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Collaborative Statistics: Adoption and Usage

Module by: Judy Baker. E-mail the author

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Summary: This module is designed to track the various versions and derived copies of Collaborative Statistics (originally col10522), as well as keep track of educators who have adopted various versions for their courses. New adopters are encouraged to provide their contact information and describe how they will use this book for their courses. The goal is to provide a list that will allow educators using this book to collaborate, share ideas, and make suggestions for future development of this text.

This document is designed to provide a resource for educators and authors who wish to collaborate with other users of Collaborative Statistics. The tables below provide information on known versions and derivatives of the Collaborative Statistics materials in Connexions as well as contact information of those who have used these materials in their courses.

If you have used or are interested in using Collaborative Statistics in your courses and would like to be included in this list, please contact the authors of this module with the following information:

  • Your name
  • Your institution
  • Your email address
  • When you began using these materials
  • The versions you have used
  • Courses you teach using these materials
If you are an author who has derived (or customized) a copy of this content in Connexions and would like to include your work in the list below, please send the following:
  • The collection title and ID number
  • The Connexions username of the author(s)
  • A brief description indicating what makes your derived copy unique
The goal for this document is to make it easier for educators and authors to collaborate and share their experiences with each other in order to encourage content growth and adoption. If you have any suggestions or comments about specific versions of the content, visit our Discussion Forum. If you have suggestions about coordinating efforts to promote the use of these materials, please contact the authors of this module.

Table 1: Known Versions of Collaborative Statistics
Collection Author(s) Description
Collaborative Statistics (col10522) Barbara Illowsky and Susan Dean  
Collaborative Statistics (with edits: Teegarden) (col10561) Mary Teegarden Derived from Collaborative Statistics (col10522), this version has been adapted to replace the use of TI-83/84 calculators in labs and exercises with Minitab.
Collaborative Statistics (col10617) Roberta Bloom Derived from Collaborative Statistics (col10522), this version has been adapted with a separate collection for homework modules.
Collaborative Statistics-Parzen ReMix (col10732) Michael Parzen Derived from Collaborative Statistics (col10522), this version has been adapted to contain fewer Modules.
Collaborative Statistics (Custom Version Modified by K. Chu) (col10966) Kathy Chu Derived from Collaborative Statistics (col10522), this version has been adapted for use in classes at Eastern Michigan University.
Table 2: Additional Resources for Educators
Collection Author(s) Description
Collaborative Statistics Teacher's Guide (col10547) Barbara Illowsky and Susan Dean The original Teacher's Guide companion to Collaborative Statistics (col10522). Includes course outline and suggestions for teaching each chapter.
Collaborative Statistics: Supplementary Course Materials (col10586) Barbara Illowsky and Susan Dean Additional course materials derived from the award-winning Elementary Statistics Sofia course [link] by Barbara Illowsky and Susan Dean. Contents include sample quizzes, practice exams, suggested course syllabus, and video tutorials.
Labs For Collaborative Statistics - Teegarden (col10562) Mary Teegarden This is a collection of labs from Collaborative Statistics by Illowski and Dean which have been edited to include Minitab activities. In addition the labs are to be done as individual activities.
Table 3: Known Adopters of Collaborative Statistics
Name Institution Date Adopted Collections(s) Adopted
Dave Roach Arkansas Tech University Fall09 Collaborative Statistics (col10522)
Edward Crosson Berkshire Community College Fall09 Collaborative Statistics (col10522)
Kathleen Offenholley Borough of Manhattan Community College Fall09 Collaborative Statistics (col10522)
Ray Kaupp Cabrillo College Fall09 Collaborative Statistics (col10522)
Rick Howe College of the Canyons Fall09 Collaborative Statistics (col10522)
Stan Rachelson Converse College Spring09 Collaborative Statistics (col10522)
Terry McGlynn CSU Dominguez Hills Fall08 Collaborative Statistics (col10522)
J. Adam De Anza College Fall09 Collaborative Statistics (col10522)
Yatman Au Young De Anza College Fall08 Collaborative Statistics (col10522)
Nadia Bensidi De Anza College Fall08 Collaborative Statistics (col10522)
Roberta Bloom De Anza College Spring09 Collaborative Statistics (col10522)
Lenore Desillets De Anza College Fall08, Fall09 Collaborative Statistics (col10522)
Harmon Dhaliwal De Anza College Fall08, Fall09 Collaborative Statistics (col10522)
Mo Geraghty De Anza College Fall09 Collaborative Statistics (col10522)
Janice Hector De Anza College Fall08, Fall09 Collaborative Statistics (col10522)
Barbara Illowsky De Anza College Spring09, Fall09 Collaborative Statistics (col10522), Teacher's Guide (col10547), Supplementary Course Materials (col10586)
Frank Jones De Anza College Fall09 Collaborative Statistics (col10522)
Renuka Kapur De Anza College Fall08, Fall09 Collaborative Statistics (col10522)
Charles Klein De Anza College Fall08, Fall09 Collaborative Statistics (col10522)
Vladimir Logvenenko De Anza College Spring09 Collaborative Statistics (col10522)
Lisa Markus De Anza College Fall08 Collaborative Statistics (col10522)
Diane Mathios De Anza College Winter09 Collaborative Statistics (col10522)
Lorraine Moen De Anza College Winter09, Fall09 Collaborative Statistics (col10522)
Andrew Phelps De Anza College Spring09, Fall09 Collaborative Statistics (col10522)
Kathryn Plum De Anza College Fall08, Fall09 Collaborative Statistics (col10522)
Rupinder Sekhon De Anza College Fall08, Fall09 Collaborative Statistics (col10522)
Henry Thaggert De Anza College Spring09, Fall09 Collaborative Statistics (col10522)
Frank Snow De Anza College Fall 2008 Collaborative Statistics (col10522)
Rod Taylor De Anza College Fall09 Collaborative Statistics (col10522)
Kathy Chu Eastern Michigan University Fall09 Collaborative Statistics(Custom Version Modified by K. Chu) (col10966)
Michael Parzen Emory University Summer09 Collaborative Statistics-Parzen ReMix (col10732)
Ann Commito Frederick Community College Spring09 Collaborative Statistics (col10522)
Basil Tangredi Green Mountain College Fall09 Collaborative Statistics (col10522)
Garnett Lee Henley Howard University Fall09 Collaborative Statistics (col10522)
Larry Green Lake Tahoe Community College Fall09 Collaborative Statistics (col10522)
Ginni May Los Rios Spring09 Collaborative Statistics (col10522)
Ginni May Sacramento City College Spring09 Collaborative Statistics (col10522)
Mary Teegarden San Diego Mesa College Fall2008 Collaborative Statistics (with edits: Teegarden) (col10561)
Barbara Illowsky San Francisco State University Spring09 Collaborative Statistics (col10522)
Warren Schonfeld Santa Rosa Junior College Fall09 Collaborative Statistics (col10522)
Richard Ganns South Puget Sound Community College Fall09 Collaborative Statistics (col10522)
Shaddick St. Mary's Collegiate and Voc. Institute Spring09 Collaborative Statistics (col10522)
Miriam Masullo SUNY Purchase Fall08 Collaborative Statistics (col10522)
Jane Menken University of Colorado Spring09 Collaborative Statistics (col10522)
Craig Seeley University of Toledo Spring09 Collaborative Statistics (col10522)
Ted Creigh Virginia Tech University Spring09 Collaborative Statistics (col10522)

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