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nowbreezing.ntw.app

Bluesky's Top 10 Trending Words from the Past 10 Minutes: 1st - brexitukraineschmuck-stรผckemilderใ‚ฝใƒ•ใƒˆgazavecesmittwochdrill์ €๋„ (tap/click to see all posts on Bluesky featuring that word!) #ListenToBlackVoices

Word Cloud; its top words (sorted by weighted frequency, descending):  brexit, ukraine, schmuck-stรผcke, milder, ใ‚ฝใƒ•ใƒˆ, gaza, veces, mittwoch, drill, ์ €๋„, ๊ทผ๋ฐ, ้ป„ๆณ‰, ่ฑช้›จ, ็ตฆๆ–™, ใ‚ซใƒ‹, jemanden, gros, gefeliciteerd, expansion, brillen, anfang, ์ €๋Š”, ๋นจ๋ฆฌ, ่ฟทๅญ, ่จฑๅฏ, ่ฆ‹้€ƒใ—, ่‡ชใ‚‰, ็•ชๅท, ๆฐดๆ›œๆ—ฅ, ๅงฟๅ‹ข, ๅŒๅƒš, ๅ”ๅŠ›, ๅ‹งใ‚, ๅ‰้€ฒ, ไฝใ‚€, ไผšใˆใ‚‹, ใƒ€ใ‚ฆใƒณใƒญใƒผใƒ‰, ใ‚ฒใƒชใƒฉ, ใ‚ฑใ‚ข, ใพใ‚Š, ใฎๅ‘จ่พบใง้›จใŒๆญขใ‚“ใ ใ‚ˆใ†ใงใ™, ใšใ„ใถใ‚“, ใŠ็ฅˆใ‚Š, ใ†ใ•ใŽ, ใ„ใ˜ใ‚, ัะบั–, ั‚ะตะถ, ั‚ะฐะบะต, ะฟั€ัะผ, ะฝั–, ฮบฮฑฮน, รผberblick, weder, veut, unserer, tek, tampoco, sizes, sinking, selten, scottish, samstag, rechte, rail, qr, proposal, pga, ordnung, obsession, nรถtig, newcastle, namen, mw, mum, meter, mccafferty, loan, loads, licht, lebens, kursk, kochen, knife, kenapa, informed, hal, gesundheit, geschichte, germany's, fecha, dagen, aลพ, autumn, attractive, affordable, ademรกs, 7000, 17.15ๆ›ดๆ–ฐ, 17.10ๆ›ดๆ–ฐ, ํ•˜๋Š”๋ฐ, ์ธ์ƒ, ์ด๋ ‡๊ฒŒ, ์ด๊ฒŒ, ์˜ค๋ž˜, ์‚ฌ์‹ค, ๊ฒƒ๋„, ๊ฐ€๋Š”, ้ซ˜ใ‚, ้’ใ„, ้›ป่ฉฑ, ้™ใฃ, ้ƒฝๅธ‚, ้‹็”จ, ่ถณๅ…ƒ, ่ชฟๆŸป, ่ช˜ๅฐŽ, ่ฆณๆธฌ, ่ฆ‹่ฟ”ใ—, ่‡ช้‡, ็ฏ„ๅ›ฒ, ็ŸณๅŽŸ, ็›ดใ™, ็™บ่กŒ, ็‹ฌ็ซ‹, ๆฟƒใ„, ๆดปใ‹ใ—, ๆฐ—ๆŒใกใ„ใ„, ๆฏŽ้€ฑ, ๆฉŸๅ‹•, ๆพๅฒก, ๆฅๅบ—, ๆœฌ้Ÿณ, ๆœชใ ใซ, ๆšดใ‚Œ, ๆ—ฅๅทฎใ—, ๆ•ฆๅญ, ๆ•‘ใ†, ๆ”ฏ้ƒจ, ๆŠตๆŠ—, ๆ‰‹ๆฎต, ๆ‚ช้ญ”, ๆ€ๆƒณ, ๅฟ™ใ—ใ, ๅพฉ็ฟ’, ๅบฆ็›ฎ, ๅฑŠใ, ๅฏ„ใ‚‹, ๅฎฟ้กŒ, ๅฎคๅ†…, ๅœŸ็ ‚้™ใ‚Š, ๅœŸๅœฐ, ๅ‘จ่พบ, ๅใ, ๅŒๆ™‚, ๅˆใ„, ๅ–ใ‚Œใ‚‹, ๅˆบใ•ใ‚‹, ๅ‡บๆฑ, ๅ…ฅ้™ข, ๅ……ๅฎŸ, ๅ„ชๅ…ˆ, ไฟ้™บ, ไฟ่‚ฒๅœ’, ไป‹่ญท, ไบ‘ใ€…, ไธญๆ‘, ไธญๅคฎ, ไธ–ใฎไธญ, ไธŠๆ‰‹ใ„, ไธ€่จ€, ไธ€ๆ™‚ๆœŸ, ไธ€ๅ‘จ, ใƒชใ‚บใƒ , ใƒŸใƒซใ‚ฏ, ใƒžใƒƒใƒ, ใƒ“ใƒณ, ใƒ‘ใƒผ, ใƒใƒฌใ‚‹, ใƒใƒ‹ใ‚ข, ใƒใƒƒใ‚ฐ, ใƒใƒžใฃ, ใƒˆใƒฌ, ใƒ€ใ‚คใ‚ฝใƒผ, ใ‚ปใƒŸ, ใ‚นใƒˆใ‚ข, ใ‚ทใƒงใƒผ, ใ‚ตใ‚คใƒณ, ใ‚ณใƒƒใƒ—, ใ‚ฒใ‚นใƒˆ, ใ‚ฌใ‚ญ, ใ‚ซใƒ„, ใ‚คใƒ™, ใ‚ˆใ‚‹, ใ‚†ใˆ, ใปใ—ใ, ใปใ—, ใฎๅ‘จ่พบใงใ€ไธฆใฎ้›จ, ใชใใชใ‚‹, ใฉใ—, ใงใใ‚Œ
Hashtag Cloud; its hashtagged words/phrases (sorted by weighted frequency, descending):  fotovorschlag, ukraine, ๅ‰ตไฝœ, news, digitalart, ufo, russiaukrainewar, russia, ovni, bluesky, ๅฐ่ชฌ, ๅ†™็œŸ, ไธญๆ—ฅ, ใ‚คใƒžใ‚ฝใƒฉ, ใ‚ขใƒ‹ใƒก, ใ†ใก, youtube, watchawednesday, vrchat, ukrainerussiawar, teamre, so_asano_ch, security, robin, pilatus, note, nature, melbourne, kursk, japan, infosec, higgs, fcknzs, fckafd, edusky, dragonage, dogsofbluesky, dfuel, deups, chatgpt, bluecast, birds, auspol, apple, acl2024nlp
Emoji Cloud; its emojis (sorted by weighted frequency, descending):  ๐ŸŸฃ, ๐ŸŒค๏ธ, ๐Ÿš“, ๐Ÿ–•, ๐Ÿ“, ๐Ÿฅ“, ๐Ÿคฆ๐Ÿปโ€โ™€๏ธ, ๐Ÿ‘๐Ÿป, ๐Ÿคฆโ€โ™€๏ธ, ๐Ÿ˜ฟ, ๐Ÿ’ฃ, ๐Ÿฟ, ๐Ÿ“, ๐ŸŽ, โฌ, ๐Ÿงช, ๐Ÿฆ‡, ๐Ÿฅ, ๐Ÿš’, ๐Ÿ™‹โ€โ™‚๏ธ, ๐Ÿ˜พ, ๐Ÿ˜„, ๐Ÿ”ช, ๐Ÿ“ฑ, ๐Ÿ’ข, ๐Ÿซ, ๐Ÿฃ, ๐Ÿš, ๐ŸŒ, โคต๏ธ, ๐Ÿซฑ๐Ÿปโ€๐Ÿซฒ๐Ÿผ, ๐Ÿงต, ๐Ÿฅƒ, ๐Ÿคฆ๐Ÿป, ๐Ÿคž๐Ÿฝ, ๐Ÿค–, ๐Ÿ™‹๐Ÿผโ€โ™€๏ธ, ๐Ÿ˜ผ, ๐Ÿ˜ท, ๐Ÿ˜ฏ, ๐Ÿ˜’, ๐Ÿ—ฃ, ๐Ÿ•ฏ๏ธ, ๐Ÿ”ž, ๐Ÿ“บ, ๐Ÿ“ธ, ๐Ÿ“…, ๐Ÿ’“, ๐Ÿ‘ฝ, ๐Ÿ‘ฉ๐Ÿป, ๐Ÿ‘‹, ๐Ÿ‘†, ๐Ÿ‘‚, ๐Ÿฆ, ๐Ÿ, ๐Ÿˆโ€โฌ›, ๐Ÿ‡, ๐Ÿ, ๐ŸŽ™๏ธ, ๐ŸŽ€, ๐Ÿ™, ๐Ÿ, ๐Ÿ, ๐ŸŒด, ๐ŸŒ, ๐Ÿ‡ฌ๐Ÿ‡ง, ๐Ÿ‡ฉ๐Ÿ‡ฐ, ๐Ÿ‡ฆ๐Ÿ‡น, โฌ‡, โค๏ธโ€๐Ÿฉน, โค๏ธโ€๐Ÿ”ฅ, โš”๏ธ, โ™จ, โ˜•, โ˜”
@bsky.app and the bsky.team have finally taken the first step. We must take the time to see how @safety.bsky.app fares and if the team will do the rest. #ListenToBlackVoices
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ULukplab.bsky.social

ยป[O]ur results do not mean that AI is not a threat at allยซ emphasized Iryna Gurevych. ยป[But future research should] focus on other risks posed by the models, such as their potential to be used to generate fake news.ยซ (3/๐Ÿงต) Full press release: nachrichten.idw-online.de/2024/08/12/i...#ACL2024NLP

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ULukplab.bsky.social

Our colleagues Iryna Gurevych, Yufang Hou and Preslav Nakov presenting the work of Max Glockner on #Missci#ACL2024NLParxiv.org/abs/2406.03181

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ULukplab.bsky.social

And consider following the authors Fengyu Cai (UKP Lab), Xinran Zhao (Carnegie Mellon University), Hongming Zhang (Tencent AI), Iryna Gurevych, and Heinz Koeppl (@cs-tudarmstadt.bsky.social@tuda.bsky.social#ACL2024NLP ๐Ÿ‡น๐Ÿ‡ญ!

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ULukplab.bsky.social

We demonstrate that with the knowledge of class-wise hardness, class reorganization will lead to a more coherent class-wise hardness distribution, and further improve the model performance. (7/๐Ÿงต) #ACL2024NLP#NLProc

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ULukplab.bsky.social

โ˜๏ธ Moreover, we theoretically prove that the intra-class hardness is associated with overfitting phenomena, leading to performance degradation in the training process. (6/๐Ÿงต) #ACL2024NLP#NLProc

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