Quasi-arithmetic mean

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In mathematics and statistics, the quasi-arithmetic mean or generalised f-mean or Kolmogorov-Nagumo-de Finetti mean[1] is one generalisation of the more familiar means such as the arithmetic mean and the geometric mean, using a function . It is also called Kolmogorov mean after Soviet mathematician Andrey Kolmogorov. It is a broader generalization than the regular generalized mean.

Definition

If f is a function which maps an interval of the real line to the real numbers, and is both continuous and injective, the f-mean of numbers is defined as , which can also be written

We require f to be injective in order for the inverse function to exist. Since is defined over an interval, lies within the domain of .

Since f is injective and continuous, it follows that f is a strictly monotonic function, and therefore that the f-mean is neither larger than the largest number of the tuple nor smaller than the smallest number in .

Examples

  • If = ℝ, the
    real line
    , and , (or indeed any linear function , not equal to 0) then the f-mean corresponds to the arithmetic mean.
  • If = ℝ+, the positive real numbers and , then the f-mean corresponds to the geometric mean. According to the f-mean properties, the result does not depend on the base of the logarithm as long as it is positive and not 1.
  • If = ℝ+ and , then the f-mean corresponds to the harmonic mean.
  • If = ℝ+ and , then the f-mean corresponds to the
    power mean
    with exponent .
  • If = ℝ and , then the f-mean is the mean in the log semiring, which is a constant shifted version of the LogSumExp (LSE) function (which is the logarithmic sum), . The corresponds to dividing by n, since logarithmic division is linear subtraction. The LogSumExp function is a smooth maximum: a smooth approximation to the maximum function.

Properties

The following properties hold for for any single function :

Symmetry: The value of is unchanged if its arguments are permuted.

Idempotency: for all x, .

Monotonicity: is monotonic in each of its arguments (since is monotonic).

Continuity: is continuous in each of its arguments (since is continuous).

Replacement: Subsets of elements can be averaged a priori, without altering the mean, given that the multiplicity of elements is maintained. With it holds:

Partitioning: The computation of the mean can be split into computations of equal sized sub-blocks:

Self-distributivity: For any quasi-arithmetic mean of two variables: .

Mediality: For any quasi-arithmetic mean of two variables:.

Balancing: For any quasi-arithmetic mean of two variables:.

Central limit theorem : Under regularity conditions, for a sufficiently large sample, is approximately normal.[2] A similar result is available for Bajraktarević means, which are generalizations of quasi-arithmetic means.[3]

Scale-invariance: The quasi-arithmetic mean is invariant with respect to offsets and scaling of : .

Characterization

There are several different sets of properties that characterize the quasi-arithmetic mean (i.e., each function that satisfies these properties is an f-mean for some function f).

  • Mediality is essentially sufficient to characterize quasi-arithmetic means.[4]: chapter 17 
  • Self-distributivity is essentially sufficient to characterize quasi-arithmetic means.[4]: chapter 17 
  • Replacement: Kolmogorov proved that the five properties of symmetry, fixed-point, monotonicity, continuity, and replacement fully characterize the quasi-arithmetic means.[5]
  • Balancing: An interesting problem is whether this condition (together with symmetry, fixed-point, monotonicity and continuity properties) implies that the mean is quasi-arithmetic. Georg Aumann showed in the 1930s that the answer is no in general,[6] but that if one additionally assumes to be an analytic function then the answer is positive.[7]

Homogeneity

Means are usually homogeneous, but for most functions , the f-mean is not. Indeed, the only homogeneous quasi-arithmetic means are the

power means (including the geometric mean
); see Hardy–Littlewood–Pólya, page 68.

The homogeneity property can be achieved by normalizing the input values by some (homogeneous) mean .

However this modification may violate monotonicity and the partitioning property of the mean.

Generalizations

Consider a Legendre-type strictly convex function . Then the gradient map is globally invertible and the weighted multivariate quasi-arithmetic mean[8] is defined by , where is a normalized weight vector ( by default for a balanced average). From the convex duality, we get a dual quasi-arithmetic mean associated to the quasi-arithmetic mean . For example, take for a symmetric positive-definite matrix. The pair of matrix quasi-arithmetic means yields the matrix harmonic mean:

See also

References

  1. S2CID 31899023
    .
  2. .
  3. ].
  4. ^ a b Aczél, J.; Dhombres, J. G. (1989). Functional equations in several variables. With applications to mathematics, information theory and to the natural and social sciences. Encyclopedia of Mathematics and its Applications, 31. Cambridge: Cambridge Univ. Press.
  5. ^ Grudkin, Anton (2019). "Characterization of the quasi-arithmetic mean". Math stackexchange.
  6. S2CID 115392661
    .
  7. ^ Aumann, Georg (1934). "Grundlegung der Theorie der analytischen Analytische Mittelwerte". Sitzungsberichte der Bayerischen Akademie der Wissenschaften: 45–81.
  8. ].