In
statistics
Statistics (from German language, German: ', "description of a State (polity), state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of data. In applying statistics to a s ...
, sufficient dimension reduction (SDR) is a paradigm for analyzing data that combines the ideas of
dimension reduction
Dimensionality reduction, or dimension reduction, is the transformation of data from a high-dimensional space into a low-dimensional space so that the low-dimensional representation retains some meaningful properties of the original data, ideally ...
with the concept of
sufficiency.
Dimension reduction has long been a primary goal of
regression analysis. Given a response variable ''y'' and a ''p''-dimensional predictor vector
, regression analysis aims to study the distribution of
, the
conditional distribution
Conditional (if then) may refer to:
* Causal conditional, if X then Y, where X is a cause of Y
*Conditional probability, the probability of an event A given that another event B
* Conditional proof, in logic: a proof that asserts a conditional, ...
of
given
. A dimension reduction is a function
that maps
to a subset of
, ''k'' < ''p'', thereby reducing the
dimension
In physics and mathematics, the dimension of a mathematical space (or object) is informally defined as the minimum number of coordinates needed to specify any point within it. Thus, a line has a dimension of one (1D) because only one coo ...
of
.
[Cook & Adragni (2009]
''Sufficient Dimension Reduction and Prediction in Regression''
In: ''Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences'', 367(1906): 4385–4405 For example,
may be one or more
linear combinations of
.
A dimension reduction
is said to be sufficient if the distribution of
is the same as that of
. In other words, no information about the regression is lost in reducing the dimension of
if the reduction is sufficient.
Graphical motivation
In a regression setting, it is often useful to summarize the distribution of
graphically. For instance, one may consider a
scatterplot
A scatter plot, also called a scatterplot, scatter graph, scatter chart, scattergram, or scatter diagram, is a type of plot or mathematical diagram using Cartesian coordinates to display values for typically two variables for a set of dat ...
of
versus one or more of the predictors or a linear combination of the predictors. A scatterplot that contains all available regression information is called a sufficient summary plot.
When
is high-dimensional, particularly when
, it becomes increasingly challenging to construct and visually interpret sufficiency summary plots without reducing the data. Even three-dimensional scatter plots must be viewed via a computer program, and the third dimension can only be visualized by rotating the coordinate axes. However, if there exists a sufficient dimension reduction
with small enough dimension, a sufficient summary plot of
versus
may be constructed and visually interpreted with relative ease.
Hence sufficient dimension reduction allows for graphical intuition about the distribution of
, which might not have otherwise been available for high-dimensional data.
Most graphical methodology focuses primarily on dimension reduction involving linear combinations of
. The rest of this article deals only with such reductions.
Dimension reduction subspace
Suppose
is a sufficient dimension reduction, where
is a
matrix
Matrix (: matrices or matrixes) or MATRIX may refer to:
Science and mathematics
* Matrix (mathematics), a rectangular array of numbers, symbols or expressions
* Matrix (logic), part of a formula in prenex normal form
* Matrix (biology), the m ...
with
rank
A rank is a position in a hierarchy. It can be formally recognized—for example, cardinal, chief executive officer, general, professor—or unofficial.
People Formal ranks
* Academic rank
* Corporate title
* Diplomatic rank
* Hierarchy ...
. Then the regression information for
can be inferred by studying the distribution of
, and the plot of
versus
is a sufficient summary plot.
Without loss of generality
''Without loss of generality'' (often abbreviated to WOLOG, WLOG or w.l.o.g.; less commonly stated as ''without any loss of generality'' or ''with no loss of generality'') is a frequently used expression in mathematics. The term is used to indicat ...
, only the
space
Space is a three-dimensional continuum containing positions and directions. In classical physics, physical space is often conceived in three linear dimensions. Modern physicists usually consider it, with time, to be part of a boundless ...
spanned by the columns of
need be considered. Let
be a
basis for the column space of
, and let the space spanned by
be denoted by
. It follows from the definition of a sufficient dimension reduction that
:
where
denotes the appropriate
distribution function. Another way to express this property is
:
or
is
conditionally independent
In probability theory, conditional independence describes situations wherein an observation is irrelevant or redundant when evaluating the certainty of a hypothesis. Conditional independence is usually formulated in terms of conditional probabi ...
of
, given
. Then the subspace
is defined to be a dimension reduction subspace (DRS).
[Cook, R.D. (1998) ''Regression Graphics: Ideas for Studying Regressions Through Graphics'', Wiley ]
Structural dimensionality
For a regression
, the structural dimension,
, is the smallest number of distinct linear combinations of
necessary to preserve the conditional distribution of
. In other words, the smallest dimension reduction that is still sufficient maps
to a subset of
. The corresponding DRS will be ''d''-dimensional.
Minimum dimension reduction subspace
A subspace
is said to be a minimum DRS for
if it is a DRS and its dimension is less than or equal to that of all other DRSs for
. A minimum DRS
is not necessarily unique, but its dimension is equal to the structural dimension
of
, by definition.
If
has basis
and is a minimum DRS, then a plot of ''y'' versus
is a minimal sufficient summary plot, and it is (''d'' + 1)-dimensional.
Central subspace
If a subspace
is a DRS for
, and if
for all other DRSs
, then it is a central dimension reduction subspace, or simply a central subspace, and it is denoted by
. In other words, a central subspace for
exists
if and only if
In logic and related fields such as mathematics and philosophy, "if and only if" (often shortened as "iff") is paraphrased by the biconditional, a logical connective between statements. The biconditional is true in two cases, where either bo ...
the intersection
of all dimension reduction subspaces is also a dimension reduction subspace, and that intersection is the central subspace
.
The central subspace
does not necessarily exist because the intersection
is not necessarily a DRS. However, if
''does'' exist, then it is also the unique minimum dimension reduction subspace.
Existence of the central subspace
While the existence of the central subspace
is not guaranteed in every regression situation, there are some rather broad conditions under which its existence follows directly. For example, consider the following proposition from Cook (1998):
: Let
and
be dimension reduction subspaces for
. If
has
density
Density (volumetric mass density or specific mass) is the ratio of a substance's mass to its volume. The symbol most often used for density is ''ρ'' (the lower case Greek letter rho), although the Latin letter ''D'' (or ''d'') can also be u ...
for all
and
everywhere else, where
is
convex
Convex or convexity may refer to:
Science and technology
* Convex lens, in optics
Mathematics
* Convex set, containing the whole line segment that joins points
** Convex polygon, a polygon which encloses a convex set of points
** Convex polytop ...
, then the intersection
is also a dimension reduction subspace.
It follows from this proposition that the central subspace
exists for such
.
Methods for dimension reduction
There are many existing methods for dimension reduction, both graphical and numeric. For example,
sliced inverse regression (SIR) and sliced average variance estimation (SAVE) were introduced in the 1990s and continue to be widely used.
[Li, K-C. (1991]
''Sliced Inverse Regression for Dimension Reduction''
In: ''Journal of the American Statistical Association
The ''Journal of the American Statistical Association'' is a quarterly peer-reviewed scientific journal published by Taylor & Francis on behalf of the American Statistical Association. It covers work primarily focused on the application of statis ...
'', 86(414): 316–327 Although SIR was originally designed to estimate an ''effective dimension
reducing subspace'', it is now understood that it estimates only the central subspace, which is generally different.
More recent methods for dimension reduction include
likelihood
A likelihood function (often simply called the likelihood) measures how well a statistical model explains observed data by calculating the probability of seeing that data under different parameter values of the model. It is constructed from the j ...
-based sufficient dimension reduction,
[Cook, R.D. and Forzani, L. (2009) "Likelihood-Based Sufficient Dimension Reduction", '']Journal of the American Statistical Association
The ''Journal of the American Statistical Association'' is a quarterly peer-reviewed scientific journal published by Taylor & Francis on behalf of the American Statistical Association. It covers work primarily focused on the application of statis ...
'', 104(485): 197–208 estimating the central subspace based on the inverse third
moment (or ''k''th moment),
[Yin, X. and Cook, R.D. (2003]
''Estimating Central Subspaces via Inverse Third Moments''
In: ''Biometrika
''Biometrika'' is a peer-reviewed scientific journal published by Oxford University Press for the Biometrika Trust. The editor-in-chief is Paul Fearnhead (Lancaster University). The principal focus of this journal is theoretical statistics. It was ...
'', 90(1): 113–125 estimating the central solution space,
[Li, B. and Dong, Y.D. (2009]
''Dimension Reduction for Nonelliptically Distributed Predictors''
In: ''Annals of Statistics
The ''Annals of Statistics'' is a peer-reviewed statistics journal published by the Institute of Mathematical Statistics. It was started in 1973 as a continuation in part of the '' Annals of Mathematical Statistics (1930)'', which was split into ...
'', 37(3): 1272–1298 graphical regression,
envelope model, and the principal support vector machine.
For more details on these and other methods, consult the statistical literature.
Principal components analysis
Principal component analysis (PCA) is a Linear map, linear dimensionality reduction technique with applications in exploratory data analysis, visualization and Data Preprocessing, data preprocessing.
The data is linear map, linearly transformed ...
(PCA) and similar methods for dimension reduction are not based on the sufficiency principle.
Example: linear regression
Consider the regression model
:
Note that the distribution of
is the same as the distribution of
. Hence, the span of
is a dimension reduction subspace. Also,
is 1-dimensional (unless
), so the structural dimension of this regression is
.
The
OLS estimate
of
is
consistent
In deductive logic, a consistent theory is one that does not lead to a logical contradiction. A theory T is consistent if there is no formula \varphi such that both \varphi and its negation \lnot\varphi are elements of the set of consequences ...
, and so the span of
is a consistent estimator of
. The plot of
versus
is a sufficient summary plot for this regression.
See also
*
Dimension reduction
Dimensionality reduction, or dimension reduction, is the transformation of data from a high-dimensional space into a low-dimensional space so that the low-dimensional representation retains some meaningful properties of the original data, ideally ...
*
Sliced inverse regression
*
Principal component analysis
Principal component analysis (PCA) is a linear dimensionality reduction technique with applications in exploratory data analysis, visualization and data preprocessing.
The data is linearly transformed onto a new coordinate system such that th ...
*
Linear discriminant analysis
Linear discriminant analysis (LDA), normal discriminant analysis (NDA), canonical variates analysis (CVA), or discriminant function analysis is a generalization of Fisher's linear discriminant, a method used in statistics and other fields, to fi ...
*
Curse of dimensionality
The curse of dimensionality refers to various phenomena that arise when analyzing and organizing data in high-dimensional spaces that do not occur in low-dimensional settings such as the three-dimensional physical space of everyday experience. T ...
*
Multilinear subspace learning
Multilinear subspace learning is an approach for disentangling the causal factor of data formation and performing dimensionality reduction.M. A. O. Vasilescu, D. Terzopoulos (2003"Multilinear Subspace Analysis of Image Ensembles" "Proceedings of ...
Notes
References
*Cook, R.D. (1998) ''Regression Graphics: Ideas for Studying Regressions through Graphics'', Wiley Series in Probability and Statistics
Regression Graphics
*Cook, R.D. and Adragni, K.P. (2009) "Sufficient Dimension Reduction and Prediction in Regression", ''
Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences'', 367(1906), 4385–4405
Full-text*Cook, R.D. and Weisberg, S. (1991) "Sliced Inverse Regression for Dimension Reduction: Comment", ''
Journal of the American Statistical Association
The ''Journal of the American Statistical Association'' is a quarterly peer-reviewed scientific journal published by Taylor & Francis on behalf of the American Statistical Association. It covers work primarily focused on the application of statis ...
'', 86(414), 328–332
Jstor*
Li, K-C. (1991) "Sliced Inverse Regression for Dimension Reduction", ''
Journal of the American Statistical Association
The ''Journal of the American Statistical Association'' is a quarterly peer-reviewed scientific journal published by Taylor & Francis on behalf of the American Statistical Association. It covers work primarily focused on the application of statis ...
'', 86(414), 316–327
Jstor{{refend
External links
Sufficient Dimension Reduction
Dimension reduction