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Preface

  • Page ID
    50321
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    Preface

    I wrote this eTextbook for individuals interested in pursuing careers as crime

    analysts, especially those in undergraduate programs. Many undergraduate

    students I've taught understand the significance of data and analysis in

    effectively operating the criminal justice system. They also recognize that

    criminal justice agencies value individuals who can proficiently use software

    programs. However, they often feel discouraged by the challenges they

    encounter while studying statistics or learning software programs.

    Traditional statistics textbooks tend to emphasize the mathematical foundations

    of statistical techniques, which can be overwhelming and distracting for students.

    Additionally, students often struggle to see how software programs can be

    practically applied to analyze crime-related data. Limited access to subscription-

    based statistical software poses another obstacle. Although students may learn

    programs like SPSS or Stata while at the university, they often find themselves

    unable to continue using these programs after graduation, making their acquired

    skills obsolete.

    As an open-source software program, R offers a solution to these challenges. It is

    freely accessible to anyone, including students, after they graduate. Therefore, I

    decided to write a freely available book for those interested in becoming crime

    analysts, focusing on learning statistics without delving too deeply into

    mathematics. Moreover, this book emphasizes practical applications by utilizing R

    for data analysis, ensuring students can develop relevant skills beyond the

    university. I hope that students can easily follow the instructions in this book and

    replicate the same outcomes using the provided data. This practical experience

    will demonstrate the value of statistics and R, ideally inspiring students to further

    their learning in these areas.

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