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FIBA W杯の日本代表って組み合わせ次第で2次ラウンド行けたんじゃね?をデータで検証
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saltcooky
December 02, 2023
Science
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FIBA W杯の日本代表って組み合わせ次第で2次ラウンド行けたんじゃね?をデータで検証
JapanR 2023 ショートセッション (2023/12/02)
saltcooky
December 02, 2023
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Transcript
'*#"8ഋͷຊදͬͯΈ߹Θͤ࣍ୈͰ ࣍ϥϯυߦ͚ͨΜ͡ΌͶʁΛσʔλͰݕূ !TBMUDPPLZ +BQBO3
୭ʁ 2 !TBMUDPPLZ • 3ྺɿ͙Β͍͔ͳ • ۈઌɿຊʹ͋Δ*5ܥͷձࣾ • ࣄ༰ɿ3%తͳ෦ॺͰ
ɹɹɹ3Λͬͨσʔλੳ͞Μ ػցֶशͷॲཧ࡞ • झຯɿϑΝογϣϯඒज़ؗ८Γ
'*#"όεέοτϘʔϧϫʔϧυΧοϓ 3
4 IUUQTXXXCBTLFUCBMM[JOFDPNBSUJDMFEFUBJM '*#"όεέοτϘʔϧϫʔϧυΧοϓ
5 '*#"όεέοτϘʔϧϫʔϧυΧοϓ
6 ΦʔετϥϦΞͱυΠπ͕ಉ͡άϧʔϓʹ͍Δͷ͕ਏ͗͢Δʜ Έ߹Θͤ࣍ୈͰ࣍ϥϯυߦ͚ͨΜ͡ΌͶʁ '*#"όεέοτϘʔϧϫʔϧυΧοϓ
7 '*#"όεέοτϘʔϧϫʔϧυΧοϓ
άϧʔϓͷৼΓ͚ํ๏ 8 ৼΓ͚ϧʔϧͬ͟ͱ͜Μͳײ͡ɻ •FIBAϥϯΩϯά্Ґॱʹϙοτ8ʹ͚Δ(ϑΟϦϐϯϙοτ1) •ϙοτ1ɺ3ɺ5ɺ7ͷνʔϜάϧʔϓAɺCɺEɺGʹৼΓ͚Δ •ϙοτ2ɺ4ɺ6ɺ8ͷνʔϜάϧʔϓBɺDɺFɺHʹৼΓ͚Δ •ΞϑϦΧେɺΞϝϦΧେɺΞδΞେͷ֤νʔϜಉ͡άϧʔϓʹೖΒͳ͍ •ϤʔϩούͷνʔϜ͕ಉ͡άϧʔϓʹೖΔͷ࠷େͰ2νʔϜ •։࠵ࠃͷϑΟϦϐϯάϧʔϓAɺຊάϧʔϓEʹೖΔ •ΞϝϦΧάϧʔϓCɺεϩϕχΞάϧʔϓFɺΧφμάϧʔϓHʹೖΔ
9 ຊͱಉ͡άϧʔϓʹೖΔࠃநબલ͔ΒҎԼͷ9ϲࠃʹݶΒΕΔ Մೳੑͷ͋ΔΈ߹Θͤ16ύλʔϯ • εϖΠϯ or ΦʔετϥϦΞ • ΪϦγϟ or
ΠλϦΞ or υΠπ or ϒϥδϧ • υϛχΧڞࠃ or ϑΟϯϥϯυ or χϡʔδʔϥϯυ ͲΜͳΈ߹ΘͤͰπϥ͍ͷมΘΒͳͦ͏… άϧʔϓͷৼΓ͚ํ๏
ᶃग़ࠃͷڧ͞ύϥϝʔλΛਪఆ 10 '*#"8ഋͷຊදͬͯΈ߹Θͤ࣍ୈͰ ࣍ϥϯυߦ͚ͨΜ͡ΌͶʁΛσʔλͰݕূ͠·͢
ᶃग़ࠃͷڧ͞ύϥϝʔλΛਪఆ 11 ࢼ߹ͷউഊΛදݱ͢Δ֊ϕΠζϞσϧΛTUBOͰ࡞ ɾڧ͞ͷજࡏύϥϝʔλθ͕͋ΔͱԾఆ ࢀߟॻ੶ J͕Kʹউ͔ͭɿ J͕Kʹউͭ֬ɿ JͷύϑΥʔϚϯεɿ Jͷજࡏతͳڧ͞ɿ ύϑΥʔϚϯεͷΒ͖ͭɿ
ڧ͞ͷΒ͖ͭɿ
ᶃग़ࠃͷڧ͞ύϥϝʔλΛਪఆ 12 ΈΜͳେ͖4UBOͰ.$.$ શࢼ߹ͷσʔλΛ༻͍ͯύϥϝʔλΛਪఆ͢Δ
ᶃग़ࠃͷڧ͞ύϥϝʔλΛਪఆ 13 .$.$݁ՌͷଥੑΛ֬ೝ
ᶃग़ࠃͷڧ͞ύϥϝʔλΛਪఆ 14 ਪఆ͞Εͨજࡏతͳڧ͞ύϥϝʔλ w ͰͷධՁͰຊҐ w υΠπμϯτπ̍Ґ w ৴༻۠ؒΊ w
উ͕Өڹ͍͍ͯ͠Δ
ᶃग़ࠃͷڧ͞ύϥϝʔλΛਪఆ 15 ਪҠ͞Εͨڧ͞ͷࢄύϥϝʔλ w ৴༻۠ؒ͘΄΅͕ࠩͳ͍ w ใྔ͕Γ͍ͯͳ͍ʁ
ᶄਪఆ͞ΕͨύϥϝʔλΛར༻ͨ͠γϛϡϨʔγϣϯ 16 • Մೳੑͷ͋Δ1࣍ϥϯυΈ߹Θͤ16ύλʔϯΛγϛϡϨʔγϣϯ • ରઓࠃiͱͷউഊWiΛɺਪఆͨ͠ύϥϝʔλθ,σ Λ༻͍ͯऔಘ • 1࣍ϥϯυͷγϛϡϨʔγϣϯΛ2000ճߦ͍ɺຊͷ2࣍ϥϯυग़֬Λࢉग़
ᶄਪఆ͞ΕͨύϥϝʔλΛར༻ͨ͠γϛϡϨʔγϣϯ 17 ਪఆ͞Εͨ࣍ϥϯυਐग़֬
ᶄਪఆ͞ΕͨύϥϝʔλΛར༻ͨ͠γϛϡϨʔγϣϯ 18 γϛϡϨʔγϣϯͰಘΒΕ֤ͨࠃʹର͢Δউύϥϝʔλ
ᶄਪఆ͞ΕͨύϥϝʔλΛར༻ͨ͠γϛϡϨʔγϣϯ 19 ̍࣍ϥϯυͷΈ߹Θͤશ16ύλʔϯͷ2࣍ϥϯυग़֬ ʙ ʙ
·ͱΊ 20 • FIBA WഋͰΈ߹Θͤ࣍ୈͰຊද͕2࣍ϥϯυਐग़Ͱ͖͔ͨΛݕূ • ݁Ռͱͯ͠ਐग़ظ47.6% : 1/2Ͱਐग़Ͱ͖ΔՄೳੑ͕͋ͬͨ(৴པΊ) •
͞ΒʹυΠπͱͨΒͳ͚Ε2࣍ϥϯυʹਐग़Ͱ͖ΔՄೳੑ͕ߴ·͔ͬͨ • ·͋ɺͨΒʹա͗·ͤΜ • དྷͷύϦޒྠΛશྗͰԠԉ͠·͠ΐ͏ʂ
·ͱΊ 21 &OKPZ
ࢀߟ 22 • ʲRStanʳFIBA WഋͷຊදͬͯΈ߹Θͤ࣍ୈͰ2ndϥϯυߦ͚ΔՄೳੑ͋ͬͨΜ͡ΌͶʁΛσʔ λͰݕূ https://saltcooky.hatenablog.com/entry/2023/10/17/231144 • FIBAϫʔϧυΧοϓ2023 Έ߹ΘͤநબͷΈͱ݁Ռʛຊදͷରઓ૬खͲ͜ʹʁ
https://www.sportingnews.com/jp/basketball/news/ fi ba-world-cup-2023-draw-system-result-which-teams- against-japan/fey0tecfsqw6gbwbwqizszbc • StanͱRͰϕΠζ౷ܭϞσϦϯά Wonderful R 2, দӜ ݈ଠ ஶ https://www.amazon.co.jp/dp/B07M8LWLS1