notes: fix a few small issues in ex-6
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@ -114,7 +114,7 @@ implemented for discrete arrays of numbers, such as histograms or vectors:
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(f * g)(x)
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&= \int \limits_{- \infty}^{+ \infty} dy f(y) (R \, g)(y-x) \\
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&= \int \limits_{- \infty}^{+ \infty} dy f(y) (T_x \, R \, g)(y) \\
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&= (f, T_x \, R \, g)(y)
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&= (f, T_x \, R \, g)
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\end{align*}
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where:
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@ -368,7 +368,7 @@ a known $P(x | \xi)$, @eq:first can be used to calculate an estimate for
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$Q (\xi | x)$. Then, taking the hint provided by @eq:second, an improved
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estimate for $f(\xi)$ can be generated, using the observed sample {$x_i$} to
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give an approximation for $\phi$.
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Thus, if $f^t$ is the $t-th$ estimate, the next is given by:
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Thus, if $f^t$ is the $t$-th estimate, the next is given by:
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$$
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f^{t + 1}(\xi) = \int dx \, \phi(x) Q^t(\xi | x)
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\with
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@ -544,7 +544,7 @@ merely a fact of floating-points precision) and the best result is obtained for
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$r = 2$, meaning that the convergence of the RL algorithm is really fast and
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this is due to the fact that the histogram was only slightly modified.
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In @fig:rless-0.5, the curve starts to flatten at about 10 rounds, whereas in
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@fig:rless-1 a minimum occurs around \num{5e3} rounds, meaning that, whit such
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@fig:rless-1 a minimum occurs around \num{5e3} rounds, meaning that, with such
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a large kernel, the convergence is very slow, even if the best results are
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close to the one found for $\sigma = 0.5$.
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The following $r$s were chosen as the most fitting:
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@ -625,7 +625,7 @@ follows.
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For each bin, once the convolved histogram was computed, a value $v_N$ was
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randomly sampled from a Gaussian distribution with standard deviation
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$\sigma_N$, and the value $v_n \cdot b$ was added to the bin itself, where $b$
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$\sigma_N$, and the value $v_N \cdot b$ was added to the bin itself, where $b$
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is the count of the bin. An example with $\sigma_N = 0.05$ of the new
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histogram is shown in @fig:noisy.
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The following three values of $\sigma_N$ were tested:
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