Functions of a single variable • A
differentiable function is (strictly) concave on an
interval if and only if its
derivative function is (strictly)
monotonically decreasing on that interval, that is, a concave function has a non-increasing (decreasing)
slope. •
Points where concavity changes (between concave and
convex) are
inflection points. • If is twice-
differentiable, then is concave
if and only if is
non-positive (or, informally, if the "
acceleration" is non-positive). If is
negative then is strictly concave, but the converse is not true, as shown by . • If is concave and differentiable, then it is bounded above by its first-order
Taylor approximation: f(y) \leq f(x) + f'(x)[y-x] • A
Lebesgue measurable function on an interval is concave
if and only if it is midpoint concave, that is, for any and in f\left( \frac{x+y}2 \right) \ge \frac{f(x) + f(y)}2 • If a function is concave, and , then is
subadditive on [0,\infty). Proof: • Since is concave and , letting we have f(tx) = f(tx+(1-t)\cdot 0) \ge t f(x)+(1-t)f(0) \ge t f(x) . • For a,b\in[0,\infty): f(a) + f(b) = f \left((a+b) \frac{a}{a+b} \right) + f \left((a+b) \frac{b}{a+b} \right) \ge \frac{a}{a+b} f(a+b) + \frac{b}{a+b} f(a+b) = f(a+b)
Functions of n variables • A function is concave over a convex set
if and only if the function is a
convex function over the set. • The sum of two concave functions is itself concave and so is the
pointwise minimum of two concave functions, i.e. the set of concave functions on a given domain form a
semifield. • Near a strict
local maximum in the interior of the domain of a function, the function must be concave; as a partial converse, if the derivative of a strictly concave function is zero at some point, then that point is a local maximum. • Any
local maximum of a concave function is also a
global maximum. A
strictly concave function will have at most one global maximum. ==Examples==