BOOKS - Learning From Data, 4th Edition
Learning From Data, 4th Edition - Matthew E. Andrzejewski  PDF  BOOKS
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Learning From Data, 4th Edition
Author: Matthew E. Andrzejewski
Format: PDF
File size: PDF 38 MB
Language: English



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Learning From Data, 4th Edition is a comprehensive guide to statistical reasoning, providing readers with the tools they need to interpret psychological data and statistical results. This updated edition includes three key features that set it apart from previous versions: 1. Integration with JASP: The book is closely integrated with the free statistical analysis program JASP, allowing students to learn how to use JASP for tasks such as constructing grouped frequency distributions, making violin plots, conducting inferential statistical tests, and creating confidence intervals. 2. Bayesian Statistics: Reflecting the growing use of Bayesian analyses in the professional literature, this edition includes a chapter introducing Bayesian statistics using JASP. 3. Adjunct Questions: The text incorporates adjunct questions, which are designed to challenge students' understanding after each major section. These questions help reinforce learning and improve comprehension, based on cognitive psychology research.
arning From Data, 4th Edition - это всеобъемлющее руководство по статистическим рассуждениям, предоставляющее читателям инструменты, необходимые для интерпретации психологических данных и статистических результатов. Это обновленное издание включает в себя три ключевые функции, которые отличают его от предыдущих версий: 1. Интеграция с JASP: Книга тесно интегрирована с бесплатной программой статистического анализа JASP, что позволяет студентам научиться использовать JASP для таких задач, как построение сгруппированных распределений частот, создание скрипичных графиков, проведение логических статистических тестов и создание доверительных интервалов. 2. Байесовская статистика: отражая растущее использование байесовского анализа в профессиональной литературе, это издание включает главу, вводящую байесовскую статистику с использованием JASP. 3. Дополнительные вопросы: Текст включает дополнительные вопросы, которые предназначены для того, чтобы бросить вызов пониманию студентов после каждого основного раздела. Эти вопросы помогают усилить обучение и улучшить понимание, основываясь на исследованиях когнитивной психологии.
arning From Data, 4th Edition est un guide complet de raisonnement statistique qui fournit aux lecteurs les outils dont ils ont besoin pour interpréter les données psychologiques et les résultats statistiques. Cette version mise à jour comprend trois fonctions clés qui la distinguent des versions précédentes : 1. Intégration avec JASP : livre est étroitement intégré au programme d'analyse statistique gratuit JASP, ce qui permet aux étudiants d'apprendre à utiliser JASP pour des tâches telles que la construction d'allocations de fréquences groupées, la création de graphiques de violon, la réalisation de tests statistiques logiques et la création d'intervalles de confiance. 2. Statistiques bayésiennes : reflétant l'utilisation croissante de l'analyse bayésienne dans la littérature professionnelle, cette édition comprend un chapitre introduisant les statistiques bayésiennes utilisant JASP. 3. Questions supplémentaires : texte comprend des questions supplémentaires qui visent à remettre en question la compréhension des élèves après chaque section principale. Ces questions contribuent à améliorer l'apprentissage et la compréhension en s'appuyant sur la recherche en psychologie cognitive.
arning From Data, 4th Edition es una guía integral de razonamiento estadístico que proporciona a los lectores las herramientas necesarias para interpretar datos psicológicos y resultados estadísticos. Esta edición actualizada incluye tres características clave que la diferencian de las versiones anteriores: 1. Integración con JASP: libro está estrechamente integrado con el programa gratuito de análisis estadístico JASP, que permite a los estudiantes aprender a usar JASP para tareas como construir distribuciones de frecuencia agrupadas, crear gráficos de violín, realizar pruebas estadísticas lógicas y crear intervalos de confianza. 2. Estadísticas bayesianas: reflejando el creciente uso del análisis bayesiano en la literatura profesional, esta publicación incluye un capítulo que introduce estadísticas bayesianas utilizando JASP. 3. Preguntas adicionales: texto incluye preguntas adicionales que están diseñadas para desafiar la comprensión de los estudiantes después de cada sección principal. Estas preguntas ayudan a fortalecer el aprendizaje y mejorar la comprensión a partir de la investigación en psicología cognitiva.
arning From Data, 4th Edition è una guida completa al ragionamento statistico che fornisce ai lettori gli strumenti necessari per interpretare i dati psicologici e i risultati statistici. Questa versione aggiornata include tre funzioni chiave che lo distinguono dalle versioni precedenti: 1. Integrazione con JASP: Il libro è strettamente integrato con il programma di analisi statistica gratuito JASP, che consente agli studenti di imparare a utilizzare JASP per attività quali la creazione di distribuzioni di frequenze raggruppate, la creazione di grafici violini, l'esecuzione di test statistici logici e la creazione di intervalli di fiducia. 2. Statistiche bayesiane - Riflettendo l'uso crescente dell'analisi bayesiana nella letteratura professionale, questa edizione include un capitolo che introduce statistiche bayesiane utilizzando JASP. 3. Ulteriori domande: Il testo include ulteriori domande che sono progettate per sfidare la comprensione degli studenti dopo ogni sezione principale. Queste domande aiutano a migliorare l'apprendimento e la comprensione basandosi su studi di psicologia cognitiva.
arning From Data, 4th Edition ist ein umfassender itfaden für statistisches Denken, der den sern die Werkzeuge zur Verfügung stellt, die sie benötigen, um psychologische Daten und statistische Ergebnisse zu interpretieren. Diese aktualisierte Ausgabe enthält drei Hauptmerkmale, die sie von früheren Versionen unterscheiden: 1. Integration mit JASP: Das Buch ist eng mit dem kostenlosen statistischen Analyseprogramm JASP integriert, so dass die Schüler lernen können, wie man JASP für Aufgaben wie das Erstellen von gruppierten Frequenzverteilungen, das Erstellen von Violingrafiken, das Durchführen logischer statistischer Tests und das Erstellen von Konfidenzintervallen verwendet. 2. Bayes'sche Statistik: Diese Ausgabe spiegelt die zunehmende Verwendung der Bayes'schen Analyse in der Fachliteratur wider und enthält ein Kapitel zur Einführung bayesscher Statistiken mit JASP. 3. Zusätzliche Fragen: Der Text enthält zusätzliche Fragen, die das Verständnis der Schüler nach jedem Hauptabschnitt herausfordern sollen. Diese Fragen helfen, das rnen zu stärken und das Verständnis zu verbessern, basierend auf Studien der kognitiven Psychologie.
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arning From Data, 4th Edition, okuyuculara psikolojik verileri ve istatistiksel sonuçları yorumlamak için ihtiyaç duydukları araçları sağlayan, istatistiksel akıl yürütmeye yönelik kapsamlı bir kılavuzdur. Bu güncellenmiş sürüm, önceki sürümlerden ayıran üç temel özellik içerir: 1. JASP Entegrasyonu: Kitap, JASP'ın ücretsiz istatistiksel analiz programı ile sıkı bir şekilde entegre edilmiştir ve öğrencilerin gruplandırılmış frekans dağılımları oluşturma, keman grafikleri oluşturma, mantıksal istatistiksel testler yapma ve güven aralıkları oluşturma gibi görevler için JASP'yi nasıl kullanacaklarını öğrenmelerini sağlar. 2. Bayes istatistikleri: Bayes analizinin profesyonel literatürde artan kullanımını yansıtan bu baskı, JASP kullanarak Bayes istatistiklerini tanıtan bir bölüm içermektedir. 3. Ek Sorular: Metin, her ana bölümden sonra öğrencilerin anlayışına meydan okumayı amaçlayan ek sorular içerir. Bu sorular öğrenmeyi güçlendirmeye ve bilişsel psikoloji araştırmalarına dayanan anlayışı geliştirmeye yardımcı olur.
التعلم من البيانات، الطبعة الرابعة هي دليل شامل للتفكير الإحصائي، حيث تزود القراء بالأدوات التي يحتاجونها لتفسير البيانات النفسية والنتائج الإحصائية. يتضمن هذا الإصدار المحدث ثلاث ميزات رئيسية تميزه عن الإصدارات السابقة: 1. تكامل JASP: تم دمج الكتاب بإحكام مع برنامج التحليل الإحصائي المجاني لـ JASP، مما يسمح للطلاب بتعلم كيفية استخدام JASP لمهام مثل بناء توزيعات التردد المجمعة، وإنشاء رسوم بيانية للكمان، وإجراء اختبارات إحصائية منطقية، وإنشاء فترات ثقة. 2. الإحصاءات البايزية: تعكس هذه الطبعة الاستخدام المتزايد للتحليل البايزي في الأدب المهني، وتتضمن فصلاً يقدم الإحصاءات البايزية باستخدام JASP. 3. أسئلة إضافية: يتضمن النص أسئلة إضافية تهدف إلى تحدي فهم الطلاب بعد كل قسم رئيسي. تساعد هذه الأسئلة في تعزيز التعلم وتحسين الفهم بناءً على أبحاث علم النفس المعرفي.

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