filterbarhet
Filterbarhet is a term used primarily in Swedish to denote the quality or property of being filterable. In data science and information management, it refers to how effectively a dataset or set of observations can be reduced through filter criteria without losing essential information. A dataset with high filterbarhet allows precise selection of subgroups by attributes such as time, category, or value ranges, while preserving meaningful structure of the data. Low filterbarhet means filtering either removes too much data or fails to single out a useful subset.
In practice, filterbarhet is influenced by data quality, attribute granularity, and the relationships among attributes. High
In signal processing and related fields, filterbarhet can describe the extent to which a signal can be
Related concepts include filter efficiency, information loss due to filtering, and the specificity of filters. There