Comments (4)
I'll chime in. I agree that "sparse data support" is a thread that runs through many matrix, ML, and NLP libraries. That said, I'm not sure if it warrants its own category.
I currently lean towards saying "maybe not". Here's two reasons why.
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I tend to think of sparse data support as something that ML practitioners tend to look for after they've chosen an approach. Put another way, ML practitioners search for certain primary functionality or capabilities first, and then after look to find sparsity support. (To put it another way, I'm not sure how often a practitioner would say, "I'm only going to choose from ML approaches that already include sparse data support.")
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If you we add "sparse data" as a new category, we might be getting into the weeds (i.e. an excessive level of detail). Would we be inviting an explosion of relatively minor categories? Just something to think about.
from are-we-learning-yet.
I'll be the first to admit that I don't think I got the categories exactly correct (or that I could find any 2 resources that agreed on a way to categorize ML that is useful for describing a language ecosystem)
Would you be willing to draft up the initial category overview and point me to any other crates you think might be candidates for living there? (either in this issue or as a PR)
from are-we-learning-yet.
Yes, it's far from clear. I'll have a think and see if I can come up with
something.
On 23 Aug 2016 21:52, "Anthony Nowell" [email protected] wrote:
I'll be the first to admit that I don't think I got the categories exactly
correct (or that I could find any 2 resources that agreed on a way to
categorize ML that is useful for describing a language ecosystem)Would you be willing to draft up the initial category overview and point
me to any other crates you think might be candidates for living there?
(either in this issue or as a PR)—
You are receiving this because you authored the thread.
Reply to this email directly, view it on GitHub
#3 (comment),
or mute the thread
https://github.com/notifications/unsubscribe-auth/ACSCA2b2Agh7BJMX5qPRDXc4lZnMaaJaks5qi835gaJpZM4JroIC
.
from are-we-learning-yet.
possibly look at https://github.com/vbarrielle/sprs too
from are-we-learning-yet.
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from are-we-learning-yet.