my biased thoughts on the fields of natural language processing (NLP), computational linguistics (CL) and related topics (machine learning, math, funding, etc.)
10 February 2007
AI-Stats schedule/papers up
The papers weren't listed in a single location, so I assembled them in one page. Looks like it should be fun (and sunny)!
For some one who doesn't understand the relationship of the various ML/AI conferences, where does AISTAT place in the content/quality spectrum ? (I only know places like COLT, ICML, and NIPS)
My sense (though I've never been) is that it's content is similar to NIPS/UAI, but is perhaps tier 2, rather than tier 1 (though I also sense it is on the upswing). Ask me again in April, though.
And yes, "fast" is very popular... although by pure frequency, "learning" would have to be a stop word (occurs more frequently than any word except "for")... fast comes in with seven counts, and efficient with 6. Kernel and classification both have 5, losing to Bayesian which has 6. Ironically, on my sorting, the word that appears last (you can figure out why if you think of how I sort) is "accurate" :).
For some one who doesn't understand the relationship of the various ML/AI conferences, where does AISTAT place in the content/quality spectrum ? (I only know places like COLT, ICML, and NIPS)
ReplyDeleteThis comment has been removed by the author.
ReplyDeleteI've heard that AISTATS is roughly on par with ICML and UAI.
ReplyDeleteIt seems like the hot word for this conference this year is "fast", just based on a simple word count of the titles. :)
This comment has been removed by the author.
ReplyDeleteMy sense (though I've never been) is that it's content is similar to NIPS/UAI, but is perhaps tier 2, rather than tier 1 (though I also sense it is on the upswing). Ask me again in April, though.
ReplyDeleteAnd yes, "fast" is very popular... although by pure frequency, "learning" would have to be a stop word (occurs more frequently than any word except "for")... fast comes in with seven counts, and efficient with 6. Kernel and classification both have 5, losing to Bayesian which has 6. Ironically, on my sorting, the word that appears last (you can figure out why if you think of how I sort) is "accurate" :).
酒店經紀PRETTY GIRL 台北酒店經紀人 ,禮服店 酒店兼差PRETTY GIRL酒店公關 酒店小姐 彩色爆米花酒店兼職,酒店工作 彩色爆米花酒店經紀, 酒店上班,酒店工作 PRETTY GIRL酒店喝酒酒店上班 彩色爆米花台北酒店酒店小姐 PRETTY GIRL酒店上班酒店打工PRETTY GIRL酒店打工酒店經紀 彩色爆米花
ReplyDelete