Literature Index

Displaying 981 - 990 of 3326
  • Author(s):
    De Maio, F.
    Year:
    2007
    Abstract:
    In teaching introductory quantitative methods in sociology, I have used a controversial survey of mortality in Iraq before and after the 2003 invasion to highlight to students the power of simple questionnaires, the role of ambiguity in statistics and the place of politics in the framing of statistical results. This brief report summarizes Roberts et al.'s (2004) estimate that the invasion of Iraq resulted in 98,000 (95% CI = 8000 - 194,000) deaths, as well as the intriguing reaction that the survey received in the press. Statistics teachers should find the Roberts et al. study to be an effective way to introduce students to more controversial - and political - aspects of statistical research.
  • Author(s):
    Evans, J. ST. B. T., & Bradshaw, H.
    Year:
    1986
    Abstract:
    Subjects were given an experimental task in which they had to play the role of a quality-control researcher for a company. They had to consider a hypothetical experiment that involves testing a sample of batteries from a truck load, which may or may not be substandard. In the main experiment, subjects were given information about the prior probability of substandard truck loads (base rate), the degree of variability of battery life, and the mean difference between standard and substandard batteries, all of which are formally relevant to the decision, and they were also told the number of batteries in the truck (population size) that is formally irrelevant. The task was to decide (intuitively) how many batteries to test to achieve a specified error rate using a specified decision rule. In a second study, subjects were given a similar scenario, but asked to rate which pieces of information would be relevant to the decision. Subjects showed themselves to be sensitive to the effects of sample variability and base rate when making intuitive design decisions, though an odd effect of the mean difference factor was observed. There is also clear confirmation of a bias-to-weight sample size by population size as reported in earlier research using different kinds of judgment tasks.
  • Author(s):
    Huck, S. W., et al.
    Year:
    1985
    Abstract:
    Classroom demonstrations can help students gain insights into statistical concepts and phenomena. After discussing four kinds of demonstrations, the authors present three possible approaches for determining how much data are needed for the demonstration to have a reasonable probability for success. (Author/LMO)
  • Author(s):
    Duchesne, P.
    Year:
    2003
    Abstract:
    The estimation of proportions is a subject which cannot be circumvented in a first survey sampling course. Estimating the proportion of voters in favour of a political party, based on a political opinion survey, is just one concrete example of this procedure. However, another important issue in survey sampling concerns the proper use of auxiliary information, which typically comes from external sources, such as administrative records or past surveys. Very often, an efficient insertion of the auxiliary information available will improve the precision of the estimations of the mean or the total when a regression estimator is used. Conceptually, it is difficult to justify using a regression estimator for estimating proportions. A student might want to know how the estimation of proportions can be improved when auxiliary information is available. In this article, I present estimators for a proportion which use the logistic regression estimator. Based on logistic models, this estimator efficiently facilitates a good modelling of survey data. The paper's second objective is to estimate a proportion using various sampling plans (such as a Bernoulli sampling and stratified designs). In survey sampling, each sample possesses its own probability and for a given unit, the inclusion probability denotes the probability that the sample will contain that particular unit. Bernoulli sampling may have an important pedagogical value, because students often have trouble with the concept of the inclusion probability. Stratified sampling plans may provide more insight and more precision. Some empirical results derived from applying four sampling plans to a real data base show that estimators of proportions may be made more efficient by the proper use of auxiliary information and that choosing a more satisfactory model may give additional precision. The paper also contains computer code written in S-Plus and a number of exercises.
  • Author(s):
    Lesser, L. M. & Nordenhaug, E.
    Year:
    2004
    Abstract:
    This article describes an innovative curriculum module the first author created on the two-way exchange between statistics and applied ethics. The module, having no particular mathematical prerequisites beyond high school algebra, is part of an undergraduate interdisciplinary ethics course which begins with a 3-week introduction to basic applied ethics taught by a philosophy professor (the second author), and continues with 3-week modules from professors in various other disciplines. The first author's module's emphasis on conceptual and critical thinking makes it easily adaptable to service-level courses as well as readily expandable for more mathematically sophisticated audiences. Through in-class explorations and discussions, the module made connections to contemporary topics such as the death penalty, equal pay for equal work, and profiling. This article shares examples, resources, strategies and lessons learned for instructors wishing to develop their own modules of various lengths.
  • Author(s):
    Kromrey, J. D.
    Year:
    1993
    Abstract:
    In this article, I attempt to explicate the ethical prinicples of data analysis, to suggest some characteristics of research and researchers that give rise to ethical difficulties, and to provide recommendations for improved practice.
  • Author(s):
    Estepa, A., & Sánchez-Cobo, F. T.
    Editors:
    Batanero, C., & Joliffe, F.
    Year:
    2003
    Abstract:
    In this paper we present an exploratory study intended to characterise University students' understanding of correlation and regression. We analyse the solutions to two problems from an intentional sample of 193 students who had previously received a course of descriptive statistics at the University. We study the student's procedures and discuss their difficulties and errors concerning the centre of gravity in the scatter plot, regression lines, correlation coefficient, type of relation between the variables and prediction.
  • Author(s):
    Anderson, G. E., Jr.
    Year:
    1984
    Abstract:
    The author presents guidelines for the selection of statistical analysis software given to graduate students to work independently. Criteria for a good teaching program are delineated. Several software programs are evaluated: STATMASTER, Statistics and Probability, Monte Carlo Simulations, Survey Sampling, KEYSTAT, CAPSAS: Computer Assisted Program for the Selection of Appropriate Statistics, EDA: Exploratory Data Analysis, INTROSTAT, Statistics With Finesse, STATPAC, GANOVA: Generalized Analysis of Variance, Speedstat, Micro-DSS/Analysis, and Micro-TSP. Several statistics packages are briefly reviewed, including STATPRO, A-STAT, Computer Models for Management Science, Multiple Factor Analysis, a General Correlation Program, and Test Construction Package. An appendix lists criteria for evaluating software. Demonstration pages prepared with a TEXPRINT printer interface card in the APPLE II+ computer are included. (DWH)
  • Author(s):
    POSNER, Michael
    Year:
    2007
    Abstract:
    How do innovative pedagogical techniques improve learning and mastery of introductory statistics? This research study examines proficiency grading and assignment resubmission and compares them to traditional statistical teaching methodology in two introductory statistics classes. The control class received traditional numeric grades, while the experimental class received grades on a three-tiered proficiency ranking and the opportunity to resubmit assignments to increase their proficiency score. Students in the control class scored higher on a common final exam (although not statistically significant), and believed the material was better taught, while students in the experimental class claimed to have learned more and were more satisfied with the grading in the course. Future research will expand data gathering and improve the research design.
  • Author(s):
    Harwell, M. R.
    Year:
    1994
    Abstract:
    The lack of literature-based guidance for conducting evaluations of statistics texts has likely contributed to some disturbing patterns in published evaluations and studies of statistical texts. Similar patterns probably exist in unpublished evaluations, such as the evaluation (and possible adoption) of a test by an instructor. A critical failing in this area is that published evaluations almost invariably employ criteria for conducting the review that lack any literature-based rationale, being, apparently, experientially based, a failing which is compounded by a lack of empirical evidence supporting the usefulness of the criteria employed in the evaluation. The purpose of these (symposium) papers is to continue and extend the research exemplified by Cobb (1987), Hubety and Barton (1990), Brogan (1980), and others by attempting to construct and pilot criteria for evaluating statistics texts that are grounded in the statistical education and text evaluation literatures. This study is an initial step in a line of research which may result in the establishment, maintenance, and updating of a database containing evaluations of introductory statistical texts similar to (but much smaller in scale) that maintained for educational and psychological tests (e.g., Mental Measurements Yearbooks). Evaluative information of this kind should benefit the direct consumers of these texts, students and instructors.

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