Bayesian adaptive estimation: The next dimension |
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Authors: | Janne V. Kujala Tuomas J. Lukka |
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Affiliation: | a University of Jyväskylä, Agora Center, P.O. Box 35, FI-40014, Finland b Hybrid Graphics, Et. Makasiinikatu 4, FI-00130 Helsinki, Finland |
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Abstract: | We propose a new psychometric model for two-dimensional stimuli, such as color differences, based on parameterizing the threshold of a one-dimensional psychometric function as an ellipse. The Ψ Bayesian adaptive estimation method applied to this model yields trials that vary in multiple stimulus dimensions simultaneously. Simulations indicate that this new procedure can be much more efficient than the more conventional procedure of estimating the psychometric function on one-dimensional lines independently, requiring only one-fourth or less the number of trials for equivalent performance in typical situations. In a real psychophysical experiment with a yes-no task, as few as 22 trials per estimated threshold ellipse were enough to consistently demonstrate certain color appearance phenomena. We discuss the practical implications of the multidimensional adaptation. In order to make the application of the model practical, we present two significantly faster algorithms for running the Ψ method: a discretized algorithm utilizing the Fast Fourier Transform for better scaling with the sampling rates and a Monte Carlo particle filter algorithm that should be able to scale into even more dimensions. |
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Keywords: | Bayesian adaptive method Psychometric function Two-dimensional stimuli Fast Fourier Transform Particle filter algorithm Markov chain Monte Carlo |
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