Knowledge

Data based decision making

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correlation between collected data and student outcomes they decided to include transportation data into the research. As result, educators found that students who had longer way from houses to the school were struggling the most. According to the finding administrators modified transportation arrangements to make the way shorter for students as well as installing Internet access in buses so students could concentrate on doing homework. DDDM in this particular case helped to improve student results.
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Educational data systems involve technologies and evidence to explain districts', schools', classrooms' tendencies. DDDM is used to explain complexity of education, support collaboration, creating new designs of teaching. Student performance is central in DDDM. NCLB provided boost in the collection and use of educational information.
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Thorough demographic data explains the structure of school, system, and the leadership. In education demographic data to the next items: number of students in the school, number of students with special needs, number of English learners, age or grade of students in cohorts, socio-economical status of students, attendance rates,
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educational process, and answers the question, "What are our processes?". School processes produce school and class results. There are 4 major types of school processes: 1. instructional processes, 2. Organizational processes, 3. Administrative processes, 4. Continuous school improvement processes.
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3. Student learning data answers two questions: How are our students doing? and Where are we now? Student learning data requires information from all subject areas, disaggregated by demographic groups, by teachers, by grade level, by cohorts over time, and individual student growth. This type of data
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by educational organizations by requiring schools and districts to analyze additional components of data, as well as pressing them to increase student test scores. Information makes schools accountable for year by year improvement various student groups. DDDM helps to recognize the problem and who is
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2. Perception data tells us what students, staff, and parents think about a school and answers the question, "How do we do business?". School culture, climate, and organizational processes are assessed by perception data. Perception data includes values, beliefs, perceptions, opinions, observations.
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require to use data and DDDM in past decades to run educational organizations. Hard evidence and the use of data are emphasized to inform decisions. The data in educational organizations means more than analyzing test scores. Educational data movement is considered as a sociotechnical revolution.
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4. School processes refer to actions of administrators and teachers to achieve the purpose of the school. Teachers' habits, customs, knowledge, and professionalism are the things leading towards progress inside organizations. School processes data tell us what works, what doesn't, the results of
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in order to improve outcomes. Student learning data can clearly state the effectiveness of a single educator or the entire school. SLD can be gathered by looking at diagnostic tests, formative assessments, performance assessments, standardized tests, non-referenced tests, summative assessments,
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1. Demographics data in educational organizations answers the question, "Who are we?". Demographics show the current context of the school and shows the trends. Trends help to predict and plan for the future, along with seeing measures where leaders work towards continuous school improvement.
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refers to educator’s ongoing process of collecting and analyzing different types of data, including demographic, student achievement test, satisfaction, process data to guide decisions towards improvement of educational process. DDDM becomes more important in education since federal and state
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For example, in a rural area educators tried to understand why a particular subset of students were struggling academically. Data analysts collected students performance data, medical records, behavioral data, attendance, and other data less qualitative information. After not finding direct
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The purpose of DDDM is to help educators, schools, districts, and states to use information they have to actionable knowledge to improve student outcomes. DDDM requires high-quality data and possibly technical assistance; otherwise, data can misinform and lead to unreliable inferences.
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Effective schools showing outstanding gains in academic measures report that the wide and wise use of data has a positive effect on student achievement and progress. DDDM is suggested to be a main tool to move educational organizations towards school improvement and
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techniques can improve teaching and learning in schools. Test scores are used by many principals to identify “bubble kids”, students whose results are just below proficiency level in reading and mathematics.
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Perception data is collected mostly questionnaires. Perception data can be differentiate by two groups: 1- staff, 2 - students and parents. Staff are being asked if any changes in instruction or
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helps to address additional help to students who are not proficient, deepening into what they know and what they don't know to become proficient. Student learning data connects with
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need to take place. Students and parents are questioned to report their interests, how difficult material is to learn, how are they taught and treated.
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Wayman, Jeffrey (2005). "Involving teachers in data driven decision making:Using computer data systems to support teacher inquiry and reflection".
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There are 4 major types of data used in education: demographics data, perceptions data, student learning data, and school processes data.
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Reeves, Patricia L.; Burt, Walter L. (2006). "Challenges in Data-based Decision-making: Voices from Principals".
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Spillane, James P. (2012). "Data in Practice: Conceptualizing the Data-Based Decision-Making Phenomena".
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Mandinach, Ellen (April 23, 2012). "A perfect time for data use".
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opens broader opportunities and incentives in using
288:. New york: Teachers college press. pp. 1–20. 311:Journal of Education for Students Placed at Risk 261:Data analysis for continuous school improvement 8: 254: 252: 250: 248: 246: 341: 66:Learn how and when to remove this message 29:This article includes a list of general 286:Assessing the educational data movement 263:. New York: Routledge. pp. 27–80. 204: 86:test-based accountability policies. 7: 210: 208: 158:teacher-assigned tests, and others. 35:it lacks sufficient corresponding 14: 171:The U.S. Department of Education 166:Use in educational organizations 20: 175:Institute of Education Sciences 113:Types of data used in education 1: 330:American Journal of Education 259:Bernhardt, Victoria (2013). 229:10.1080/00461520.2012.667064 83:data driven decision making 427: 79:Data based decision making 411:Standards-based education 95:affected by the problem. 217:Educational Psychologist 88:No Child Left Behind Act 50:more precise citations. 284:Piety, Philip (2013). 193:educator effectiveness 377:Educational Horizons 322:General references 186:Effects on schools 295:978-0-8077-5426-9 270:978-1-59667-252-9 131:religious beliefs 76: 75: 68: 418: 392: 371: 345: 315: 314: 306: 300: 299: 281: 275: 274: 256: 241: 240: 212: 71: 64: 60: 57: 51: 46:this article by 37:inline citations 24: 23: 16: 426: 425: 421: 420: 419: 417: 416: 415: 406:Data management 396: 395: 374: 343:10.1.1.458.5153 327: 324: 319: 318: 308: 307: 303: 296: 283: 282: 278: 271: 258: 257: 244: 214: 213: 206: 201: 188: 168: 115: 106:Data management 101: 72: 61: 55: 52: 42:Please help to 41: 25: 21: 12: 11: 5: 424: 422: 414: 413: 408: 398: 397: 394: 393: 372: 360:10.1086/663283 352:10.1086/663283 336:(2): 113–141. 323: 320: 317: 316: 301: 294: 276: 269: 242: 203: 202: 200: 197: 187: 184: 167: 164: 114: 111: 100: 97: 74: 73: 28: 26: 19: 13: 10: 9: 6: 4: 3: 2: 423: 412: 409: 407: 404: 403: 401: 390: 386: 382: 378: 373: 369: 365: 361: 357: 353: 349: 344: 339: 335: 331: 326: 325: 321: 312: 305: 302: 297: 291: 287: 280: 277: 272: 266: 262: 255: 253: 251: 249: 247: 243: 238: 234: 230: 226: 222: 218: 211: 209: 205: 198: 196: 194: 185: 183: 179: 176: 172: 165: 163: 159: 156: 152: 148: 142: 140: 134: 132: 128: 124: 118: 112: 110: 107: 98: 96: 93: 89: 84: 80: 70: 67: 59: 49: 45: 39: 38: 32: 27: 18: 17: 383:(1): 65–71. 380: 376: 333: 329: 310: 304: 285: 279: 260: 220: 216: 189: 180: 169: 160: 143: 135: 119: 116: 102: 82: 78: 77: 62: 53: 34: 151:instruction 48:introducing 400:Categories 313:: 296–300. 155:assessment 147:curriculum 139:curriculum 31:references 368:145061403 338:CiteSeerX 237:145120528 123:ethnicity 389:42925967 173:and the 56:May 2015 99:Purpose 44:improve 387:  366:  358:  340:  292:  267:  235:  153:, and 33:, but 385:JSTOR 364:S2CID 356:JSTOR 233:S2CID 223:: 2. 199:Notes 290:ISBN 265:ISBN 127:race 92:data 348:doi 334:118 225:doi 81:or 402:: 381:85 379:. 362:. 354:. 346:. 332:. 245:^ 231:. 221:47 219:. 207:^ 149:, 391:. 370:. 350:: 298:. 273:. 239:. 227:: 129:/ 125:/ 69:) 63:( 58:) 54:( 40:.

Index

references
inline citations
improve
introducing
Learn how and when to remove this message
No Child Left Behind Act
data
Data management
ethnicity
race
religious beliefs
curriculum
curriculum
instruction
assessment
The U.S. Department of Education
Institute of Education Sciences
educator effectiveness


doi
10.1080/00461520.2012.667064
S2CID
145120528





ISBN

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