Course: INS335 R - DEMOCRATIZATION Responsible Faculty: Kanet, Roger E --- Survey Comparisons --- Responses Individual INS All. Med.

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Fall 0 (w Gral) Cours Ealuatios Fall 0 Uirsity of Miami Arts ad cics Cours: I5 R - DEMOCRATIZATIO Rsposibl Faculty: Rogr at Dpartmt: I Rsposs / Expctd: 8 / (7%) Orall : 7 5 - Poit Lirt cal (UM) (79 rsposs) Graph Lgd at, Rogr E I Faculty w Gral - Cours Itms This cours has b a aluabl larig xpric statd objctis of th cours ha b mt gradig mthods ar fair ad appropriat My ability to commuicat about this at, Rogr E --- ury Comparisos --- Rsposs Idiidual I All A A D D Md D 0 0 0 8 8 5 5 0 0 0 8 8 5 5 0 0 0 8 8 5 5 5 0 0 0 8 5 5 8 R 5 R 9 7 58

5 subjct has b hacd I lard to thi critically about this subjct 5 0 0 0 8 5 5 8 5 Rsposs: [A] trogly Agr=5 [A] Agr= [] utral= [D] Disagr= [D] trogly Disagr= R: Prctil Ra (00 is bst, calculatd s prcis ) Graph Lgd at, Rogr E I Faculty w Gral - Istructor Itms 7 8 istructor tachs ffctily istructor stimulats itrst i th cours istructor is accssibl ad at, Rogr E --- ury Comparisos --- Rsposs Idiidual I All A A D D Md D 0 0 8 5 5 70 0 0 0 8 8 5 5 0 0 0 7 9 5 5 5 R 8 5 57 R 7 5 7

9 0 approachabl istructor trats studts with rspct My orall aluatio of th istructor is positi 7 0 0 0 8 9 5 5 0 0 0 8 8 5 5 9 0 Rsposs: [A] trogly Agr=5 [A] Agr= [] utral= [D] Disagr= [D] trogly Disagr= R: Prctil Ra (00 is bst, calculatd s prcis ) - Plas proid ay additioal suggstios ad commts Faculty: at, Rogr E Rspos Rat: 500% ( of 8) My faourit class! Just wish it was mor orgaisd Dr at, tha you for couragig us to thi critically about dmocratizatio ad to form our ow idas i rgards to th futur of global dmocratic cosolidatio Through your class, I ha com to udrstad that dmocracy is a complx trm that is prcid so diffrtly aroud th world Your owldg about ad passio for th subjct is truly ispirig Tha you for always big aailabl to guid us through th cours Fall 0 (w Gral) Cours Ealuatios Fall 0 Uirsity of Miami Arts ad cics Cours: I7 - FOREIG POL TOP Rsposibl Faculty: Rogr at Dpartmt: I Rsposs / Expctd: / 7 (8%) Orall : 8 5 - Poit Lirt cal (UM) (0 rsposs) Graph Lgd

at, Rogr E I Faculty w Gral - Cours Itms 5 This cours has b a aluabl larig xpric statd objctis of th cours ha b mt gradig mthods ar fair ad appropriat My ability to commuicat about this subjct has b hacd I lard to thi critically about this subjct at, Rogr E --- ury Comparisos --- Rsposs Idiidual I All A A D D Md D 0 0 0 7 5 5 7 0 0 0 0 50 5 5 0 0 0 0 7 5 5 7 0 0 0 7 5 5 7 0 0 0 0 50 5 5 0 R 5 8 5 5 78 R 9 59 9 Rsposs: [A] trogly Agr=5 [A] Agr= [] utral= [D] Disagr= [D] trogly Disagr= R: Prctil Ra (00 is bst, calculatd s prcis )

Graph Lgd at, Rogr E I Faculty w Gral - Istructor Itms 7 8 9 0 istructor tachs ffctily istructor stimulats itrst i th cours istructor is accssibl ad approachabl istructor trats studts with rspct My orall aluatio of th istructor is positi at, Rogr E --- ury Comparisos --- Rsposs Idiidual I All A A D D Md D 0 0 0 7 5 5 7 0 0 0 7 5 5 7 0 0 0 0 50 5 5 0 0 0 0 0 50 5 5 0 0 0 0 0 50 5 5 0 R 57 5 8 75 78 R 5 5 88 85 88 Rsposs: [A] trogly Agr=5 [A] Agr= [] utral= [D] Disagr= [D] trogly Disagr= R: Prctil Ra (00 is bst, calculatd s prcis )

- Plas proid ay additioal suggstios ad commts Faculty: at, Rogr E Rspos Rat: % ( of ) Tha you, Dr at, for pushig us to stri towards our maximum pottial ad for always big aailabl to guid us wh w dd it I also apprciat that you always courag us to thi critically ad ha our ow opiio, as wll as for tachig us to challg th stadard itrprtatio of Amrica rlatioships with th rst of th world Fall 0 (w Gral) Cours Ealuatios Fall 0 Uirsity of Miami Arts ad cics Cours: POL7 - U IMPERIALIM Rsposibl Faculty: Rogr at Dpartmt: POL Rsposs / Expctd: 9 / (88%) Orall : 7 5 - Poit Lirt cal (UM) (90 rsposs) Graph Lgd at, Rogr E POL Faculty w Gral - Cours Itms This cours has b a aluabl larig xpric statd objctis of th cours at, Rogr E --- ury Comparisos --- Rsposs Idiidual POL All A A D D Md D 7 0 0 9 5 5 9 0 0 0 9 7 5 5 7 R 5 5 5 7 R 5 58

5 ha b mt gradig mthods ar fair ad appropriat My ability to commuicat about this subjct has b hacd I lard to thi critically about this subjct 7 0 0 0 9 8 5 5 0 0 9 5 5 9 0 0 9 5 5 9 5 5 7 5 Rsposs: [A] trogly Agr=5 [A] Agr= [] utral= [D] Disagr= [D] trogly Disagr= R: Prctil Ra (00 is bst, calculatd s prcis ) Graph Lgd at, Rogr E POL Faculty w Gral - Istructor Itms istructor tachs ffctily at, Rogr E --- ury Comparisos --- Rsposs Idiidual POL All A A D D Md D 5 0 0 0 9 5 5 50 R 0 R 5

7 8 9 0 istructor stimulats itrst i th cours istructor is accssibl ad approachabl istructor trats studts with rspct My orall aluatio of th istructor is positi 0 0 9 5 5 8 8 0 0 0 9 9 5 5 9 0 0 0 0 9 50 5 5 0 7 0 0 0 9 8 5 5 5 8 5 5 5 70 85 Rsposs: [A] trogly Agr=5 [A] Agr= [] utral= [D] Disagr= [D] trogly Disagr= R: Prctil Ra (00 is bst, calculatd s prcis ) - Plas proid ay additioal suggstios ad commts Faculty: at, Rogr E Rspos Rat: % ( of 9) Vry owldg about th subjcts big discussd ad always rady to assist studts Profssor at is a walth of owldg, ad his lcturs rflct that Throughout th duratio of this cours I lard about so much mor tha just what is cord o th syllabus H is grat at giig bacgroud iformatio ad rally tyig togthr all of th aspcts that ifluc ach of his argumts H r ga a o sidd approach to a argumt ad iitd us to writ a trm papr that compltly cotrastd his iws o Amrica imprialism I doig so, h ga us all th opportuity to do ral rsarch, proid ral idc, ad dlop a ral argumt rgardig U itrtio i othr coutris His tsts wr ry rasoabl bcaus thy also iitd us to writ our ow opiios, as log as thy wr rootd i facts Mor tha aythig, this class taught m th facts that I d to ow i ordr to udrstad th atur of U imprialism, ad th taught m th opiios of ladig political scitists o th issus Grat cours I lard a lot about U history from a prspcti I had't s bfor

Fall 0 (w Gral) Cours Ealuatios Fall 0 Uirsity of Miami Arts ad cics Cours: POL8 R - DEM COOLIDATIO Rsposibl Faculty: Rogr at Dpartmt: POL Rsposs / Expctd: / 5 (0%) Orall : 50 5 - Poit Lirt cal (UM) (0 rsposs) Graph Lgd at, Rogr E POL Faculty w Gral - Cours Itms This cours has b a aluabl larig xpric statd objctis of th cours ha b mt gradig mthods ar fair ad appropriat My ability to commuicat about this subjct has at, Rogr E --- ury Comparisos --- Rsposs Idiidual POL All A A D D Md D 0 0 0 0 50 5 5 0 0 0 0 0 50 5 5 0 0 0 0 0 50 5 5 0 0 0 0 0 50 5 5 0 R 5 87 5 88 5 88 5 87 R 9 9 9 9

5 b hacd I lard to thi critically about this subjct 0 0 0 0 50 5 5 0 88 9 Rsposs: [A] trogly Agr=5 [A] Agr= [] utral= [D] Disagr= [D] trogly Disagr= R: Prctil Ra (00 is bst, calculatd s prcis ) Graph Lgd at, Rogr E POL Faculty w Gral - Istructor Itms 7 8 istructor tachs ffctily istructor stimulats itrst i th cours istructor is accssibl ad approachabl at, Rogr E --- ury Comparisos --- Rsposs Idiidual POL All A A D D Md D 0 0 0 0 50 5 5 0 0 0 0 0 50 5 5 0 0 0 0 0 50 5 5 0 R 87 88 5 85 R 9 9 5 88

9 0 istructor trats studts with rspct My orall aluatio of th istructor is positi 0 0 0 0 50 5 5 0 0 0 0 0 50 5 5 0 8 5 8 85 88 Rsposs: [A] trogly Agr=5 [A] Agr= [] utral= [D] Disagr= [D] trogly Disagr= R: Prctil Ra (00 is bst, calculatd s prcis ) - Plas proid ay additioal suggstios ad commts Faculty: at, Rogr E Rspos Rat: 0000% ( of ) This was a awsom class ad I rally lard a lot Dr at is a grat profssor ad mad th class ry joyabl!