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67 lines
2.8 KiB
Markdown
67 lines
2.8 KiB
Markdown
# Locally Weighted Linear Regression
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It is a non-parametric ML algorithm that does not learn on a fixed set of parameters such as **linear regression**. \
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So, here comes a question of what is *linear regression*? \
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**Linear regression** is a supervised learning algorithm used for computing linear relationships between input (X) and output (Y). \
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### Terminology Involved
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number_of_features(i) = Number of features involved. \
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number_of_training_examples(m) = Number of training examples. \
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output_sequence(y) = Output Sequence. \
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$\theta$ $^T$ x = predicted point. \
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J($\theta$) = COst function of point.
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The steps involved in ordinary linear regression are:
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Training phase: Compute \theta to minimize the cost. \
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J($\theta$) = $\sum_{i=1}^m$ (($\theta$)$^T$ $x^i$ - $y^i$)$^2$
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Predict output: for given query point x, \
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return: ($\theta$)$^T$ x
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<img src="https://miro.medium.com/max/700/1*FZsLp8yTULf77qrp0Qd91g.png" alt="Linear Regression">
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This training phase is possible when data points are linear, but there again comes a question can we predict non-linear relationship between x and y ? as shown below
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<img src="https://miro.medium.com/max/700/1*DHYvJg55uN-Kj8jHaxDKvQ.png" alt="Non-linear Data">
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<br />
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<br />
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So, here comes the role of non-parametric algorithm which doesn't compute predictions based on fixed set of params. Rather parameters $\theta$ are computed individually for each query point/data point x.
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<br />
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<br />
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While Computing $\theta$ , a higher preference is given to points in the vicinity of x than points farther from x.
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Cost Function J($\theta$) = $\sum_{i=1}^m$ $w^i$ (($\theta$)$^T$ $x^i$ - $y^i$)$^2$
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$w^i$ is non-negative weight associated to training point $x^i$. \
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$w^i$ is large fr $x^i$'s lying closer to query point $x_i$. \
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$w^i$ is small for $x^i$'s lying farther to query point $x_i$.
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A Typical weight can be computed using \
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$w^i$ = $\exp$(-$\frac{(x^i-x)(x^i-x)^T}{2\tau^2}$)
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Where $\tau$ is the bandwidth parameter that controls $w^i$ distance from x.
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Let's look at a example :
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Suppose, we had a query point x=5.0 and training points $x^1$=4.9 and $x^2$=5.0 than we can calculate weights as :
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$w^i$ = $\exp$(-$\frac{(x^i-x)(x^i-x)^T}{2\tau^2}$) with $\tau$=0.5
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$w^1$ = $\exp$(-$\frac{(4.9-5)^2}{2(0.5)^2}$) = 0.9802
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$w^2$ = $\exp$(-$\frac{(3-5)^2}{2(0.5)^2}$) = 0.000335
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So, J($\theta$) = 0.9802*($\theta$ $^T$ $x^1$ - $y^1$) + 0.000335*($\theta$ $^T$ $x^2$ - $y^2$)
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So, here by we can conclude that the weight fall exponentially as the distance between x & $x^i$ increases and So, does the contribution of error in prediction for $x^i$ to the cost.
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Steps involved in LWL are : \
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Compute \theta to minimize the cost.
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J($\theta$) = $\sum_{i=1}^m$ $w^i$ (($\theta$)$^T$ $x^i$ - $y^i$)$^2$ \
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Predict Output: for given query point x, \
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return : $\theta$ $^T$ x
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<img src="https://miro.medium.com/max/700/1*H3QS05Q1GJtY-tiBL00iug.png" alt="LWL">
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