Through this book's unique model comparison approach, students and researchers are introduced to a set of fundamental principles for analyzing data. After seeing how these principles can be applied in simple designs, students are shown how these same principles also apply in more complicated designs. Drs. Maxwell and Delaney believe that the model comparison approach better prepares students to understand the logic behind a general strategy of data analysis appropriate for various designs; and builds a stronger foundation, which allows for the introduction of more complex topics omitted from other books. Several learning tools further strengthen the reader's understanding: *flowcharts assist in choosing the most appropriate technique; *an equation cross-referencing system aids in locating the initial, detailed definition and numerous summary equation tables assist readers in understanding differences between different methods for analyzing their data; *examples based on actual research in a variety of behavioral sciences help students see the applications of the material; *numerous exercises help develop a deeper understanding of the subject. Detailed solutions are provided for some of the exercises and *realistic data sets allow the reader to see an analysis of data from each design in its entirety. Updated throughout, the second edition features: *significantly increased attention to measures of effects, including confidence intervals, strength of association, and effect size estimation for complex and simple designs; *an increased use of statistical packages and the graphical presentation of data; *new chapters (15 & 16) on multilevel models; *the current controversies regarding statistical reasoning, such as the latest debates on hypothesis testing (ch. 2); *a new preview of the experimental designs covered in the book (ch. 2); *a CD with SPSS and SAS data sets for many of the text exercises, as well as tutorials reviewing basic statistics and regression; and *a Web site containing examples of SPSS and SAS syntax for analyzing many of the text exercises. Appropriate for advanced courses on experimental design or analysis, applied statistics, or analysis of variance taught in departments of psychology, education, statistics, business, and other social sciences, the book is also ideal for practicing researchers in these disciplines. A prerequisite of undergraduate statistics is assumed. An Instructor's Solutions Manual is available to those who adopt the book for classroom use.
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我花了很长时间来挑选一本合适的统计学入门读物,最终选择了这本。这本书最让我欣赏的一点是它非常注重概念的深入剖析,而不是简单地罗列公式。作者似乎非常清楚,对于很多非专业人士来说,理解“为什么”比记住“怎么算”更重要。因此,书中花了大量篇幅来解释各种假设检验背后的直觉和逻辑,这对我建立坚实的统计学基础起到了至关重要的作用。每次当我开始对某个检验方法感到困惑时,总能在书中找到一段非常精准且形象的比喻来帮助我理清思路。这种教学方法,使得原本枯燥的统计学变得生动起来,充满了探索的乐趣。
评分这本书的封面设计得非常简洁,主色调是深邃的蓝色,配上白色的字体,给人一种专业而稳重的感觉。拿到手里时,我就被它厚实的质感所吸引,纸张的触感也很不错,阅读起来非常舒适。虽然我不是专门研究统计学的,但这本书的排版清晰,章节之间的逻辑连接非常流畅,即使是初次接触这类复杂理论,也能感受到作者在构建知识体系上的用心。书中大量的图表和案例分析,极大地降低了理解难度,特别是对于那些需要将理论应用于实际工作中的读者来说,这种可视化呈现方式无疑是巨大的加分项。它不仅仅是一本教科书,更像是一本工具书,随时可以翻阅,查找需要的内容。
评分这本书的内容深度和广度都令人印象深刻。它涵盖了从基础的描述性统计到相对高级的回归分析和方差分析等多个方面,体系构建得非常完整。尤其值得一提的是,它对实验设计的讨论非常透彻,这在很多同类书籍中是比较少见的。作者不仅讲解了如何进行数据分析,更强调了在实验设计初期就应该考虑周全,如何构建一个有效的实验框架,这对于任何需要进行科学研究或市场测试的人来说,都是宝贵的指导。书中提到的“因果推断”部分,更是让我大开眼界,它提供了一套严谨的思维框架来区分相关性与因果性,极大地提升了我分析问题的批判性思维。
评分老实说,这本书的阅读体验并非一帆风顺,它对读者的基础数学能力有一定的要求。虽然作者努力用通俗的语言解释复杂的数学原理,但有些涉及到概率论和线性代数的部分,如果没有一定的预备知识,还是需要反复研读甚至查阅其他资料来辅助理解。不过,正是这种适度的挑战性,保证了这本书的专业性和权威性。它没有为了迎合初学者而牺牲内容的深度。对于那些已经有一定基础,希望向更深层次迈进的读者来说,这本书无疑是一座宝库,它提供的进阶内容和细节推导,提供了扎实的理论支撑。
评分我发现这本书的一个显著优点是它的实用性极强。书中穿插了大量的真实世界案例,这些案例的选择非常巧妙,涵盖了生物、工程、商业等多个领域,使得理论知识不再是空中楼阁。通过对这些案例的分析,读者可以清晰地看到如何将书中学到的工具应用到实际问题中去,例如如何选择合适的检验方法,如何解读P值和置信区间,以及如何撰写一份清晰的分析报告。更重要的是,它教会了我如何识别和避免统计分析中的常见陷阱,这在当今这个数据爆炸的时代,无疑是一项非常实用的生存技能。这本书,与其说是一本学习资料,不如说是一位经验丰富的统计顾问。
评分Awesome!!!
评分Awesome!!!
评分Awesome!!!
评分Awesome!!!
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