High-Dimensional Density Ratio Estimation with Extensions to Approximate Likelihood Computation

被引:0
|
作者
Izbicki, Rafael [1 ]
Lee, Ann B. [1 ]
Schafer, Chad M. [1 ]
机构
[1] Carnegie Mellon Univ, Dept Stat, Pittsburgh, PA 15213 USA
关键词
BAYESIAN COMPUTATION;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The ratio between two probability density functions is an important component of various tasks, including selection bias correction, novelty detection and classification. Recently, several estimators of this ratio have been proposed. Most of these methods fail if the sample space is high-dimensional, and hence require a dimension reduction step, the result of which can be a significant loss of information. Here we propose a simple-to-implement, fully nonparametric density ratio estimator that expands the ratio in terms of the cigenfunctions of a kernel-based operator; these functions reflect the underlying geometry of the data (e.g., submanifold structure), often leading to better estimates without an explicit dimension reduction step. We show how our general framework can be extended to address another important problem, the estimation of a likelihood function in situations where that function cannot be well-approximated by an analytical form. One is often faced with this situation when performing statistical inference with data from the sciences, due the complexity of the data and of the processes that generated those data. We emphasize applications where using existing likelihood-free methods of inference would be challenging due to the high dimensionality of the sample space, but where our spectral series method yields a reasonable estimate of the likelihood function. We provide theoretical guarantees and illustrate the effectiveness of our proposed method with numerical experiments.
引用
收藏
页码:420 / 429
页数:10
相关论文
共 50 条
  • [31] EMPIRICAL LIKELIHOOD RATIO TESTS FOR COEFFICIENTS IN HIGH-DIMENSIONAL HETEROSCEDASTIC LINEAR MODELS
    Wang, Honglang
    Zhong, Ping-Shou
    Cui, Yuehua
    STATISTICA SINICA, 2018, 28 (04) : 2409 - 2433
  • [32] A note on asymptotics of classical likelihood ratio tests for high-dimensional normal distributions
    Han, Yuecai
    Yin, Zhe
    STATISTICS & PROBABILITY LETTERS, 2023, 199
  • [33] Testing high-dimensional covariance matrices with random projections and corrected likelihood ratio
    Sun, Nan
    Tang, Cheng Yong
    STATISTICS AND ITS INTERFACE, 2022, 15 (04) : 449 - 461
  • [34] Diagonal likelihood ratio test for equality of mean vectors in high-dimensional data
    Hu, Zongliang
    Tong, Tiejun
    Genton, Marc G.
    BIOMETRICS, 2019, 75 (01) : 256 - 267
  • [35] Voronoi Density Estimator for High-Dimensional Data: Computation, Compactification and Convergence
    Polianskii, Vladislav
    Marchetti, Giovanni Luca
    Kravberg, Alexander
    Varava, Anastasiia
    Pokorny, Florian T.
    Kragic, Danica
    UNCERTAINTY IN ARTIFICIAL INTELLIGENCE, VOL 180, 2022, 180 : 1644 - 1653
  • [36] High-dimensional empirical likelihood inference
    Chang, Jinyuan
    Chen, Song Xi
    Tang, Cheng Yong
    Wu, Tong Tong
    BIOMETRIKA, 2021, 108 (01) : 127 - 147
  • [37] Penalized high-dimensional empirical likelihood
    Tang, Cheng Yong
    Leng, Chenlei
    BIOMETRIKA, 2010, 97 (04) : 905 - 919
  • [38] Error density estimation in high-dimensional sparse linear model
    Zou, Feng
    Cui, Hengjian
    ANNALS OF THE INSTITUTE OF STATISTICAL MATHEMATICS, 2020, 72 (02) : 427 - 449
  • [39] Nonparametric Conditional Density Estimation in a High-Dimensional egression Setting
    Izsicki, Rafael
    Lee, Ann B.
    JOURNAL OF COMPUTATIONAL AND GRAPHICAL STATISTICS, 2016, 25 (04) : 1297 - 1316
  • [40] Online Density Estimation over High-dimensional Data Streams
    Majdara, Aref
    Nooshabadi, Saeid
    2019 IEEE INTERNATIONAL SYMPOSIUM ON CIRCUITS AND SYSTEMS (ISCAS), 2019,