peter frick

63 posts

peter frick

peter frick

@peterlfrick

가입일 Mart 2014
250 팔로잉32 팔로워
peter frick
peter frick@peterlfrick·
ML performance is a subset of ML business value. Encoding business goals into the objective function of models boosts overall impact @MLconf #mlconf
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peter frick
peter frick@peterlfrick·
Interesting explanation of variational autoencoders as a generalization of LDA, and how that’s used to scale recommendations @MLconf #mlconf
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Cecile Janssens
Cecile Janssens@cecilejanssens·
The area under the ROC curve (AUC) is so frequently criticized and misunderstood that I often wonder whether I am the metric’s only fan. Let me explain why how I see and value the AUC. (thread)
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Tai-Danae Bradley
Tai-Danae Bradley@math3ma·
A nice fact I like: Every matrix corresponds to a graph, and so familiar things (e.g. matrix multiplication) have nice pictures! Another nice fact: joint probability distributions *also* correspond to graphs. They have telling pictures, too. New blog post! math3ma.com/blog/matrices-…
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Pamela Clevenger
Pamela Clevenger@peclevenger·
Q: what do you do for a living? A: create bugs while fixing other bugs.
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Sebastian Ruder
Sebastian Ruder@seb_ruder·
A comprehensive overview and break-down of 14 NLP research paper highlights from 2018
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Allen Downey
Allen Downey@AllenDowney·
A recent paper in NEJM shows that children born in August are 30% more likely to be diagnosed with ADHD than children born in September, probably because they start school younger. I reanalyzed the data using Bayesian logistic regression: allendowney.com/blog/2018/12/0…
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peter frick
peter frick@peterlfrick·
@rctatman Imagine predicting what I’m like based on a sibling. He is a model of me. If you don’t learn about him to predict me, you are excluding useful info (bias) But if you learn everything about him and apply it to me thats using too much info since we are different ppl (variance)
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Rachael Tatman @rctatman@mastodon.rctatman.com
Got a recent question about this & didn't have a great answer: do y'all have any favorite resources for helping build a good intuition around bias/variance trade-off?
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peter frick
peter frick@peterlfrick·
Congrats Parker!
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peter frick
peter frick@peterlfrick·
Clicked for the title, stayed for the memes
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Real Python
Real Python@realpython·
One of the top questions we've been getting from new Python coders is "how should I structure my Python projects?" With this tutorial, we want to give you a dependable Python application layout reference guide that you can refer to: realpython.com/python-applica…
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peter frick
peter frick@peterlfrick·
how to train a neural network for text classification using keras #neural-networks-text_classification" target="_blank" rel="nofollow noopener">frickp.github.io/neural-network…
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Radim Řehůřek
Radim Řehůřek@RadimRehurek·
"Context is Everything: Finding Meaning Statistically in Semantic Spaces." A replacement of tf-idf that is actually better than tf-idf (finally?!) arxiv.org/abs/1803.08493
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Daren Willman
Daren Willman@darenw·
Just for fun... Here's how an outfield of all Buxton would compare to an outfield of all Pujols based on 2017 sprint speed. Each colored band is a second of hang time. outer band is 6 seconds, inner band 3.
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