Literature Index

Displaying 1841 - 1850 of 3326
  • Author(s):
    Jennifer J. Kaplan and Juan Du
    Year:
    2009
    Abstract:
    Researchers in the field of psychology studying subjects' reasoning abilities and decision-making processes have identified certain common errors that are made, particularly on probability questions standard in introductory statistics courses. In addition, they have identified modifications to problems and training that promote normative reasoning in laboratory subjects. This study attempts to replicate, in the context of a statistics classroom, the results of one particular type of probability question, a two-stage conditional probability problem. The psychology literature suggests two possible implications for teaching probability. Although no effect for format modification was found, the representations training effects were replicated. The implications of these results for teaching and directions for future research are discussed.
  • Author(s):
    McKenzie, Jr., J. D., & Goldman, R.
    Editors:
    Rossman, A., & Chance, B.
    Year:
    2006
    Abstract:
    The GAISE College Report recommends that introductory applied statistics courses should place greater stress on statistical concepts and less stress on definitions, computations, and procedures. The report also urges instructors to align assessments with learning goals. In this paper the authors explain how instructors can implement these two recommendations. They first review the extent to which questions directly related to concepts are found in popular texts and on websites created by the publishers of these texts. Following this review they provide examples of such questions in a variety of formats (multiple choice, fill-in-the blank, open-ended, etc.). The examples will be classified by the approximate level of educational objective contained in Bloom's Taxonomy. Finally, the paper will discuss the advantages and disadvantages associated with having students answer such questions electronically.
  • Author(s):
    Speed, T.
    Editors:
    Davidson, R., & Swift, J.
    Year:
    1986
    Abstract:
    My primary aim in this paper is quite simple. I would like to encourage you to seek out or attempt to discern the main question of interest associated with any given set of data, expressing this question in the (usually non-statistical) terminology of the subject area from whence the data came, before you even think of analysing or modeling the data. Having done this, I would also like to encourage you to view analyses, models etc. simply as means towards the end of providing an answer to the question, where again the answer should be expressed in the terminology of the subject which characterises statistical answers. Finally, and regrettably this last point is by no means superfluous, I would then encourage you to ask yourself whether the answer you gave really did answer the question originally posed, and not some other question. A secondary aim, which I cannot hope to achieve in the time permitted to me, would be to show you how many common difficulties experienced in attempting to draw inferences from data can be resolved by carefully framing the question of interest and the form of answer sought.
  • Author(s):
    Baumer, Ben; Cetinkaya-Rundel, Mine; Bray, Andrew; Loi, Linda; Horton, Nicholas J.
    Year:
    2014
    Abstract:
    Nolan and Temple Lang argue that “the ability to express statistical computations is an es- sential skill.” A key related capacity is the ability to conduct and present data analysis in a way that another person can understand and replicate. The copy-and-paste workflow that is an artifact of antiquated user-interface design makes reproducibility of statistical analysis more difficult, especially as data become increasingly complex and statistical methods become increasingly sophisticated. R Markdown is a new technology that makes creating fully-reproducible statistical analysis simple and painless. It provides a solution suitable not only for cutting edge research, but also for use in an introductory statistics course. We present experiential and statistical evidence that R Markdown can be used effectively in introductory statistics courses, and discuss its role in the rapidly-changing world of statistical computation.
  • Author(s):
    Doug Stirling
    Year:
    2008
    Abstract:
    Although project work involving analysis and interpretation of real data is important when<br>students are learning statistics, there is an important role for short exercises to help learn specific<br>statistical skills. Computer-based exercises can be much richer than exercises in paper-based<br>textbooks but existing resources do not make full use of the medium. The format can involve<br>multiple-choice, numerical answers, interaction with diagrams (such as sketching a histogram) or<br>a combination of these, possibly in sequence. The exercise can analyse the student response and<br>give helpful hints and feedback about different types of incorrect answer. Random generation of<br>similar questions in an exercise can allow repeated attempts until skills are mastered. Some<br>principles are given for the design of computer-based exercises and a set of nine exercises about<br>normal distributions is described.
  • Author(s):
    Falk, R., &amp; Konold, C.
    Year:
    1994
    Abstract:
    Different sequences are reproduced or memorized with varying degrees of difficulty, depending on their structure. We obtained preliminary support for the hypothesis that difficulty of encoding is correlated with the perceived randomness of the sequence. Since the randomness of a sequence can be defined by its complexity, namely, the length of the shortest computer program for reproducing the sequence, we suggest that introducing randomness in terms of complexity may foster students' understanding. Subjective complexity, however, is maximal for sequences with exaggerated alternations, as is apparent-randomness. Thus, misperceptions of randomness cannot be corrected by the complexity approach. They can only be better understood.
  • Author(s):
    Sean Duffy
    Year:
    2010
    Abstract:
    This paper describes three spreadsheet exercises demonstrating the nature and frequency of type I errors using random number generation. The exercises are designed specifically to address issues related to testing multiple relations using correlation (Demonstration I), t tests varying in sample size (Demonstration II) and multiple comparisons using analysis of variance (Demonstration III). These demonstrations highlight the purpose and application of hypothesis testing and teach students the dangers of data dredging and a posteriori hypothesis generation.
  • Author(s):
    von Harten, G., &amp; Steinbring, H.
    Editors:
    Scholz, R. W.
    Year:
    1983
    Abstract:
    By means of historical investigations, epistemological reflections, and didactical analysis with respect to the notion of independence, we shall try to provide insights into the problem of a theoretical term and its applications. This will be the starting-point for stating some didactical theses about treating the notion of independence in the curriculum of Sekundarstufe I (lower secondary level) and will yield examples of their realization. The difference between intuitive notion and mathematical definition reflects the insoluble tension between mathematics and reality. This should not be seen as a shortcoming, rather this tension has been one of the productive sources for the development of mathematics, and it ought to be the same for mathematics instruction.
  • Author(s):
    Pollatsek, A., &amp; Konold, C.
    Year:
    1991
    Abstract:
    In their article Ayton, Hunt and Wright address a number of issues that impinge on the concept of randomness. They appear to question not only the methodological soundness and general implications of research on "misconceptions" in statistics, but also the soundness of aspects of statistical inference. We concentrate here on a few key issues about which we are in disagreement (we think) with the authors.
  • Author(s):
    Falk, R.
    Year:
    1991
    Abstract:
    This article discusses the piece "Psychological conceptions of randomness".

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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