scispace - formally typeset
Search or ask a question
Topic

Ordinal regression

About: Ordinal regression is a research topic. Over the lifetime, 1879 publications have been published within this topic receiving 65431 citations.


Papers
More filters
Journal ArticleDOI
TL;DR: A novel ordinal regression framework for predicting medical risk stratification from EMR is constructed, a conceptual view of EMR as a temporal image is constructed to extract a diverse set of features, and two indices are introduced that measure the model stability against data resampling.
Abstract: The recent wide adoption of electronic medical records (EMRs) presents great opportunities and challenges for data mining. The EMR data are largely temporal, often noisy, irregular and high dimensional. This paper constructs a novel ordinal regression framework for predicting medical risk stratification from EMR. First, a conceptual view of EMR as a temporal image is constructed to extract a diverse set of features. Second, ordinal modeling is applied for predicting cumulative or progressive risk. The challenges are building a transparent predictive model that works with a large number of weakly predictive features, and at the same time, is stable against resampling variations. Our solution employs sparsity methods that are stabilized through domain-specific feature interaction networks. We introduces two indices that measure the model stability against data resampling. Feature networks are used to generate two multivariate Gaussian priors with sparse precision matrices (the Laplacian and Random Walk). We apply the framework on a large short-term suicide risk prediction problem and demonstrate that our methods outperform clinicians to a large margin, discover suicide risk factors that conform with mental health knowledge, and produce models with enhanced stability.

42 citations

Journal ArticleDOI
TL;DR: This paper suggests an exact method to determine the finite-sample distribution of maximally selected chi-square statistics in this context and applies this method to a new data set describing pregnancy and birth for 811 babies.
Abstract: The association between a binary variable Y and a variable X having an at least ordinal measurement scale might be examined by selecting a cutpoint in the range of X and then performing an association test for the obtained 2 x 2 contingency table using the chi-square statistic. The distribution of the maximally selected chi-square statistic (i.e. the maximal chi-square statistic over all possible cutpoints) under the null-hypothesis of no association between X and Y is different from the known chi-square distribution. In the last decades, this topic has been extensively studied for continuous X variables, but not for non-continuous variables of at least ordinal measurement scale (which include e.g. classical ordinal or discretized continuous variables). In this paper, we suggest an exact method to determine the finite-sample distribution of maximally selected chi-square statistics in this context. This novel approach can be seen as a method to measure the association between a binary variable and variables having an at least ordinal scale of different types (ordinal, discretized continuous, etc). As an illustration, this method is applied to a new data set describing pregnancy and birth for 811 babies.

42 citations

Journal ArticleDOI
TL;DR: The present article shows how to implement the analysis and how to interpret the SPSS output of the unequal variance normal signal detection model and other extended signal detection models.
Abstract: The recent addition of a procedure in SPSS for the analysis of ordinal regression models offers a simple means for researchers to fit the unequal variance normal signal detection model and other extended signal detection models. The present article shows how to implement the analysis and how to interpret the SPSS output. Examples of fitting the unequal variance normal model and other generalized signal detection models are given. The approach offers a convenient means for applying signal detection theory to a variety of research.

42 citations

Journal ArticleDOI
TL;DR: This paper investigated the performance of GEE in R, SAS, SPSS and multgee, and repolr in R using simulated data under default settings and demonstrated substantial bias in the parameter estimates and numerical issues for data sets with relative small number of subjects.

41 citations


Network Information
Related Topics (5)
Regression analysis
31K papers, 1.7M citations
84% related
Linear regression
21.3K papers, 1.2M citations
79% related
Inference
36.8K papers, 1.3M citations
78% related
Empirical research
51.3K papers, 1.9M citations
78% related
Social media
76K papers, 1.1M citations
77% related
Performance
Metrics
No. of papers in the topic in previous years
YearPapers
2023102
2022191
202188
202093
201979
201873