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The psychometric function: II. Bootstrap-based confidence intervals and sampling.

Felix A. Wichmann, +1 more
- 01 Nov 2001 - 
- Vol. 63, Iss: 8, pp 1314-1329
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TLDR
The present paper’s principal topic is the estimation of the variability of fitted parameters and derived quantities, such as thresholds and slopes, and introduces improved confidence intervals that improve on the parametric and percentile-based bootstrap confidence intervals previously used.
Abstract
The psychometric function relates an observer's performance to an independent variable, usually a physical quantity of an experimental stimulus Even if a model is successfully fit to the data and its goodness of fit is acceptable, experimenters require an estimate of the variability of the parameters to assess whether differences across conditions are significant Accurate estimates of variability are difficult to obtain, however, given the typically small size of psychophysical data sets: Traditional statistical techniques are only asymptotically correct and can be shown to be unreliable in some common situations Here and in our companion paper (Wichmann & Hill, 2001), we suggest alternative statistical techniques based on Monte Carlo resampling methods The present paper's principal topic is the estimation of the variability of fitted parameters and derived quantities, such as thresholds and slopes First, we outline the basic bootstrap procedure and argue in favor of the parametric, as opposed to the nonparametric, bootstrap Second, we describe how the bootstrap bridging assumption, on which the validity of the procedure depends, can be tested Third, we show how one's choice of sampling scheme (the placement of sample points on the stimulus axis) strongly affects the reliability of bootstrap confidence intervals, and we make recommendations on how to sample the psychometric function efficiently Fourth, we show that, under certain circumstances, the (arbitrary) choice of the distribution function can exert an unwanted influence on the size of the bootstrap confidence intervals obtained, and we make recommendations on how to avoid this influence Finally, we introduce improved confidence intervals (bias corrected and accelerated) that improve on the parametric and percentile-based bootstrap confidence intervals previously used Software implementing our methods is available

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Citations
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Journal ArticleDOI

The psychometric function: I. Fitting, sampling, and goodness of fit

TL;DR: An integrated approach to fitting psychometric functions, assessing the goodness of fit, and providing confidence intervals for the function’s parameters and other estimates derived from them, for the purposes of hypothesis testing is described.
Journal ArticleDOI

Vergence-accommodation conflicts hinder visual performance and cause visual fatigue.

TL;DR: This display is used to evaluate the influence of focus cues on perceptual distortions, fusion failures, and fatigue and shows that when focus cues are correct or nearly correct, the time required to identify a stereoscopic stimulus is reduced, stereoacuity in a time-limited task is increased, and distortions in perceived depth are reduced.
Journal ArticleDOI

Adaptive procedures in psychophysical research.

TL;DR: The general development of adaptive procedures is described, and typically, a threshold value is measured using these methods, and, in some cases, other characteristics of the psychometric function underlying perceptual performance, such as slope, may be developed.
Journal ArticleDOI

Measuring, estimating, and understanding the psychometric function: a commentary.

TL;DR: This paper examines various psychometric function topics inspired by this special symposium issue of Perception & Psychophysics, examining the relative merits of objective yes/no versus forced choice tasks (including threshold variance).
Journal ArticleDOI

A category-free neural population supports evolving demands during decision-making

TL;DR: This work evaluated rat PPC neurons recorded during multisensory decisions and revealed that the network explored different dimensions during decision and movement, suggesting that a single network of neurons can support the evolving behavioral demands of decision-making.
References
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Book

An introduction to the bootstrap

TL;DR: This article presents bootstrap methods for estimation, using simple arguments, with Minitab macros for implementing these methods, as well as some examples of how these methods could be used for estimation purposes.
Journal ArticleDOI

Bootstrap Methods: Another Look at the Jackknife

TL;DR: In this article, the authors discuss the problem of estimating the sampling distribution of a pre-specified random variable R(X, F) on the basis of the observed data x.
Book

The jackknife, the bootstrap, and other resampling plans

Bradley Efron
TL;DR: The Delta Method and the Influence Function Cross-Validation, Jackknife and Bootstrap Balanced Repeated Replication (half-sampling) Random Subsampling Nonparametric Confidence Intervals as mentioned in this paper.
Journal ArticleDOI

The Advanced Theory of Statistics

Maurice G. Kendall, +1 more
- 01 Apr 1963 - 
Book

Bootstrap Methods and Their Application

TL;DR: In this paper, a broad and up-to-date coverage of bootstrap methods, with numerous applied examples, developed in a coherent way with the necessary theoretical basis, is given, along with a disk of purpose-written S-Plus programs for implementing the methods described in the text.