Loyalty Model Simulation Lab: Agent-Based Behavioral Comparison
Loyalty Model Simulation Lab
Agent-based Monte Carlo comparison of baseline models vs network-enhanced approaches. All parameters are adjustable - test your own scenarios.
Methodology
Each simulation initializes agents with behavioral archetypes, then runs weekly time steps where agents make probabilistic decisions based on published research (Kahneman & Tversky, Nunes & Dreze, Kivetz et al., Metcalfe's Law). Both models run under identical initial conditions for fair comparison.
Token Holder Archetypes
Distribution affects cliff severity and long-term retention
Model A: Traditional Staking
Model B: Loyalteez Token Model
Simulation Results
Configure parameters and run simulation
Agent-based Monte Carlo comparison - all parameters are adjustable
Behavioral Science Foundation
Kahneman & Tversky
Loss Aversion (1979)
Losses perceived 2.25x more strongly than gains
Nunes & Dreze
Endowed Progress (2006)
34% higher completion with head start
Kivetz et al.
Goal Gradient (2006)
Effort accelerates near reward thresholds
Lally et al.
Habit Formation (2010)
Average 66 days to form a new habit
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