We study rare events data, binary dependent variables with dozens to thousands of times fewer ones (events, such as wars, vetoes, cases of political activism, or epidemiological infections) than zeros ("nonevents"). In many literatures, these variables have proven difficult to explain and predict, a problem that seems to have at least two sources. First, popular statistical procedures, such as logistic regression, can shar ply underestimate the probability of rare events. We recommend corrections that outperform existing methods and change the estimates of absolute and relative risks by as much as some estimated effects repor ted in the literature. Second, commonly used data collection strategies are grossly inefficient for rare events data...
a b s t r a c t Latest developments in computing and technology, along with the availability of larg...
From SAGE Publishing via Jisc Publications RouterHistory: epub 2021-06-17Publication status: Publish...
Most agree that models of binary time-series cross-sectional (BTSCS) data in political science often...
We study rare events data, binary dependent variables with dozens to thousands of times fewer ones (...
Some of the most important phenomena in international conflict are coded s "rare events data," binar...
Rare events represent a great analytical challenge. The maximum likelihood-based (ML) binary logit m...
A boosting-based machine learning algorithm is presented to model a binary response with large imbal...
Recent developments in computing and technology, along with the availability of large amounts of raw...
The probability of a rare event is usually estimated directly as the number of times the event occur...
Many of the secondary outcomes in observational studies and randomized trials are rare. Methods for ...
OBJECTIVE Meta-analysing studies with low event rates is challenging as some of the standard meth...
It is common in modern prediction problems for many predictor variables to be counts of rarely occur...
Network meta-analysis (NMA) of rare events has attracted little attention in the literature. Until r...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Forecasting extremely rare events is a pressing problem, but efforts to model such outcomes are ofte...
a b s t r a c t Latest developments in computing and technology, along with the availability of larg...
From SAGE Publishing via Jisc Publications RouterHistory: epub 2021-06-17Publication status: Publish...
Most agree that models of binary time-series cross-sectional (BTSCS) data in political science often...
We study rare events data, binary dependent variables with dozens to thousands of times fewer ones (...
Some of the most important phenomena in international conflict are coded s "rare events data," binar...
Rare events represent a great analytical challenge. The maximum likelihood-based (ML) binary logit m...
A boosting-based machine learning algorithm is presented to model a binary response with large imbal...
Recent developments in computing and technology, along with the availability of large amounts of raw...
The probability of a rare event is usually estimated directly as the number of times the event occur...
Many of the secondary outcomes in observational studies and randomized trials are rare. Methods for ...
OBJECTIVE Meta-analysing studies with low event rates is challenging as some of the standard meth...
It is common in modern prediction problems for many predictor variables to be counts of rarely occur...
Network meta-analysis (NMA) of rare events has attracted little attention in the literature. Until r...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Forecasting extremely rare events is a pressing problem, but efforts to model such outcomes are ofte...
a b s t r a c t Latest developments in computing and technology, along with the availability of larg...
From SAGE Publishing via Jisc Publications RouterHistory: epub 2021-06-17Publication status: Publish...
Most agree that models of binary time-series cross-sectional (BTSCS) data in political science often...