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en>David Eppstein
let's not use undefined technical terms such as "Lipschitz curve": it makes the article unreadable to people who don't already understand the subject
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The '''Hurst exponent''' is used as a measure of [[Long-range dependency|long-term memory]] of [[time series]]. It relates to the [[autocorrelation]]s of the time series, and the rate at which these decrease as the lag between pairs of values increases.
Studies involving the Hurst exponent were originally developed in [[hydrology]] for the practical matter of determining optimum dam sizing for the [[Nile river]]'s volatile rain and drought conditions that had been observed over a long period of time.<ref>{{cite journal | first1 = H.E. | last1 = Hurst | journal = Trans. Am. Soc. Civ. Eng. | volume = 116 | page = 770 | year = 1951 }}</ref><ref>{{cite book | last1 = Hurst | first1 = H.E. | last2 = Black | first2 = R.P. | last3 = Simaika | first3 = Y.M. | year = 1965 | title = Long-term storage: an experimental study | publisher = Constable | location = London }}</ref> The name "Hurst exponent", or "Hurst coefficient", derives from [[Harold Edwin Hurst]] (1880–1978), who was the lead researcher in these studies; the use of the standard notation ''H'' for the coefficient relates to his name also.
 
In [[fractal geometry]], the '''generalized Hurst exponent''' has been denoted by [[H (disambiguation)|''H'']] or ''H<sub>q</sub>'' in honor of both Harold Edwin Hurst and [[Otto Ludwig Holder|Ludwig Otto Hölder]] (1859–1937) by [[Benoît Mandelbrot]] (1924–2010).<ref>{{cite journal | first1 = B.B. | last1 = Mandelbrot | first2 = J.R. | last2 = Wallis | journal = Water Resour. Res. | volume = 4 | page = 909 | year = 1969 }}</ref> ''H'' is directly related to [[fractal dimension]], ''D'', and is a measure of a data series' "mild" or "wild" randomness.<ref>{{cite paper | title = The (Mis)Behavior of Markets | first = Benoît B. | last = Mandelbrot | page = 187 }}</ref>
 
The Hurst exponent is referred to as the "index of dependence" or "index of long-range dependence". It quantifies the relative tendency of a time series either to regress strongly to the mean or to cluster in a direction.<ref>Torsten Kleinow (2002)[http://edoc.hu-berlin.de/dissertationen/kleinow-torsten-2002-07-04/PDF/Kleinow.pdf  Testing Continuous Time Models in Financial Markets], Doctoral thesis, Berlin {{Page needed|date=September 2010}}</ref> A value ''H'' in the range 0.5–1 indicates a time series with long-term positive autocorrelation, meaning both that a high value in the series will probably be followed by another high value and that the values a long time into the future will also tend to be high. A value in the range 0 – 0.5 indicates a time series with long-term switching between high and low values in adjacent pairs, meaning that a single high value will probably be followed by a low value and that the value after that will tend to be high, with this tendency to switch between high and low values lasting a long time into the future. A value of ''H''=0.5 can indicate a completely uncorrelated series, but in fact it is the value applicable to series for which the autocorrelations at small time lags can be positive or negative but where the absolute values of the autocorrelations decay exponentially quickly to zero. This in contrast to the typically [[power law]] decay for the 0.5 < ''H'' < 1 and  0 < ''H'' < 0.5 cases.
 
==Definition==
The Hurst exponent, ''H'', is defined in terms of the asymptotic behaviour of the [[rescaled range]] as a function of the time span of a time series as follows;<ref name="Qian">{{cite conference | first1 = Bo | last1 = Qian | first2 = Khaled | last2 = Rasheed | id = {{citeseerx|10.1.1.137.207}} | title = HURST EXPONENT AND FINANCIAL MARKET PREDICTABILITY | conference = IASTED conference on Financial Engineering and Applications (FEA 2004) | pages = 203–209 | year = 2004 }}</ref><ref name="Feder">{{cite book |title=Fractals |last=Feder |first=Jens |year=1988 |publisher=Plenum Press |location=New York |isbn=0-306-42851-2}}</ref>
 
:<math>\operatorname{E} \left [ \frac{R(n)}{S(n)} \right ]=C n^H  \text{  as } n \to \infty  \, ,</math>
 
where;
 
* <math>R(n)</math> is the [[range]] of the first <math>n</math> values, and <math>S(n)</math> is their [[standard deviation]]
 
* <math>\operatorname{E} \left [x \right ] \,</math> is the [[expected value]]
 
* <math>n</math> is the time span of the observation (number of data points in a time series)
 
* <math>C</math> is a constant.
 
==Estimating the exponent==
 
To estimate the Hurst exponent, one must first estimate the dependence of the [[rescaled range]] on the time span ''n'' of observation.<ref name="Feder"/> A time series of full length ''N'' is divided into a number of shorter time series of length ''n'' = ''N'', ''N''/2, ''N''/4, ... The average rescaled range is then calculated for each value of ''n''.
 
For a (partial) time series of length <math>n</math>, <math>X=X_1,X_2,\dots, X_n \, </math>, the rescaled range is calculated as follows:<ref name="Qian"/><ref name="Feder"/>
 
1. Calculate the [[mean]];
 
:<math>m=\frac{1}{n} \sum_{i=1}^{n} X_i \,.</math>
 
2. Create a mean-adjusted series;
 
:<math>Y_t=X_{t}-m \quad  \text{  for } t=1,2, \dots ,n \,. </math>
 
3. Calculate the cumulative deviate series <math>Z</math>;
 
:<math>Z_t= \sum_{i=1}^{t} Y_{i} \quad  \text{  for }  t=1,2, \dots ,n \,. </math>
 
4. Compute the range <math>R</math>;
 
:<math> R(n) =\operatorname{max}\left (Z_1, Z_2, \dots, Z_n  \right )-
  \operatorname{min}\left (Z_1, Z_2, \dots, Z_n  \right ). </math>
 
5. Compute the [[standard deviation]] <math>S</math>;
 
:<math>S(n)= \sqrt{\frac{1}{n} \sum_{i=1}^{n}\left ( X_{i} - m \right )^{2}}. </math>
 
6. Calculate the rescaled range <math>R(n)/S(n)</math> and average over all the partial time series of length <math>n.</math>
 
The Hurst exponent is estimated by fitting the [[power law]] <math>\operatorname{E} \left [ \frac{R(n)}{S(n)} \right ]=C n^H</math> to the data.
This can be done by plotting the logarithm of <math>\operatorname{E} \left [ \frac{R(n)}{S(n)} \right ]</math> as a function of <math>\log n</math>, and fitting a straight line; the slope of the line gives <math>H</math>. Such a graph is called a pox plot.  However, this approach is known to produce biased estimates of the power-law exponent.  A more principled approach fits the power law in a maximum-likelihood fashion.<ref>{{cite journal |author=Aaron Clauset, Cosma Rohilla Shalizi, M. E. J. Newman |year=2009 |title=Power-law distributions in empirical data |journal=SIAM Review |volume=51 |pages=661–703 |arxiv=0706.1062 |doi=10.1137/070710111 }}</ref>
 
==Generalized exponent==
 
The basic Hurst exponent can be related to the expected size of changes, as a function of the lag between observations, as measured by E(|''X<sub>t+&tau;</sub>-X<sub>t</sub>''|<sup>2</sup>). For the generalized form of the coefficient, the exponent here is replaced by a more general term, denoted by ''q''.
 
There are a variety of techniques that exist for estimating ''H'', however assessing the accuracy of the estimation can be a complicated issue. Mathematically, in one technique, the Hurst exponent can be estimated such that:<ref>[http://www.iop.org/EJ/abstract/1367-2630/11/9/093024/ Preis, T. et al. (2009) Accelerated fluctuation analysis by graphic cards and complex pattern formation in financial markets, New J. Phys. '''11''' 093024.]</ref><ref>
A.Z. Gorski et al. (2002) "Financial multifractality and its subtleties: an example of DAX", ''Physica'', 316  496 –510</ref>
 
:''H''<sub>''q''</sub> = ''H''(''q''),
 
for a time series
 
:''g''(''t'') (''t'' = 1, 2,...)
 
may be defined by the scaling properties of its [[Algebraic structure|structure]] functions ''S<sub>q</sub>''(<math>\tau</math>):
 
:<math>S_q = \langle |g(t + \tau) - g(t)|^q  \rangle_t \sim \tau^{qH(q)}, \, </math>
 
where ''q'' > 0, <math>\tau</math> is the time lag and averaging is over the time window
 
:<math>t \gg \tau,\,</math>
 
usually the largest time scale of the system.
 
Practically, in nature, there is no limit to time, and thus ''H'' is non-deterministic as it may only be estimated based on the observed data; e.g., the most dramatic daily move upwards ever seen in a stock market index can always be exceeded during some subsequent day.<ref>[[Benoît Mandelbrot|Mandelbrot, Benoît B.]], ''The (Mis)Behavior of Markets, A Fractal View of Risk, Ruin and Reward'' (Basic Books, 2004), pp. 186-195</ref>
 
''H'' is directly related to [[fractal dimension]], ''D'', where 1 < ''D'' < 2, such that ''D'' = 2 - ''H''.  The values of the Hurst exponent vary between 0 and 1, with higher values indicating a smoother trend, less volatility, and less roughness.
 
In the above mathematical estimation technique, the function ''H''(''q'') contains information about averaged generalized volatilities at scale <math>\tau</math> (only ''q'' = 1, 2 are used to define the volatility). In particular, the ''H''<sub>1</sub> exponent indicates persistent (''H''<sub>1</sub> > ½) or antipersistent (''H''<sub>1</sub> < ½) behavior of the trend.
 
For the BRW ([[brown noise]], 1/''f''²) one gets
 
:''H<sub>q</sub>'' = ½,
 
and for [[pink noise]] (1/''f'')
 
:''H<sub>q</sub>'' = 0.
 
The Hurst exponent for [[white noise]] is dimension dependant,<ref>{{cite journal |author=Alex Hansen, Jean Schmittbuhl, G. George Batrouni |year=2001 |title= Distinguishing fractional and white noise in one and two dimensions|journal=Phys. Rev. E |volume=63 |pages=062102 |arxiv=cond-mat/0007011 |doi=10.1103/PhysRevE.63.062102 }}</ref> and for 1D and 2D it is
:''H<sup>1D</sup><sub>q</sub>'' = -½ ,  ''H<sup>2D</sup><sub>q</sub>'' = -1.
 
For the popular [[Lévy stable process]]es and [[truncated Lévy process]]es with parameter α it has been found that
 
:''H<sub>q</sub>'' = ''q/α'' for ''q'' < ''α'' and ''H<sub>q</sub>'' = 1 for ''q'' &ge; α.
A method to estimate <math>H(q)</math> from non-stationary time series is called [[detrended fluctuation analysis]].<ref>{{cite journal|last=J.W. Kantelhardt|first=E. Koscielny-Bunde, H.A. Rego, S. Havlin, A. Bunde|title=Detecting long-range correlations with detrended fluctuation analysis|journal=Physica A: Statistical Mechanics and its Applications|year=2001|volume=295|pages=441–454|doi=10.1016/S0378-4371(01)00144-3|url=http://havlin.biu.ac.il/Publications.php?keyword=Detecting+long-range+correlations+with+detrended+fluctuation+analysis++&year=*&match=all}}</ref><ref>{{cite journal|last=J.W. Kantelhardt|first= S.A. Zschiegner, E. Koscielny-Bunde, S. Havlin, A. Bunde, H.E. Stanley|title=Multifractal detrended fluctuation analysis of nonstationary time series|journal=Physica A: Statistical Mechanics and its Applications|year=2001|volume=87|pages=316 |url=http://havlin.biu.ac.il/Publications.php?keyword=Multifractal+detrended+fluctuation+analysis+of+nonstationary+time+series&year=*&match=all}}</ref>   
When <math>H(q)</math> is a non-linear function of q the time series in a [[multifractal system]].
 
===Note===
In the above definition two separate requirements are mixed together as if they would be one.<ref>[http://www.uh.edu/~jmccaul2/ Joseph L McCauley], [http://complex.phys.uh.edu Kevin E Bassler], and Gemunu H. Gunaratne (2008) "Martingales, Detrending Data, and the Efficient Market Hypothesis", ''Physica'', A37, 202, Open access preprint: [http://arxiv.org/abs/0710.2583 arXiv:0710.2583]</ref> Here are the two independent requirements: (i) stationarity of the increments, x(t+T)-x(t)=x(T)-x(0) in distribution. this is the condition that yields longtime autocorrelations. (ii) [[Self-similarity]] of the stochastic process then yields variance scaling, but is not needed for longtime memory. E.g., both [[Markov process]]es (i.e., memory-free processes) and [[fractional Brownian motion]] scale at the level of 1-point densities (simple averages), but neither scales at the level of pair correlations or, correspondingly, the 2-point probability density.{{clarify|date=August 2011}}
 
An efficient market requires a martingale condition, and unless the variance is linear in the time this produces nonstationary increments, x(t+T)-x(t)≠x(T)-x(0). Martingales are Markovian at the level of pair correlations, meaning that pair correlations cannot be used to beat a martingale market. Stationary increments with nonlinear variance, on the other hand, induce the longtime pair memory of [[fractional Brownian motion]] that would make the market beatable at the level of pair correlations. Such a market would necessarily be far from "efficient".
 
==See also==
* [[Long-range dependency]]
* [[Anomalous diffusion]]
* [[Rescaled range]]
* [[Detrended fluctuation analysis]]
 
==References==
<references/>
 
==External links==
* [http://www.scientio.com/Products/ChaosKit] Scientio's ChaosKit product calculates hurst exponents amongst other Chaotic measures. Access is provided online via a web service and Graphic user interface.
* [http://www.trusoft-international.com] TruSoft's Benoit - Fractal Analysis Software product calculates hurst exponents and fractal dimensions.
 
{{DEFAULTSORT:Hurst Exponent}}
[[Category:Stochastic processes]]
[[Category:Long-memory processes]]
[[Category:Fractals]]

Revision as of 21:09, 2 November 2012

The Hurst exponent is used as a measure of long-term memory of time series. It relates to the autocorrelations of the time series, and the rate at which these decrease as the lag between pairs of values increases. Studies involving the Hurst exponent were originally developed in hydrology for the practical matter of determining optimum dam sizing for the Nile river's volatile rain and drought conditions that had been observed over a long period of time.[1][2] The name "Hurst exponent", or "Hurst coefficient", derives from Harold Edwin Hurst (1880–1978), who was the lead researcher in these studies; the use of the standard notation H for the coefficient relates to his name also.

In fractal geometry, the generalized Hurst exponent has been denoted by H or Hq in honor of both Harold Edwin Hurst and Ludwig Otto Hölder (1859–1937) by Benoît Mandelbrot (1924–2010).[3] H is directly related to fractal dimension, D, and is a measure of a data series' "mild" or "wild" randomness.[4]

The Hurst exponent is referred to as the "index of dependence" or "index of long-range dependence". It quantifies the relative tendency of a time series either to regress strongly to the mean or to cluster in a direction.[5] A value H in the range 0.5–1 indicates a time series with long-term positive autocorrelation, meaning both that a high value in the series will probably be followed by another high value and that the values a long time into the future will also tend to be high. A value in the range 0 – 0.5 indicates a time series with long-term switching between high and low values in adjacent pairs, meaning that a single high value will probably be followed by a low value and that the value after that will tend to be high, with this tendency to switch between high and low values lasting a long time into the future. A value of H=0.5 can indicate a completely uncorrelated series, but in fact it is the value applicable to series for which the autocorrelations at small time lags can be positive or negative but where the absolute values of the autocorrelations decay exponentially quickly to zero. This in contrast to the typically power law decay for the 0.5 < H < 1 and 0 < H < 0.5 cases.

Definition

The Hurst exponent, H, is defined in terms of the asymptotic behaviour of the rescaled range as a function of the time span of a time series as follows;[6][7]

where;

Estimating the exponent

To estimate the Hurst exponent, one must first estimate the dependence of the rescaled range on the time span n of observation.[7] A time series of full length N is divided into a number of shorter time series of length n = N, N/2, N/4, ... The average rescaled range is then calculated for each value of n.

For a (partial) time series of length , , the rescaled range is calculated as follows:[6][7]

1. Calculate the mean;

2. Create a mean-adjusted series;

3. Calculate the cumulative deviate series ;

4. Compute the range ;

5. Compute the standard deviation ;

6. Calculate the rescaled range and average over all the partial time series of length

The Hurst exponent is estimated by fitting the power law to the data. This can be done by plotting the logarithm of as a function of , and fitting a straight line; the slope of the line gives . Such a graph is called a pox plot. However, this approach is known to produce biased estimates of the power-law exponent. A more principled approach fits the power law in a maximum-likelihood fashion.[8]

Generalized exponent

The basic Hurst exponent can be related to the expected size of changes, as a function of the lag between observations, as measured by E(|Xt+τ-Xt|2). For the generalized form of the coefficient, the exponent here is replaced by a more general term, denoted by q.

There are a variety of techniques that exist for estimating H, however assessing the accuracy of the estimation can be a complicated issue. Mathematically, in one technique, the Hurst exponent can be estimated such that:[9][10]

Hq = H(q),

for a time series

g(t) (t = 1, 2,...)

may be defined by the scaling properties of its structure functions Sq():

where q > 0, is the time lag and averaging is over the time window

usually the largest time scale of the system.

Practically, in nature, there is no limit to time, and thus H is non-deterministic as it may only be estimated based on the observed data; e.g., the most dramatic daily move upwards ever seen in a stock market index can always be exceeded during some subsequent day.[11]

H is directly related to fractal dimension, D, where 1 < D < 2, such that D = 2 - H. The values of the Hurst exponent vary between 0 and 1, with higher values indicating a smoother trend, less volatility, and less roughness.

In the above mathematical estimation technique, the function H(q) contains information about averaged generalized volatilities at scale (only q = 1, 2 are used to define the volatility). In particular, the H1 exponent indicates persistent (H1 > ½) or antipersistent (H1 < ½) behavior of the trend.

For the BRW (brown noise, 1/f²) one gets

Hq = ½,

and for pink noise (1/f)

Hq = 0.

The Hurst exponent for white noise is dimension dependant,[12] and for 1D and 2D it is

H1Dq = -½ , H2Dq = -1.

For the popular Lévy stable processes and truncated Lévy processes with parameter α it has been found that

Hq = q/α for q < α and Hq = 1 for q ≥ α.

A method to estimate from non-stationary time series is called detrended fluctuation analysis.[13][14] When is a non-linear function of q the time series in a multifractal system.

Note

In the above definition two separate requirements are mixed together as if they would be one.[15] Here are the two independent requirements: (i) stationarity of the increments, x(t+T)-x(t)=x(T)-x(0) in distribution. this is the condition that yields longtime autocorrelations. (ii) Self-similarity of the stochastic process then yields variance scaling, but is not needed for longtime memory. E.g., both Markov processes (i.e., memory-free processes) and fractional Brownian motion scale at the level of 1-point densities (simple averages), but neither scales at the level of pair correlations or, correspondingly, the 2-point probability density.Template:Clarify

An efficient market requires a martingale condition, and unless the variance is linear in the time this produces nonstationary increments, x(t+T)-x(t)≠x(T)-x(0). Martingales are Markovian at the level of pair correlations, meaning that pair correlations cannot be used to beat a martingale market. Stationary increments with nonlinear variance, on the other hand, induce the longtime pair memory of fractional Brownian motion that would make the market beatable at the level of pair correlations. Such a market would necessarily be far from "efficient".

See also

References

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  4. Template:Cite paper
  5. Torsten Kleinow (2002)Testing Continuous Time Models in Financial Markets, Doctoral thesis, Berlin Template:Page needed
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  8. One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
  9. Preis, T. et al. (2009) Accelerated fluctuation analysis by graphic cards and complex pattern formation in financial markets, New J. Phys. 11 093024.
  10. A.Z. Gorski et al. (2002) "Financial multifractality and its subtleties: an example of DAX", Physica, 316 496 –510
  11. Mandelbrot, Benoît B., The (Mis)Behavior of Markets, A Fractal View of Risk, Ruin and Reward (Basic Books, 2004), pp. 186-195
  12. One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
  13. One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
  14. One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
  15. Joseph L McCauley, Kevin E Bassler, and Gemunu H. Gunaratne (2008) "Martingales, Detrending Data, and the Efficient Market Hypothesis", Physica, A37, 202, Open access preprint: arXiv:0710.2583

External links

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  • [2] TruSoft's Benoit - Fractal Analysis Software product calculates hurst exponents and fractal dimensions.