In mathematics, a real-valued function is called convex if the line segment between any two distinct points on the graph of the function lies above or on the graph of the function between the two points. Equivalently, a function is convex if its epigraph (the set of points on or above the graph of the function) is a convex set.
In simple terms, a convex function graph is shaped like a cup (or a straight line like a linear function), while a concave function's graph is shaped like a cap
.
A twice-differentiable function of a single variable is convex if and only if its second derivative is nonnegative on its entire domain.[1] Well-known examples of convex functions of a single variable include a linear function (where
is a real number), a quadratic function
(
as a nonnegative real number) and an exponential function
(
as a nonnegative real number).
Convex functions play an important role in many areas of mathematics. They are especially important in the study of optimization problems where they are distinguished by a number of convenient properties. For instance, a strictly convex function on an open set has no more than one minimum. Even in infinite-dimensional spaces, under suitable additional hypotheses, convex functions continue to satisfy such properties and as a result, they are the most well-understood functionals in the calculus of variations. In probability theory, a convex function applied to the expected value of a random variable is always bounded above by the expected value of the convex function of the random variable. This result, known as Jensen's inequality, can be used to deduce inequalities such as the arithmetic–geometric mean inequality and Hölder's inequality.
Definition
Let be a convex subset of a real vector space and let
be a function.
Then is called convex if and only if any of the following equivalent conditions hold:
- For all
and all
: The right hand side represents the straight line between
and
in the graph of
as a function of
increasing
from
to
or decreasing
from
to
sweeps this line. Similarly, the argument of the function
in the left hand side represents the straight line between
and
in
or the
-axis of the graph of
So, this condition requires that the straight line between any pair of points on the curve of
be above or just meeting the graph.[2]
- For all
and all
such that
: The difference of this second condition with respect to the first condition above is that this condition does not include the intersection points (for example,
and
) between the straight line passing through a pair of points on the curve of
(the straight line is represented by the right hand side of this condition) and the curve of
the first condition includes the intersection points as it becomes
or
at
or
or
In fact, the intersection points do not need to be considered in a condition of convex using because
and
are always true (so not useful to be a part of a condition).
The second statement characterizing convex functions that are valued in the real line is also the statement used to define convex functions that are valued in the extended real number line
where such a function
is allowed to take
as a value. The first statement is not used because it permits
to take
or
as a value, in which case, if
or
respectively, then
would be undefined (because the multiplications
and
are undefined). The sum
is also undefined so a convex extended real-valued function is typically only allowed to take exactly one of
and
as a value.
The second statement can also be modified to get the definition of strict convexity, where the latter is obtained by replacing with the strict inequality
Explicitly, the map
is called strictly convex if and only if for all real
and all
such that
:
A strictly convex function is a function such that the straight line between any pair of points on the curve
is above the curve
except for the intersection points between the straight line and the curve. An example of a function which is convex but not strictly convex is
. This function is not strictly convex because any two points sharing an x coordinate will have a straight line between them, while any two points NOT sharing an x coordinate will have a greater value of the function than the points between them.
The function is said to be concave (resp. strictly concave) if
(
multiplied by −1) is convex (resp. strictly convex).
Alternative naming
The term convex is often referred to as convex down or concave upward, and the term concave is often referred as concave down or convex upward.[3][4][5] If the term "convex" is used without an "up" or "down" keyword, then it refers strictly to a cup shaped graph . As an example, Jensen's inequality refers to an inequality involving a convex or convex-(down), function.[6]
Properties
Many properties of convex functions have the same simple formulation for functions of many variables as for functions of one variable. See below the properties for the case of many variables, as some of them are not listed for functions of one variable.
Functions of one variable
- Suppose
is a function of one real variable defined on an interval, and let (note that
is the slope of the purple line in the first drawing; the function
is symmetric in
means that
does not change by exchanging
and
).
is convex if and only if
is monotonically non-decreasing in
for every fixed
(or vice versa). This characterization of convexity is quite useful to prove the following results.
- A convex function
of one real variable defined on some open interval
is continuous on
. Moreover,
admits left and right derivatives, and these are monotonically non-decreasing. In addition, the left derivative is left-continuous and the right-derivative is right-continuous. As a consequence,
is differentiable at all but at most countably many points, the set on which
is not differentiable can however still be dense. If
is closed, then
may fail to be continuous at the endpoints of
(an example is shown in the examples section).
- A differentiable function of one variable is convex on an interval if and only if its derivative is monotonically non-decreasing on that interval. If a function is differentiable and convex then it is also continuously differentiable.
- A differentiable function of one variable is convex on an interval if and only if its graph lies above all of its tangents:[7]: 69 for all
and
in the interval.
- A twice differentiable function of one variable is convex on an interval if and only if its second derivative is non-negative there; this gives a practical test for convexity. Visually, a twice differentiable convex function "curves up", without any bends the other way (inflection points). If its second derivative is positive at all points then the function is strictly convex, but the converse does not hold. For example, the second derivative of
is
, which is zero for
but
is strictly convex.
- This property and the above property in terms of "...its derivative is monotonically non-decreasing..." are not equal since if
is non-negative on an interval
then
is monotonically non-decreasing on
while its converse is not true, for example,
is monotonically non-decreasing on
while its derivative
is not defined at some points on
.
- This property and the above property in terms of "...its derivative is monotonically non-decreasing..." are not equal since if
- If
is a convex function of one real variable, and
, then
is superadditive on the positive reals, that is
for positive real numbers
and
.
Since is convex, by using one of the convex function definitions above and letting
it follows that for all real
From
, it follows that
Namely,
.
- A function
is midpoint convex on an interval
if for all
This condition is only slightly weaker than convexity. For example, a real-valued Lebesgue measurable function that is midpoint-convex is convex: this is a theorem of Sierpiński.[8] In particular, a continuous function that is midpoint convex will be convex.
Functions of several variables
- A function that is marginally convex in each individual variable is not necessarily (jointly) convex. For example, the function
is marginally linear, and thus marginally convex, in each variable, but not (jointly) convex.
- A function
valued in the extended real numbers
is convex if and only if its epigraph is a convex set.
- A differentiable function
defined on a convex domain is convex if and only if
holds for all
in the domain.
- A twice differentiable function of several variables is convex on a convex set if and only if its Hessian matrix of second partial derivatives is positive semidefinite on the interior of the convex set.
- For a convex function
the sublevel sets
and
with
are convex sets. A function that satisfies this property is called a quasiconvex function and may fail to be a convex function.
- Consequently, the set of global minimisers of a convex function
is a convex set:
- convex.
- Any local minimum of a convex function is also a global minimum. A strictly convex function will have at most one global minimum.[9]
- Jensen's inequality applies to every convex function
. If
is a random variable taking values in the domain of
then
where
denotes the mathematical expectation. Indeed, convex functions are exactly those that satisfies the hypothesis of Jensen's inequality.
- A first-order homogeneous function of two positive variables
and
(that is, a function satisfying
for all positive real
) that is convex in one variable must be convex in the other variable.[10]
Operations that preserve convexity
is concave if and only if
is convex.
- If
is any real number then
is convex if and only if
is convex.
- Nonnegative weighted sums:
- if
and
are all convex, then so is
In particular, the sum of two convex functions is convex.
- this property extends to infinite sums, integrals and expected values as well (provided that they exist).
- if
- Elementwise maximum: let
be a collection of convex functions. Then
is convex. The domain of
is the collection of points where the expression is finite. Important special cases:
- If
are convex functions then so is
- Danskin's theorem: If
is convex in
then
is convex in
even if
is not a convex set.
- If
- Composition:
- If
and
are convex functions and
is non-decreasing over a univariate domain, then
is convex. For example, if
is convex, then so is
because
is convex and monotonically increasing.
- If
is concave and
is convex and non-increasing over a univariate domain, then
is convex.
- Convexity is invariant under affine maps: that is, if
is convex with domain
, then so is
, where
with domain
- If
- Minimization: If
is convex in
then
is convex in
provided that
is a convex set and that
- If
is convex, then its perspective
with domain
is convex.
- Let
be a vector space.
is convex and satisfies
if and only if
for any
and any non-negative real numbers
that satisfy
Strongly convex functions
The concept of strong convexity extends and parametrizes the notion of strict convexity. Intuitively, a strongly-convex function is a function that grows as fast as a quadratic function.[11] A strongly convex function is also strictly convex, but not vice versa. If a one-dimensional function is twice continuously differentiable and the domain is the real line, then we can characterize it as follows:
convex if and only if
for all
strictly convex if
for all
(note: this is sufficient, but not necessary).
strongly convex if and only if
for all
For example, let be strictly convex, and suppose there is a sequence of points
such that
. Even though
, the function is not strongly convex because
will become arbitrarily small.
More generally, a differentiable function is called strongly convex with parameter
if the following inequality holds for all points
in its domain:[12]
or, more generally,
where
is any inner product, and
is the corresponding norm. Some authors, such as [13] refer to functions satisfying this inequality as elliptic functions.
An equivalent condition is the following:[14]
It is not necessary for a function to be differentiable in order to be strongly convex. A third definition[14] for a strongly convex function, with parameter is that, for all
in the domain and
Notice that this definition approaches the definition for strict convexity as and is identical to the definition of a convex function when
Despite this, functions exist that are strictly convex but are not strongly convex for any
(see example below).
If the function is twice continuously differentiable, then it is strongly convex with parameter
if and only if
for all
in the domain, where
is the identity and
is the Hessian matrix, and the inequality
means that
is positive semi-definite. This is equivalent to requiring that the minimum eigenvalue of
be at least
for all
If the domain is just the real line, then
is just the second derivative
so the condition becomes
. If
then this means the Hessian is positive semidefinite (or if the domain is the real line, it means that
), which implies the function is convex, and perhaps strictly convex, but not strongly convex.
Assuming still that the function is twice continuously differentiable, one can show that the lower bound of implies that it is strongly convex. Using Taylor's Theorem there exists
such that
Then
by the assumption about the eigenvalues, and hence we recover the second strong convexity equation above.
A function is strongly convex with parameter m if and only if the function
is convex.
A twice continuously differentiable function on a compact domain
that satisfies
for all
is strongly convex. The proof of this statement follows from the extreme value theorem, which states that a continuous function on a compact set has a maximum and minimum.
Strongly convex functions are in general easier to work with than convex or strictly convex functions, since they are a smaller class. Like strictly convex functions, strongly convex functions have unique minima on compact sets.
Properties of strongly-convex functions
If f is a strongly-convex function with parameter m, then:[15]: Prop.6.1.4
- For every real number r, the level set {x | f(x) ≤ r} is compact.
- The function f has a unique global minimum on Rn.
Uniformly convex functions
A uniformly convex function,[16][17] with modulus , is a function
that, for all
in the domain and
satisfies
where
is a function that is non-negative and vanishes only at 0. This is a generalization of the concept of strongly convex function; by taking
we recover the definition of strong convexity.
It is worth noting that some authors require the modulus to be an increasing function,[17] but this condition is not required by all authors.[16]
Examples
Functions of one variable
- The function
has
, so f is a convex function. It is also strongly convex (and hence strictly convex too), with strong convexity constant 2.
- The function
has
, so f is a convex function. It is strictly convex, even though the second derivative is not strictly positive at all points. It is not strongly convex.
- The absolute value function
is convex (as reflected in the triangle inequality), even though it does not have a derivative at the point
It is not strictly convex.
- The function
for
is convex.
- The exponential function
is convex. It is also strictly convex, since
, but it is not strongly convex since the second derivative can be arbitrarily close to zero. More generally, the function
is logarithmically convex if
is a convex function. The term "superconvex" is sometimes used instead.[18]
- The function
with domain [0,1] defined by
for
is convex; it is continuous on the open interval
but not continuous at 0 and 1.
- The function
has second derivative
; thus it is convex on the set where
and concave on the set where
- Examples of functions that are monotonically increasing but not convex include
and
.
- Examples of functions that are convex but not monotonically increasing include
and
.
- The function
has
which is greater than 0 if
so
is convex on the interval
. It is concave on the interval
.
- The function
with
, is convex on the interval
and convex on the interval
, but not convex on the interval
, because of the singularity at
Functions of n variables
- LogSumExp function, also called softmax function, is a convex function.
- The function
on the domain of positive-definite matrices is convex.[7]: 74
- Every real-valued linear transformation is convex but not strictly convex, since if
is linear, then
. This statement also holds if we replace "convex" by "concave".
- Every real-valued affine function, that is, each function of the form
is simultaneously convex and concave.
- Every norm is a convex function, by the triangle inequality and positive homogeneity.
- The spectral radius of a nonnegative matrix is a convex function of its diagonal elements.[19]
See also
- Concave function
- Convex analysis
- Convex conjugate
- Convex curve
- Convex optimization
- Geodesic convexity
- Hahn–Banach theorem
- Hermite–Hadamard inequality
- Invex function
- Jensen's inequality
- K-convex function
- Kachurovskii's theorem, which relates convexity to monotonicity of the derivative
- Karamata's inequality
- Logarithmically convex function
- Pseudoconvex function
- Quasiconvex function
- Subderivative of a convex function
Notes
- "Lecture Notes 2" (PDF). www.stat.cmu.edu.
- "Concave Upward and Downward". Archived from the original on 2013-12-18.
- Stewart, James (2015). Calculus (8th ed.). Cengage Learning. pp. 223–224. ISBN 978-1305266643.
- W. Hamming, Richard (2012). Methods of Mathematics Applied to Calculus, Probability, and Statistics (illustrated ed.). Courier Corporation. p. 227. ISBN 978-0-486-13887-9. Extract of page 227
- Uvarov, Vasiliĭ Borisovich (1988). Mathematical Analysis. Mir Publishers. p. 126-127. ISBN 978-5-03-000500-3.
- Prügel-Bennett, Adam (2020). The Probability Companion for Engineering and Computer Science (illustrated ed.). Cambridge University Press. p. 160. ISBN 978-1-108-48053-6. Extract of page 160
- Boyd, Stephen P.; Vandenberghe, Lieven (2004). Convex Optimization (pdf). Cambridge University Press. ISBN 978-0-521-83378-3.
- Donoghue, William F. (1969). Distributions and Fourier Transforms. Academic Press. p. 12. ISBN 9780122206504.
- "If f is strictly convex in a convex set, show it has no more than 1 minimum". Math StackExchange. 21 Mar 2013.
- Altenberg, L., 2012. Resolvent positive linear operators exhibit the reduction phenomenon. Proceedings of the National Academy of Sciences, 109(10), pp.3705-3710.
- "Strong convexity · Xingyu Zhou's blog". xingyuzhou.org.
- Dimitri Bertsekas (2003). Convex Analysis and Optimization. Contributors: Angelia Nedic and Asuman E. Ozdaglar. Athena Scientific. p. 72. ISBN 9781886529458.
- Philippe G. Ciarlet (1989). Introduction to numerical linear algebra and optimisation. Cambridge University Press. ISBN 9780521339841.
- Yurii Nesterov (2004). Introductory Lectures on Convex Optimization: A Basic Course. Kluwer Academic Publishers. pp. 63–64. ISBN 9781402075537.
- Nemirovsky and Ben-Tal (2023). "Optimization III: Convex Optimization" (PDF).
- C. Zalinescu (2002). Convex Analysis in General Vector Spaces. World Scientific. ISBN 9812380671.
- H. Bauschke and P. L. Combettes (2011). Convex Analysis and Monotone Operator Theory in Hilbert Spaces. Springer. p. 144. ISBN 978-1-4419-9467-7.
- Kingman, J. F. C. (1961). "A Convexity Property of Positive Matrices". The Quarterly Journal of Mathematics. 12: 283–284. Bibcode:1961QJMat..12..283K. doi:10.1093/qmath/12.1.283.
- Cohen, J.E., 1981. Convexity of the dominant eigenvalue of an essentially nonnegative matrix. Proceedings of the American Mathematical Society, 81(4), pp.657-658.
References
- Bertsekas, Dimitri (2003). Convex Analysis and Optimization. Athena Scientific.
- Borwein, Jonathan, and Lewis, Adrian. (2000). Convex Analysis and Nonlinear Optimization. Springer.
- Donoghue, William F. (1969). Distributions and Fourier Transforms. Academic Press.
- Hiriart-Urruty, Jean-Baptiste, and Lemaréchal, Claude. (2004). Fundamentals of Convex analysis. Berlin: Springer.
- Krasnosel'skii M.A., Rutickii Ya.B. (1961). Convex Functions and Orlicz Spaces. Groningen: P.Noordhoff Ltd.
- Lauritzen, Niels (2013). Undergraduate Convexity. World Scientific Publishing.
- Luenberger, David (1984). Linear and Nonlinear Programming. Addison-Wesley.
- Luenberger, David (1969). Optimization by Vector Space Methods. Wiley & Sons.
- Rockafellar, R. T. (1970). Convex analysis. Princeton: Princeton University Press.
- Thomson, Brian (1994). Symmetric Properties of Real Functions. CRC Press.
- Zălinescu, C. (2002). Convex analysis in general vector spaces. River Edge, NJ: World Scientific Publishing Co., Inc. pp. xx+367. ISBN 981-238-067-1. MR 1921556.
External links
- "Convex function (of a real variable)", Encyclopedia of Mathematics, EMS Press, 2001 [1994]
- "Convex function (of a complex variable)", Encyclopedia of Mathematics, EMS Press, 2001 [1994]