multiple selection - перевод на голландский
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multiple selection - перевод на голландский

PROCEDURE IN MACHINE LEARNING AND STATISTICS
Input selection; Feature selection problem; Variable selection; Feature subset selection
  • Embedded method for Feature selection
  • Wrapper Method for Feature selection
  • Filter Method for feature selection

multiple selection         
LIST OF ITEMS ON WHICH USER OPERATIONS WILL TAKE PLACE
Text selection; Column selection; Column select; Rectangular block selection; Rectangular selection; Rectangular select; Multi-select; Multiple selection; Multiple selections; Text region
selectie van een aantal objecten
common multiple         
SMALLEST POSITIVE INTEGER DIVISIBLE BY TWO OR MORE INTEGERS
Lowest common multiple; Smallest common multiple; Least Common Multiple; Lowest common multiplier; Common multiples; Common multiple; Minimal common multiple
gemeenschappelijk veelvoud
multiple sclerosis         
  • Photographic study of locomotion of a woman with MS with walking difficulties created in 1887 by [[Muybridge]]
  • Detail of Carswell's drawing of MS lesions in the [[brain stem]] and [[spinal cord]] (1838)
  • Irritation zone after injection of glatiramer acetate.
  • HLA region of chromosome 6: Changes in this area increase the probability of getting MS.
  •  doi-access = free }}</ref>
  • Multiple sclerosis as seen on MRI
  • Demyelination in MS: On [[Klüver-Barrera]] myelin staining, decoloration in the area of the lesion can be appreciated.
  • Animation showing dissemination of brain lesions in time and space as demonstrated by monthly MRI studies along a year
  • Multiple sclerosis
  • 13–25}}{{Refend}}
  • Main symptoms of multiple sclerosis
DISEASE THAT DAMAGES THE MYELIN SHEATHS AROUND NERVE AXONS
Encephalomyelitis disseminata; Multiple schlerosis; Sclerosis Multiplex; Sclerosis multiplex; MuSmate; Disseminated sclerosis; Sclerosis disseminata; Action for Research into Multiple Sclerosis; Primary progressive multiple sclerosis; Multiple schlorosis; Multiple scelrosis; Multiple Sclerosis; Relapsing multiple sclerosis; Relapsing MS; Relapsing-remitting MS; Relapsing remitting multiple sclerosis; Relapsing-remitting multiple sclerosis; Multiple scelerosis; Relapsing remitting MS; RRMS; Insular sclerosis; Sclerose en plaques disseminees; Herdsklerose; La sclerose en plaques disseminées; La sclerose multiloculaire; La sclerose generalisée; Multilocular sclerosis; Rhythmic chorea; Choreiform paralysis; Multiple sklerose; Multiple inselformige sklerose; Multiple hirnsklerose; Multiple sklerose des nervensystems; Sclerose en plaques; Sclerosi in plache; Polynesic sclerosis; Primary-progressive MS; Causes of multiple sclerosis; Epidemiology of multiple sclerosis; Multiple sclerosis, susceptiblity to, 4; Multiple sclerosis, susceptibility to, 2; Chronic progressive multiple sclerosis; Alternative treatments for multiple sclerosis; Alternative treatments used for multiple sclerosis; Multiple cerebral sclerosis; Genetics of multiple sclerosis
multiple sclerosis (ziekte)

Определение

multiple unit
¦ noun a passenger train of two or more carriages powered by integral motors which drive a number of axles.

Википедия

Feature selection

In machine learning and statistics, feature selection, also known as variable selection, attribute selection or variable subset selection, is the process of selecting a subset of relevant features (variables, predictors) for use in model construction. Feature selection techniques are used for several reasons:

  • simplification of models to make them easier to interpret by researchers/users,
  • shorter training times,
  • to avoid the curse of dimensionality,
  • improve data's compatibility with a learning model class,
  • encode inherent symmetries present in the input space.

The central premise when using a feature selection technique is that the data contains some features that are either redundant or irrelevant, and can thus be removed without incurring much loss of information. Redundant and irrelevant are two distinct notions, since one relevant feature may be redundant in the presence of another relevant feature with which it is strongly correlated.

Feature selection techniques should be distinguished from feature extraction. Feature extraction creates new features from functions of the original features, whereas feature selection returns a subset of the features. Feature selection techniques are often used in domains where there are many features and comparatively few samples (or data points). Archetypal cases for the application of feature selection include the analysis of written texts and DNA microarray data, where there are many thousands of features, and a few tens to hundreds of samples.