Literature Index

Displaying 461 - 470 of 3326
  • Author(s):
    Hancock, C., Kaput, J. J., & Goldsmith, L. T.
    Year:
    1992
    Abstract:
    We explore challenges in achieving authentic inquiry with data in classrooms from the fifth through the eighth grade. We present the Tabletop, a prototype computer-based data analysis tool based on animated visual representations, and reports on clinical and classroom trials of this tool. Vignettes from clinical sessions illustrate students' understanding of the software interface as well as interacting subtleties of data creation and data analysis. One year of classroom trials is summarized in terms of three important categories of conceptual and cultural prerequisites for successful implementation: a) reasoning about the aggregate, b) the objectification of knowledge, and c) the pragmatic structure of classroom projects.
  • Author(s):
    Adri Dierdorp; Arthur Bakker; Harrie Eijkelhof; Jan van Maanen
    Year:
    2011
    Abstract:
    To support 11th-grade students' informal inferential reasoning, a teaching and learning strategy was designed based on authentic practices in which professionals use correlation or linear regression. These practices included identifying suitable physical training programmes, dyke monitoring, and the calibration of measurement instruments. The question addressed in this study is: How does a teaching and learning strategy based on authentic practices support students in making statistical inferences about authentic problems with the help of correlation and linear regression? To respond to this question we used video-recordings of lessons, audio-taped interviews, classroom field notes, and student work from a teaching experiment with 12 Dutch students (aged 16-17 years). The analysis provided insights into how the teaching and learning strategies based on authentic practices supported them to draw inferences about authentic problems using correlated data. The evidence illustrates how an understanding of the authentic problem being solved, collecting their own data to become acquainted with the situation, and learning to coordinate individual and aggregate views on data sets seemed to support these students in learning to draw inferences that make sense in the context.
  • Author(s):
    Tversky, A., & Kahneman, D.
    Editors:
    Kahneman, D., Slovic, P., & Tversky, A.
    Year:
    1982
    Abstract:
    We propose that when faced with the difficult task of judging probability or frequency, people employ a limited number of heuristics which reduce these judgments to simpler ones. Elsewhere we have analyzed in detail one such heuristic - representativeness. By this heuristic, an event is judged probable to the extent that it represents the essential features of its parent population or generating process...
  • Author(s):
    Bourke, S.
    Year:
    1993
    Abstract:
    I have found writing this response to be a difficult task, as evidenced by my inability to resist the combination of clichés in the title. As I read Menon's article I found myself agreeing with much of what he had written, although sometimes I wondered why it was considered to be worth stating. Then Menon would take a more extreme line which had not really been justified by what had preceded it, and I found myself frustrated by the lack of continuity as much as by the extreme view itself. I will give some examples of what I found to be problems with Menon's position, based around the themes of (a) was it worth saying anyway; (b) the function of over-statement; (c) methodology and the role of theory in educational research; and (d) the proposed ideal world of educational research. IN this response I have taken research in mathematics education to be entirely subsumed in educational research generally.
  • Author(s):
    Wallsten, T. S., Fillenbaum, S., & Cox, J. A.
    Year:
    1986
    Abstract:
    Two studies were run to determine whether the interpretations of statements or forecasts using vague probability and frequency expression such as likely, improbable, frequently, or rarely, were sensitive to the base rates of the events involved, In the first experiment, professional weather forecasters judged event probabilities in situations drawn from a medical context. In the second experiment, students judged matched forecast scenarios of common semantic content that differed only in prior probability (as determined by an independent group of subjects). Results were (a) the interpretations of forecasts using neutral (e.g., possible) and high probability or frequency terms (e.g. usually) were strong, positive functions of base rate, while the interpretations of forecasts using low terms (e.g. rarely) were much less affected by base rates; (b) in the second experiment interpretations of forecasts appeared to represent some kind of average of the meaning of the expression and the base rate.
  • Author(s):
    Johnson, M., & Kuennen, E.
    Editors:
    Stephenson, W. R.
    Year:
    2006
    Abstract:
    We identify the student characteristics most associated with success in an introductory business statistics class, placing special focus on the relationship between student math skills and course performance, as measured by student grade in the course. To determine which math skills are important for student success, we examine (1) whether the student has taken calculus or business calculus, (2) whether the student has been required to take remedial mathematics, (3) the student's score on a test of very basic mathematical concepts, (4) student scores on the mathematics portion of the ACT exam, and (5) science/reasoning portion of the ACT exam. The score on the science portion of the ACT exam and the math-quiz score are significantly related to performance in an introductory statistics course, as are student GPA and gender. This result is robust across course formats and instructors. These results have implications for curriculum development, course content, and course prerequisites.
  • Author(s):
    Rossman, A. J., Short, T. H., & Parks, M. T.
    Year:
    1998
    Abstract:
    Classical estimators for the parameter of a uniform distribution on the interval are often discussed in mathematical statistics courses, but students are frequently left wondering how to distinguish which among the variety of classical estimators are better than the others. We show how classical estimators can be derived as Bayes estimators from a family of improper prior distributions. We believe that linking the estimation criteria in a Bayesian framework is of value to students in a mathematical statistics course, and we believe that the students benefit from the exposure to Bayesian methods. In addition, we compare classical and Bayesian interval estimators for the parameter Phi and illustrate the Bayesian analysis with an example.
  • Author(s):
    Moore, David
    Year:
    1997
    Abstract:
    Is it reasonable to teach the ideas and methods of Bayesian inference in a first statistics course for general students? This paper argues that it is, at best, premature to do so. Surveys of the statistical methods actually in use suggest that Bayesian techniques are little used. Moreover, Bayesians have not yet agreed on standard approaches to standard problem settings. Bayesian reasoning requires a grasp of conditional probability, a concept confusing to beginners. Finally, an emphasis on Bayesian inference might well impede the trend toward experience with real data and a better balance among data analysis, data production, and inference in first statistics courses
  • Author(s):
    Alan Jessop
    Year:
    2010
    Abstract:
    Showing simply how statistical thinking can help in weighing evidence and reaching decisions can be useful both as an introduction to an extended presentation of statistical theory and as an introduction to a looser discussion of the nature and value of data.
  • Author(s):
    Hollingsworth, C.
    Year:
    1995
    Abstract:
    Cuisenaire rods provide a concrete embodiment for teaching mean, median, and mode to middle schoolers. These statistical concepts are traditionally only taught abstractly, but may be better understood via manipulatives.

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