

Considering I’ve been screeching this to myself, I wonder how they heard.
“The future ain’t what it used to be.”
-Yogi Berra
Considering I’ve been screeching this to myself, I wonder how they heard.
You should watch this from the “don’t be evil days” days of google.: https://youtu.be/mhBpI13dxkI
Copyright isn’t, and never has been, about “protecting the artist”.
It was, and is, and has always been, about controlling the means of distribution.
Interestingly, if you look into the lecturerer of that video, they are very active on mastadon.
yeah. it’s mind blowing to me how the Internet was convinced to give up its a culture of piracy and privateering and become sycophants for corporate protection of IP under they imaginary impression that they are “protecting artists”.
There were industry executives and think tanks litterally quoted (in the 2000s) for saying that their job was to effectively convince people that piracy “hurt the artist”, that this was the way to stop piracy: convince people they were hurting artists by piracy.
Turns out, almost no artists except the most extraordinarily successful make any money off copyright or IP. They mostly make their money the way they’ve always made their money: ticket sales, merch sales, performances, etc.
vee, loop up.
Well I appreciate the effort regardless. If you want any support in getting towards a more “proper” network analysis, I’ve dm’d you a link you can use to get started. If nothing else it might allow you to expand your scope or take your investigations into different directions. The script gets more into sentiment analysis for individual users, but since Lemmy lacks a basic API, the components could be retooled for anything.
Also, you might consider that all a scientific paper is, at the end of the day, is a series of things like what you’ve started here, with perhaps a little more narrative glue, and the repetitive critique of a scientific inquiry. All scientific investigations start with exactly the kind of work you are presenting here. Then you PI comes in and says “No you’ve done this wrong and that wrong and cant say this or that. But this bit or that bit is interesting”, and you revise and repeat.
So lets just cover a few things…
Hypothesis testing:
The phrase “if your post got less than 4 comments, that was statistically significant” can be misleading if we don’t clearly define what is being tested. When you perform a hypothesis test, you need to start by stating:
Null hypothesis (H₀): For example, “the average number of comments per post is λ = 8.2.”
Alternative hypothesis (H₁): For example, “the average number of comments per post is different from 8.2” (or you could have a directional alternative if you have prior reasoning).
Without a clearly defined H₀ and H₁, the statement about significance becomes ambiguous. The p-value (or “significance” level) tells you how unusual an observation is under the assumption that the null hypothesis is true. It doesn’t automatically imply that an external factor caused that observation. Plugging in numbers doesn’t supplant the interpretability issue.
“Statistical significance”
The interpretation that “there is a 95% probability that something else caused it not to get more comments” is a common misinterpretation of statistical significance. What the 5% significance level really means is that, under the null hypothesis, there is only a 5% chance of observing an outcome as extreme as (or more extreme than) the one you obtained. It is not a direct statement about the probability of an alternative cause. Saying “something else caused” can be confusing. It’s better to say, “if the observed comment count falls in the critical region, the observation would be very unlikely under the null hypothesis.”
Critical regions
Using critical regions based on the Poisson distribution can be useful to flag unusual observations. However, you need to be careful that the interpretation of those regions aligns with the hypothesis test framework. For instance, simply saying that fewer than 4 comments falls in the “critical region” implies that you reject the null when observing such counts, but it doesn’t explain what alternative hypothesis you’re leaning toward—high engagement versus low engagement isn’t inherently “good” or “bad” without further context. There are many, many reasons why a post might end up with a low count. Use the script I sent you previously and look at what happens after 5PM on a Friday in this place. A magnificent post at a wrong time versus a well timed adequate post? What is engagement actually telling us?
Model Parameters and Hypothesis Testing
It appears that you may have been focusing more on calculating the Poisson probabilities (i.e., the parameters of the Poisson distribution) rather than setting up and executing a complete hypothesis test. While the calculations help you understand the distribution, hypothesis testing requires you to formally test whether the data observed is consistent with the null hypothesis. Calculating “less than 4 comments” as a cutoff is a good start, but you might add a step that actually calculates the p-value for an observed comment count. This would give you a clearer measure of how “unusual” your observation is under your model.
So I modeled that with a Poisson distribution, and I learnt that to a 5% significance level, if your post got less than 4 comments, that was statistically significant. Or in other words – there is a 95% probability that something else caused it not to get more comments. Now that could be because it is an AMAZING post – it covered all the points and no one has anything left to say. Or it’s because it’s a crappy post and you should be ashamed in yourself. Similarly a “good post”, one that gets lots of comments, would be any post that gets more than 13 comments. Anything in-between 4 and 13 is just an average post.
So, like, I do have a background in stats and network analysis, and I’m not sure what you are trying to say here.
if your post got less than 4 comments, that was statistically significant.
Statistically significant what? What hypothesis are you testing? Like, how are you setting this question up? What is your null?
Because I don’t believe your interpretation of that conclusion. It sounds like mostly you calculated the parameters of a poisson and then are interpreting them? Because to be clear, thats not the same as doing hypothesis testing and isn’t interpretable in that manner. Its still fine, and interesting, and especially useful when you are doing network analysis, but on its on, its not interpretable in this manner. It needs context and we need to understand what test you are running, and how you are setting that test up.
I’m asking these questions not to dissuade you, but to give you the opportunity to bring rigor to your work.
Should you like, to further your work, I have set up this notebook you can maybe use parts of to continue your investigations or do different investigations.
This prob what trump thought he was doing by “putting tarrifs on penguins”
I mean, I think not, having lived on them, and not wanting to go back.
Its about information density. The “things” we interact with, they almost never fit into an equal dimensional density across two dimensions. There is almost always more substantially more information in one dimension than the other.
A spread sheet you are interacting with is almost always either longer in one way, or wider in another. Even if it wasn’t, creating a manner in which it could be optimally viewed would make the content irrelevantly small.
We’re better off picking one of the two dimensions, committing to an orientation, and then rotating our monitor to fit that. If we do that, we’ll get more information per unit area on the screen.
We did that for decades. It was pretty miserable.
Its the midwest pragmatism that sells it.
I just do what he says because it sounds so practical.
A magnetron, some sheet metal and an idiot dumb enough to turn on something I wire together, and bam, you’ve got a tool for knocking drones out of the air: https://www.youtube.com/watch?v=V6XdcWToy2c
Look at what the little militias aka the police are using on us.
Its enough to make one want to start hording microwaves.
New Technology connections video drops:
I’m going to go buy a kill-a-watt.
Well I’m happy to be done with this exchange
I mean, it’s had value for others certainly, to spark thinking on the relationship between how we think about power and the role that has in how we choose to which technology to develop and how.
It also puts you on display as a vapid and worthless void, fully absent of a thought worthy of responding to, so we all benefit from knowing more in that regard.
I can now see that you are too dense to have a conversation on this matter. In the future, please, just be an obtuse buffoon earlier so I don’t have to waste my time putting together respectful, thoughtful responses for an idiot like yourself.
Thanks Pelosi