Literature Index

Displaying 2041 - 2050 of 3326
  • Author(s):
    Ann E. Watkins, Anna Bargagliotti, and Christine Franklin
    Year:
    2014
    Abstract:
    Although the use of simulation to teach the sampling distribution of the mean is meant to provide students with sound conceptual understanding, it may lead them astray. We discuss a misunderstanding that can be introduced or reinforced when students who intuitively understand that “bigger samples are better” conduct a simulation to explore the effect of sample size on the properties of the sampling distribution of the mean. From observing the patterns in a typical series of simulated sampling distributions constructed with increasing sample sizes, students reasonably—but incorrectly—conclude that, as the sample size, n, increases, the mean of the (exact) sampling distribution tends to get closer to the population mean and its variance tends to get closer to ????2/n, where ????2 is the population variance. We show that the patterns students observe are a consequence of the fact that both the variability in the mean and the variability in the variance of simulated sampling distributions constructed from the means of N random samples are inversely related, not only to N, but also to the size of each sample, n. Further, asking students to increase the number of repetitions, N, in the simulation does not change the patterns
  • Author(s):
    Kader, G. D.
    Editors:
    Vere-Jones, D., Carlyle, S., & Dawkins, B. P.
    Year:
    1991
    Abstract:
    This paper describes the background and rationale for the project, its goals and objectives, and the instructional strategy utilised by SIM-PAC. An example of a typical learning activity and the capabilities of the software are illustrated. The ICOTS presentation included a demonstration of two learning activities.
  • Author(s):
    Kader, G. D.
    Year:
    1990
    Abstract:
    "Simulations in Mathematics-Probability and Computing", (SIM-PAC), is a three year project funded by the United States' National Science Foundation's Materials Research and Development program. This paper describes the background and rationale for the project, its goals and objectives and the instructional strategy utilized by SIM-PAC. An example of a typical learning activity and the capabilities of the software are illustrated.
  • Author(s):
    Dear, R.
    Editors:
    Vere-Jones, D., Carlyle, S., & Dawkins, B. P.
    Year:
    1991
    Abstract:
    At Southland Boys' High School simulations are included in the course work for Sixth Form Certificate Applied Mathematics and elsewhere in the curriculum from Form 3 to Form 7, that is, with students aged from 13 to 18 years old. The reasons for their inclusion are: 1) their wide-ranging applications; 2) the simplicity of the methodology; 3) the experience they give students in elementary experimental design; 4) the opportunity they provide for the study of situations that are not readily explored by other methods. It is also important that simulations are included which analyse phenomena or deal with problems that can be solved by other methods to give an idea of the reliability of simulation techniques.
  • Author(s):
    David M. Lane
    Year:
    2015
    Abstract:
    Recently Watkins, Bargagliotti, and Franklin (2014) discovered that simulations of the sampling distribution of the mean can mislead students into concluding that the mean of the sampling distribution of the mean depends on sample size. This potential error arises from the fact that the mean of a simulated sampling distribution will tend to be closer to the population mean with large sample sizes than it will with small sample sizes. Although this pattern does not change as a function of the number of samples, the size of the difference between simulated sampling distribution means does and can be made invisible to observers by using a very large number of samples. It is now practical for simulations to use these very large numbers of samples since the speed of computers and even mobile devices is sufficient to simulate a sampling distribution based on 1,000,000 samples in just a few seconds. Research on the effectiveness of sampling distribution simulations is briefly reviewed and it is concluded that they are effective as long as they are used in a pedagogically sound manner.
  • Author(s):
    Randall E. Groth
    Year:
    2010
    Abstract:
    Qualitative methods have become common in statistics education research, but<br><br>questions linger about their role in scholarship. Currently, influential policy<br><br>documents lend credence to the notion that qualitative methods are inherently inferior<br><br>to quantitative ones. In this paper, several of the questions about qualitative research<br><br>raised in recent policy documents in the U.S. are examined. Each question is<br><br>addressed by drawing upon examples from existing statistics education research. The<br><br>examples illustrate that qualitative methods can be used profitably to study statistical<br><br>teaching and learning, and that in some cases qualitative methods are preferable to<br><br>quantitative ones. By using the examples presented, qualitative researchers in<br><br>statistics education can begin to more strongly situate their work within scholarly<br><br>discourse about empirical research
  • Author(s):
    Mitchell, M.
    Year:
    1997
    Abstract:
    This study investigated two statistics classroom environments that a priori apeared to hold promise as being motivationally effective classrooms. One environment (2 classes) was at the high school level and the other environment (4 classes) was at the graduate level. In particular the study measured students' perceived situational interest in the learning environment, individual interest in statistics (with pre and post measures), and mathematics anxiety (with pre and post measures). The results indicate that both environments were high in situational interest, did substantially increase the mean individual interest of students, and had a beneficial but smaller impact in terms of associated decreases in mathematics anxiety. In addition, there did apear to be some gender effects-although these effects across the two learning environments were not consistent. Finally, the environments did appear to be particularly effective for students with previous low individual interests in statistics/mathematics. The study enriches our understanding of the "interest" construct primarily by providing evidence that the situational interest of learning enviornments may have a much greater impact on individual interests than researchers previously thought. While only two specific learning environments are provided as examples, the paper argues that we may need to pay as much attention to the motivational effects of statistics classrooms as we do to the learning effects. Students who have positive affective experiences will be more willing to continue taking mathematics/statistics courses or to use quantitative analysis techniques in their own research.
  • Author(s):
    Hunka, S.
    Year:
    1991
    Abstract:
    Describes the operation of a graduate level statistics course based on computer-assisted instruction (CAI). Course content and student reactions are discussed, course evaluations are reported, problems involved with moving the courseware to different computer systems are described, and the CAI run-time system is explained. (10 references) (LRW)
  • Author(s):
    Webster West
    Year:
    2009
    Abstract:
    StatCrunch (www.statcrunch.com) is an online data analysis package that can be used as a low cost alternative to traditional statistical software for introductory statistics courses. StatCrunch offers a wide array of numerical and graphical routines for analyzing data along with several features such as interactive graphics which can be used for pedagogical purposes. StatCrunch has a number of new features related to social data analysis where users may share data sets and associated analysis results via the StatCrunch site. Users may also interact via online discussions related to shared items. This manuscript provides a brief description of the mechanics of uploading and sharing information via the StatCrunch site and then discusses some of the potential benefits that these social data analysis capabilities offer to both students and instructors.
  • Author(s):
    Jameel Al-Aziz, Nicolas Christou, and Ivo D. Dinov
    Year:
    2010
    Abstract:
    The amount, complexity and provenance of data have dramatically increased in the past five years. Visualization of observed and simulated data is a critical component of any social, environmental, biomedical or scientific quest. Dynamic, exploratory and interactive visualization of multivariate data, without preprocessing by dimensionality reduction, remains a nearly insurmountable challenge. The Statistics Online Computational Resource (www.SOCR.ucla.edu) provides portable online aids for probability and statistics education, technology-based instruction and statistical computing. We have developed a new Java-based infrastructure, SOCR Motion Charts, for discovery-based exploratory analysis of multivariate data. This interactive data visualization tool enables the visualization of high-dimensional longitudinal data. SOCR Motion Charts allows mapping of ordinal, nominal and quantitative variables onto time, 2D axes, size, colors, glyphs and appearance characteristics, which facilitates the interactive display of multidimensional data. We validated this new visualization paradigm using several publicly available multivariate datasets including Ice-Thickness, Housing Prices, Consumer Price Index, and California Ozone Data. SOCR Motion Charts is designed using object-oriented programming, implemented as a Java Web-applet and is available to the entire community on the web at www.socr.ucla.edu/SOCR_MotionCharts. It can be used as an instructional tool for rendering and interrogating high-dimensional data in the classroom, as well as a research tool for exploratory data analysis.

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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