- Natural density
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In number theory, asymptotic density (or natural density or arithmetic density) is one of the possibilities to measure how large a subset of the set of natural numbers is.
Intuitively, we think that there are "more" positive integers than perfect squares, since every perfect square is already positive, and many other positive integers exist besides. However, the set of positive integers is not in fact "bigger" than the set of perfect squares: both sets are infinite and countable and can therefore be put in one-to-one correspondence. Clearly, we need a better way to formalize our intuitive notion.
If we pick randomly an integer from the set [1,n], then the probability that it belongs to A is the ratio of the number of elements of A in [1,n] to the total number of elements in [1,n]. If this probability tends to some limit as n tends to infinity, then we call this limit the asymptotic density of A. We see that this notion can be understood as a kind of probability of choosing a number from the set A. Indeed, the asymptotic density (as well as some other types of densities) is studied in probabilistic number theory.
Asymptotic density contrasts, for example, with the Schnirelmann density. A drawback of this approach is that the asymptotic density is not defined for all subsets of .
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Definition
A subset A of positive integers has natural density (or asymptotic density) α, where
- 0 ≤ α ≤ 1,
if the proportion of elements of A among all natural numbers from 1 to n is asymptotic to α as n tends to infinity.
More explicitly, if one defines for any natural number n the counting function a(n) as the number of elements of A less than or equal to n, then the natural density of A being α exactly means that
- a(n)/n → α as n → +∞.
Upper and lower asymptotic density
Let A be a subset of the set of natural numbers For any put and a(n) = | A(n) | .
Define the upper asymptotic density of A by
where lim sup is the limit superior. is also known simply as the upper density of A.
Similarly, we define , the lower asymptotic density of A, by
One may say A has asymptotic density d(A) if , in which case we put
This definition can be restated in the following way:
if the limit exists.
A somewhat weaker notion of density is upper Banach density; given a set , define d * (A) as
If one were to write a subset of as an increasing sequence
then
and if the limit exists.
Examples
- If d(A) exists for some set A, then for the complement set we have d(Ac) = 1 - d(A).
- Obviously, d(N) = 1.
- For any finite set F of positive integers, d(F) = 0.
- If is the set of all squares, then d(A) = 0.
- If is the set of all even numbers, then d(A) = 1/2. Similarly, for any arithmetical progression we get d(A) = 1/a.
- For the set P of all primes we get from the prime number theorem d(P) = 0.
- The set of all square-free integers has density
- The density of the set of abundant numbers is known to be between 0.2474 and 0.2480.
- The set of numbers whose binary expansion contains an odd number of digits is an example of a set which does not have an asymptotic density, since the upper density of this set is
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- whereas its lower density is
- Consider an equidistributed sequence in [0,1]: and define a monotone family of sets :
- Then, by definition, d(Ax) = x for all x.
References
- H. H. Ostmann (1956) (in German). Additive Zahlentheorie I. Berlin-Göttingen-Heidelberg: Springer-Verlag.
- Steuding, Jörn. "Probabilistic number theory". http://www.math.uni-frankfurt.de/~steuding/steuding/prob.pdf. Retrieved 2005-10-06.
- G. Tenenbaum (1995). Introduction to analytic and probabilistic number theory. Cambridge: Cambridge Univ. Press.
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