weracoop.blogg.se

Data mining dredging
Data mining dredging









data mining dredging

© Copyright 2021 Physicians Postgraduate Press, Inc. This knowledge must become widespread so that researchers and readers understand what approaches to statistical analysis and reporting amount to scientific misconduct. This article explains what these QRPs are and why they are QRPs. data dredging (data fishing) - Data dredging, sometimes referred to as data fishing is a data mining practice in which large volumes of data are analyzed. Data dredging and data mining describe the extensive testing of relationships between a large number of variables for which data are available, usually in a database. A fishing expedition is the indiscriminate testing of associations between different combinations of variables not with specific hypotheses in mind but with the hope of finding something that is statistically significant in the data. P-hacking is the relentless analysis of data with an intent to obtain a statistically significant result, usually to support the researcher's hypothesis.

data mining dredging

Cherry-picking is the presentation of favorable evidence with the concealment of unfavorable evidence. HARKing (Hypothesizing After the Results are Known) is the presentation of a post hoc hypothesis as an a priori hypothesis. Questionable research practices (QRPs) in the statistical analysis of data and in the presentation of the results in research papers include HARKing, cherry-picking, P-hacking, fishing, and data dredging or mining.











Data mining dredging