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協調学習とジグソー法
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pokotyamu
August 29, 2018
Education
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協調学習とジグソー法
社内 LT 大会で話した
pokotyamu
August 29, 2018
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Transcript
ڠௐֶशͱ δάιʔ๏ FFLT #9 @pokotyamu
Who am i ࣗݾհ • ా ӳ༞(͋ͱ198Ͱɺ࢈·Εͯ10,000) • भۀେֶग़(ҰԠɺେֶӃ·Ͱ) •
io νʔϜ(όοΫΤϯυ) • ࣾεΫϥϜܑ͓͞Μ(ೝఆεΫϥϜϚελʔͷݚमड͚Δ༧ఆ) • ࠷ۙɺΧʔυήʔϜʹϋϚͬͯΔ • ϝΠϯϘυή෦ॴଐ
ڠௐֶशͱʁ
֓ཁ ڠௐֶशͱʁ • ΞΫςΟϒɾϥʔχϯάͷͻͱͭ • ֶशऀ͕ೳಈతʹֶशʹऔΓΉֶशํ๏ • ֶशऀಉ࢜ͰରΛϕʔεʹޓ͍ʹࣝΛڞ༗͍ͯ͘͠
collaborative learning vs cooperative learning ڠௐֶशͱڠಉֶशͷҧ͍ • ڠௐֶश • ҰਓҰਓ͕͠߹͍ͷதͰɺֶश༰ʹ͍ͭͯͷཧղΛߴΊɺ
ࣝɾٕೳΛ׆༻Ͱ͖Δͷʹ͢Δ͜ͱΛࢦ͢ • ਓؒؔΛߏங͢ΔͨΊͷجຊతͳεΩϧ͕ҭ͞ΕΔ • ڠಉֶश • ूஂͷதͰͷڠྗతؔΛॏࢹ͠ɺ·͍͠ਓؒؔͷߏஙͱֶ शඪͷୡͷཱ྆Λࢦ͢
collaborative learning vs cooperative learning ڠௐֶशͱڠಉֶशͷҧ͍ • ڠௐֶश • ҰਓҰਓ͕͠߹͍ͷதͰɺֶश༰ʹ͍ͭͯͷཧղΛߴΊɺ
ࣝɾٕೳΛ׆༻Ͱ͖Δͷʹ͢Δ͜ͱΛࢦ͢ • ਓؒؔΛߏங͢ΔͨΊͷجຊతͳεΩϧ͕ҭ͞ΕΔ • ڠಉֶश • ूஂͷதͰͷڠྗతؔΛॏࢹ͠ɺ·͍͠ਓؒؔͷߏஙͱֶ शඪͷୡͷཱ྆Λࢦ͢ ڠௐֶशͰ ҰਓҰਓ͕͔Δ͜ͱ ͕ॏཁʂ
ࢲͷߍͷઃඋ भۀେֶ MILAiS • άϧʔϓϫʔΫઐͷڭࣨ • صͱҜࢠࣗ༝ʹಈ͘ • นશ෦ϗϫΠτϘʔυ •
ҠಈࣜϗϫΠτϘʔυඋ • ϓϩδΣΫλʔඋ • MacBook Air 100උ(ିग़)
ڠௐֶशͰ ͋Δͱʁ
Ұൠతͳֶߍ ैདྷͷֶशελΠϧ • ࣝୡܕ(ઌੜ͕ڭஃͰڭ͑Δ)ීஈͷߟ͑ͱ݁ͼ͖ͭʹ͍͘ • ͔ͬͨΑ͏Ͱ͔ͬͯͳ͍ঢ়ଶ • ࣮ࡍʹࣗͰΖ͏ͱ͢ΔͱͰ͖ͳ͍ঢ়ଶ • ৽ͨͳࣝͱࣗͷܦݧଇ͕Ͳ͏݁ͼͭ͘ͷ͔ͱ͍͏͜ͱΛࣗͰ
ߟ͑ΕΔͱֶͼʹͭͳ͕Δ
ଞऀͱߟ͑ͳ͕ΒֶͿ ݐઃత૬ޓ࡞༻ • ෳਓͰҰॹʹ՝ղܾ׆ಈΛߦ͏(ݐઃత૬ޓ࡞༻) • ࣗࣗͷߟ͑Λ֎ʹग़ͯ֬͠ೝͯ͠ΈΔ໘ • ଞͷਓͷݴ༿׆ಈΛฉ͍ͨΓݟͨΓͯ͠ɺࣗͷߟ͑ͱ Έ߹ΘͤͯΑΓΑ͍ߟ͑Λ࡞Δ໘ •
ݸਓͰ̎ͭͷ໘͕࣍ʑʹى͜Γɺཧղ͕ਂԽ͢Δ(࣭͕ߴ·Δ)
ଞऀͱߟ͑ͳ͕ΒֶͿ ݐઃత૬ޓ࡞༻ • ෳਓͰҰॹʹ՝ղܾ׆ಈΛߦ͏(ݐઃత૬ޓ࡞༻) • ࣗࣗͷߟ͑Λ֎ʹग़ͯ֬͠ೝͯ͠ΈΔ໘ • ଞͷਓͷݴ༿׆ಈΛฉ͍ͨΓݟͨΓͯ͠ɺࣗͷߟ͑ͱ Έ߹ΘͤͯΑΓΑ͍ߟ͑Λ࡞Δ໘ •
ݸਓͰ̎ͭͷ໘͕࣍ʑʹى͜Γɺཧղ͕ਂԽ͢Δ(࣭͕ߴ·Δ) ڠௐֶश
basic logic ڠௐֶशͷجຊతͳߟ͑ํ • ҰਓҰਓͷ͔Γํଟ༷ • ೲಘͯࣗ͠Ͱදݱͨ͜͠ͱɺʮ׆༻Ͱ͖ΔࣝʯʹͳΓ͍͢ • ʮ׆༻Ͱ͖Δࣝʯʹ͢ΔͨΊʹࣗࣗͰߟ͑Λදݱ͢͠ ׆ಈΛத৺ʹ͢Δඞཁ͕͋Δ
• ͦͷ࣌ʹࣗͱࢹͷҧ͏ଞऀͷߟ͑ํΛग़͠߹͏ͱద༻ൣғ͕ ͘ͳΔ • ͦͷͨΊʹҰਓҰਓͷ͔Γํͷҧ͍͕ʮݟ͑ΔʯΈ͕ඞཁ
ࣝߏܕ δάιʔ๏
• ̍ਓͰे͕͑ग़ͳ͍ʹରͯ͠ɺࣗͳΓͷճΛߟ͑Δ • ͜ͷஈ֊Ͱेͳ͕͑ग़ΔͷΑΓྑ͍͑Λग़ͦ͏ͱ͍͏ൃ ʹࢸΓʹ͘͘ͳΔ Γํ How to
How to Γํ ̍ਓͰे ͕͑ग़ͳ͍
̍ਓͰे ͕͑ग़ͳ͍ How to Γํ
࣮ફʂ ૯߹৬ΑΓྑ͘͠ୂͰࢼͨ͠ 1. ʮӦۀͱʁʯͱ͍͏࣭ʹର֤ͯ͠ʑҙݟΛॻ͖ग़͢ 2. ΈΜͳͰҙݟͷڞ༗ 3. ࣅͨάϧʔϓ(ઌഐ/ޙഐߟྀ)ʹ͔Εͯɺਂ۷Γ 4. ޓ͍ͷάϧʔϓͷҙݟΛڞ༗
Ӧۀͱʁ ૯߹৬ΑΓྑ͘͠ୂͰࢼͨ͠ ࣮ફʂ
࡞Γ ΑΓΑ͘͢ΔͨΊʹ • ରΛओͱͯ͠ϫʔΫ͢ΔͷͰɺ࡞Γ͕େࣄ • ࢴɺᝦɺϖϯ͋Δʁ • ϗϫΠτϘʔυ͑Δʁ • Իָͱ͔͔͚͍͍ͯͯΜ͡Όͳ͍ʁ
• ͲΜͳҙݟͰߠఆ͞ΕΔײ͡ʹͳͬͯΔʁ
৺ཧత҆શੑ
to be continue… ࣍ճ༧ࠂ • ΤϯδχΞͱձ͢Δ࣌ʹؾΛ͚͍ͭͯΔ͜ͱ • ͓ޓ͍ͷཱ͔Βͯ͠໘നͦ͏ • ΑΓྑ͍˔˔ͱʁ
• ωλืूதʂ • ਫ༵18:00~19:00 ձٞࣨBͰ͢