HCLGFeb 22, 2025

ZIA: A Theoretical Framework for Zero-Input AI

arXiv:2502.16124v1
Originality Incremental advance
AI Analysis

It addresses anticipatory AI for accessibility, healthcare, and consumer applications, though it appears incremental as a novel framework building on existing methods.

The paper tackles proactive intent prediction without explicit user commands by integrating gaze tracking, bio-signals, and contextual data, achieving 85-90% accuracy with EEG and 60-100 ms latency.

Zero-Input AI (ZIA) introduces a novel framework for human-computer interaction by enabling proactive intent prediction without explicit user commands. It integrates gaze tracking, bio-signals (EEG, heart rate), and contextual data (time, location, usage history) into a multi-modal model for real-time inference, targeting <100 ms latency. The proposed architecture employs a transformer-based model with cross-modal attention, variational Bayesian inference for uncertainty estimation, and reinforcement learning for adaptive optimization. To support deployment on edge devices (CPUs, TPUs, NPUs), ZIA utilizes quantization, weight pruning, and linear attention to reduce complexity from quadratic to linear with sequence length. Theoretical analysis establishes an information-theoretic bound on prediction error and demonstrates how multi-modal fusion improves accuracy over single-modal approaches. Expected performance suggests 85-90% accuracy with EEG integration and 60-100 ms inference latency. ZIA provides a scalable, privacy-preserving framework for accessibility, healthcare, and consumer applications, advancing AI toward anticipatory intelligence.

Foundations

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