DSCA: Dynamic Subspace Concept Alignment for Lifelong VLM Editing
Gyanendra Das, Sai Satyam Jena

TL;DR
DSCA introduces a structural approach to lifelong vision language model editing by decomposing the representation space into orthogonal subspaces, enabling precise, non-interfering concept updates and improved stability over multiple edits.
Contribution
The paper proposes a novel method that structurally isolates concepts in VLMs via subspace decomposition, enhancing lifelong editing stability and knowledge retention.
Findings
Achieves 98% success rate in single edits.
Maintains over 95% performance after 1000 sequential edits.
Reduces hallucination by 3-5% and improves backward transfer scores.
Abstract
Model editing aims to update knowledge to add new concepts and change relevant information without retraining. Lifelong editing is a challenging task, prone to disrupting previously learned concepts, especially for Vision Language Models (VLMs), because sequential edits can lead to degraded reasoning and cross modal misalignment. Existing VLM knowledge editing methods based on gated adapters, activation edits, and parameter merging techniques address catastrophic forgetting seen in full fine tuning; however, they still operate in the shared representation space of the VLM, where concepts are entangled, so edits interfere with other non relevant concepts. We hypothesize that this instability persists because current methods algorithmically control edits via optimization rather than structurally separating knowledge. We introduce Dynamic Subspace Concept Alignment (DSCA) which by design…
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