majorization procedure - определение. Что такое majorization procedure
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Что (кто) такое majorization procedure - определение

GEOMETRIC PLACEMENT BASED ON IDEAL DISTANCES
Stress Majorization

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Crede procedure; Credé procedure
Credé procedure is the practice of washing a newborn's eyes with a 2% silver nitrate solution to protect against neonatal conjunctivitis caused by Neisseria gonorrhoeae.
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METHODS TO MAKE VOICE COMMUNICATIONS UNDERSTOOD OVER A POTENTIALLY DEGRADED CHANNEL
Radio language; Communications discipline; Voice procedure; Radiotelephony voice procedure
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Stress majorization         
Stress majorization is an optimization strategy used in multidimensional scaling (MDS) where, for a set of n m-dimensional data items, a configuration X of n points in r (\ll m)-dimensional space is sought that minimizes the so-called stress function \sigma(X). Usually r is 2 or 3, i.

Википедия

Stress majorization

Stress majorization is an optimization strategy used in multidimensional scaling (MDS) where, for a set of n {\displaystyle n} m {\displaystyle m} -dimensional data items, a configuration X {\displaystyle X} of n {\displaystyle n} points in r {\displaystyle r} ( m ) {\displaystyle (\ll m)} -dimensional space is sought that minimizes the so-called stress function σ ( X ) {\displaystyle \sigma (X)} . Usually r {\displaystyle r} is 2 {\displaystyle 2} or 3 {\displaystyle 3} , i.e. the ( n × r ) {\displaystyle (n\times r)} matrix X {\displaystyle X} lists points in 2 {\displaystyle 2-} or 3 {\displaystyle 3-} dimensional Euclidean space so that the result may be visualised (i.e. an MDS plot). The function σ {\displaystyle \sigma } is a cost or loss function that measures the squared differences between ideal ( m {\displaystyle m} -dimensional) distances and actual distances in r-dimensional space. It is defined as:

σ ( X ) = i < j n w i j ( d i j ( X ) δ i j ) 2 {\displaystyle \sigma (X)=\sum _{i<j\leq n}w_{ij}(d_{ij}(X)-\delta _{ij})^{2}}

where w i j 0 {\displaystyle w_{ij}\geq 0} is a weight for the measurement between a pair of points ( i , j ) {\displaystyle (i,j)} , d i j ( X ) {\displaystyle d_{ij}(X)} is the euclidean distance between i {\displaystyle i} and j {\displaystyle j} and δ i j {\displaystyle \delta _{ij}} is the ideal distance between the points (their separation) in the m {\displaystyle m} -dimensional data space. Note that w i j {\displaystyle w_{ij}} can be used to specify a degree of confidence in the similarity between points (e.g. 0 can be specified if there is no information for a particular pair).

A configuration X {\displaystyle X} which minimizes σ ( X ) {\displaystyle \sigma (X)} gives a plot in which points that are close together correspond to points that are also close together in the original m {\displaystyle m} -dimensional data space.

There are many ways that σ ( X ) {\displaystyle \sigma (X)} could be minimized. For example, Kruskal recommended an iterative steepest descent approach. However, a significantly better (in terms of guarantees on, and rate of, convergence) method for minimizing stress was introduced by Jan de Leeuw. De Leeuw's iterative majorization method at each step minimizes a simple convex function which both bounds σ {\displaystyle \sigma } from above and touches the surface of σ {\displaystyle \sigma } at a point Z {\displaystyle Z} , called the supporting point. In convex analysis such a function is called a majorizing function. This iterative majorization process is also referred to as the SMACOF algorithm ("Scaling by MAjorizing a COmplicated Function").