multisamplingia
Multisamplingia is an emerging interdisciplinary framework concerned with the design, analysis, and interpretation of data collected via multiple sampling modalities across different domains such as space, time, and populations. It seeks to understand how information from varied sources can be integrated to improve inference and decision making.
Etymology: the term combines "multi-" meaning many, "sampling" referring to data collection processes, and the suffix
Core concepts include cross-modality bias modeling, uncertainty propagation, calibration between methods, and joint inference that treats
Methods and tools: hierarchical or multi-level models, Bayesian data fusion, joint likelihood approaches, meta-analysis, ensemble methods,
Applications: environmental monitoring with sensor networks and citizen science reports, epidemiology using clinical and self-reported data,
Relation to other fields: multisamplingia overlaps with data fusion, meta-analysis, and survey methodology but emphasizes an
See also: data fusion, meta-analysis, data quality, measurement error, survey methodology.