Parkview Elementary School Grade 3

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1 Parkview Elemetary School Grade Figure 1: Media of rd Grade TerraNova Test Results for Parkview Elemetary School by Subject Area (Stadardized Admiistratio) Total Score*.0 Mathematics.0 Readig Media * Total Score cosists of Readig, ad Mathematics Table 1: Distributios of Quartile Rages of rd Grade TerraNova Test Results for Parkview Elemetary School by Subject Area (Stadardized Admiistratio) Quartile Rage Readig Mathematics Total Score 1st Quarter 2 (.00%) 2 (.00%) (1.00%) 1 (.00%) 2 (.00%) (1.00%) 2d Quarter (2.00%) (2.00%) (2.00%) (2.00%) (2.00%) (2.00%) rd Quarter (2.00%) (2.00%) (0.00%) 11 (.00%) (2.00%) (0.00%) th Quarter (2.00%) (0.00%) (20.00%) (2.00%) 9 (.00%) (12.00%)

2 Table 2: Media of rd Grade TerraNova Test Results for Parkview Elemetary School by Subgroups Stadardized Admiistratio Oly Both Stadardized &Accommodatios Subject Areas Whole Group Aglo Hispaic Eglish Learer Free or Reduced Luch Program Special Educatio Studets Media Media Media Media Media Media Readig Mathematics Total Score

3 Table : Mea Number ad Percet of Items Aswered Correctly by Grade Studets i Parkview Elemetary School, ( = 0 studets) TerraNova Test Objectives Mea Percet Readig (2 items) 1.. Basic Uderstadig (1) - iitial uderstadig (), stated iformatio (), stated iformatio graphics (), sequece (2), vocabulary (1) Aalyze Text (1) - mai idea/theme (2), coclusios (), compare/cotrast (1), story 9.. elemets/character (), literary techiques (1) Evaluate ad Exted Meaig () - reality/fatasy (1), geeralize (1), critical assessmet (2),. 2.9 predict/hypothesize (1), exted/apply meaig (2) Idetify Readig Strategies () - vocabulary strategies (), self-moitor (1), make coectios (1).2. (2 items) 20.. Setece Structure () - subject/predicate (), complete/fragmet/ru-o (2), setece combiig.. (2) Writig Strategies () - topic setece (), relevace (), sequece (1) Editig Skills (1) - capitalizatio (), puctuatio (1), usage () Mathematics (0 items) 9.. Number ad Number Relatios (9) - coutig (1), read, recogize umbers (1), compare, order.. (1), fractioal part (1), place value (1), idetify use i real world (1), roudig, estimatio (2), umber sese (1) Computatio ad Numerical Estimatio (12) - computatio (), computatio i cotext (1) estimatio (), computatio with moey (2) Operatio Cocepts () - model problem situatio (1), operatio sese (1), operatio properties (2).1. Measuremet () - appropriate tool (1), estimate (1), time (1), caledar (1), temperature (1), use. 1. ruler (1) Geometry ad Spatial Sese () - solid figure (1), cogruece, similarity (1), symmetry (1),. 0.0 trasformatios (1), coect 2-D with -D figures (2) Data Aalysis, Statistics, ad Probability () - select data display (1) read bar graph (1), iterpret.2. data display (1), restructure data display (1), probability (1), compare data (1) Patters, Fuctios, Algebra () - missig elemet (1), umber patter (1), geometric patter (2) Problem Solvig ad Reasoig () - idetify missig/extra iformatio (1), evaluate solutio (1), model problem situatio, solutio (1) ( items) Iquiry () - data iterpretatio (), methods ad desig ().2. Physical () - eergy (), structure ad properties of matter (2) Life () - ecology (2), habitat ad adaptatio (), life cycles (1), taxoomy (1).0.0 Earth ad Space () - rock dyamics (1), solar system (), weather, atmosphere, ad.. climate (1), water dyamics (1) ad Techology () - desig of techology (2), sciece ad techology (1), use of. 9.0 techology (1) Persoal ad Perspectives i () - eviromet (2), health (1), resources (1)..0 ( items) 2.1. Geographic Perspectives (9) - the world i spatial terms (), places ad regios (2), huma systems.. (1), eviromet ad society () Historical ad Cultural Perspectives (9) - cultures, cultural diversity (1), people, places, evets.0. (), time, cotiuity, chage (), historical research (1) Civics ad Govermet Perspectives (9) - govermet processes ad structures (), the role of the.. citize () Ecoomic Perspectives () - productio, distributio, cosumptio (). 0.0

4 Parkview Elemetary School Grade Figure 2: Media of th Grade TerraNova Test Results for Parkview Elemetary School by Subject Area (Stadardized Admiistratio) Total Score*.0 Mathematics Readig Media * Total Score cosists of Readig, ad Mathematics Table : Distributios of Quartile Rages of th Grade TerraNova Test Results for Parkview Elemetary School by Subject Area (Stadardized Admiistratio) Quartile Rage Readig Mathematics Total Score 1st Quarter 1 (.00%) (20.00%) (2.00%) (1.00%) (2.00%) (2.00%) 2d Quarter (2.00%) (2.00%) (20.00%) (2.00%) 9 (.00%) 12 (.00%) rd Quarter 1 (2.00%) (2.00%) 9 (.00%) 9 (.00%) (2.00%) (1.00%) th Quarter (1.00%) (20.00%) (1.00%) (1.00%) (1.00%) (12.00%)

5 Table : Media of th Grade TerraNova Test Results for Parkview Elemetary School by Subgroups Stadardized Admiistratio Oly Both Stadardized &Accommodatios Subject Areas Whole Group Aglo Hispaic Eglish Learer Free or Reduced Luch Program Special Educatio Studets Media Media Media Media Media Media Readig Mathematics Total Score

6 Table : Mea Number ad Percet of Items Aswered Correctly by Grade Studets i Parkview Elemetary School, ( = 29 studets) TerraNova Test Objectives Mea Percet Readig ( items) Basic Uderstadig (1) - iitial uderstadig (), stated iformatio (), sequece (2), vocabulary () 9.2. Aalyze Text (1) - mai idea/theme (), coclusios (), story elemets/character (), story elemets/plot 9.. (1), supportig evidece (1), literary techiques (1) Evaluate ad Exted Meaig () - fact opiio (2), author purpose (), author poit of view/bias (1),.9 1. critical assessmet (1), predict/hypothesize (1), Idetify Readig Strategies (9) - summarize (2), vocabulary strategies (), self-moitor (1), make. 2.2 coectios (1), sythesize across texts (1) ( items) Setece Structure (12) - complete/fragmet/ru-o (), setece combiig (), misplaced modifier (2). 2. Writig Strategies (12) - topic setece (2), relevace (), supportig seteces (), iformatio sources..0 (1) Editig Skills () - usage ()..0 Mathematics ( items).2. Number ad Number Relatios (11) - read, recogize umbers (1), compare, order (2), place value (2),.1. equivalet forms (1), ratio, proportio (1), expaded otatio (1), umber lie (1), roudig, estimatio (1), factors, multiples, divisibility (1) Computatio ad Numerical Estimatio (12) - computatio (), computatio i cotext (1) estimatio.9.2 (), computatio with moey (2), determie reasoableess (1), estimatio with moey (1) Operatio Cocepts () - operatio sese (), operatio properties (1).9.0 Measuremet (9) - appropriate uit (1), time (1), temperature (1), perimeter (1), area (1), rate (1), covert.1. measuremet uits (1), use ruler (2) Geometry ad Spatial Sese () - agles (1), coordiate geometry (1), cogruece, similarity (1), 1.9. symmetry (1), Data Aalysis, Statistics, ad Probability () - read bar graph (1), read circle graph (1), read table, chart,. 2. diagram (1), iterpret data display (1), evaluate coclusios draw form data (2), probability (1), compare data (1) Patters, Fuctios, Algebra () - missig elemet (1), umber patter (1), geometric patter (1), 1.9. expressio (1), rules (1) Problem Solvig ad Reasoig () - idetify missig/extra iformatio (1), evaluate solutio (1), 1.. proportioal reasoig (1) (0 items) Iquiry () - data iterpretatio (2), methods ad desig (). 1. Physical () - eergy (), structure ad properties of matter (2).1. Life (9) - ecology (2), habitat ad adaptatio (), life cycles (1), taxoomy ()..9 Earth ad Space () - rock dyamics (2), solar system (1), weather, atmosphere, ad climate (2),..1 water dyamics (2) ad Techology () - desig of techology (), sciece ad techology (1), use of techology (1).2.0 Persoal ad Perspectives i () - health (1), resources (2), use of techology (1) (0 items) 22.. Geographic Perspectives (1) - the world i spatial terms (), places ad regios (), huma systems (),.2. eviromet ad society (1) Historical ad Cultural Perspectives (9) - people, places, evets (), time, cotiuity, chage (),.9. historical research () Civics ad Govermet Perspectives () - democratic values ad priciples (1), govermet processes. 2.9 ad structures (), the role of the citize (2) Ecoomic Perspectives (9) - productio, distributio, cosumptio (), ecoomic istitutios ad systems (2)..

7 Parkview Elemetary School Grade Figure : Media of th Grade TerraNova Test Results for Parkview Elemetary School by Subject Area (Stadardized Admiistratio). 0.0 Total Score* Mathematics Readig Media * Total Score cosists of Readig, ad Mathematics Table : Distributios of Quartile Rages of th Grade TerraNova Test Results for Parkview Elemetary School by Subject Area (Stadardized Admiistratio) Quartile Rage Readig Mathematics Total Score 1st Quarter (. %) (1.9 %) (. %) 2 (.9 %) (2.9 %) (20.9 %) 2d Quarter 11 (.9 %) (2.9 %) (2.1 %) (2.9 %) 1 (.2 %) (. %) rd Quarter (. %) 1 (. %) 1 (.2 %) 1 (1.2 %) (. %) (2.9 %) th Quarter (1.2 %) (1.9 %) (1.2 %) (1.9 %) (1.9 %) (1.2 %)

8 Table : Media of th Grade TerraNova Test Results for Parkview Elemetary School by Subgroups Stadardized Admiistratio Oly Both Stadardized &Accommodatios Subject Areas Whole Group Aglo Hispaic Eglish Learer Free or Reduced Luch Program Special Educatio Studets Media Media Media Media Media Media Readig Mathematics Total Score

9 Table 9: Mea Number ad Percet of Items Aswered Correctly by Grade Studets i Parkview Elemetary School, ( = studets) TerraNova Test Objectives Mea Percet Readig (2 items) Basic Uderstadig (12) - iitial uderstadig (), stated iformatio (), vocabulary () Aalyze Text (1) - mai idea/theme (1), coclusios (2), story elemets/character (), story elemets/..2 settig (1), literary techiques (), ofictio elemets (1) Evaluate ad Exted Meaig () - geeralize (), author purpose (1), author poit of view (1), critical.2.0 assessmet (1), predict/hypothesize (2), Idetify Readig Strategies (9) - summarize (2), apply gere criteria (1), vocabulary strategies (1),.0. graphic strategies (1), self-moitor (2), make coectios (1), utilize structure (1) ( items) Setece Structure (9) - complete/fragmet/ru-o (), setece combiig (). 2.2 Writig Strategies (1) - topic setece (2), relevace (), sequece (1), supportig seteces (),..0 coective/trasitioal words (1), iformatio sources (1) Editig Skills (1) - usage (1). 1. Mathematics ( items)..9 Number ad Number Relatios () - read, recogize umbers (1), fractioal part (), equivalet forms..0 (1), ratio, proportio (1), percet (1), expaded otatio (1), factors, multiples, divisibility (2) Computatio ad Numerical Estimatio (1) - computatio (), computatio i cotext (2) estimatio 9.. (), computatio with moey (), determie reasoableess (1) Operatio Cocepts () - operatio sese (2), operatio properties (1) 1.. Measuremet () - estimate (1), area (2), volume, capacity (1), scale drawig, map, model (1), covert. 1. measuremet uits (1), use ruler (1) Geometry ad Spatial Sese () - plae figure (1), agles (2), coordiate geometry (1), visualizatio,. 1. spatial reasoig (1), coect 2-D with -D figures (1) Data Aalysis, Statistics, ad Probability () - read bar graph (1), read lie graph (1), iterpret data.. display (2), make ifereces form data (1), probability (1), use data to solve problems (1) Patters, Fuctios, Algebra () - missig elemet (1), rules (2), iequality (2) Problem Solvig ad Reasoig () - develop, explai strategy (1), solve o-routie problem (1), 2..0 proportioal reasoig () (0 items) 22.. Iquiry (9) - data iterpretatio (), methods ad desig ().. Physical () - eergy (2), motios ad forces (1), structure ad properties of matter ().2. Life (9) - cells ad eergy (1), ecology (2), habitat ad adaptatio (1), life cycles (1), orga.9. systems (2), taxoomy (2) Earth ad Space () - Earth-moo systems (1), rock dyamics (2), solar system (2), weather,. 2.9 atmosphere, ad climate (1), water dyamics (1) ad Techology () - careers (1), desig of techology (1), use of techology (2) Persoal ad Perspectives i () - eviromet (), health (1) 1..0 (0 items) Geographic Perspectives () - the world i spatial terms (), places ad regios ()..0 Historical ad Cultural Perspectives (11) - cultures, cultural diversity (), people, places, evets (1),. 2. time, cotiuity, chage () Civics ad Govermet Perspectives () - purposes of govermet (2), democratic values ad priciples (), govermet processes ad structures (1), the role of the citize () Ecoomic Perspectives (9) - productio, distributio, cosumptio (), ecoomic istitutios ad systems (). 1.1

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