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University of Arkansas at Little Rock School of Social Work Course Outline Course: SOWK 8371 Pre-requisite: Social Work Methods of Research Title: Statistics for Social Work Semester Credits: 3 Instructors: Lloyd, Turturro, Tripathi. I. COURSE DESCRIPTION This course is an introduction to statistics and their use in analyzing data. In particular, it is an introduction and/or review of probability, inferential, and decision-making statistics. Emphasis will be placed on the application of critical thinking to inform and communicate professional judgments (advanced competency #3). The course covers basic statistics, including central tendencies (e.g., mean, mode), variability (e.g., standard deviation), data distributions (e.g., normal, nonparametric); bivariate and multivariate procedures. The course also involves critiquing empirical research articles in social work journals, building on knowledge of methodology learned in the first course of research and developing new knowledge of statistical methods, in order to engage in research-informed practice and practice-informed research as social work practitioners (advanced competency #6). The course is designed to teach students statistics applicable to practice, including how statistics are used in determining needs and making agencies more responsive to these needs. The values and ethics involved in the use of statistics are taught, with particular emphasis on regard for individual worth and dignity, as well as self-determination in research. Emphasis is also placed on use of statistics in regard to issues of diversity, social and economic justice, diversity, and quality of practice in general. At the concentration level, advanced practitioners, in working with individuals, families, groups, and organizations, will learn to apply statistical procedures in the evaluation of the effects of interventions and to modify strategies based on client outcome (advanced competency #10) II. COURSE OBJECTIVES 1) Students will demonstrate on exams and written assignments knowledge of probability theory, data distributions, various statistical procedures, and statistical inferences based on social work values and ethical issues (content for advanced competency #6 for ADP and MCP). 2) Students will demonstrate in written assignments that they understand how to apply assumptions of statistical procedures (content for advanced competency #6 for ADP and MCP). 3) Students will demonstrate on exams and in written assignments that they can choose the appropriate analyses for various issues, including the ability to assess results of evaluation and modify treatment goals as needed ( practice behavior ADP10.8 for advanced competency #10), the ability to critically analyze, monitor, and evaluate their own practice interventions (MCP practice behavior 10.10 for advanced competency #10), and the ability to critically analyze, monitor, and evaluate the effectiveness of social welfare programs (MCP practice behavior 10.11 for advanced competency 10). 4) Students will demonstrate in written assignments, critiques of professional research articles, and the final assessment that they can apply statistics to social work practice, and, Statistics 1 with client systems, evaluate, select, and use effective evidence-based intervention strategies in working with individuals, families, groups, and organizations (MCP practice behavior 3.1 for advanced competency #3 and ADP practice behavior 6.1 for advanced competency #6). 5) Students will demonstrate through critiques of professional research articles and in written assignments that they can apply statistics with regard to individual worth, dignity, needs, diversity, and self-determination (content for advanced competency #4). 6) Students will demonstrate through critiques of professional research articles and in written assignments that they can assess the overall methodology of research studies. They will assess in writing problem statements (conceptualization), sampling, design, measurement, procedures, analyses, interpretation, values, ethics, and generalization, with emphasis on making institutions more responsive to needs, social and economic justice, and populations at risk (content for advanced competency #5 & #6). III. UNITS AND CONTENTS – (Assigned readings are noted under the sessions in which they will be covered.) • Unit 1 (Session 1): Ethics and Value Issues in Statistical Analyses Introductions; Review of course syllabus and requirements; Addressing the regard for individual worth, dignity, and self-determination in research, and identifying needs for and responses to social work research. • Unit 2 (Session 2): Univariate Analysis Review of key terms and concepts; Coding and data preparation; Introduction to SPSS; Frequencies, mean, mode, median, variance, & standard deviation. In class exercises. Readings: Weinbach & Grinnell, chapters 1 – 3 • Unit 3 (Session 3): Normal Distribution Measures of dispersion; Central Limit Theorem, probability, Z scores. Readings: Weinbach & Grinnell, chapter 4 • Unit 4 (Sessions 4 & 5): Probability/Sampling/Hypothesis Testing/Estimation Theoretical sampling distributions, probability, and types of error. Developing and testing hypotheses resulting in the ability to assess results of an evaluation and modify treatment goals as needed (ADP practice behavior 10.8). Readings: Weinbach & Grinnell, chapters 5 & 6 Units 5 though 8 cover specific statistical analysis methods students will need in order to critically analyze, monitor, and evaluate their own practice interventions and the effectiveness of social welfare programs (MCP practice behaviors 10.10 and 10.11). • Unit 5 (Sessions 6, 7, & 8) T-tests and F-tests (ANOVA) One-tailed, two-tailed, equal and unequal variances, post hoc tests. In class exercises. Statistics 2 Readings: Weinbach & Grinnell, chapter 11 • Unit 6 (Sessions 9 & 10) Bivariate Categorical Procedures Cross tabs and Chi square; Selecting an appropriate statistical test. In class exercises. Readings: Weinbach & Grinnell, chapters 7 & 10 • Unit 7 (Sessions 11 & 12) Bivariate Correlation and Regression Scattergrams, regression lines, Pearson's rho, standardized and unstandardized regression (beta) coefficients. In class exercises. Reading for Unit 7: Weinbach & Grinnell, chapters 8 & 9 • Unit 8 (Session 13). Introduction to Multiple Regression Linear and hierarchical regression procedures. In class exercises. Readings: Weinbach & Grinnell, chapter 9 Unit 9 (Session 14). Group presentations (20 pts). Critiquing empirical research articles and utilizing evidence-based research to evaluate, select, and use effective intervention strategies in working with individuals, families, groups, and organizations (MCP practice behavior 3.1 and ADP practice behavior 6.1). Review for final assessment. Unit 10 (Session 15). Final assessment and article critique. METHODS OF INSTRUCTION The methods of instruction in this course include lecture, discussion among class members, assigned readings, and working on statistical problems. It is unwise to miss classes in this course due to the complexity of the subject. Examinations and assignments cover lecture and assigned reading. Lectures often go beyond the assigned reading in presenting details. Also, student notes are rarely useful to students who miss this class because of the type of material presented. Required Textbook: Weinbach, R.W., & Grinnell, R.M. (2010). Statistics for social workers (8th ed.). Boston, MA: Pearson Education, Inc. Highly Recommended Workbook: Blanksky, P.E., & Barber, J.G. (2006). SPSS for social workers: An introductory workbook. Boston, MA: Pearson Education, Inc. Contains disk of data to be used in class. A copy of the student version of SPSS has also been shrink-wrapped with texts and is available in the UALR bookstore. Recommended Textbook: Statistics 3 Lomand, T. C. (Ed.). (2007). Social science research: A cross section of journal articles for discussion and evaluation, (5th Ed). Los Angeles, CA: Pyrczak Publishing. METHODS OF EVALUATION Your grade in this course is based on in class assignments, homework assignments, a group assignment, a written critique of a professional article assigned in class, and class participation as described below: Five written homework assignments (20 points each; 40% of grade) on the following topics: 1) Univariate statistics (frequencies, mean, median and mode); 2) t-tests (comparison of means); 3) F-tests/ANOVA (comparison of two or more group means); 4) chi-square; and, 5) correlation and simple regression. In class and homework exercises (75 points; 30% of grade): Students are expected to attend class on-time, to complete the assigned readings and exercises, and to be able to participate in discussions about the course assignments and activities. Students will work in small groups and individually to complete a variety of exercises on interpreting basic statistics. Students must be present to receive credit for in-class assignments. Empirical journal articles will also occasionally be assigned to be read for class discussion or homework assignments. Group Presentation (25 points; 10% of grade): Students will work in groups of 3 or 4 to present a critique of an article of the group’s choice. Specific guidelines for this assignment will be provided in class. Final Assessment and Article Critique (50 points; 20% of grade): Students will complete a written assessment of knowledge of the materials covered in this course. The assessment will consist of a combination of objective measures and a series of short essay questions. A copy of the empirical research article to be critiqued will be provided in class the week before the assessment. Grading Scale 92 - 100 A 82 - 91 B 72 - 81 C 71 or below F (230 to 250 points) (205 to 229 points) (180 to 204 points) (179 points or lower) Expectations for written work: Assignments should be carefully proofed for spelling and grammar. Points will be deducted from assignments containing poor grammar and spelling. Text citations and reference lists must be in correct APA (5th ed.) format. All sentences should be carefully comprised of a student’s own words. Ideas, information, and concepts that originated with any other source, as well as quotations (which should be used sparingly) must be correctly cited in APA style. Material that is not correctly cited is considered to be plagiarized and provides grounds for academic discipline. Plagiarism is a grave violation of academic integrity. Students must know what constitutes plagiarism, and must not commit it, either knowingly or unknowingly. Plagiarism may constitute Statistics 4 grounds for failure on the assignment, failure in the course, and filing of an academic grievance against the student. NOTE: Failure to turn in any part of an assignment by the due date will result in an automatic deduction of 2 points for each day late, unless prior approval is obtained from the instructor. Assignments that are emailed (as attachments) will be counted as “received” at the time they appear in the instructor’s Inbox; however, only hard copies of assignments will be graded. Therefore, if an assignment is turned in via email, the student must also provide a hard copy to the professor as soon as possible. Class Attendance: Learning in a graduate professional program is based in large part on the interaction that occurs between instructor and students in the classroom. Regular attendance in class is an expected professional responsibility of the student. Absences of greater than 20 percent of the total number of classes can constitute grounds for failure in the course. This is a school policy. Students with disabilities: It is the policy and practice of the University of Arkansas at Little Rock to create inclusive learning environments. If there are aspects of the instruction or design of this course that result in barriers to your inclusion or to accurate assessment of achievement-such as time-limited exams, inaccessible web content, or the use of non-captioned videos--please notify the instructor as soon as possible. Students are also welcome to contact the Disability Resource Center, telephone 501-569-3143 (v/tty). For more information, visit the DRC website at www.ualr.edu/disability. Honor Code Statement: All students registered for all courses in the School of Social Work are expected to adhere to the rights, responsibilities, and behavior as articulated in the UALR Student Handbook and the NASW Code of Ethics. An essential feature of these codes is a commitment to maintaining intellectual integrity and academic honesty. This commitment insures that a student of the School of Social work will neither knowingly give nor receive any inappropriate assistance in academic work, thereby affirming personal honor and integrity. OTHER STATISTICS BOOKS Elementary Statistics Blalock, H. M. (1996). Social statistics (4th ed.). New York: McGraw Hill. (clear presentation of elementary statistics). Hays, W. L. (1998). Statistics (7th ed.). New York: Holt, Rinehart & Winston. (excellent reference text — a classic) Weinbach, R. W., & Grinnell, R. M. (2007). Statistics for social workers (7th ed.). White Plains, NY: Longman Publishers. Nonparametrics Conover, W. J. (1971). Practical nonparametric statistics. New York: Wiley. Regression and Other Multivariate Procedures Statistics 5 Bollen, K. A. (1989). Structural equations with latent variables. New York: John Wiley and Sons. Cohen, J., & Cohen, P. (1983). Applied multiple regression/correlation analysis for the behavioral sciences (2nd ed.). Hillsdale, NJ: Lawrence Erlbaum. (classic) Fienberg, S. E. (1991). The analysis of cross-classified categorical data. Cambridge, Mass.: MIT Press. Freund, R. J., & Wilson, W. J. (1998). Regression analysis: Statistical modeling of a response variable. New York: Academic Press. Statistics 6 In Class & Homework Assignments Homework 1 – Univariate Statistics (maximum grade 20 points). Instructions: Using a data file from the SPSS for Social Workers or other data you may have available (a secondary data set will be available in class), analyze the file using descriptive statistics and report your findings. Choose 6 (at least 2 need to be continuous) variables from the file and write a report describing the sample and their characteristics. For each variable, provide the operational definition (.5), and then describe the univariate statistical findings (2pts), using frequencies and/or measures of central tendency and dispersion where appropriate. For example, state “The average age of the sample was ---, with a standard deviation of …” or “There were __ males ( %) and __ females ( %).” A second section should discuss the findings (5pts)--e.g., are these data different than you would have expected, in line with what you have seen in the literature, etc. Homework 2 – T-tests (maximum grade 20 points) Instructions: Using the data set of your choice, analyze data using the t-test. Your grouping variable should be a dichotomous variable (e.g., male, female) and your dependent or test variables should be continuous (scales are best here—please look at raw data to be sure your data are continuous!). Perform three t-tests. Present the results of the t-test analysis and then provide your interpretation of the analyses and what they mean. Homework 3 – ANOVA (F-tests) (maximum grade 20 points) Instructions: Using the data set of your choice, run two ANOVA analyses. You will need a continuous dependent (test variable) and a grouping (categorical) variable of 3 or more groups. Present the results of the analyses and then provide your interpretation of these results in 2-3 pages. Homework 4 – Chi-Square (maximum grade 20 points) Instructions: Using the data set of your choice, run three Chi Square analyses. You will need to make sure you are using categorical variables. Write up your findings and discuss them in two or three type-written pages. Homework 5 – Correlation and Simple Regression (maximum grade 20 points) Instructions: From the data set of your choice identify at least 5 variables and correlate them with one another. Interpret results and discuss your findings in 2-3 pages. Statistics 7 In class and workbook exercises (75 points total; 30% of grade) Throughout semester as assigned in class. Students will work in small groups and individually to complete exercises on understanding and interpreting statistical analysis. This will involve question sets based on empirical journal articles, statistical tables from a variety of sources, and workbook exercises. Group Presentations (maximum grade 25 points; 10% of final grade) Instructions: Divide into groups and critique a research article. Divide the article into sections-introduction, methodology, results, and discussion--with a member of the group responsible for the critique of each section. Use the instructions below for guidance on how to critique an empirical research article. Prepare an informal presentation of the article critique for the class. Critical Evaluation of Literature for Group Presentation and Final Assessment The following areas of the research article should be addressed: Introduction: Goals of the research (clearly stated?) Research question and hypotheses (clearly presented?) Review of the literature (current? pertinent to research question?) Statement of the problem Methodology Type of study (appropriate? Survey/questionnaire/interview format?) Sample (how defined? Diversity?) Sampling method (probability or non-probability?) Measures (Are validity and reliability addressed?) Procedures (recruitment of sample; data collection) Results Appropriate statistical methods? Interpretation of statistics? Are the results worthy of note? Statistical significance/clinical significance? Discussion Are the results properly interpreted? Do the authors have appropriate statistical support for their conclusions? Fit with previous literature? Statistics 8