Journal Article10.1080/10705511.2023.2234086
Deep Learning Generalized Structured Component Analysis: An Interpretable Artificial Neural Network Model with Composite Indexes
Gyeong Seon Cho,Heungsun Hwang +1 more
- 25 Aug 2023
2
TL;DR: Deep Learning Generalized Structured Component Analysis (DL-GSCA) is a novel method that allows components to be nonlinear functions of observed variables, improving the predictive power of components while maintaining interpretability.
read more
Abstract: Abstract Generalized structured component analysis (GSCA) is a multivariate method for specifying and examining interrelationships between observed variables and components. Despite its data-analytic flexibility honed over the decade, GSCA always defines every component as a linear function of observed variables, which can be less optimal when observed variables for a component are nonlinearly related, often reducing the component’s predictive power. To address this issue, we combine deep learning and GSCA into a single framework to allow a component to be a nonlinear function of observed variables without specifying the exact functional form in advance. This new method, termed deep learning generalized structured component analysis (DL-GSCA), aims to maximize the predictive power of components while their directed or undirected network remains interpretable. Our real and simulated data analyses show that DL-GSCA produces components with greater predictive power than those from GSCA in the presence of nonlinear associations between observed variables per component.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Comparing Methods for Factor Score Estimation in Structural Equation Modeling: The Role of Network Analysis
Jinying Ouyang,Zhehan Jiang,Christine DiStefano,Junhao Pan,Yuting Han,Lingling Xu,Dexin Shi,Fen Cai +7 more
- 12 Oct 2023
TL;DR: Network analysis offers a promising approach for factor score estimation, demonstrating superior performance compared to traditional methods under various scenarios, including misspecification and limited a priori knowledge.
References
Deep learning
TL;DR: Deep learning is making major advances in solving problems that have resisted the best attempts of the artificial intelligence community for many years, and will have many more successes in the near future because it requires very little engineering by hand and can easily take advantage of increases in the amount of available computation and data.
67K
Learning representations by back-propagating errors
TL;DR: Back-propagation repeatedly adjusts the weights of the connections in the network so as to minimize a measure of the difference between the actual output vector of the net and the desired output vector, which helps to represent important features of the task domain.
30.1K
•Book
The Elements of Statistical Learning
Trevor Hastie,Robert Tibshirani,Jerome H. Friedman +2 more
- 01 Jan 2001
29.4K
Delving Deep into Rectifiers: Surpassing Human-Level Performance on ImageNet Classification
Kaiming He,Xiangyu Zhang,Shaoqing Ren,Jian Sun +3 more
- 07 Dec 2015
TL;DR: In this paper, a Parametric Rectified Linear Unit (PReLU) was proposed to improve model fitting with nearly zero extra computational cost and little overfitting risk, which achieved a 4.94% top-5 test error on ImageNet 2012 classification dataset.
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.