Normed vector spaceIn a normed vector space V, the triangle inequality is that is, the norm of the sum of two vectors is at most as large as the sum of the norms of the two vectors. This is also referred to as subadditivity. The real line is a normed vector space with the absolute value as the norm, and so the triangle inequality states that for any real numbers x and y: The triangle inequality is useful in mathematical analysis for determining the best upper estimate on the size of the sum of two numbers, in terms of the sizes of the individual numbers. There is also a lower estimate, which can be found using the inverse triangle inequality which states that for any real numbers x and y: If the norm arises from an inner product (as is the case for Euclidean spaces), then the triangle inequality follows from the Cauchy–Schwarz inequality. Metric spaceIn a metric space M with metric d, the triangle inequality is
that is, the distance from x to z is at most as large as the sum of the distance from x to y and the distance from y to z. ProofThe triangle inequality is proved generally for any well defined inner product space as follows: Given vectors x and y,
Taking the square root of the final result gives the triangle inequality. ConsequencesThe following consequences of the triangle inequalities are often useful; they give lower bounds instead of upper bounds:
this implies that the norm ||–|| as well as the distance function d(x, –) are 1-Lipschitz and therefore continuous. Reversal in Minkowski spaceIn the usual Minkowski space and in Minkowski space extended to an arbitrary number of spatial dimensions, assuming null or timelike vectors in the same time direction, the triangle inequality is reversed:
A physical example of this inequality is the twin paradox in special relativity. See also
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