Jump to content

User:Jonhanke496/AtlasModels: Difference between revisions

From Wikipedia, the free encyclopedia
Content deleted Content added
Changed t^{-1} to 1/t in the coherence defintion Asymptotic stability
Rearranged the sections, minor changes, and added that Atlas models are asymptotically stable. =)
Line 1: Line 1:
= Capital distributon curve =
= Atlas models =


[[Image:U.S. Stock market capital distribution curves 1929-2009.pdf|thumb|300px|right|alt=Figure 1: U.S. stock market capital distribution curves, 1929–2009.|Figure A plots the (ranked) capital distribution curves at the end of each of the last nine decades. This log-log plot has exhibited remarkable stability over long periods of time. The study of such stability is one of the major goals of SPT.]]
An '''Atlas Model''' is a stochastic model for a market of <math>n</math> stocks where the stock with the smallest total capitalization is given a large positive growth rate of <math>ng,</math> while all other stocks are assumed to have zero growth rate. The name "atlas model" stems from the fact that the growth of the market is supported entirely by the growth of the smallest stock, by analogy with the mythological [[Atlas_(mythology)|Atlas]]. Atlas models are useful as a way of understanding the stability of the [[:File:U.S._Stock_market_capital_distribution_curves_1929-2009.pdf|capital distribution curve]]. Their mathematical simplicity allows one to prove that in such a market the capital distribution curve is stable and given by [[Pareto distribution]]. The fact that even these simple models have a [[:File:U.S._Stock_market_capital_distribution_curves_1929-2009.pdf|capital distribution curve]] that fairly accurately approximates its observed shape, shows that the stability of the capital distribution curve is a fairly universal market phenomenon.

The '''capital distribution curve''' of a market of <math>n</math> stocks is defined to be the plot of the ranked log market weights <math>\log(\mu_{(k)}(t))</math>
of the stocks in decreasing order (i.e. by their rank <math>k</math>) as a function of <math>k,</math> where the ranked market weights <math>\mu_{(k)}(t)</math> are a permutation of the unranked market weights <math>\mu_{i}(t),</math> defined for all <math>1 \leq i \leq n</math> by
:<math>\mu_i(t) := \frac{X_i(t)}{X_1(t) + \cdots + X_n(t)}</math>
where <math>X_i(t)</math> is the price of the <math>i</math>-th stock at time <math>t</math>. This curve shows a remarkable stability over time (see Figure A), and various market models (e.g. [[#Atlas models|Atlas models]], first-order models, second-order models) have been constructed to understand its stability and shape. In many markets this appears to follow a [[Pareto distribution]].


More mathematically, the atlas model with parameters <math>g,\sigma</math> is defined by the stochastic differential equation
:<math>
d\log(X_i(t)) = \gamma_i(t) \, dt + \sigma \, dW_i(t)
</math>
where for all <math>1\leq i \leq n</math> the <math>W_i(t)</math> are independent Brownian motions, and the positive real
parameters <math>g, \sigma >0</math> are respectively called the '''growth rate''' and '''variance''' of the Atlas model.


= Asymptotic stability =
= Asymptotic stability =
Line 21: Line 20:
# <math>\mathbb{V}_{k:k+1} := \lim_{t \rightarrow \infty} \tfrac{1}{t} \langle\log(\mu_{(k)}) - \log(\mu_{(k+1)})\rangle_t</math>
# <math>\mathbb{V}_{k:k+1} := \lim_{t \rightarrow \infty} \tfrac{1}{t} \langle\log(\mu_{(k)}) - \log(\mu_{(k+1)})\rangle_t</math>


exist for all <math> 1 \leq k \leq n-1</math>. (Here <math>\Lambda_{X}(t)</math> and <math>\langle X \rangle_{t}</math> respectively denote the [[Local_time_(mathematics)|local time]] and [[Quadratic_variation|quadratic variation]] process of a given [[Semimartingale#Continuous_semimartingales|continuous semimartingale]] process <math>X(t),</math> and <math>\mu_{(k)}</math> denotes the <math>k^{\mathrm{th}}</math> ranked market weight process (ranked in decreasing order).)
exist for all <math> 1 \leq k \leq n-1</math>. (Here <math>\Lambda_{X}(t)</math> and <math>\langle X \rangle_{t}</math> respectively denote the [[Local_time_(mathematics)|local time]] and [[Quadratic_variation|quadratic variation]] process of a given [[Semimartingale#Continuous_semimartingales|continuous semimartingale]] process <math>X(t),</math> and <math>\mu_{(k)}</math> denotes the <math>k</math>-th ranked market weight process (i.e. in non-increasing order as <math>k</math> increases).)

= Atlas models =

An '''atlas model''' is a stochastic model for a market of <math>n</math> stocks where the stock with the smallest total capitalization is given a large positive growth rate of <math>ng,</math> while all other stocks are assumed to have zero growth rate. The name "atlas model" stems from the fact that the growth of the market is supported entirely by the growth of the smallest stock, by analogy with the mythological [[Atlas_(mythology)|Atlas]]. Atlas models are useful as a way of understanding the stability of the [[:File:U.S._Stock_market_capital_distribution_curves_1929-2009.pdf|capital distribution curve]]. Their mathematical simplicity allows one to prove that they are [[#Asymptotic stability|asymptotically stable]] and that in such a market the capital distribution curve is stable and given by an explicit [[Pareto distribution]]. The fact that even these simple models have a [[:File:U.S._Stock_market_capital_distribution_curves_1929-2009.pdf|capital distribution curve]] that fairly accurately approximates its observed shape, shows that the stability of the capital distribution curve is a fairly universal market phenomenon.

More mathematically, the atlas model with parameters <math>g,\sigma</math> is defined by the stochastic differential equation
:<math>
d\log(X_i(t)) = \gamma_i(t) \, dt + \sigma \, dW_i(t)
</math>
where for all <math>1\leq i \leq n</math> the <math>W_i(t)</math> are independent Brownian motions, and the positive real
parameters <math>g, \sigma >0</math> are respectively called the '''growth rate''' and '''variance''' of the atlas model.




= Misc fragments =
= Misc fragments =
Line 34: Line 46:




= Capital distributon curve =

[[Image:U.S. Stock market capital distribution curves 1929-2009.pdf|thumb|300px|right|alt=Figure 1: U.S. stock market capital distribution curves, 1929–2009.|Figure A plots the (ranked) capital distribution curves at the end of each of the last nine decades. This log-log plot has exhibited remarkable stability over long periods of time. The study of such stability is one of the major goals of SPT.]]

The '''capital distribution curve''' of a market of <math>n</math> stocks is defined to be the plot of the ranked log market weights <math>\log(\mu_{(k)}(t))</math>
of the stocks in decreasing order (i.e. by their rank <math>k</math>) as a function of <math>k,</math> where the ranked market weights <math>\mu_{(k)}(t)</math> are a permutation of the unranked market weights <math>\mu_{i}(t),</math> defined for all <math>1 \leq i \leq n</math> by
:<math>\mu_i(t) := \frac{X_i(t)}{X_1(t) + \cdots + X_n(t)}</math>
where <math>X_i(t)</math> is the price of the <math>i</math>-th stock at time <math>t</math>. This curve shows a remarkable stability over time (see Figure A), and various market models (e.g. [[#Atlas models|Atlas models]], first-order models, second-order models) have been constructed to understand its stability and shape. In many markets this appears to follow a [[Pareto distribution]].


= References =
= References =

Revision as of 18:15, 4 October 2013

Capital distributon curve

Figure 1: U.S. stock market capital distribution curves, 1929–2009.
Figure A plots the (ranked) capital distribution curves at the end of each of the last nine decades. This log-log plot has exhibited remarkable stability over long periods of time. The study of such stability is one of the major goals of SPT.

The capital distribution curve of a market of stocks is defined to be the plot of the ranked log market weights of the stocks in decreasing order (i.e. by their rank ) as a function of where the ranked market weights are a permutation of the unranked market weights defined for all by

where is the price of the -th stock at time . This curve shows a remarkable stability over time (see Figure A), and various market models (e.g. Atlas models, first-order models, second-order models) have been constructed to understand its stability and shape. In many markets this appears to follow a Pareto distribution.


Asymptotic stability

To understand the existence and stability of the capital distribution curve in a general stochastic market it is necessary to make some reasonable assumptions about its behavior. A useful class of markets to consider are those which are asymptotically stable, which is defined in [1] by the technical conditions of being coherent and that the difference of the adjacent stocks log market weights (when ranked by their capitalization in decreasing order) have local time and variance with asymptotically constant slope. In more mathematical language, asymptotic stability of a stochastic market with stocks requires that

for all  (Coherence)

and that the parameters and defined by

exist for all . (Here and respectively denote the local time and quadratic variation process of a given continuous semimartingale process and denotes the -th ranked market weight process (i.e. in non-increasing order as increases).)

Atlas models

An atlas model is a stochastic model for a market of stocks where the stock with the smallest total capitalization is given a large positive growth rate of while all other stocks are assumed to have zero growth rate. The name "atlas model" stems from the fact that the growth of the market is supported entirely by the growth of the smallest stock, by analogy with the mythological Atlas. Atlas models are useful as a way of understanding the stability of the capital distribution curve. Their mathematical simplicity allows one to prove that they are asymptotically stable and that in such a market the capital distribution curve is stable and given by an explicit Pareto distribution. The fact that even these simple models have a capital distribution curve that fairly accurately approximates its observed shape, shows that the stability of the capital distribution curve is a fairly universal market phenomenon.

More mathematically, the atlas model with parameters is defined by the stochastic differential equation

where for all the are independent Brownian motions, and the positive real parameters are respectively called the growth rate and variance of the atlas model.


Misc fragments

Fun with bold characters:

Even these simple models have a capital distribution curve that fairly accurately approximates its observed shape,

as a first-order approximation to market



References

  1. ^ Fernholz, E. Robert (2002). Stochastic Portfolio Theory. Springer Science+Business Media, Inc. p. 100. ISBN 0-387-95405-8.