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04:30
@Thorgott Sorry to ping you. But regarding your answer on the filtered module morphism factorization, how can I show that the regular kernel and cokernel modules with the induced filtrations are the kernel and cokernel of a map. I thought about using the universal property in the category of modules and then showing that all arrows must be morphisms but I couldn't figure out how to show that the arrow from the object that satisfies the universal property to the domain module is a morphism
By that I mean say $u$ is from $M$ to $N$ filtered modules. Then we have the usual commutative diagram for kernel. Say $K'$ is another filtered module that satisfies the universal property of $\mathrm{Ker}(u)$. Then there is a map $k'$ from $K'$ to $M$ such that $u\circ k'=0_{K'N}$. Then there exists a unique module homomorphism $z\colon K'\to \mathrm{Ker}(u)$ such that the whole thing commutes. I want to show that $z$ and $k'$ must also be morphisms of filtered modules. How can I do it?
On second thought I should be assuming that $k'$ is a morphism and showing that $z$ is a morphism
 
1 hour later…
06:06
yellow
06:19
mellow
TIL :-/
 
2 hours later…
08:47
I have a fundamental doubt. Suppose $M\in \text{Exp}(1)$. What does it mean when someone writes $X\mid M=m\in\text{Po}(m)$? In particular, why is $X\mid M=m$ a random variable? I'm familiar with the more abstract definition of conditional expectation, i.e. that $E[X\mid M]$ is a random variable, but $X\mid M=m$ on its own confuses me.
09:40
I'd appreciate any viewpoint on this, as this is done repeatedly in the book I'm reading, but without introducing really what $X\mid M=m$ means.
10:18
@psie that $\mu(A) = P(X\in A | M = m)$ is $\text{Po}(m)$
Think of this not as an introduction of new object but rather of notation
as in, $\mu$ is exactly given as a measure by $\text{Po}(m)$ i.e. $\mu(\{x\}) = \frac{m^x e^{-m}}{x!}$ for $x = 0, 1, 2, ...$
10:33
i Need help with the domain in Polar coordinates
did you choose polar coordinates centered in $(0,0)$ or in $(0,2)$?
But aren't Polar coordinates always at the point (0,0)?
0
Q: Question on Continuum Mechanics: How does Eulerian derivatives of $f$ and Lagrangian derivatives of $f$ different?

Unknown xConsider a particle $M$ occupying the position $\vec{a}$ at time $t = 0$ and the position $\vec{x}$ at time $t$. A function $f = f(M, t)$ associated with a particle $M$ (e.g., its velocity, acceleration, or other physical quantities to be defined subsequently) can be represented in two different ...

@BinkyMcSquigglebottom no why?
I have always centered them at (0,0)
To center them in (0,2) I had to do x=r cos(theta) , y=2+sin(theta)???
10:43
right
Could you help me search for the domain?
rewrite the domain using the transformation you wrote before
Okay
$x^2 +y^2 -4y$ ≤ 0 $\to$ $x^2 -4 +4 \cdot x \cdot sin(x) -4sin(x)$≤0
The First equation
I replaced the polar coordinates
10:52
since $y=2+r\sin \theta$, $x^2+(y-2)^2=r^2 \cos^2 \theta +r^2 \sin^2 \theta=r^2$
So $0\le r \le 2$
Don't I have to see the other equations too?
$y≤2-x \to r•(sin(x)+cos(x))$≤0
$x≥0 \to r\cdot cos(x) ≥0$
Instead of x it would be theta, when I transform to polar coordinates
yes
actually, there might be a problem using poar coordinates center at $(0,2)$
@SineoftheTime But here to see that it was between 0 and 2 you did: $r^2 ≤ 4 \to -2≤r≤2$ , However, since the radius had to be greater than 0, did you substitute 0 for -2?
So I have the conditions: $0≤r≤2$ , $r≥0$ , $r \cdot (sin(x)+cos(x))≤0$???
x would be theta
11:20
If you use this change of variables, the integral is not straightforward, I don't know maybe polar coordinates centered in $(0,0)$ lead to an easier integral
sorry :)
@Jakobian ok, thanks. So $\mu(A)$ here is actually a regular conditional probability of $P$ given $M$ for the set $X\in A$. Makes sense.
So technically I guess $X\mid M=m$ is not a random variable.
@SineoftheTime Don't worry, but solving the equations in the order of how I wrote them, I find that in the second one it is tan(x)≤-1, while in the last one cos(x)≥0, therefore -π/2≤theta≤-π/4
yes $3\pi/2 \le \theta \le 7\pi/4$
but that's not the problem
So $0≤r≤2$ and $-π/2≤theta≤-π/4$
usually $\theta \in [0,2\pi[$
11:38
I don't really understand what the problem is
never mind
you have to solve $\iint_D \frac{r^2 \cos \theta}{2+r\sin \theta}d\theta dr$
it's a bit lengthy, but you should be able to do it
but shouldn't theta go from 3π/4 to π?
@psie on the other hand, if $\mu(A) = P(X\in A\mid M = m)$ is $\text{Po}(m)$, then I'd assume it is the law of some random variable. Do you know which one, @Jakobian?
11:56
@SineoftheTime I didn't quite understand which one is our D
@BinkyMcSquigglebottom $\int_0^2\int_{3\pi/2}^{7\pi/4}$
how did you find theta??? It's not very clear to me
it's the same you found
plus you can see it drawing $D$
but could I also get the radius from another equation?
why?
you already have the bounds for r
12:07
I mean
For example, could I also find the radius from the 2nd inequality, and theta from the 1st and the 3rd???
you have to use all the conditions to find the bounds
Yes but
So I have the conditions: $0≤r≤2$ , $r≥0$ , $r \cdot (sin(x)+cos(x))≤0$
Wouldn't the last one be r≤0???
$r\cos \theta \ge0$ so $\cos \theta \ge 0$
@BinkyMcSquigglebottom the radius is always positive
12:16
Why did you solve for theta and not r?
because $r$ is positive so you can divide
if you draw the region, you don't have to compute anything
I've to go
While the cos(theta) could also be negative or zero, here's why?
@SineoftheTime okay , anyway thanks ^⁠_⁠^
12:55
Hi guys. Is Douglas West's book on graph theory a good resource for the subject ?
@psie what do you mean
any probability measure on $\mathbb{R}$ is a law of some random variable
and not just one either
@Jakobian right, I meant that every random variable $X$ on a probability space gives rise to a probability measure (the law of $X$). Does every probability measure correspond to some random variable? I.e. is the converse true? Apparently yes...
it does, but maybe not on the original probability space
but in probability the thing is that we don't care if our original probability space changes
a mindset different than that of measure theory
by probability measure I suppose you mean a one on $\mathbb{R}$
In mathematics and statistics, Skorokhod's representation theorem is a result that shows that a weakly convergent sequence of probability measures whose limit measure is sufficiently well-behaved can be represented as the distribution/law of a pointwise convergent sequence of random variables defined on a common probability space. It is named for the Ukrainian mathematician A. V. Skorokhod. == Statement == Let ( μ n ) n ∈ N...
In mathematics, the Kolmogorov extension theorem (also known as Kolmogorov existence theorem, the Kolmogorov consistency theorem or the Daniell-Kolmogorov theorem) is a theorem that guarantees that a suitably "consistent" collection of finite-dimensional distributions will define a stochastic process. It is credited to the English mathematician Percy John Daniell and the Russian mathematician Andrey Nikolaevich Kolmogorov. == Statement of the theorem == Let T {\displaystyle T} denote some interval (thought of as "time"), and let...
13:14
ok, I will take a look at these. The reason I was asking is because in my example we write $X\mid M=m\in\text{Po}(m)$ and more generally $Y\in F$, for some distribution $F$. But I don't think $X\mid M=m$ is a random variable, hence I wonder if one can replace $X\mid M=m$ with the actual random variable(s) that correspond to $\mu(A) = P(X\in A \mid M = m)$?
13:35
@psie maybe you've missed that, but I've said that $X|M = m$ is not a random variable
the notation $X|M = m \sim \mu$ merely means that $\mu(A) = P(X\in A | M = m)$
this means that the two measures are equal and nothing else
ok, but people write $X \sim N(\mu,\sigma^2)$, where $X$ is a random variable. By $X \sim N(\mu,\sigma^2)$ I suppose they mean that the density admitted by the law of $X$ is given by a certain formula that we call the density of the normal distribution. I understand that $X\mid M=m$ is not a random variable, and so I was wondering if it is possible to write $X\mid M = m \sim \mu$ as $\star\sim\mu$, where $\star$ should be replaced by some notation that represents a random variable
14:00
that for specific $m$ we can find a random variable $Y$ with law $\mu$ is not a problem. We can probably even find a whole family $Y_m$ of them, and a copy of $X$ and $M$
but what is the purpose of this
Is it so that $Y_M = X$? Then we are probably entering some kind of regular probability territory
utility is one thing. This can probably be answered if we are experts on probability theory
If by doing so we are going over some complex mathematics, then why just not stick to the simple thing
ok, yeah I don't know. I just wanted to better understand the notation. I do understand it better now, but I find it a bit inconsistent when someone writes $X\mid M=m\sim \text{Po}(m)$ and then $M\sim \text{Exp}(1)$. $M$ is a random variable, whereas $X\mid M=m$ is not.
So what
in essence it means the same thing
you put $\in A$ into the notation, embrace it into "$P$" and claim, the two measures are the same
$P(X\in A | M = m)$ or $P(M\in B)$
this is quite intuitive
$M\sim Exp(1)$ merely means that the measure $B\mapsto P(M\in B)$ is the same as that of exponential measure with parameter $1$ on the real line
the information that $M$ is a random variable, perhaps isn't as significant for this notation as you would like to think
probability theory has lots of such hidden unexplained notational issues
it does, regarding this one you have me convinced :) I give up
14:27
@BinkyMcSquigglebottom it's the same reason why when you solve $2x\ge 0$, you divide by $2$
15:15
Problem: construct a sequence $x_n \in \mathbb{R}^2$ having a subsequence that converges to $x \in \mathbb{R}^2$ for every $x$. Isn't enough to consider for each $n\in\mathbb{N}$ the sequence $x_n=x+(1/(n+1),0)$ and its subsequence $x_{2n}=x+(1/(2n+1),0)$, so that $|x_{2n}-x|=1/(2n+1) \to 0$ as $n\to +\infty$?
there is some quantifier confusion there. i am guessing that the desired condition on the single sequence x_n is that for all x in R^2 there be a subsequence of x_n convergent to x. i.e. one sequence has to get the job done for every x in R^2.
the alternative interpretation is maybe suggested by the sloppiness of putting the "for every x" quantifier at the end of the statement instead of the beginning, but as you point out, it is not an interesting problem, given x, to construct a sequence that converges to x (or indeed, has every subsequence convergent to x)
you might try the example in R^1 first. find a single sequence whose set of subsequential limits is R
@leslietownes Indeed, I was confused because it seemed to easy and I was unsure about the quantifiers as well. Thanks for the answer, I will think a little more about that.
In other words, the set of limit points of the sequence $x_n$ has to be whole $\mathbb{R}^2$
@SineoftheTime but is there a way to understand from the domain if it is better to integrate for example to (0,0) or (0,2)?
@Jakobian: Thanks, I will think about it. So I solved the problem: "Show that for each $x \in \mathbb{R}^2$ there exists a sequence $(x_n) \subseteq \mathbb{R}^2$ such that $x_n \to x$"? In other words, this latter problem fixes an $x$ and then construct a sequence that tends to $x$; the other interpretation is completely different. Right?
15:24
@ZaWarudo sure. An easier solution would be just to set $x_n = x$, if that was the problem
This then works to show that any point of a topological space is a limit of some sequence
15:55
@BinkyMcSquigglebottom experience. Moreover, here the domain was defined by a circle centered in $(0,2)$
16:28
You don't want for $K^{\prime}$ to satisfy the universal property. You want to say you have a filtered map $k^{\prime}\colon K^{\prime}\rightarrow M$ s.t. $uk^{\prime}=0$, then you obtain a unique map $z\colon K^{\prime}\rightarrow\ker(u)$ of modules s.t. $z$ collowed by the canonical inclusion $\ker(u)\rightarrow M$ equals $k^{\prime}$.
all that's left to do is observe that $z$ is automatically filtered, because the filtration on $\ker(u)$ is obtained from the filtration on $M$ by restriction and $k^{\prime}$ was a filtered map to begin with.
 
1 hour later…
17:31
@Thorgott Thank you! Very, very surprisingly I figured this out while giving my presentation but thank you!
 
3 hours later…
20:32
@AlessandroCodenotti is there an example of an intersection of cozero sets in a normal space which is not z-embedded?
20:50
If $Y = [0, \omega_1)$ and $X\subseteq Y$ are successor ordinals, then $X$ is not $z$-embedded since if $A\subseteq X$ is an unbounded set with unbounded complement, then $A$ is a zero-set of $X$, yet there's no zero-set $Z$ of $Y$ with $Z\cap X = A$, since then $[\alpha, \omega_1)\subseteq Z$ for some $\alpha < \omega_1$.
what a pity
I'm not giving up though
 
2 hours later…
23:23
I haven't proven it yet, but I think the irrationals in the Michael line is an example of a countable intersection of cozero-sets which is not $z$-embedded.

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