentially sensitive memory inferences, and suggests query reformulations to protect personal information without sacrificing utility.
Cite
@article{arxiv.2602.01450,
title = {The Algorithmic Self-Portrait: Deconstructing Memory in ChatGPT},
author = {Abhisek Dash and Soumi Das and Elisabeth Kirsten and Qinyuan Wu and Sai Keerthana Karnam and Krishna P. Gummadi and Thorsten Holz and Muhammad Bilal Zafar and Savvas Zannettou},
journal= {arXiv preprint arXiv:2602.01450},
year = {2026}
}
Comments
This paper has been accepted at The ACM Web Conference 2026