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@aparrish
Last active November 9, 2024 12:16
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Understanding word vectors: A tutorial for "Reading and Writing Electronic Text," a class I teach at ITP. (Python 2.7) Code examples released under CC0 https://creativecommons.org/choose/zero/, other text released under CC BY 4.0 https://creativecommons.org/licenses/by/4.0/
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@avneesh91
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this is amazing, thank you for explanation!!

@prateekcaire
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Thanks!!

@adebiasi
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Very nice tutorial!

One question:
A word near the origin (0,0,0 ...) in the n-space has less possibility to be the result of an addition among words. As opposite, a word very distant of the origin could be the result of many possible additions among many words. Does this mean that complex concepts are far for the origin and basic concepts are near?

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