Enhancing AI System Resiliency: Formulation and Guarantee for LSTM Resilience Based on Control Theory
Yoshihara, Sota, Yamamoto, Ryosuke, Kusumoto, Hiroyuki, Shimura, Masanari
–arXiv.org Artificial Intelligence
This paper proposes a novel theoretical framework for guaranteeing and evaluating the resilience of long short-term memory (LSTM) networks in control systems. We introduce "recovery time" as a new metric of resilience in order to quantify the time required for an LSTM to return to its normal state after anomalous inputs. By mathematically refining incremental input-to-state stability ($δ$ISS) theory for LSTM, we derive a practical data-independent upper bound on recovery time. This upper bound gives us resilience-aware training. Experimental validation on simple models demonstrates the effectiveness of our resilience estimation and control methods, enhancing a foundation for rigorous quality assurance in safety-critical AI applications.
arXiv.org Artificial Intelligence
Aug-6-2025