Web Survey Bibliography
The strengths and weaknesses of web surveys have been widely described in the literature. Of particular interest is the question of the quality and reliability of web surveys for scienti c use - more concretely, to which degree can the obtained results be generalised for the whole population? As respondents are not selected at random and the target population rather forms a convenience than a probability sample, particularly volunteer web surveys are subject to selection bias.
To deal with this problem, weighting adjustment, like post-strati cation and propensity score weighing, have been seen as a possible solution to reduce the biases in web surveys. However, particularly the post-strati cation weighting, aiming to adjust for demographic dierences between the sample and the population under consideration, seems to be limited. As some variables of interest often do not show a sufficiently strong relationship with the demographic weighting variables, this method can correct for proportionality but not necessarily for representativeness. As a consequence, another weighting technique called Propensity Score Adjustment (PSA) has been suggested as an alternative for statistically surmounting inherent problems in web survey data. It aims to correct for dierences caused by the varying inclinations of individuals to participate in web surveys. It adjusts for selection bias due to observed covariates which are demographic as well as webographic(lifestyle) variables. These variables measure general attitudes or behaviour that are hypothesised to dier between the online and the general population. In the scienti c community, however, this method has traditionally not been applied in the eld of surveys, and there has been a minimal amount of evidence for its applicability and performance, and the implications are not conclusive. Moreover, the statistical theory behind this approach is not well developed and the eectiveness and implications, particularly for survey methodology, still need to be better studied.
Against this background, the present paper attempts to explore various statistical weighting procedures for volunteer web surveys and evaluate their eectiveness in adjusting biases arising from non-randomised sample selection. In order to achieve the goal, three methods are compared in more detail: post-strati cation, correlations and nally PSA. A rst essential step for exploring the existing selection bias within the existing data-sets will be a detailed bias description. It is particularly needed for the application of PSA searching for the variables that
are going to be included in the calculation of the Propensity Score weights. The efficiency of dierent weights will then be tested by comparing unweighted and weighted results from the German, Dutch and Spanish sample of the Wage-indicator Survey 2006 with those that could be found using data from the German Socio-economic panel, the OSA Labour Supply Panel and the Spanish Structure Earnings Survey for the same year. In the framework of these examinations, analytical graphics and formal tests of signi cance will be used. Furthermore,
the sensitivity of the results, particularly to changes in the speci cation of the propensity score, will also be addressed.
Conference homepage (abstract)
AIAS Homepage (abstract) / (full text)
Reports, seminars
Web survey bibliography - Tijdens, K. G. (18)
- Self-identification of occupation in web surveys: requirements for search trees and look-up tables ; 2015; Tijdens, K. G.
- Identifying and correcting question-wording problems: the case of Wageindicator; 2015; Slavec, A., Vehovar, V., Tijdens, K. G.
- WEBDATANET: Innovation and Quality in Web-Based Data Collection ; 2014; Steinmetz, S., Slavec, A., Tijdens, K. G., Reips, U.-D., de Pedraza, P., Popescu, A., Belchior, A., ...,...
- Improving web survey quality; 2014; Steinmetz, S., Bianchi, S. M., Tijdens, K. G., Biffignandi, S.
- Targeting the bias – the impact of mass media attention on sample composition and representativeness...; 2014; Steinmetz, S., Oez, F., Tijdens, K. G.
- Exploring selection biases for developing countries - is the web a promising tool for data collection...; 2014; Tijdens, K. G., Steinmetz, S.
- Measuring the very long, fuzzy tail in the occupational distribution in web-surveys; 2014; Tijdens, K. G.
- Dropout Rates and Response Times of an Occupation Search Tree in a Web Survey; 2014; Tijdens, K. G.
- WEBDATANET: A Network on Web-based Data Collection, Methodological Challenges, Solutions, and Implementation...; 2014; Tijdens, K. G., Steinmetz, S., de Pedraza, P., Serrano, F.
- Challenges and pitfalls of measuring wages via web surveys - some explorations; 2012; Steinmetz, S., Bianchi, A., Tijdens, K., Biffignandi, S.
- Understanding selection bias in a worldwide, volunteer web-survey; 2012; Tijdens, K., Steinmetz, S.
- Hrh remuneration: Comparing wage levels, ranking And dispersion of 16 occupations In the health workforce...; 2011; Tijdens, K., de Vries, D.
- Wages worldwide results and measurement issues from the multi-country. WageIndicator web-survey ; 2011; van Klaveren, M., Tijdens, K.
- Text string matching to measure occupations in web-surveys; 2011; Tijdens, K. G.
- Codebook and explanatory note on the WageIndicator dataset ; 2010; Tijdens, K., van Zijl, S., Hughie-Williams, M., van Klaveren, M., Steinmetz, S.
- Potentials and Constraints of Propensity Score Weighting to Improve Web Survey Quality; 2010; Steinmetz, S., Tijdens, K.
- Presentation of WEBSURVNET; 2009; de Pedraza, P., Steinmetz, S., Tijdens, K.
- Sample bias, weights and efficiency of weights in a continuous web voluntary survey; 2007; de Pedraza, P., Tijdens, K., de Bustillo, R.