Nonparametric Estimation and Symmetry Tests for Conditional Density Functions
Authors:
Rob J. Hyndman a;
Qiwei Yao b
| Affiliations: | a Department of Econometrics and Business Statistics, Monash University, Clayton VIC 3800, Australia. |
| b Department of Statistics, London School of Economics, Houghton Street, London WC2A 2AE, UK. |
DOI:
10.1080/10485250212374
Publication Frequency:
8 issues per year
Subjects:
Mathematical Economics;
Mathematical Finance;
Medical Statistics;
Statistical Theory & Methods;
Statistics;
Statistics for the Biological Sciences;
Stochastic Models & Processes;
Number of References: 39
Formats available:
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Abstract
We suggest two improved methods for conditional density estimation. The first is based on locally fitting a log-linear model, and is in the spirit of recent work on locally parametric techniques in density estimation. The second method is a constrained local polynomial estimator. Both methods always produce non-negative estimators. We propose an algorithm suitable for selecting the two bandwidths for either estimator. We also develop a new bootstrap test for the symmetry of conditional density functions. The proposed methods are illustrated by both simulation and application to a real data set.
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| Keywords: Bandwidth Selection; Bootstrap; Conditioning; Density Estimation; Kernel Smoothing; Symmetry Tests |
| view references (39) : view citations |

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