BOOKS - Regression Models for Categorical, Count, and Related Variables: An Applied A...
Regression Models for Categorical, Count, and Related Variables: An Applied Approach - John P. Hoffmann August 16, 2016 PDF  BOOKS
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Regression Models for Categorical, Count, and Related Variables: An Applied Approach
Author: John P. Hoffmann
Year: August 16, 2016
Format: PDF
File size: PDF 32 MB
Language: English



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Regression Models for Categorical Count and Related Variables An Applied Approach As technology continues to evolve at an unprecedented pace, it is essential for humanity to develop a personal paradigm for perceiving the technological process of developing modern knowledge. This paradigm must be based on the need and possibility of understanding the technological process and its impact on society. The survival of humanity and the unification of people in a warring state depend on our ability to study and understand this process. In his book, "Regression Models for Categorical Count and Related Variables An Applied Approach author John P. Hoffmann provides an in-depth exploration of the need to study and understand the process of technology evolution and its impact on society. The book focuses on social science and behavioral science students and researchers who are often confronted with categorical count data, such as interracial marriage, voting behavior, crime rates, and mental health treatment success. These outcomes are not continuous but rather discrete, making them challenging to measure and analyze. The author presents several statistical models designed specifically for these types of outcomes, including logistic and probit models, event history models, and multilevel models. Each chapter discusses how to utilize these models and test their assumptions using practical examples from the social sciences. The book assumes that readers have only a good working knowledge of elementary algebra and have taken introductory statistics and linear regression analysis.
Регрессионные модели для категориального счета и связанных с ним переменных Прикладной подход Поскольку технология продолжает развиваться беспрецедентными темпами, для человечества важно разработать личную парадигму для восприятия технологического процесса развития современных знаний. Эта парадигма должна основываться на необходимости и возможности понимания технологического процесса и его влияния на общество. От нашей способности изучать и понимать этот процесс зависит выживание человечества и объединение людей в воюющем государстве. В своей книге «Регрессионные модели для категориального счета и связанных переменных. Прикладной подход» автор Джон П. Хоффманн подробно исследует необходимость изучения и понимания процесса эволюции технологий и его влияния на общество. Книга посвящена студентам и исследователям в области социальных наук и поведенческих наук, которые часто сталкиваются с категориальными данными подсчета, такими как межрасовые браки, поведение при голосовании, уровень преступности и успех лечения психического здоровья. Эти результаты не являются непрерывными, а скорее дискретными, что затрудняет их измерение и анализ. Автор представляет несколько статистических моделей, разработанных специально для этих типов результатов, включая логистические и пробитные модели, модели истории событий и многоуровневые модели. В каждой главе обсуждается, как использовать эти модели и проверять их предположения на практических примерах из социальных наук. Книга предполагает, что читатели обладают лишь хорошим рабочим знанием элементарной алгебры и взяли вводную статистику и линейный регрессионный анализ.
Modelli di regressione per la fatturazione categorica e le relative variabili Approccio applicativo Poiché la tecnologia continua ad evolversi a un ritmo senza precedenti, è importante per l'umanità sviluppare un paradigma personale per la percezione del processo tecnologico dello sviluppo della conoscenza moderna. Questo paradigma deve basarsi sulla necessità e sulla capacità di comprendere il processo tecnologico e il suo impatto sulla società. La nostra capacità di studiare e comprendere questo processo dipende dalla sopravvivenza dell'umanità e dall'unione delle persone in uno Stato in guerra. Nel suo libro Modelli di regressione per conto categorico e variabili correlate. L'approccio applicativo", scritto da John P. Hoffmann, esplora in dettaglio la necessità di studiare e comprendere l'evoluzione della tecnologia e il suo impatto sulla società. Il libro è dedicato agli studenti e ai ricercatori di scienze sociali e comportamentali, che spesso affrontano dati di conteggio categorici, come i matrimoni tra razze, i comportamenti elettorali, il tasso di criminalità e il successo delle cure per la salute mentale. Questi risultati non sono continui, ma piuttosto discreti, rendendoli difficili da misurare e analizzare. L'autore presenta diversi modelli statistici progettati specificamente per questi tipi di risultati, tra cui i modelli logistici e di perforazione, i modelli di storia degli eventi e i modelli su più livelli. In ogni capitolo si discute di come usare questi modelli e testare i loro presupposti su esempi pratici di scienze sociali. Il libro suggerisce che i lettori hanno solo una buona conoscenza operativa dell'algebra elementare e hanno preso le statistiche introduttive e l'analisi lineare di regressione.
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カテゴリカウントと関連変数の回帰モデル適用されたアプローチ技術が前例のないペースで進歩し続ける中で、現代の知識を開発する技術プロセスを知覚するための個人的なパラダイムを開発することが重要です。このパラダイムは、技術プロセスと社会への影響を理解する必要性と能力に基づいている必要があります。人類の存続と戦争状態での人々の統一は、このプロセスを研究し、理解する私たちの能力に依存しています。彼の著書「Regression Models for Categorical Account and Related Variables」で。Applied Approachの著者であるJohn P。 Hoffmannは、テクノロジーの進化の過程と社会への影響を研究し理解する必要性を詳細に検討しています。この本は、異人種間の結婚、投票行動、犯罪率、メンタルヘルス治療の成功などのカテゴリカルカウントデータにしばしば遭遇する社会科学および行動科学の学生や研究者に焦点を当てています。これらの結果は連続的ではなく、むしろ離散的であり、測定や分析が困難である。著者は、ロジスティックとプロビットモデル、イベント履歴モデル、マルチレベルモデルなど、これらのタイプのアウトカムのために特別に開発されたいくつかの統計モデルを紹介します。各章では、これらのモデルをどのように使用し、社会科学の実践的な例に対して仮定をテストするかについて議論します。この本は、読者が初等代数についての十分な知識しか持っておらず、入門的な統計と線形回帰分析を取ったことを示唆している。

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