Literature Index

Displaying 2181 - 2190 of 3326
  • Author(s):
    Ben-Zvi, D. & Friedlander, A.
    Editors:
    Garfield, J. B. & Burrill, G.
    Year:
    1997
    Abstract:
    Traditional Israeli junior high school statistics usually emphasizes computation and neglects the development of a broader integrated view of statistical problem solving. Students are required to memorize isolated facts and procedures. Statistical concepts rarely originate from real problems, the learning environment is rigid, and, in general, there is just one correct answer to each problem. Even when the problems are real, the activities tend to be "unreal" and relatively superficial. The only view of statistics students can get from such a curriculum is of a collection of isolated, meaningless techniques, which is relatively irrelevant, dull, and routine. Many teachers ignore the compulsory statistics unit. The teachers maintain that there is no time, or that there is pressure to include "more important" mathematic topics, as well as lack of interest and knowledge. We have developed a statistics curriculum (Ben-Zvi & Friedlander, 1997) in an attempt to respond to the need for more meaningful learning of statistics and have incorporated the use of available technology to assist in this endeavor.
  • Author(s):
    Ben-Zvi, D., & Friedlander, A.
    Editors:
    J. Garfield & G. Burrill
    Year:
    1997
  • Author(s):
    Wild, C. J., Pfannkuch, M.
    Year:
    1999
    Abstract:
    Advancing technology is inexorably shifting the demand for statisticians from being operators of mechanical procedures to being thinkers. Coupled with this is a perceived lack of development of statistical thinking in students. This chapter discusses the thought processes involved in statistical problem solving in the broad sense from problem formulation to conclusions. It draws on the literature and in-depth interviews, with statistics students and practising statisticians, which aimed at uncovering their statistical reasoning processes. From these interviews from all four exploratory studies, a four dimensional statistical thinking framework for empirical enquiry has been identified. It includes an investigative cycle, an interrogative cycle, types of thinking and dispositions. There are a number of associated elements such as techniques for thinking and constraints on thinking. The characterisation of these processes through models, that can be used as a basis for thinking tools or frameworks for the enhancement of problem-solving, is begun in this chapter. Tools of this form would complement the mathematical models used in analysis. The tools would also address areas of the process of statistical investigation that the mathematical models do not, particularly in areas requiring the synthesis of problem-contextual and statistical understanding. The central element of published definitions of statistical thinking is<br>"variation." The role of variation in the statistical conception of real-world problems, including the search for causes, is further discussed.
  • Author(s):
    Schuyten, G.
    Editors:
    Vere-Jones, D., Carlyle, S., &amp; Dawkins, B. P.
    Year:
    1991
    Abstract:
    Knowledge of statistics is important in the curricula of students in psychology and education. Reasons are twofold. First, in other courses they deal with theories and research studies which rely on statistical analysis. Second, they have to undertake research in which they have to handle, analyse and interpret data. Statistics is for these students a tool, a means of communicating knowledge which is needed to read and evaluate surveys, experiments, and other studies dealing with substantive problems in the field of psychology and education; and is also used in doing research while planning a study, analysing the data, and interpreting the results. Both aspects rely on a knowledge base of statistics and of methodology; the second also requires competence in problem-solving skills.
  • Author(s):
    Pfannkuch, M. &amp; Wild, C.
    Editors:
    Phillips, B.
    Year:
    2002
    Abstract:
    Models for statistical modes of thinking and problem solving have been developed, and continue to be developed, by teachers and researchers. The purpose of these models range from helping to understand how individual students solve problems to developing instruments for educational research. These models have arisen with particular perspectives and primary uses in mind. In this paper we compare and contrast some statistical thinking models originating from statistics education research (Ben-Zvi &amp; Friedlander, 1997; Jones, Thornton, Langrall, Mooney, Perry &amp; Putt, 2000) with some models arising from the discipline of statistics and sub-disciplines (Wild &amp; Pfannkuch, 1999; Hoerl &amp; Snee, 2001). Drawing upon models from both these areas we discuss issues that include their development and use, how they might illuminate one another and what we can learn from them.
  • Author(s):
    Pfannkuch, M., Wild, C.
    Year:
    2003
    Abstract:
    Wild &amp; Pfannkuch (1999) stated that statistical thinking comprises four dimensions: an investigative cycle, types of thinking, an interrogative cycle, and dispositions. The four dimensions contain generic and specific statistical thinking habits and are operative within the thinker simultaneously. The five types of thinking that were identified as fundamental elements in statistical thinking were: recognition of the need for data, transnumeration, consideration of statistical thinking models, and integrating the statistical with the contextual. When considering the framework and these types of thinking many questions arise for learning, teaching, and the curriculum such as: How are these types of thinking manifested in beginning students? Are there particular ways of teaching that can elicit such thinking? How does the teacher draw students' attention to notice and to attend to this thinking? How is such a habit of thinking communicated in a curriculum document? The purpose of the framwork was to characterize statistical thinking rather than define students' growth in statistical thinking and was not primarily intended to address teaching.
  • Author(s):
    Pfannkuch, M., Rubick, A., Yoon, C.
    Year:
    2002
    Abstract:
    Identifies and describes students' variation-type thinking observed in a small sample of middle-school students as they conducted a statistical investigation.
  • Author(s):
    Pfannkuch, M.
    Year:
    1997
    Abstract:
    This paper discusses some characteristic ways of reasoning within the discipline of statistics from the perspective of someone who is both a practising statstician and teaching statistician. It is conjectured that recognition of variation and critically evaluating and distinguishing the types of variation are essential components in the statistical reasoning process. Statistical thinking appears to be the interaction between the real situation and the stiatistical model. The role of variation in staistical thinking and the implications for teaching are also discussed.
  • Author(s):
    Campbell, M. J.
    Editors:
    Phillips, B.
    Year:
    2002
    Abstract:
    This paper reviews the current status of teaching both undergraduate and post-graduate doctors in the UK. An example is given of the way both areas are covered at the University of Sheffield UK. The use of topical subjects to interest students is described. The future of teaching medical statistics, the way it may be delivered and its links with Evidence Based Medicine are discussed.
  • Author(s):
    Sowey, E. R.
    Year:
    1998
    Abstract:
    A body of research on enhancing the teaching of statistics has been accumulating now for more than fifty years since the pioneering contributions of Wishart (1939) and Hotelling (1940). Yet undergraduates continue to find courses in statistics unappealing. Perhaps this is because their teachers -- even those clear and conscientious in explaining subject-matter detail, and thoughtful in their reading of the statistics education literature -- too commonly fail to open statistical vistas, and thus fail to convey a rich understanding of the purpose and structure of the subject. A vista is inherently a perspective view. This paper shows, with examples, how perspective views can illuminate both purpose and structure. A well-devised perspective on purpose, offered early, can make each topic in the course immediately meaningful. And perspectives on structure, unveiled strategically, can highlight the coherence of statistics. The author's experience over twenty-five years shows that teaching with perspectives can help to produce that ideal -- long-term retention of learning.

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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