@AndrasDeak In the off-chance that you haven't seen honey badgers before, I suggest you look them up. Nothing to do with honey :) A sweat name for the most ridiculously brave and smart creature going. There's a documentary of a South African sanctuary where they keep getting more and more ingenious in their escapes, using tools to build mounds etc
@roganjosh Have you seen them go for honey? I think that's where they got their name.. from invading underground nests and getting stung 1 million times while going for the honey
Now that it's mentioned, I think I probably have. I think that was overwhelmed by the memory of watching a couple of them take on ~6 lions and just keep going
The ones in the sanctuary were really quite placid, I was impressed by them getting a shovel and propping it up against the wall to climb out. The day-to-day there was just trying to defeat every new escape attempt
Ah, now I'm recalling, they climbed up each other to get an arm through some fencing and open the gate bolt on the outside. Interesting creatures. I don't think I've seen so much on wolverines even though they're related (IIRC) and they're bigger
Their diet probably hampered their evolution to make use of it. I imagine it was useful in some era and now just hold them back. I shall have to do some research
But that has also reminded me that I have a physics-y question to also look up (I haven't attempted yet, so I'm curious if it's well known before I do). It's just started freezing overnight in the UK. Why is it that I have a disproportionate amount of frost on my windscreen in the morning when everywhere else is not frosty e.g. the pavement?
I would have thought that glass would be worse for nucleation than rough tarmac/brickwork
Hmm, it's probably a known problem, I just don't know the answer. Might have to do with heat transfer coefficients (glass having better heat conductivity, presumably), or just that frost on the pavement is less visible than a layer of ice on your windscreen?
@roganjosh it's probably the temperature difference between inside the car and outside that causes the frost to form more predominately on the windshield, as well as glass having many imperfections for frost to form on
Dirt I'm not so sure... there's more ice on the windscreen than the roof of the car, for example, but they'd be exposed to pretty much the same environment
@ballBreaker Which it does. But airflow naturally means that there's more water vapour to be condensed on the outside of the windscreen (which is what I'm interested in) than on the inside (which does happen anyway but to a much lesser degree)
we're not fine dang it. We're trying to reason out why there's more snow on the windshield! This conversation is fascinating. But answers are needed! :P
I'm curious just how MUCH difference there is as well, like if you had a fence that has reached the equilibrium temperature of the environment, is there actually less frost than on the windshield? or is it just that you can't look through wood so you can't easily tell if there is as much
I'm relying on the collective observations of people in this room that I'm not going mad and there really is more ice on glass surfaces of cars than the surroundings. That's science, right?
It's hard in Canada because there is such a small window of time between frost accumulating overnight and everything being so covered in snow you can't tell just how frosty something is
Now I'm wondering whether glass is better for nucleation. But, that would only satisfy the first layer in contact with the glass - after that, it's the same for everyone
@ParitoshSingh welcome to co-authorship of my paper
"So, the coldest air is on the ground...(snip)...so the air temperature may actually be a few degrees above freezing, while the ground temperature is at 32 degrees." - I spent a good 32 seconds of my life trying to figure out why that statement made no sense to me. Then i realised, this is probably not Celsius.
"Since your car is made of materials that release that heat more quickly, the temperature of your windshield may drop to 32 degrees or below faster than its surroundings. This is also why frost can form on your windshield even when the air temperature is above freezing." non sequitur
That suggests that the windscreen drops below ambient temperature. Nice try, fake news
What you can do to test, is tomorrow morning when there is frost on your windshield.. Get a pot of boiling water and throw it on the windshield and see what happens
I suppose it is, honestly didn't find anything that went more in depth on the matter. But What I took from it was that in some cases, the loss and metrics can show differing trends, and with good reason
So, with the loss, the way i see that article state it, my model was "making bolder predictions" for everything
Essentially, call it overfitting, but i think that's a bit rash at that stage.
Now, what that implied was that there were higher penalties for getting things wrong. So, the loss could increase that way on unseen data, as my model got more confident but got something wrong.
On the flip side, there's an absolutely horrid class imbalance, that the metric essentially "favours" getting every class correct, not caring for raw numbers
To me, this is where i'd have to handwave a couple things away, or start guessing. Essentially, why was the metric so stable at improving till 6th epoch, before becoming unstable is still a puzzle
But i think, a major takeaway for me was, that the metric really is your tool for evaluation
@roganjosh in the sense that, macro f1 average scores will say: you need to get every class predicted with a good f1 score. Getting the majority class alone with a good f1 is no bueno
So, there's an extremely high amount of data points in the majority class, which is actually the class im least interested in. Hence, if the model starts getting some of them wrong, the loss will increase. But if getting a few of that class wrong meant that more of the minority classes were getting due corrections, then it's good for me overall.
My metric can show that, the loss cannot quite capture that.
But yeah, the main takeaway really is, there's semantic meanings in the words, and very specifically the sequences that the model needs to somehow learn. The more the distinct "types of entities" aka classes, the tougher the task for a model
And all classes will have pretty poor imbalance amongst themselves, but everything is overshadowed by the "noise/other" class
In this case, it really falls to your metrics to be good.
Yeah. I remember suggesting it sounded like overfitting and Arne saying something like "it sounds exactly like overfitting" but I forgot the context. IIRC it's a topic he's worked on so he might have some insight on that now you've considered it a bit more, but I certainly don't :/ Still, that article + your interpretation of it with your problem is interesting for me, thanks mate