Mercurial > thoughts
changeset 71:dc521fea9219
add svn and time stamp idea.
author | Robert McIntyre <rlm@mit.edu> |
---|---|
date | Wed, 06 Nov 2013 16:37:37 -0500 |
parents | ed7d0ca99c55 |
children | ace7f097eb6c |
files | org/ideas.org org/svm.org |
diffstat | 2 files changed, 197 insertions(+), 0 deletions(-) [+] |
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1.1 --- a/org/ideas.org Mon Oct 14 22:26:21 2013 -0400 1.2 +++ b/org/ideas.org Wed Nov 06 16:37:37 2013 -0500 1.3 @@ -31,6 +31,10 @@ 1.4 getting credit. 1.5 #+end_quote 1.6 1.7 +- time verification :: some standard way to verify that some piece of 1.8 + data was recorded at a specific time. Might involve a time 1.9 + server, a key for each time period, something liek that. 1.10 + 1.11 - tamper proof gold bars :: [[http://www.tungsten-alloy.com/gold-plated-tungsten-alloy-bar.html][this site]] offers gold plated tungsten bars 1.12 as "novelty" items. One reason to prefer coins is because they 1.13 are much harder to counterfeit because there is less surface area
2.1 --- /dev/null Thu Jan 01 00:00:00 1970 +0000 2.2 +++ b/org/svm.org Wed Nov 06 16:37:37 2013 -0500 2.3 @@ -0,0 +1,193 @@ 2.4 +#+TITLE: Notes on SVMs 2.5 +#+AUTHOR:Dylan Holmes 2.6 +#+SETUPFILE: ../../aurellem/org/setup.org 2.7 +#+INCLUDE: ../../aurellem/org/level-0.org 2.8 +#+MATHJAX: align:"left" mathml:t path:"http://www.aurellem.org/MathJax/MathJax.js" 2.9 + 2.10 +* Question: How do you find $\vec{w}$, $b$, and the \alpha{}'s? 2.11 + 2.12 +You should take a look at the class notes, for starters: 2.13 +http://ai6034.mit.edu/fall12/images/SVM_and_Boosting.pdf 2.14 + 2.15 +You can also take a look at @388 to see an example of (part of) a 2.16 +worked problem. 2.17 + 2.18 + 2.19 +When solving SVM problems, there are some useful equations to keep in 2.20 +mind: 2.21 + 2.22 +1. $\vec{w}\cdot \vec{x} + b = 0$ defines the boundary, and in 2.23 + particular $\vec{w}\cdot \vec{x} + b \geq 0$ defines the positive 2.24 + side of the boundary. 2.25 +2. $\vec{w}\cdot \vec{x} + b = \pm 1$ defines the positive and 2.26 + negative gutters. 2.27 +3. The distance between the gutters (the width of the margin) is 2.28 + $\text{margin-width} = \frac{2}{||\vec{w}||} = 2.29 + \frac{2}{\sqrt{\vec{w}\cdot \vec{w}}}$ 2.30 +4. $\sum_{\text{training data}} y_i \alpha_i = 2.31 + 0$ 2.32 +5. $\sum_{\text{training data}} y_i \alpha_i \vec{x}_i = \vec{w}$ 2.33 + 2.34 +The last two equations are the ones that can help you find the 2.35 + $\alpha_i$. You may also find it useful to think of the $\alpha_i$ 2.36 + as measuring \ldquo{}supportiveness\rdquo{}. This means, for 2.37 + example, that: - $\alpha_i$ is zero for non-support vectors, 2.38 + i.e. training points that do not determine the boundary, and which 2.39 + would not affect the placement of the boundary if deleted - When you 2.40 + compare two separate SVM problems, where the first has support 2.41 + vectors that are far from the boundary, and the second has support 2.42 + vectors very close to the boundary, the latter support vectors have 2.43 + comparatively higher $\alpha_i$ values. 2.44 + 2.45 +** Can \alpha{} be zero for support vectors? 2.46 +No, \alpha{} is zero for a point if and only if it's not a support 2.47 +vector. You can see this because in equation (5), just the points 2.48 +with nonzero alphas contribute to $\vec{w}$. 2.49 + 2.50 +** Are all points on the gutter support vectors? How do you tell whether a point is a support vector? 2.51 + 2.52 +Not all points on the gutter are support vectors. To tell if a 2.53 +training point is a support vector, imagine what would happen if you 2.54 +deleted it --- would the decision boundary be different? If it would, 2.55 +the point is a support vector. If it wouldn't, the point isn't a 2.56 +support vector. 2.57 + 2.58 +* 2011 Q2 Part A 2.59 + 2.60 +The equation for the line you drew in part A is $y = 0$, and points 2.61 +will be classified as positive if $y\geq 0$. 2.62 + 2.63 +# shouldn't points be classified as positive only if leq 1 + b dot w x? 2.64 +Now in general, the equation for the decision boundary is 2.65 +$\vec{w}\cdot \vec{x} + b = 0$, and points $\vec{x}$ are 2.66 +classified as positive if $\vec{w}\cdot \vec{x} + b \geq 0$. To 2.67 +solve for $\vec{w}$ and $b$, you just manipulate your inequation 2.68 +for the boundary into this form: 2.69 + 2.70 +$$y\geq 0$$ 2.71 +$$0x + 1y + 0 \geq 0$$ 2.72 +$$\begin{bmatrix}0&1\end{bmatrix}\cdot \begin{bmatrix}x\\y\end{bmatrix} + 0 \geq 0$$ 2.73 + 2.74 +And so we have: 2.75 + 2.76 +$$\underbrace{\begin{bmatrix}0&1\end{bmatrix}}_{\vec{w}}\cdot \underbrace{\begin{bmatrix}x\\y\end{bmatrix}}_{\vec{x}} + \underbrace{0}_{b} \geq 0$$ 2.77 + 2.78 +...which is /almost/ right. The trouble is that we can multiply this 2.79 +inequation by any positive constant $c>0$ and it will still be true 2.80 +--- so, the right answer might not be the $\vec{w}$ and $b$ we found 2.81 +above, but instead a /multiple/ of them. To fix this, we multiply the 2.82 +inequation by $c>0$, and solve for $c$: 2.83 + 2.84 +$$c\cdot (0x + 1y + 0) \geq c\cdot0$$ 2.85 +$$\begin{bmatrix}0&c\end{bmatrix}\cdot \begin{bmatrix}x\\y\end{bmatrix} + 2.86 +0 \geq 0$$ 2.87 + 2.88 +One formula that you can use to solve for $c$ is the margin-width 2.89 +formula; by examining the lines you drew, you see that the margin 2.90 +width is *4*. Now, in general, the equation for margin width is 2.91 + 2.92 +$$\text{margin-width} = \frac{2}{||\vec{w}||} = \frac{2}{\sqrt{\vec{w}\cdot \vec{w}}}$$ 2.93 + 2.94 +So, for the second time, we use the technique of setting the quantity 2.95 +you can see (margin width = 4) equal to the general formula (margin 2.96 +width = 2/||w||) and solving for the parameters in the general 2.97 +formula: 2.98 + 2.99 +$$\frac{2}{||w||} = 4$$ 2.100 + 2.101 +$$\frac{2}{\sqrt{\vec{w}\cdot \vec{w}}} = 4$$ 2.102 + 2.103 +$$\frac{4}{\vec{w}\cdot \vec{w}} = 16$$ (squaring both sides) 2.104 + 2.105 +$$\vec{w}\cdot \vec{w} = \frac{1}{4}$$ 2.106 + 2.107 +$$\begin{bmatrix}0&c\end{bmatrix}\cdot \begin{bmatrix}0\\c\end{bmatrix} 2.108 += \frac{1}{4}$$ 2.109 + 2.110 +(This uses the expression for $\vec{w}$ we got after 2.111 +we multiplied by $c$ above.) 2.112 + 2.113 +$$\begin{eqnarray*} 2.114 +c^2 &=& \frac{1}{4}\\ 2.115 +c &=& \pm \frac{1}{2}\\ 2.116 +c &=& \frac{1}{2}\end{eqnarray*}$$...because we require $c>0$ so that it doesn't flip the inequality. 2.117 + 2.118 + 2.119 +Returning to our inequality, we have 2.120 + 2.121 +$$\begin{eqnarray*}\begin{bmatrix}0&c\end{bmatrix}\cdot \begin{bmatrix}x\\y\end{bmatrix} + 0 &\geq& 0\\ 2.122 +\begin{bmatrix}0&\frac{1}{2}\end{bmatrix}\cdot \begin{bmatrix}x\\y\end{bmatrix} + 0 &\geq& 0\end{eqnarray*}$$ 2.123 + 2.124 +$$\underbrace{\begin{bmatrix}0&\frac{1}{2}\end{bmatrix}}_{\vec{w}}\cdot \underbrace{\begin{bmatrix}x\\y\end{bmatrix}}_{\vec{x}} + \underbrace{0}_{b} \geq 0$$ 2.125 + 2.126 +And this is truly the right answer, now that we have solved for $c$. 2.127 + 2.128 + 2.129 +* What's the use of gutters? 2.130 +The gutters are the regions where you have no hard data supporting 2.131 +your classification, but the decision boundary is, as its name 2.132 +implies, the cutoff for making a decision between the two 2.133 +classifications. As such, you would likely have lower confidence in 2.134 +any decision within the gutters, but a classifier needs to make a 2.135 +decision one way or the other for all possible test data (there's no 2.136 +reason not to do so, as making no decision means you're automatically 2.137 +wrong in all cases, whereas even a lousy classifier will get some of 2.138 +them right). 2.139 + 2.140 +---- 2.141 + 2.142 +Here are two more ways to look at it. First of all, and simplest, SVMs 2.143 +are supposed to find the boundary with the widest margin. The width of 2.144 +the margin is just the perpendicular distance between the gutters, so 2.145 +the gutters are important for that reason. 2.146 + 2.147 + Second of all, if you attempt to define the SVM problem 2.148 + geometrically, i.e. put it into a form that can be solved by a 2.149 + computer, it looks something like the following. 2.150 + 2.151 +#+BEGIN_QUOTE 2.152 +Find a boundary --- which is defined by a normal vector 2.153 +$\vec{w}$ and an offset $b$ --- such that: 2.154 +1. The boundary \ldquo{} $\vec{w}\cdot \vec{x} + b = 0$ \rdquo{} 2.155 + separates the positive and negative points 2.156 +2. The width of the margin is as large as possible. Remember, the 2.157 + margin width is twice the distance between the boundary and the 2.158 + training point that is closest to the boundary; in other words, 2.159 + $$\text{margin-width} = \min_{\text{training data}} 2 y_i 2.160 + (\vec{w}\cdot \vec{x}_i + b)$$ 2.161 +#+END_QUOTE 2.162 + 2.163 +Unfortunately, the problem as stated has no unique solution, since if 2.164 +you find a satisfactory pair $\langle \vec{w}, b \rangle$ , then the 2.165 +pair $\langle 3\vec{w}, 3b\rangle$ (for example) defines the same 2.166 +boundary but has a larger margin. The problem is that any multiple of 2.167 +a satisfactory pair yields another satisfactory pair. In essence, 2.168 +we're just changing the units of measurement without materially 2.169 +affecting the boundary. 2.170 + 2.171 +We can /remove this additional degree of freedom by adding another 2.172 +constraint/ to the problem which establishes a sense of scale. For 2.173 +example, we could require $\vec{w}$ to be a /unit/ normal vector, 2.174 +i.e. we could require that $||\vec{w}|| = 1$. This fixes the problem 2.175 +and gives SVMs a unique solution. 2.176 + 2.177 +In 6.034, and elsewhere, we use an alternate constraint; we impose the /gutter conditions/: 2.178 + 2.179 +$\vec{w}\cdot \vec{x_+} + b = + 1$ for positive training points 2.180 +$\vec{x_+}$. 2.181 + 2.182 +$\vec{w}\cdot \vec{x_-} + b = -1$ for negative 2.183 +training points $\vec{x_-}$. 2.184 + 2.185 +which we often combine into a single inequality: $y_i (\vec{w}\cdot 2.186 +\vec{x}_i + b) \geqslant 1$ for all training points $\langle 2.187 +\vec{x}_i, y_i\rangle$. 2.188 + 2.189 + 2.190 +This constraint is enough to eliminate the extra degree of freedom and give SVMs a unique solution. Moreover, you get a nice formula for the margin width by requiring that it holds: 2.191 + 2.192 +$\text{margin-width} = \frac{2}{||\vec{w}||}$ because the gutter 2.193 +conditions are enforced. 2.194 + 2.195 + 2.196 +That's why gutters are important.