Page 1 |
Save page Remove page | Previous | 1 of 207 | Next |
|
small (250x250 max)
medium (500x500 max)
large ( > 500x500)
Full Resolution
All (PDF)
|
This page
All
Subset |
DISTRICT LEVEL PRACTICES IN
DATA DRIVEN DECISION MAKING
by
Hasmik J. Danielian
______________________________________________________
A Dissertation Presented to the
FACULTY OF THE ROSSIER SCHOOL OF EDUCATION
UNIVERSITY OF SOUTHERN CALIFORNIA
In Partial Fulfillment of the
Requirements for the Degree
DOCTOR OF EDUCATION
May 2009
Copyright 2009 Hasmik J. Danielian
Object Description
| Title | District level practices in data driven decision making |
| Author | Danielian, Hasmik J. |
| Author email | hdanieli@usc.edu; nyree.danielian@gmail.com |
| Degree | Doctor of Education |
| Document type | Dissertation |
| Degree program | Education (Leadership) |
| School | Rossier School of Education |
| Date defended/completed | 2009-02-03 |
| Date submitted | 2009 |
| Restricted until | Unrestricted |
| Date published | 2009-03-05 |
| Advisor (committee chair) | Datnow, Amanda |
| Advisor (committee member) |
Brewer, Dominic Vargas, Edward Lee |
| Abstract | Forty years after the Elementary and Secondary Education Act, numerous school reforms have attempted to tackle the same problems initially addressed by the ESEA. Most recently, The No Child Left Behind (NCLB) Act of 2001, the latest in the series of educational reform initiatives, distinguishes itself by its unparalleled focus on accountability.; As mandated by NCLB, policy makers had hoped that publishing disaggregated data on standardized test scores would result in increased awareness for educators of existing achievement gaps -- in short, create a "culture of inquiry" where the data creates an atmosphere that promotes awareness. However, what this chain of assumptions failed to take into account was the challenges associated with attempting to implement increased student achievement for all students through data-driven decision making (DDDM). The extant research on DDDM suggests that conditions at the district level (as well as at the school and state levels) clearly impact the nature and extent of DDDM that is put in place at a given district.; This qualitative research study adds to the field literature by developing an increased understanding of DDDM by district leaders in 4 districts. The study focused specifically on superintendents, assistant superintendents, and assessment and /or technology office leaders known for their effectiveness in the use of data-driven decision making to improve and inform instruction that results in increased student achievement.; Each of the primary sections in this study, examine in careful detail the six, key themes that were generated by the qualitative data; these six themes are: the No Child Left Behind Act and the impact of this law on data use, the Processes of DDDM, the Types of data utilized, the Culture of data use, the District Structures/Practices with regards to data, and the Challenges to DDDM in each district.; Consequently, this study will be useful to district leaders who intend to utilize data-driven decision making to ensure school/district improvement. For districts that do not currently use data-driven decision making, it is hoped that the findings will be both inspirational as well as material in assisting districts to form a theory of action. |
| Keyword | district leaders' role; culture of data use; types of data; district structures/practices; cycle of continuous improvement; aligment; focus; coherence; consistency; theory of action; challenges to data driven decision making; facilitators; multiple measures; outside providers; staying the course; process of data driven decision making; professiional development; transparency with data; best practices; case study; high expectations; leadership; centralized vs decentralized; data warehousing; process and context of data driven decision making; NCLB |
| Coverage date | after 2001 |
| Language | English |
| Part of collection | University of Southern California dissertations and theses |
| Publisher (of the original version) | University of Southern California |
| Place of publication (of the original version) | Los Angeles, California |
| Publisher (of the digital version) | University of Southern California. Libraries |
| Provenance | Electronically uploaded by the author |
| Type | texts |
| Legacy record ID | usctheses-m2001 |
| Rights | Danielian, Hasmik J. |
| Repository name | Libraries, University of Southern California |
| Repository address | Los Angeles, California |
| Repository email | http://www.usc.edu/isd/libraries/services/ask_a_librarian/email/ |
| Filename | etd-Danielian-2669 |
| Archival file | uscthesesreloadpub_Volume48/etd-Danielian-2669.pdf |
Description
| Title | Page 1 |
| Full text | DISTRICT LEVEL PRACTICES IN DATA DRIVEN DECISION MAKING by Hasmik J. Danielian ______________________________________________________ A Dissertation Presented to the FACULTY OF THE ROSSIER SCHOOL OF EDUCATION UNIVERSITY OF SOUTHERN CALIFORNIA In Partial Fulfillment of the Requirements for the Degree DOCTOR OF EDUCATION May 2009 Copyright 2009 Hasmik J. Danielian |
Comments
Post a Comment for Page 1

