List of types of functions: Difference between revisions

From formulasearchengine
Jump to navigation Jump to search
en>ClueBot NG
m Reverting possible vandalism by 75.63.144.107 to version by SchreiberBike. False positive? Report it. Thanks, ClueBot NG. (1112797) (Bot)
 
en>Addbot
m Bot: Migrating 1 interwiki links, now provided by Wikidata on d:q12802481
Line 1: Line 1:
{{more footnotes|date=October 2011}}


In [[geometry]], the '''Chebyshev center''' of a bounded set <math>Q</math> having non-empty [[Interior (topology)|interior]] is the center of the minimal-radius ball enclosing the entire set <math>Q</math>, or, alternatively, the center of largest inscribed ball of <math>Q</math>.<ref>{{cite book|title=Convex optimization|year=2004|publisher=Cambridge|location=New York|isbn=978-0-521-83378-3|author=Boyd, Stephen P.; Vandenberghe, Lieven}}</ref>


They're always ready to help, and they're always making changes to the site to make sure you won't have troubles in the first place. It is very easy to customize plugins according to the needs of a particular business. These templates are professionally designed and are also Adsense ready. Word - Press also provides protection against spamming, as security is a measure issue. Also our developers are well convergent with the latest technologies and bitty-gritty of wordpress website design and promises to deliver you the best solution that you can ever have. <br><br>As you know today Word - Press has turn out to be a tremendously popular open source publishing and blogging display place. You may either choose to link only to the top-level category pages or the ones that contain information about your products and services. It allows Word - Press users to easily use HTML5 the element enable native video playback within the browser. It primarily lays emphasis on improving the search engine results of your website whenever a related query is typed in the search box. W3C compliant HTML and a good open source powered by Word - Press CMS site is regarded as the prime minister. <br><br>It is very easy to install Word - Press blog or website. But if you are not willing to choose cost to the detriment of quality, originality and higher returns, then go for a self-hosted wordpress blog and increase the presence of your business in this new digital age. I hope this short Plugin Dynamo Review will assist you to differentiate whether Plugin Dynamo is Scam or a Genuine. User friendly features and flexibility that Word - Press has to offer is second to none. For any web design and development assignment, this is definitely one of the key concerns, specifically for online retail outlets as well as e-commerce websites. <br><br>The disadvantage is it requires a considerable amount of time to set every thing up. Quttera - Quttera describes itself as a 'Saa - S [Software as a Service] web-malware monitoring and alerting solution for websites of any size and complexity. Thus it is difficult to outrank any one of these because of their different usages. IVF ,fertility,infertility expert,surrogacy specialist in India at Rotundaivf. It does take time to come up having a website that gives you the much needed results hence the web developer must be ready to help you along the route. <br><br>Internet is not only the source for information, it is also one of the source for passive income. Sanjeev Chuadhary is an expert writer who shares his knowledge about web development through their published articles and other resource. Offshore Wordpress development services from a legitimate source caters dedicated and professional services assistance with very simplified yet technically effective development and designing techniques from experienced professional Wordpress developer India. This is because of the customization that works as a keystone for a SEO friendly blogging portal website. If you enjoyed this write-up and you would like to receive even more facts regarding [http://scridle.nl/backup_plugin_308006 wordpress backup plugin] kindly browse through our own page. The 2010 voting took place from July 7 through August 31, 2010.
In the field of [[parameter estimation]], the Chebyshev center approach tries to find an estimator <math> \hat x </math> for <math> x </math> given the feasibility set <math> Q </math>, such that <math>\hat x</math> minimizes the worst possible estimation error for x (e.g. best worst case).
 
== Mathematical representation ==
There exist several alternative representations for the Chebyshev center.
Consider the set <math>Q</math> and denote its Chebyshev center by <math>\hat{x}</math>. <math>\hat{x}</math> can be computed by solving:
 
: <math> \min_{{\hat x},r} \left\{ r:\left\| {\hat x} - x \right\|^2 \leq r,  \forall x \in Q \right\} </math>
 
or alternatively by solving:
 
:<math> \operatorname*{\arg\min}_{\hat{x}} \max_{x \in Q} \left\| x - \hat x \right\|^2. </math><ref name="BV">{{cite book|title=Convex Optimization|first1=Stephen P.|last1=Boyd|first2=Lieven|last2=Vandenberghe|year=2004|publisher=Cambridge University Press|isbn=978-0-521-83378-3|url=http://www.stanford.edu/~boyd/cvxbook/bv_cvxbook.pdf|format=pdf|accessdate=October 15, 2011}}</ref>
 
Despite these properties, finding the Chebyshev center may be a hard numerical [[mathematical optimization|optimization problem]]. For example, in the second representation above, the inner maximization is [[nonconvex optimization|non-convex]] if the set ''Q'' is not [[convex set|convex]].
 
== Relaxed Chebyshev center ==
Let us consider the case in which the set <math>Q</math> can be represented as the intersection of <math>k</math> ellipsoids.  
 
: <math> \min_{\hat x} \max_x \left\{ \left\| {\hat x} - x \right\|^2 :f_i (x) \le 0,0 \le i \le k \right\} </math>
with
: <math> f_i (x) = x^T Q_i x + 2g_i^T x + d_i \le 0,0 \le i \le k. \, </math>
 
By introducing an additional matrix variable <math>\Delta = x x^T </math>, we can write the inner maximization problem of the Chebyshev center as:
 
: <math> \min_{\hat x} \max_{(\Delta ,x) \in G} \left\{ \left\| {\hat x} \right\|^2  - 2{\hat x}^T x + \operatorname{Tr}(\Delta ) \right\} </math>
where <math>\operatorname{Tr}(\cdot)</math> is the [[trace (linear algebra)|trace operator]] and
: <math> G = \left\{(\Delta ,x):{\rm{f}}_i (\Delta ,x) \le 0,0 \le i \le k,\Delta  = xx^T \right\} </math>
: <math> f_i (\Delta ,x) = \operatorname{Tr}(Q_i \Delta ) + 2g_i^T x + d_i. </math>
 
Relaxing our demand on <math>\Delta</math> by demanding <math> \Delta \leq xx^T </math>, i.e. <math>xx^T - \Delta \in S_+</math> where <math>S_+</math> is the set of [[positive semi-definite matrix|positive semi-definite matrices]], and changing the order of the min max to max min (see the references for more details), the optimization problem can be formulated as:
 
: <math> RCC = \max_{(\Delta ,x) \in {T}} \left\{ - \left\| x \right\|^2  + \operatorname{Tr}(\Delta ) \right\} </math>
with
: <math> {T} = \left\{ (\Delta ,x):\rm{f}_i (\Delta ,x) \le 0,0 \le i \le k,\Delta \le xx^T  \right\}. </math>
 
This last '''convex''' optimization problem is known as the '''relaxed Chebyshev center''' (RCC).
The RCC has the following important properties:
* The RCC is an upper bound for the exact Chebyshev center.
* The RCC is unique.
* The RCC is feasible.
 
== Constrained least squares ==
With a few simple mathematical tricks, it can be shown that the well-known constrained [[least squares]] (CLS) problem is a relaxed version of the Chebyshev center.
 
The original CLS problem can be formulated as:
: <math> {\hat x}_{CLS}  = \operatorname*{\arg\min}_{x \in C} \left\| y - Ax \right\|^2 </math>
with
: <math> { C} = \left\{ x:f_i (x) = x^T Q_i x + 2g_i^T x + d_i  \le 0,1 \le i \le k \right\}
</math>
: <math> Q_i  \ge 0,g_i  \in R^m ,d_i  \in R.  </math>
 
It can be shown that this problem is equivalent to the following optimization problem:
: <math> \max_{(\Delta ,{{x}}) \in {V}} \left\{ { - \left\| {{x}} \right\|^2  + \operatorname{Tr}(\Delta )} \right\} </math>
with
: <math> V = \left\{ \begin{array}{c}
(\Delta ,x):x \in C{\rm{ }} \\
\operatorname{Tr}(A^T A\Delta ) - 2y^T A^T x + \left\| y \right\|^2  - \rho  \le 0,\rm{  }\Delta  \ge xx^T  \\
\end{array} \right\}.</math>
 
One can see that this problem is a relaxation of the Chebyshev center (though different than the RCC described above).
 
== RCC vs. CLS ==
A solution set <math> (x,\Delta) </math> for the RCC is also a solution for the CLS, and thus <math> T \in V </math>.
This means that the CLS estimate is the solution of a looser relaxation than that of the RCC.
Hence the '''CLS is an upper bound for the RCC''', which is an upper bound for the real Chebyshev center.
 
== Modeling constraints ==
Since both the RCC and CLS are based upon relaxation of the real feasibility set <math>Q</math>, the form in which <math>Q</math> is defined affects its relaxed versions. This of course affects the quality of the RCC and CLS estimators.
As a simple example consider the linear box constraints:
: <math> l \leq a^T x \leq u </math>
which can alternatively be written as
: <math> (a^T x - l)(a^T x - u) \leq 0. </math>
It turns out that the first representation results with an upper bound estimator for the second one, hence using it may dramatically decrease the quality of the calculated estimator.
 
This simple example shows us that great care should be given to the formulation of constraints when relaxation of the feasibility region is used.
 
== See also ==
* [[Bounding sphere]]
* [[Smallest-circle problem]]
* [[Centre (geometry)]]
* [[Centroid]]
 
== References ==
{{Reflist}}
* Y. C. Eldar, A. Beck, and M. Teboulle, [http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=4471880 "A Minimax Chebyshev Estimator for Bounded Error Estimation,"] IEEE Trans. Signal Processing, 56(4): 1388–1397 (2007).
* A. Beck and Y. C. Eldar, [http://dx.doi.org/10.1137/060656784 "Regularization in Regression with Bounded Noise: A Chebyshev Center Approach,"] SIAM J. Matrix Anal. Appl. 29 (2): 606–625 (2007).
 
[[Category:Estimation theory]]
[[Category:Geometric centers]]
[[Category:Mathematical optimization]]

Revision as of 17:35, 7 May 2013

Template:More footnotes

In geometry, the Chebyshev center of a bounded set having non-empty interior is the center of the minimal-radius ball enclosing the entire set , or, alternatively, the center of largest inscribed ball of .[1]

In the field of parameter estimation, the Chebyshev center approach tries to find an estimator for given the feasibility set , such that minimizes the worst possible estimation error for x (e.g. best worst case).

Mathematical representation

There exist several alternative representations for the Chebyshev center. Consider the set and denote its Chebyshev center by . can be computed by solving:

or alternatively by solving:

[2]

Despite these properties, finding the Chebyshev center may be a hard numerical optimization problem. For example, in the second representation above, the inner maximization is non-convex if the set Q is not convex.

Relaxed Chebyshev center

Let us consider the case in which the set can be represented as the intersection of ellipsoids.

with

By introducing an additional matrix variable , we can write the inner maximization problem of the Chebyshev center as:

where is the trace operator and

Relaxing our demand on by demanding , i.e. where is the set of positive semi-definite matrices, and changing the order of the min max to max min (see the references for more details), the optimization problem can be formulated as:

with

This last convex optimization problem is known as the relaxed Chebyshev center (RCC). The RCC has the following important properties:

  • The RCC is an upper bound for the exact Chebyshev center.
  • The RCC is unique.
  • The RCC is feasible.

Constrained least squares

With a few simple mathematical tricks, it can be shown that the well-known constrained least squares (CLS) problem is a relaxed version of the Chebyshev center.

The original CLS problem can be formulated as:

with

It can be shown that this problem is equivalent to the following optimization problem:

with

One can see that this problem is a relaxation of the Chebyshev center (though different than the RCC described above).

RCC vs. CLS

A solution set for the RCC is also a solution for the CLS, and thus . This means that the CLS estimate is the solution of a looser relaxation than that of the RCC. Hence the CLS is an upper bound for the RCC, which is an upper bound for the real Chebyshev center.

Modeling constraints

Since both the RCC and CLS are based upon relaxation of the real feasibility set , the form in which is defined affects its relaxed versions. This of course affects the quality of the RCC and CLS estimators. As a simple example consider the linear box constraints:

which can alternatively be written as

It turns out that the first representation results with an upper bound estimator for the second one, hence using it may dramatically decrease the quality of the calculated estimator.

This simple example shows us that great care should be given to the formulation of constraints when relaxation of the feasibility region is used.

See also

References

43 year old Petroleum Engineer Harry from Deep River, usually spends time with hobbies and interests like renting movies, property developers in singapore new condominium and vehicle racing. Constantly enjoys going to destinations like Camino Real de Tierra Adentro.

  1. 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
  2. 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534