NHacker Next
  • new
  • past
  • show
  • ask
  • show
  • jobs
  • submit
Mathematics of Data Science (arxiv.org)
wosk 23 hours ago [-]
I always starts with students by explaining how our intuition breaks in high-dimensions (spikiness, volumes,...) and how that carries when fitting/training models or searching optimization space.

It's a very important fundamental for modern data-science, to give one intuition about stochastic gradient descent, high-dimensional models, ... And this book starts with just that. I'm hooked. Thanks for sharing.

See this older hacker news thread as well: https://news.ycombinator.com/item?id=45116849 A Random Walk in 10 Dimensions (2021)

UltraSane 14 hours ago [-]
Almost orthogonal vectors is a critical concept to understand for machine learning.
ghm2199 21 hours ago [-]
Data science is always a very overloaded term ever since it took off way back in the 2010s. One of, if not the most, durable definition of this that likely can also be the most valuable because it’ll probably land your jobs(even today) is being able to make decisions from looking at data that have an team wide(good IC like job security) scope at the least and company wide scope(very rich).

Building that intuition is incredibly difficult. It can be learned if one likes to solve and think about problems that way. Like for example you can get quite far with knowing how to use linear regression(for example coefficients of linear regression can be determined using a deterministic algorithm using linear algebra yet knowing the assumptions of linear expected value and constant or variance is more useful as is the knowledge of what probability model to use to define the random variable(hmm are these Bernoulli events or poison)).

How to do sampling(like using reservoir sampling when you have an infinite sample count e.g in a long running crowd sourced survey to not over or under sample buckets for calibration).

Or just rule of thumbs like how # of samples needed for moving decimal point on significance varies roughly as inverse of sqrt of N and probably much more in case of interacting factors.

I would like a book on that :)

jubilanti 10 hours ago [-]
The discipline you are looking for is called Statistics
lopsotronic 2 hours ago [-]
I have heard it confidently stated, repeatedly, by extremely technical coder types, that "once we have enough data, we don't need Statistics"

It's a pretty funny sentiment.

It's also, unfortunately, reflective of how even talented individuals pass through advanced accreditation programs without locking blades with - or at least entering a general understanding of - fundamentals. Old timey British boarding schools would have called it "Logic" back in the day.

I am reminded once more of the differences in MSFS and Xplane: one uses a statistical table based model based on existing aircraft, and the other uses laminar flow analysis, fluid dynamics, and physics. One of them tells you something about unknown aircraft, and the other most definitely does not.

ghm2199 10 hours ago [-]
I’ve had the good fortune of taking two courses at Columbia in the Social Sciences department(Andrew Gelmam and Ben Goodrich teach there). I think they probably are right up there if not the best at trying to teach students how to work practically with Statistics(specifically Bayesian statistics). Though they have always lamented that most schools do a poor job of teaching it such that kids can apply it.
huflungdung 19 hours ago [-]
[dead]
astro1234 18 hours ago [-]
In my experience Data Science looks very little like it used to a few years ago, and the priority skill these days is good strong understanding of the basics and very good sense of judgement. To me, statistics is the absolute number one priority for any data scientist. You need to fully and deeply understand just basic concepts in statistics in order to translate what you see into action and do what you’re really there to do which is to prevent screwing up and acting on the wrong information or what’s more likely the wrong interpretation of the information.

For me the most valuable skill I have is a lot of experience applying and learning about Bayesian statistics: what it is (the beginning parts of Jaynes Probability Theory were not useful practically but deeply significant in helping me understand what it means and where it comes from), seeing lots of probabilistic models in the wild, playing around with them in both personal and professional worlds. Some people play video games, I love building hierarchical models. The nice thing is that in addition to it being very expressive It’s also just so much easier, such an intuitive way to avoid footguns because it just requires you to conceptualize one small bit at a time. When you’re done you get the inference for free with lots of charming stops along the pareto frontier between rigor and compute. Variational inference, expectation maximization, EM, Laplace. You can understand all of them with just a few concepts. Plus marginalization is just so unbelievably elegant to me. What is so surprising and beautiful to me is that Bayesian inference and marginalization are so useful and practical today. That being said there are plenty of unintuitive surprises, which is also a plug to not just understand the math but the theory and fundamentals to know how to interpret what you’re doing and seeing.

Also again this is still a great guide with lots of super important stuff (SVD/PCA linear algebra and linear regression (so much reward from just understanding linear regression from multiple perspectives)), no doubt. But if you really truly understand the basics you don’t need to worry about graph Laplacians (though highly highly recommend it’s also beautiful). Because more and more you can outsource the question of which method is ideal to a deep research agent that will read and understand arxiv for you. But you still have to audit it which means just really understanding the fundamentals is so crucial nowadays.

That and valuing speed and practicality. Strongest discriminator between someone junior and someone senior is recognizing when to reach for something simple and when you need to bring out bigger guns.

wodenokoto 59 minutes ago [-]
In your opinion how did it look just a few years ago, and why do you think the field has moved towards a bigger focus on fundamentals?
ahk-dev 12 hours ago [-]
[flagged]
cindyllm 18 hours ago [-]
[dead]
Otterly99 12 hours ago [-]
Related: Steve Brunton is also releasing a new book soon https://x.com/eigensteve/status/2055341831702057189

It is in the same vein but more applied to engineering and sciences. If you don't know him, I definitely recommend checking out his youtube channel, his lectures on Physics-inspired neural networks are top notch.

d4rkp4ttern 10 hours ago [-]
Related book by Blum, Hopcroft, Kannan:

Foundations of Data Science (2020):

https://home.ttic.edu/~avrim/book.pdf

srean 9 hours ago [-]
It's a good book on what it is about but Foundations of Data Science it is not.

It is very narrowly focused on the authors' research interest around theoretical results on spectral approximations.

I find their work very interesting but it certainly does not teach you the foundations you need to know to do data science

nonninz 13 hours ago [-]
That is very cool.

Anyone knows how can I compile the latex sources into an epub?

vk6flab 12 hours ago [-]
pandoc is probably the easiest.
Guidelines | FAQ | Lists | API | Security | Legal | Apply to YC | Contact
Rendered at 20:35:18 GMT+0000 (Coordinated Universal Time) with Vercel.