Title :
Small data-set EKF-based parameter estimation for a behavior-modification model
Author :
N. Parsotam;D. E. Davison
Author_Institution :
Department of Electrical and Computer Engineering, University of Waterloo, Ontario, N2L 3G1, Canada
Abstract :
In this work we investigate the use of Extended Kalman Filter (EKF) methods to identify parameters in a nonlinear model. The model, derived in earlier work, describes how a person behaves when he or she is offered a sequence of rewards to carry out a task for which his or her initial attitude is negative. A main conclusion of the paper is that EKF methods can be used to effectively estimate a single parameter, but due to observability problems, estimation of multiple parameters is ineffective. Monte Carlo simulations are used to thoroughly study the performance of the EKF-based estimator to estimate a parameter (related to cognitive dissonance that is experienced by the person making the decision) in cases where only 5, 10, or 20 data samples are available. In addition, preliminary experimental results, based on experiments with 10 data samples, support the validity of the underlying model and demonstrate feasibility of the EKF approach for estimation of the cognitive-dissonance parameter, despite the small size of the data set.
Keywords :
"Mathematical model","Observability","Estimation error","Noise measurement","Parameter estimation"
Conference_Titel :
Control Applications (CCA), 2015 IEEE Conference on
DOI :
10.1109/CCA.2015.7320696