Sampling bias means that the samples of a stochastic variable that are collected to determine its distribution are selected incorrectly and do not represent the true distribution because of non-random reasons. Let us consider a specific example: we might want to predict the outcome of a presidential election by means of an opinion poll. Asking 1000 voters about their voting intentions can give a pretty accurate prediction of the likely winner, but only if our sample of 1000 voters is 'representative' of the electorate as a whole (i.e. unbiased). If we only poll the opinion of, 1000 white middle class college students, then the views of many important parts of the electorate as a whole (ethnic minorities, elderly people, blue-collar workers)...
The statistical concept of sampling is often given little direct attention, typically reduced to the...
The statistician's view of randomness- our useful tool: As statisticians we are well used to ex...
Sampling, or selecting a group of people to represent a whole population, lies at the heart of almos...
Possible bias due to sampling problems or low response rates has been a troubling "nuisance &qu...
People often extrapolate from data samples, inferring properties of the population like the rate of ...
People often extrapolate from data samples, inferring properties of the population like the rate of ...
Many of the lessons from the polling debacle of 1992 have been learned, but it may be time to addres...
Data have become extremely important in the world today. Information is everywhere, and people are w...
Sampling error refers to variability that is unique to the sample. If the sample is the entire popul...
The magnitude and direction of statistical bias from nonrandom samples of specific types was investi...
Sample selectivity bias arises in the estimation of education production functions when the process ...
We show with a simulation that nonrepresentative sampling of two discrete fitness classes leads to b...
Accurately measuring discrimination is crucial to faithfully assessing fairness of trained machine l...
The British Polling Council recently published their report about what went wrong with the polls in ...
Judgement sampling in market research and opinion polling is standardly criticized as unsatisfactory...
The statistical concept of sampling is often given little direct attention, typically reduced to the...
The statistician's view of randomness- our useful tool: As statisticians we are well used to ex...
Sampling, or selecting a group of people to represent a whole population, lies at the heart of almos...
Possible bias due to sampling problems or low response rates has been a troubling "nuisance &qu...
People often extrapolate from data samples, inferring properties of the population like the rate of ...
People often extrapolate from data samples, inferring properties of the population like the rate of ...
Many of the lessons from the polling debacle of 1992 have been learned, but it may be time to addres...
Data have become extremely important in the world today. Information is everywhere, and people are w...
Sampling error refers to variability that is unique to the sample. If the sample is the entire popul...
The magnitude and direction of statistical bias from nonrandom samples of specific types was investi...
Sample selectivity bias arises in the estimation of education production functions when the process ...
We show with a simulation that nonrepresentative sampling of two discrete fitness classes leads to b...
Accurately measuring discrimination is crucial to faithfully assessing fairness of trained machine l...
The British Polling Council recently published their report about what went wrong with the polls in ...
Judgement sampling in market research and opinion polling is standardly criticized as unsatisfactory...
The statistical concept of sampling is often given little direct attention, typically reduced to the...
The statistician's view of randomness- our useful tool: As statisticians we are well used to ex...
Sampling, or selecting a group of people to represent a whole population, lies at the heart of almos...