Literature Index

Displaying 1121 - 1130 of 3326
  • Author(s):
    Holmes, P.
    Editors:
    Goodall, G.
    Year:
    2003
    Abstract:
    Summary This article suggests how to move from the primary school notion of the average being 'fair shares for all' to the secondary school idea of the mean being a 'balancing point'.
  • Author(s):
    Stangl, D.
    Editors:
    Phillips, B.
    Year:
    2002
    Abstract:
    In their first and often only statistics course, health-care professionals are taught Bayes' theorem in the context of diagnostic testing. They learn the concepts of sensitivity/specificity and predictive value positive/negative and how Bayes' theorem can assist in diagnostic decision-making. Then the class moves on often spending weeks on tests of significance. This paper will argue for changing this practice, and instead focusing such courses on statistics for decision-making beyond diagnostic testing. It will argue that such changes will make our health-care professionals better consumers of statistical information and better decision makers.
  • Author(s):
    Jackie Carter, Mark Brown, and Kathryn Simpson
    Year:
    2017
    Abstract:
    In British social science degree programmes, methods courses have a bad press, and statistics courses in particular are not well-liked by most students. A nationally coordinated, strategic investment in quantitative skills training, Q-Step, is an attempt to address the issues affecting the shortage of quantitatively trained humanities and social science graduates. Pedagogic approaches to teaching statistics and data analysis to social science students are starting to indicate positive outcomes. This paper contributes to these debates by focusing on the perspective of the student experience in different learning environments: first, we explain the approach taken at the University of Manchester to teaching a core quantitative research methods module for second-year sociology students; and second, we introduce case studies of three undergraduates who took that training and went on to work as interns with social research organisations, as part of a Manchester Q-Step Centre initiative to take learning from the classroom into the workplace.
  • Author(s):
    Green, D. R.
    Year:
    1983
    Abstract:
    During the three years 1978-1981 a research project based at Loughborough in the East Midlands region of England investigated probability concepts of 11-16 year olds. A test of twenty-six questions was administered to a stratified sample of 2930 pupils from comprehensive mixed schools. These pupils were also given a test of general reasoning ability. the project's findings have been summarized in a 40 page booklet which includes all the test questions and analyses of responses. Nearly all test items, displayed an improvement in performance with increasing chronological age and with intellectual ability. Items requiring only the comparison of two direct quantities were well done by all ages tested (11 to 16 years), but those requiring comparison of two ratios were very poorly done, especially below the age of 15 years. This contrast is exemplified by the results for the two items. In this article we shall look at the development and test results of just one of the questions used.
    Location:
  • Author(s):
    Lutong Zhou and W. John Braun
    Year:
    2010
    Abstract:
    The increasing popularity of R is leading to an increase in its use in undergraduate courses at universities (R Development Core Team 2008). One of the strengths of R is the flexible graphics provided in its base package. However, students often run up against its limitations, or they find the amount of effort to create an interesting plot may be excessive. The grid package (Murrell 2005) has a wealth of graphical tools which are more accessible to such R users than many people may realize. The purpose of this paper is to highlight the main features of this package and to provide some examples to illustrate how students can have fun with this different form of plotting and to see that it can be used directly in the visualization of data.
  • Author(s):
    Lawrence M. Lesser and Dennis K. Pearl
    Year:
    2008
    Abstract:
    This paper presents an overview of modalities that can be used to make learning statistics fun. Representative examples or points of departure in the literature are provided for no less than 20 modalities. Empirical evidence of effectiveness specific to statistics education is starting to emerge for some of these modalities - namely, humor, song, and cartoons. To reinforce their effectiveness as an intentional teaching tool, the authors offer practical implementation tips.
  • Author(s):
    Hollowell, K. A., & Duch, B. J.
    Year:
    1991
    Abstract:
    An experimental college level course, Functions and Statistics with Computers, was designed using the textbook Functions Statistics and Trigonometry with Computers developed by the University of Chicago School Mathematics Project. A case study of this course and its influence on a more traditional course is described. Students in the experimental course were compared with students in the traditional course based on attitude toward mathematics and achievement in mathematics. Experimental course students showed a significant gain in confidence about learning and performing well in mathematics. Final grade distributions for the experimental and traditional courses were similar, although experimental course students entered the course with somewhat weaker mathematical backgrounds. On a course evaluation document, students in the experimental course reported that computer laboratory activities helped them understand course material. Based on an analysis of the attitude, achievement and course evaluation data, the traditional course was modified to deemphasize algebraic manipulation, emphasize modeling and applications and to include computer laboratory activities.
  • Author(s):
    Ishikawa, T., & Hida, T.
    Editors:
    Vere-Jones, D., Carlyle, S., & Dawkins, B. P.
    Year:
    1991
    Abstract:
    Statistics has rapidly developed with the help of modern probability theory and with the effective use of computers. Such an accomplishment marks a new era for statistics education. It is now time to think of how to teach statistics, taking into account both the subjects to be chosen and the actual method of education. At present we can see many places where mathematical statistics is efficiently used and where people are requested to learn statistics, not only in academic institutions, but also in daily life. The remarkable fact is that, compared to the past, the need for statistics has changed, and its appearances in actual subject fields have become highly modernised. We are therefore led to discuss now to teach statistics and to think of what topics should be taught. At this juncture, we are going to look over the present stage of practical use of statistics and to propose some ideas of statistics education by focussing our vision on high school level mathematics.
  • Author(s):
    Milo Schield
    Year:
    2017
    Abstract:
    In the 2005 Guidelines for Assessment and Instruction in Statistics Education (GAISE), statistical literacy featured as a primary goal. The 2016 revision eliminated statistical literacy as a stated goal. Although this looks like a rejection, this paper argues that by including multivariate thinking and – more importantly – confounding as recommended topics in introductory statistics, statistical literacy has in fact been accepted if not promoted. The adoption of the new guidelines will greatly advance students’ statistical literacy: the ability to read and interpret statistics relevant to consumers and decision makers.
  • Author(s):
    Chris Franklin & Jessica Utts
    Year:
    2006
    Abstract:
    In 2005 the American Statistical Association endorsed the recommendations of a report written by leading statistics educators, called "Guidelines for Assessment and Instruction in Statistics Education" (GAISE). The report had two parts - one for K-12 and one for the college introductory statistics course. In this webinar, two members of the report-writing team will review the recommendations in the report, and provide suggestions for how to begin to implement them.

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The CAUSE Research Group is supported in part by a member initiative grant from the American Statistical Association’s Section on Statistics and Data Science Education