@@ -50,7 +50,7 @@ In this section we give some motivation for the lecture.
5050
5151### Introduction: light tails
5252
53- Most commonly used probability distributions in classical statistics and
53+ Most {doc} ` commonly used probability distributions <prob_dist> ` in classical statistics and
5454the natural sciences have "light tails."
5555
5656To explain this concept, let's look first at examples.
@@ -146,15 +146,15 @@ Have you ever wondered why not?
146146After all, there are 8 billion people in the world!
147147
148148In essence, the reason we don't see such draws is that the distribution of
149- human high has very light tails.
149+ human height has very light tails.
150150
151- In fact human height is approximately normally distributed .
151+ In fact the distribution of human height obeys a bell-shaped curve similar to the normal distribution .
152152
153153
154154### Returns on assets
155155
156156
157- But now we have to ask: does economic data always look like this ?
157+ But what about economic data?
158158
159159Let's look at some financial data first.
160160
@@ -179,7 +179,7 @@ ax.set_xlabel('date', fontsize=12)
179179plt.show()
180180```
181181
182- This data looks different to the draws from the normal distribution.
182+ This data looks different to the draws from the normal distribution we saw above .
183183
184184Several of observations are quite extreme.
185185
@@ -418,7 +418,7 @@ $$ G_E(x) = \exp(- \alpha x) $$
418418
419419This function goes to zero relatively quickly as $x$ gets large.
420420
421- The Pareto distribution has CCDF
421+ The standard Pareto distribution, where $\bar x = 1$, has CCDF
422422
423423$$ G_P(x) = x^{- \alpha} $$
424424
@@ -427,13 +427,14 @@ This function goes to zero as $x \to \infty$, but much slower than $G_E$.
427427``` {exercise}
428428:label: ht_ex_x1
429429
430- Show how the CCDF of the Pareto distribution can be derived from the CCDF of the exponential distribution.
430+ Show how the CCDF of the standard Pareto distribution can be derived from the CCDF of the exponential distribution.
431431```
432432
433433``` {solution-start} ht_ex_x1
434434:class: dropdown
435435```
436- Letting $G_E$ and $G_P$ be defined as above yields
436+ Letting $G_E$ and $G_P$ be defined as above, letting $X$ be exponentially
437+ distributed with rate parameter $\alpha$, and letting $Y = \exp(X)$, we have
437438
438439$$
439440\begin{aligned}
@@ -460,8 +461,8 @@ ax.legend()
460461plt.show()
461462```
462463
463- Here's a log-log plot of the same functions, which makes visual comparison a
464- bit easier.
464+ Here's a log-log plot of the same functions, which makes visual comparison
465+ easier.
465466
466467``` {code-cell} ipython3
467468fig, ax = plt.subplots()
@@ -685,7 +686,7 @@ plt.show()
685686
686687### City size
687688
688- Here are plots of the city size distribution for the US and brazil in 2023 from world population review.
689+ Here are plots of the city size distribution for the US and Brazil in 2023 from world population review.
689690
690691The size is measured by population.
691692
@@ -894,7 +895,7 @@ The heaviness of the tail in the wealth distribution matters for taxation and re
894895The same is true for the income distribution.
895896
896897For example, the heaviness of the tail of the income distribution helps
897- determine how much revenue a given tax policy will raise.
898+ determine {doc} ` how much revenue a given tax policy will raise <mle> ` .
898899
899900
900901
@@ -933,10 +934,7 @@ distribution](https://en.wikipedia.org/wiki/Log-normal_distribution) is
933934heavy-tailed because its moment generating function is infinite everywhere on
934935$(0, \infty)$.
935936
936- As claimed above, the Pareto distribution is also heavy-tailed.
937-
938- It is easy to see that, under the Pareto law, $\mathbb P\{ X > x\} $ satisfies {eq}` plrt ` .
939-
937+ The Pareto distribution is also heavy-tailed.
940938
941939A distribution $F$ on $\mathbb R_ +$ is called ** light-tailed** if it is not heavy-tailed.
942940
@@ -996,7 +994,7 @@ Let $X$ have a Pareto tail with tail index $\alpha$ and let $F$ be its cdf.
996994
997995Fix $r \geq \alpha$.
998996
999- As discussed after {eq}` plrt ` , we can take positive constants $b$ and $\bar x$ such that
997+ In view of {eq}` plrt ` , we can take positive constants $b$ and $\bar x$ such that
1000998
1001999$$
10021000\mathbb P\{X > x\} \geq b x^{- \alpha} \text{ whenever } x \geq \bar x
@@ -1005,13 +1003,13 @@ $$
10051003But then
10061004
10071005$$
1008- \mathbb E X^r = r \int_0^\infty x^{r-1} \mathbb P\{ X > x \} x
1006+ \mathbb E X^r = r \int_0^\infty x^{r-1} \mathbb P\{ X > x \} dx
10091007\geq
1010- r \int_0^{\bar x} x^{r-1} \mathbb P\{ X > x \} x
1011- + r \int_{\bar x}^\infty x^{r-1} b x^{-\alpha} x .
1008+ r \int_0^{\bar x} x^{r-1} \mathbb P\{ X > x \} dx
1009+ + r \int_{\bar x}^\infty x^{r-1} b x^{-\alpha} dx .
10121010$$
10131011
1014- We know that $\int_ {\bar x}^\infty x^{r-\alpha-1} x = \infty$ whenever $r - \alpha - 1 \geq -1$.
1012+ We know that $\int_ {\bar x}^\infty x^{r-\alpha-1} dx = \infty$ whenever $r - \alpha - 1 \geq -1$.
10151013
10161014Since $r \geq \alpha$, we have $\mathbb E X^r = \infty$.
10171015
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