Under-reporting occurs in survey data when there is a reason for participants to give a false negative response to a question, e.g. maternal smoking in epidemiological studies. Failing to correct this misreporting introduces biases and it may lead to misinformed decision making. Our work provides methods of correcting for this bias, by reinterpreting it as a missing data problem, and particularly learning from positive and unlabelled data. Focusing on information theoretic approaches we have three key contributions: (1) we provide a method to perform valid independence tests with known power by incorporating prior knowledge over misreporting; (2) we derive corrections for point/interval estimates of the mutual information that capture both ...
Reducing bias from missing confounders is a challenging problem in the analysis of observational dat...
Surveys are key means of obtaining policy-relevant information not available from routine sources. B...
Missing values are common in health research and omitting participants with missing data often leads...
We investigate the common assumption in applied research that reporting errors are negligible in var...
We investigate the common assumption in applied research that reporting errors are negligible in var...
Epidemiologists often use the potential outcomes framework to cast causal inference as a missing dat...
Epidemiologists often use the potential outcomes framework to cast causal inference as a missing dat...
Background: Efficient and reliable surveillance and notification systems are vital for monitoring pu...
© The Author(s) 2017. Media-based event data-i.e., data comprised from reporting by media outlets-ar...
This is the author accepted manuscript. The final version is available from Taylor & Francis (Routle...
Abstract Panel survey data have been gaining importance in marketing. However, one challenge of esti...
Tuberculosis poses a global health risk and Brazil is among the top 20 countries by absolute mortali...
Objectives To examine the effect on estimated levels of health conditions produced from large-scale ...
Objectives To examine the effect on estimated levels of health conditions produced from large-scale ...
Adjusting for several unmeasured confounders is a challenging problem in the analysis of observation...
Reducing bias from missing confounders is a challenging problem in the analysis of observational dat...
Surveys are key means of obtaining policy-relevant information not available from routine sources. B...
Missing values are common in health research and omitting participants with missing data often leads...
We investigate the common assumption in applied research that reporting errors are negligible in var...
We investigate the common assumption in applied research that reporting errors are negligible in var...
Epidemiologists often use the potential outcomes framework to cast causal inference as a missing dat...
Epidemiologists often use the potential outcomes framework to cast causal inference as a missing dat...
Background: Efficient and reliable surveillance and notification systems are vital for monitoring pu...
© The Author(s) 2017. Media-based event data-i.e., data comprised from reporting by media outlets-ar...
This is the author accepted manuscript. The final version is available from Taylor & Francis (Routle...
Abstract Panel survey data have been gaining importance in marketing. However, one challenge of esti...
Tuberculosis poses a global health risk and Brazil is among the top 20 countries by absolute mortali...
Objectives To examine the effect on estimated levels of health conditions produced from large-scale ...
Objectives To examine the effect on estimated levels of health conditions produced from large-scale ...
Adjusting for several unmeasured confounders is a challenging problem in the analysis of observation...
Reducing bias from missing confounders is a challenging problem in the analysis of observational dat...
Surveys are key means of obtaining policy-relevant information not available from routine sources. B...
Missing values are common in health research and omitting participants with missing data often leads...