Homelessness is poorly captured in most administrative data sets making it difficult to understand how, when, and where this population can be better served. This study sought to develop and validate a classification model of homelessness. Our sample included 5,050,639 individuals aged 11 years and older who were included in a linked dataset of administrative records from multiple state-maintained databases in Massachusetts for the period from 2011-2015. We used logistic regression to develop a classification model with 94 predictors and subsequently tested its performance. The model had high specificity (95.4%), moderate sensitivity (77.8%) for predicting known cases of homelessness, and excellent classification properties (area under the ...
International audienceBackground: There is a lack of knowledge regarding the actionable key predicti...
The primary focus of this research project was to explore what is known and not known about the use ...
This thesis aims to use health care domain knowledge, statistical techniques, and machine learning m...
Homelessness is poorly captured in most administrative data sets making it difficult to understand h...
The purpose of this research was to produce a model to predict levels of homelessness within a local...
Homelessness remains an issue in the United States in spite of increased efforts to assist those exp...
Abstract Background Homelessness is a complex societal and public health challenge. Limited informat...
Background: Epidemiological studies focused on primary healthcare needs of persons experiencing home...
Homelessness affects millions of Americans each year, and many homeless individuals have complex hea...
The main objective of this study was to examine how homelessness and housing instability is captured...
This study tests a typology of homelessness using administrative data on public shelter use in New Y...
Persons experiencing chronic homelessness constitute a highly vulnerable group with complex needs wh...
OBJECTIVE: To prospectively evaluate the accuracy of a predictive model to identify homeless people ...
This paper presents a large anonymized dataset of homelessness alongside insights into the data-driv...
This study tests a typology of homelessness using administrative data on public shelter use in New Y...
International audienceBackground: There is a lack of knowledge regarding the actionable key predicti...
The primary focus of this research project was to explore what is known and not known about the use ...
This thesis aims to use health care domain knowledge, statistical techniques, and machine learning m...
Homelessness is poorly captured in most administrative data sets making it difficult to understand h...
The purpose of this research was to produce a model to predict levels of homelessness within a local...
Homelessness remains an issue in the United States in spite of increased efforts to assist those exp...
Abstract Background Homelessness is a complex societal and public health challenge. Limited informat...
Background: Epidemiological studies focused on primary healthcare needs of persons experiencing home...
Homelessness affects millions of Americans each year, and many homeless individuals have complex hea...
The main objective of this study was to examine how homelessness and housing instability is captured...
This study tests a typology of homelessness using administrative data on public shelter use in New Y...
Persons experiencing chronic homelessness constitute a highly vulnerable group with complex needs wh...
OBJECTIVE: To prospectively evaluate the accuracy of a predictive model to identify homeless people ...
This paper presents a large anonymized dataset of homelessness alongside insights into the data-driv...
This study tests a typology of homelessness using administrative data on public shelter use in New Y...
International audienceBackground: There is a lack of knowledge regarding the actionable key predicti...
The primary focus of this research project was to explore what is known and not known about the use ...
This thesis aims to use health care domain knowledge, statistical techniques, and machine learning m...