sampleinduced
Sampleinduced is a term used in some scholarly writings to describe phenomena in which the sample itself or the process of sampling induces observable effects in a system, dataset, or measurement. It is not a widely standardized term and is often encountered as a descriptive phrase rather than a formal concept. When used, it typically refers to artifacts, biases, or alterations that arise specifically because of sampling.
In statistics and data analysis, sampleinduced effects can describe how the method of selecting observations influences
In experimental sciences, sampleinduced artifacts refer to changes in a system caused by preparing, handling, or
In technology and machine learning contexts, sampleinduced effects can appear as drift, label noise, or measurement
See also: sampling bias, selection bias, measurement bias, sampling design, data quality. Because sampleinduced is not