Thuật ngữ AI
Từ điển đầy đủ về Trí tuệ nhân tạo
Adaptive Dynamic Optimization
Optimization paradigm where algorithms automatically adjust in real-time to variations in the problem environment, ensuring relevant solutions despite constraint changes.
Dynamic Objective Function
Evaluation function whose parameters and coefficients evolve over time, requiring continuous adaptation of the optimization strategy to maintain optimality.
Change Detection Mechanism
Monitoring system that identifies significant variations in the problem environment, automatically triggering optimization algorithm adaptation strategies.
Adaptive Population Reset
Technique selectively regenerating solutions in the population when diversity becomes insufficient in the face of environmental changes, preserving acquired knowledge.
Spatio-Temporal Evolutionary Memory
Data structure storing effective solutions with their spatio-temporal contexts, enabling intelligent reuse in future similar situations.
Self-Adaptive Hyperparameter Controller
Mechanism automatically adjusting algorithm parameters (mutation rate, population size, selection pressure) based on performance and detected changes.
Dynamic Controlled Diversity
Strategy maintaining an optimal balance between exploration and exploitation by continuously adapting the population diversity level according to the environment state.
Adaptive Online Optimization
Approach where solutions are generated and evaluated sequentially with immediate adaptation to new information, without the possibility of re-evaluating past decisions.
Meta-Learning for Dynamic Optimization
System learning from previous optimization experiences to predict and anticipate necessary adaptations when facing new types of environmental changes.
Adaptive Hybrid Evolutionary Algorithms
Combination of evolutionary operators whose application and parameters are dynamically selected according to the current characteristics of the problem and population.
Dynamic Particle Swarms
Variant of particle swarm optimization where particles adapt their movement and communication behavior in response to environmental changes.
Self-Regulated Simulated Annealing
Simulated annealing algorithm dynamically adjusting its cooling schedule and acceptance policy based on detected changes in the optimization landscape.
Adaptive Multi-Agent Optimization System
Distributed architecture where autonomous agents cooperate and adapt their individual and collective strategies in response to changes in the optimization environment.
Dynamic Ant Colony Optimization
Ant-inspired algorithm where pheromones and decision rules are continuously adjusted to adapt to modifications in the problem environment.