58
Probl. Anal. Issues Anal. Vol. 6(24), No. 1, 2017, pp. 58-67
DOI: 10.15393/j3.art.2017.3691
UDC 517.5
D. V. Prokhorov
EXTENSION OF STARLIKE FUNCTIONS TO A FINITELY
PUNCTURED PLANE
In memory of Alexander Vasil'ev
Abstract. We consider a sequence of functions which are starlike in the unit disk and their logarithmic derivatives are mero-morphic with a finite number of simple poles in any boundary domain. These poles are either boundary deterministic or random with given characteristics. The aim of the article is the limit process and properties of the limit functions. We distinguish conditions for residues and distribution of poles. Under certain conditions, the sequence converges to the identity function. Another conditions allow us to obtain estimates for the limit function and its logarithmic derivative.
Key words: starlike function, meromorphic function, weight, deterministic point regulation, uniform distribution
2010 Mathematical Subject Classification: 30C45, 60G55
1. Introduction. During last decades stochastic ideas and methods became quite popular in geometric function theory. Among the most known events we mention that in 2000 Schramm introduced in [1] a family of random curves, which he called stochastic Loewner evolution, or SLE, see also [2] for further development.
In this article we present an approach to a (partly) stochastic problem posed by Vasil'ev for functions which are holomorphic in the plane, except for at most a countable set of singular points, and are starlike on the disk.
A function f is said to be starlike if it maps the unit disk D = {z E E C : |z| < 1} onto domain f (D) which is starlike with respect to the origin. A holomorphic function f on D normalized by f (0) = 0 and f' (0) = 1 is starlike if and only if the real part of zf '(z)/f (z) is positive
©Petrozavodsk State University, 2017 IMlIiHI
in D (see, e.g., [3, Theorem 2.10]). A dense subclass {/n}n>i of the set S* of all starlike functions / is defined by
/Z) = £ ,kn ^, z E D, (1)
where |ak | = 1, 0 < ^kn < 1, k = 1,..., n, ^kn = 1, n E N.
In recent papers Alexander Vasil'ev developed stochastic topics in complex analysis, see, e.g., [4-6]. In early 2014 Vasil'ev proposed the problem of studying a limit
process /n —y / as n —y to when every starlike function /n is given by (1) with |ak | > 1, k = 1,..., n, and an — to as n — to.
Surely, we have to decide which conditions are required for a sequence of singular points {an}n>1. It seems interesting to consider the Poisson configuration of random points {an}, see, e.g., [7, § 3.1].
Definition 1. The spatial Poisson process with uniform intensity ft > > 0 is a point process in R2 that is a random distribution of points such that
[PP1] for every bounded closed set B, the count N(B) which is the number of points of the process contained in B has a Poisson distribution with the mean fts(B), where s(B) denotes the area of B;
[PP2] if B1,..., Bm are disjoint regions, then N (B1),..., N (Bm) are independent.
The Poisson process assumption relates only to the poles {ak}1<k<n in (1). However, there are families of coefficients {^kn}1<k<n, n > 1, which are to be defined as well. We will prefer a deterministic way of choosing these weights. Let us describe two scenarios of weights behavior.
Given a sequence of numbers v1,..., vn,... ,0 < vn < 1 for all n > 1, denote
n
Sn = 5^ Vk, ^kn = s" , 1 < k < n, n > 1. (2)
k=1 Sn
For every n > 1, we obtain a set of n positive numbers ^1n,...,^nn, Sn=1 = 1. There are only two possibilities:
(i) Sn — to as n — to;
(ii) limn^^ Sn = S < to.
In scenario (i), all weights ^kn, 1 < k < n, n > 1, tend to 0 uniformly as n — to. This makes it sensible to call v1 ,..., vn,... in (i) a uniform
type sequence. For example (vi,..., vn,...) = (1,..., 1,...) is a uniform type sequence. Indeed, in this case, Sn = n for all n > 1, and
^kn = —, 1 < k < n, n > 1. n
On the other hand, in scenario (ii) no one of weights ^kn, n > 1, tends to 0 for a fixed k, 1 < k < n, and n ^ to, but ^kn tend to 0 as n ^ to and k ^ to, 1 < k < n. In this case, we call v1,..., vn,... in (ii) a Poisson type sequence. For example,
/ An-i \
(v1,-,') = (1,A,-, A> 0,
is a Poisson type sequence. Indeed, we see that lim Sn = eA and there-
n—^^o
fore, for any fixed k,
/ Ak-1
lim (^in,.. .,^kn) = e-A, e-AA,... ,e-A--—
n—tt y (k — 1)!
This is a sequence of values of a probability mass function of a discrete random variable having a Poisson distribution. The article is organized as follows.
In Section 2 we deal with a deterministic point regulation, i.e., the points {an} are determined and the weights |^kn} are generated by a sequence either of the uniform type or the Poisson type. We prove Theorem 1, which states that fn ^ id as n ^ to in the first case, and Theorem 2 with estimates for the limit functions in the second case.
In Section 3 we replace axioms [PP1]-[PP2] by other ones which make the problem partly stochastic. Under the conditions of Theorem 3, functions fn converge almost surely to the identity.
2. Deterministic point regulation. Let fn, n > 1, be given by (1) and denote
zfn(z)
tt
Pn (z):= = PjnZj, z e D. (3)
fn(z)
j=i
We suppose that v1,..., vn,... generating weights {^kn} is a uniform type sequence and show that fn ^ id if an ^ to as n ^ to.
Theorem 1. Given {an}n>1 with |an| > 1 and an ^ to as n ^ to, let fn, n > 1, be represented by (33) where the weights {^kn}1<k<n<tt are
generated according to (2) by a uniform type sequence vi,..., vn,... . Then fn converge to the identity function as n — to uniformly on compact subsets of D.
Proof. Formulas (1) and (3) imply that coefficients pjn in (3) are evaluated as
Pjn
j j > 1.
k = 1 ak
For any e > 0, there exists n1 G N such that
|an| > 1 + 1, n > n1, e
and there exists n2 > n1 for which
e
0 < Hkn < —, n > n2. n1
Hence, for n > n2 and any j > 1, we have
n 1
|Pjn|< ^ j + 2 £ j -
|ak I
k=m+i |ak1
ni
< 2 V^kn + 2 V < 2e + 2e = 4e.
1 + e
k = 1 k=ni + 1
This means that, for any j > 1, pjn tend to 0 uniformly with respect to j as n — to, and thus pn(z) = 1. So fn — id as n — to which
completes the proof of Theorem 1. □
Remark 1. If |an | = 1 + ftn, ft > 0, n > 1, then, for fn and pn in (33) under conditions of Theorem 1, the following relations
|Pn(z) - 1| = |z|O( JL) ,
log
fn (z)
= O
1 ) , z G D, n —y to,
ViSn J
hold.
Indeed,
|Pn(z) - 11 =
2ßkn z
k=1 ak - 1
^ 2^kn|z| = ^ 2vk |z| - ^ ßk = ^
k=1
k=1
ßk
k=1
1
<
z
< 2|z|
\
k = 1
A
E
k=i
O^k)2
E
Lk = 1
1
<
< 2|z|
\
E
k=i
E
Lk = 1
1
<
C |z|
_ C|z|
with a certain constant C > 0. This implies that
tag
fn (z)
Pn (Z) - 1
|dZ|<
<
C did=C|z
V/Sn
\fSn
The situation is essentially different if v1,..., vn,... generating weights |^kn} is a Poisson type sequence.
Theorem 2. Given |an}n>1 with |an| > 1 and an ^ œ as n ^ œ, let fn, n > 1, be represented by (33) where the weights |^kn}1<k<n<^ are generated according to (2) by a Poisson type sequence v1,..., vn,... . Then p = lim pn and f = lim fn satisfy the following inequalities
n^œ n—too
2 V-^ |z|
2
< |p(z) - 1| < 2 X] Vk
S fc=i" k |ak | - |z|
, z G D, (4)
|f(z)| < |z| n (1
k=1
|ak |
-2vfe/S
, z G D.
(5)
Proof. Formulas (1)-(3) imply that
p(z) = lim pn(z) = 1 + lim V^ pjnz7 = 1 + lim V^ V^
n—^^ n—yra ^—^ n—yra -^ -^
7
-z7 =
n—^^o
7=1
n
7=1k=1 ak
1 + 2 lim V" ^kn V"
^ \ak/
k=1 7=1
7 _
1 + 2 lim V
n
Vk z
Sn ak - z
k=1
1
1
z
z
z
z
z
2 ^ z
= 1+ qZ^ Vk-.
S k=1ak - z
From here we immediately deduce (4). From the formula
we find that
log M = / P«LzI de
log
f (z)
<
log
f (z)
< / S E Vk
I S k=1
IdZ I
|ak I-IZI
2 S
« |z
E Vk / * k=1
dIZ I
log 1
k=1
2
Iak I-IZI S
Vk log
Iak I
k=1
IakI - M
M_
Iak I
-2vfe/S
which implies estimate (5) and completes the proof of Theorem 2. □
One can write down exact representations and estimates for the sequence v1,..., vn,... with the Poisson distribution.
3. Random point regulation. In this section, we deal with a random model of point configurations based on the Poisson process of Definition 1. However, we will transform this model in accordance with the specific problem for starlike functions having random singular points in the plane.
First, we have seen in the previous sections that estimates of Theorems 1 and 2 are independent of arg an. Therefore, it is natural to apply the one-dimensional Poisson process on the line, i.e., we assume that an > 1 for n > 1.
Secondly, we focus on a homogeneous Poisson point process which is also called a stationary Poisson process, see, e.g., [8, pp. 19-25], as well as uniform Poisson point process, see, e.g., [9, p.13]. If the homogeneous point process is defined on the real line in different mathematical models, then it has the characteristic that the positions will be uniformly distributed.
z
z
z
Third, a compound Poisson point process is formed by adding random values or weights to each point of the Poisson point process, so the process is constructed from a marked Poisson point process, where the marks form a collection of independent and identically distributed non-negative random values, see, e.g., [10, pp. 19-21; 11, pp. 291-293]. In our case, the weights serve as deterministic marks either of the uniform type
or the Poisson type.
Finally, we replace the axiom [PP1] in Definition 1 by a deterministic number of points in a given interval.
So we make the following assumptions.
[UP1] For every R > 1, there is a number n(R) of points {ak }1<k<n(R) which arrive in the segment [1,R].
[UP2] Random points {ak}1<k<n(R) are uniformly distributed in [1, R], knowing the number n(R).
[UP3] Random points {ak} are independent.
Theorem 3. Suppose that a random point process satisfies axioms [UP1] - [UP3], and let functions fn(R) be represented by (1) and (33) with ar-
n(R)
bitrary positive numbers {^kn(R)h<k<n(R), È ^fcn(R) = 1. Then /n(R
converge almost surely to the identity function f (z) = z as R — to. Proof. Formulas (1) and (3) imply that
As far as random points |ak }i<k<n(R) are independent, a joint probability density function ^(a1,..., an(R)) is evaluated as follows
k=1
j=1
where
n(R)
<p(a!,..., an(R)) = JJ ), k=1
where ) is a probability density function for the random point ak. Since ak is uniformly distributed in [1, R], its probability density function
has the form
^(«fc) = r>1 1 for afc G [1, R], and ) = 0 for G [1, R], R — 1
k = 1,..., n(R).
Evaluate the mathematical expectation E(pjn(R)) of Pjn(R), j > 1, R Rn(R) 2 ^
E(pjn(R)) = ... E —^(ai,..., an(R))dai... dan(R) =
n(R) R ^ n(R) o„ R J o R J
" ' 2^kn(R) / aafc 2 / dx
= E 2^MR) / ) dak = E
k__i J i__i
Hence,
aj k ^ R — W aj R — 1 J xJ
TRY ^ 2 log R
E(P1n(R)) = R_ 1
and
2 RJ —1 — 1 E(pjn(R) ) = R-1 (j — 1) RJ—1, j> 1.
So, for all j > 1,
lim E(pn(R)) = 0, R
and the convergence is uniform with respect to j > 1. This implies that Pn(R) converge almost surely to p(z) = 1 as R ^ ro, and hence fn(R) converge almost surely to f (z) = z, z G D, as R ^ ro, which completes the proof of Theorem 3. □
Note that axiom [UP1], as well as Theorem 3 and its proof, do not require that n(R) ^ ro when R ^ ro.
Evidently, requirement [UP2] about the uniform distribution of points |ak} in [1, R] can be replaced by other suitable continuous distributions, e.g., normal, exponential, geometric stable and so on. Discrete distributions are possible as well. Certainly, the conclusion of Theorem 3 can be changed under different assumptions.
For example, let ) be a probability density function with parameter A > 0 for the exponential distribution located on [1, R], R > 1,
Ae—A(x—1)
^(x) = 1 _ e—A(R—1), x G [1,R],
and ^(x) = 0 outside [1,R].
Following the proof of Theorem 3 in this case, we come to the formula
R R
f ^(xK 2A I e-A(x-1) ,
E(pjn(R)) = 2 —dx = ^ e-A(R-lJ —j-dx, j > 1
Send R to infinity and obtain
2 7 e-A(x-1)
lim E(pjn(R)) = — -:-dx > 0, j > 1.
1
In such a case, if |ak}1<k<n(R) has a limit configuration |anas R — to, then the almost surely limit f is a starlike function in D, and p(z) = zf (z)/f(z) is meromorphic with simple poles at |an}£=1.
Acknowledgment. This paper is dedicated to the memory of Alexander Vasil'ev (1962-2016), author's first and the best PhD student. The article was partially prepared during author's stay at Bergen University in Norway during January-April, 2014, under invitation by Vasil'ev who proposed the research topic and actively participated in the work. A part of results was announced in [12] at the international conference "Function Theory, its Applications and Related Topics", Kazan Federal University, 2015.
This work is supported by the Russian Science Foundation under grant 17-11-01229.
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Received May 23, 2017.
In revised form, June 7, 2017.
Accepted June 10, 2017.
Published online June 10, 2017.
Saratov State University,
83, Astrakhanskaya st., Saratov 410012, Russia; Petrozavodsk State University 33, Lenina pr., Petrozavodsk 185910, Russia E-mail: [email protected]