HyperTransport: Amortized Conditioning of T2I Generative Models
Valentino Maiorca, Eleonora Gualdoni, Xavier Suau, Marco Cuturi, Luca Zappella, Pau Rodr\'iguez

TL;DR
HyperTransport is a hypernetwork framework that enables fast, stable, and interpretable control of generative models for unseen concepts, significantly reducing optimization time.
Contribution
It introduces HyperTransport, a hypernetwork that amortizes concept intervention costs, enabling rapid, stable, and cross-modal concept control in generative models.
Findings
HyperTransport produces interventions 3600-7000x faster than per-concept fitting.
It matches the strongest per-concept baselines on unseen concepts.
Human and VLM judges prefer HyperTransport over prompting about twice as often.
Abstract
As foundation models grow in capability, the ability to efficiently and reliably control their behavior becomes critical. Fine-tuning these models can be costly, and while prompting can be practical for controllability, it remains fragile due to models' high sensitivity to exact prompt wording and structure. This brittleness has driven interest in activation steering techniques that offer more stable and predictable control over model behavior. However, existing activation steering methods require per-concept optimization, which makes them ill-suited to deployment scenarios where the concept set is large, evolving, or only specified at request time: each new concept incurs at least minutes of optimization on the target model. We propose HyperTransport, a hypernetwork framework that amortizes this cost by mapping embeddings from a pretrained encoder (CLIP in our instantiation) directly…
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