Litcius/Paper detail

Data Collection via Online Platforms: Challenges and Recommendations for Future Research

Alexander Newman, Yuen Lam Bavik, Matthew Mount, Bo Shao

2020Applied Psychology295 citationsDOIOpen Access PDF

Abstract

Online platforms such as Amazon's Mechanical Turk (MTurk) are increasingly used by researchers to collect survey and experimental data. Yet, such platforms often represent a tumultuous terrain for both researchers and reviewers. Researchers have to navigate the complexities of obtaining representative samples from online participant cohorts, ensuring data quality, ethically incentivizing participant engagement, and maintaining transparency. Reviewers, on the other hand, have to navigate the complexities of evaluating the efficacy of such data collection and execution efforts in answering important research questions. In order to provide clarity to these issues, this article provides researchers and reviewers with a series of recommendations for effectively executing and evaluating data collection via online platforms, respectively.

Topics & Concepts

Data collectionCLARITYTransparency (behavior)Computer scienceData scienceData qualityOnline research methodsQuality (philosophy)Internet privacyWorld Wide WebComputer securityBusinessSociologySocial scienceChemistryMarketingPhilosophyMetric (unit)BiochemistryEpistemologyMobile Crowdsensing and CrowdsourcingHuman Mobility and Location-Based AnalysisSocial Media in Health Education
Data Collection via Online Platforms: Challenges and Recommendations for Future Research | Litcius