BOOKS - Data-Driven Modelling and Predictive Analytics in Business and Finance
Data-Driven Modelling and Predictive Analytics in Business and Finance - Alex Khang, Rashmi Gujrati, Hayri Uygun, R.K. Tailor, Sanjaya Singh Gaur 2025 PDF CRC Press BOOKS
ECO~18 kg CO²

1 TON

Views
43957

Telegram
 
Data-Driven Modelling and Predictive Analytics in Business and Finance
Author: Alex Khang, Rashmi Gujrati, Hayri Uygun, R.K. Tailor, Sanjaya Singh Gaur
Year: 2025
Pages: 443
Format: PDF
File size: 18.9 MB
Language: ENG



Pay with Telegram STARS
The book "Data-Driven Modeling and Predictive Analytics in Business and Finance" presents a comprehensive overview of data-driven modeling and predictive analytics in business and finance, providing readers with the tools and techniques needed to make informed decisions in today's fast-paced data-driven world. The book covers topics such as data mining, machine learning, statistical modeling, and predictive analytics, and provides real-world examples of how these techniques are used in various industries. The book begins by discussing the importance of data-driven modeling and predictive analytics in business and finance, highlighting their growing importance in today's data-driven world. It then delves into the fundamentals of data mining, including data types, data preprocessing, and data visualization, before moving on to more advanced topics such as machine learning and statistical modeling. Throughout the book, the author emphasizes the need for a personal paradigm for perceiving the technological process of developing modern knowledge, arguing that this is essential for survival in a rapidly changing world.
В книге «Data-Driven Modeling and Predictive Analytics in Business and Finance» (Моделирование и прогнозная аналитика на основе данных в бизнесе и финансах) представлен всесторонний обзор моделирования и прогнозной аналитики на основе данных в бизнесе и финансах, предоставляющий читателям инструменты и методы, необходимые для принятия обоснованных решений в современном быстро меняющемся мире данных. В книге рассматриваются такие темы, как интеллектуальный анализ данных, машинное обучение, статистическое моделирование и предиктивная аналитика, а также приводятся реальные примеры того, как эти методы используются в различных отраслях. Книга начинается с обсуждения важности моделирования на основе данных и прогнозной аналитики в бизнесе и финансах, подчеркивая их растущую важность в современном мире на основе данных. Затем он углубляется в основы интеллектуального анализа данных, включая типы данных, предварительную обработку данных и визуализацию данных, прежде чем перейти к более продвинутым темам, таким как машинное обучение и статистическое моделирование. На протяжении всей книги автор подчёркивает необходимость личной парадигмы восприятия технологического процесса развития современного знания, утверждая, что это необходимо для выживания в быстро меняющемся мире.
livre « Data-Driven Modeling and Predictive Analytics in Business and Finance » présente un aperçu complet de la modélisation et de l'analyse prédictive en entreprise et en finance, fournissant aux lecteurs les outils et les méthodes nécessaires pour prendre des décisions éclairées dans un monde de données en évolution rapide. livre traite de sujets tels que l'exploration de données, l'apprentissage automatique, la modélisation statistique et l'analyse prédictive, et fournit des exemples réels de la façon dont ces méthodes sont utilisées dans différents secteurs. livre commence par discuter de l'importance de la modélisation basée sur les données et de l'analyse prédictive dans les affaires et la finance, soulignant leur importance croissante dans le monde des données d'aujourd'hui. Il s'oriente ensuite vers les bases de l'exploration de données, y compris les types de données, le prétraitement des données et la visualisation des données, avant de passer à des sujets plus avancés tels que l'apprentissage automatique et la modélisation statistique. Tout au long du livre, l'auteur souligne la nécessité d'un paradigme personnel de la perception du processus technologique du développement des connaissances modernes, affirmant que cela est nécessaire pour survivre dans un monde en mutation rapide.
libro «Data-Driven Modeling and Predictive Analytics in Business and Finance» (Modelización y Análisis Predictivo Basado en Datos en Negocios y Finanzas) presenta una revisión integral de la simulación y análisis predictivo basado en datos en negocios y finanzas, proporcionando a los lectores herramientas y los métodos necesarios para tomar decisiones informadas en el mundo de los datos que cambia rápidamente. libro aborda temas como la minería de datos, el aprendizaje automático, la simulación estadística y la analítica predictiva, y proporciona ejemplos reales de cómo se utilizan estas técnicas en diferentes industrias. libro comienza discutiendo la importancia de la simulación basada en datos y análisis predictivo en negocios y finanzas, destacando su creciente importancia en el mundo actual basado en datos. Luego se profundiza en los fundamentos de la minería de datos, incluyendo los tipos de datos, el pre-procesamiento de datos y la visualización de datos, antes de pasar a temas más avanzados como el aprendizaje automático y la simulación estadística. A lo largo del libro, el autor hace hincapié en la necesidad de un paradigma personal para percibir el proceso tecnológico del desarrollo del conocimiento moderno, argumentando que es necesario para sobrevivir en un mundo que cambia rápidamente.
Il libro «Data-Driven Modeling and Predictive Analytics in Business and Finance» fornisce ai lettori gli strumenti e i metodi necessari per prendere decisioni affidabili in un mondo di dati in continua evoluzione. Il libro affronta argomenti quali l'analisi intelligente dei dati, l'apprendimento automatico, la simulazione statistica e l'analisi predittiva, e fornisce esempi concreti di come questi metodi vengono utilizzati in diversi settori. Il libro inizia discutendo l'importanza della modellazione basata sui dati e degli analisti di previsione nel settore aziendale e finanziario, sottolineando la loro crescente importanza nel mondo moderno basato sui dati. approfondisce quindi sulle basi dell'analisi intelligente dei dati, inclusi i tipi di dati, il pre-elaborazione e la visualizzazione dei dati, prima di passare a temi più avanzati come l'apprendimento automatico e la simulazione statistica. Durante tutto il libro, l'autore sottolinea la necessità di un paradigma personale della percezione del processo tecnologico dello sviluppo della conoscenza moderna, sostenendo che questo è necessario per sopravvivere in un mondo in rapida evoluzione.
Das Buch „Data-Driven Modeling and Predictive Analytics in Business and Finance“ bietet einen umfassenden Überblick über Data-Driven Modeling und Predictive Analytics in Business and Finance und bietet den sern die Werkzeuge und Techniken, die sie benötigen, um in der heutigen schnelllebigen Datenwelt fundierte Entscheidungen zu treffen. Das Buch behandelt Themen wie Data Mining, maschinelles rnen, statistische Modellierung und Predictive Analytics und liefert reale Beispiele dafür, wie diese Techniken in verschiedenen Branchen eingesetzt werden. Das Buch beginnt mit einer Diskussion über die Bedeutung datengesteuerter Modellierung und prädiktiver Analysen in Wirtschaft und Finanzen und unterstreicht deren wachsende Bedeutung in der heutigen datengesteuerten Welt. Anschließend geht es tiefer in die Grundlagen des Data Mining, einschließlich Datentypen, Datenvorverarbeitung und Datenvisualisierung, bevor es zu fortgeschritteneren Themen wie maschinellem rnen und statistischer Modellierung geht. Während des gesamten Buches betont der Autor die Notwendigkeit eines persönlichen Paradigmas für die Wahrnehmung des technologischen Prozesses der Entwicklung des modernen Wissens und argumentiert, dass dies für das Überleben in einer sich schnell verändernden Welt notwendig ist.
Data-Drived Modeling and Presential Analytics in Business and Finance מספקת סקירה מקיפה של מודלים מונעי נתונים וניתוחי חיזוי בתחום העסקים והפיננסים, המספקים לקוראים את הכלים והטכניקות שהם צריכים לקבל החלטות מושכלות בעולם הנתונים המשתנה במהירות. הספר עוסק בנושאים כגון כריית נתונים, למידת מכונה, מודלים סטטיסטיים ואנליטיקת ניבוי, ומספק דוגמאות מהעולם האמיתי לאופן השימוש בשיטות אלה ברחבי התעשיות. הספר מתחיל בדיונים על חשיבותם של מודלים מונעי נתונים ואנליטיות חיזוי בעסקים ובכספים, ומדגיש את חשיבותם ההולכת וגוברת בעולם מונע הנתונים של ימינו. לאחר מכן הוא מתעמק ביסודות כריית נתונים, כולל סוגי נתונים, עיבוד נתונים וזיהוי נתונים, לפני שהוא עובר לנושאים מתקדמים יותר כגון למידת מכונה ומודלים סטטיסטיים. לאורך הספר מדגיש המחבר את הצורך בפרדיגמה אישית של תפיסה לגבי התהליך הטכנולוגי של התפתחות הידע המודרני, בטענה שהדבר הכרחי להישרדות בעולם המשתנה במהירות.''
İş ve Finansta Veri Odaklı Modelleme ve Tahmine Dayalı Analitik, okuyuculara günümüzün hızla değişen veri dünyasında bilinçli kararlar vermek için ihtiyaç duydukları araç ve teknikleri sağlayarak, iş ve finansta veri odaklı modelleme ve tahmine dayalı analitiğe kapsamlı bir genel bakış sağlar. Kitap, veri madenciliği, makine öğrenimi, istatistiksel modelleme ve tahmine dayalı analitik gibi konuları kapsar ve bu yöntemlerin endüstriler arasında nasıl kullanıldığına dair gerçek dünya örnekleri sunar. Kitap, iş dünyasında ve finansta veri odaklı modellemenin ve öngörücü analitiğin önemini tartışarak başlıyor ve günümüzün veri odaklı dünyasında artan önemini vurguluyor. Daha sonra, makine öğrenimi ve istatistiksel modelleme gibi daha ileri konulara geçmeden önce veri türleri, veri ön işleme ve veri görselleştirme dahil olmak üzere veri madenciliğinin temellerini araştırıyor. Kitap boyunca, yazar, hızla değişen bir dünyada hayatta kalmak için gerekli olduğunu savunarak, modern bilginin gelişiminin teknolojik sürecinin kişisel bir algı paradigmasına duyulan ihtiyacı vurgulamaktadır.
تقدم النمذجة القائمة على البيانات والتحليلات التنبؤية في مجال الأعمال والتمويل نظرة عامة شاملة على النمذجة القائمة على البيانات والتحليلات التنبؤية في مجال الأعمال والتمويل، مما يوفر للقراء الأدوات والتقنيات التي يحتاجونها لاتخاذ قرارات مستنيرة في عالم البيانات سريع التغير اليوم. يغطي الكتاب موضوعات مثل التنقيب عن البيانات والتعلم الآلي والنمذجة الإحصائية والتحليلات التنبؤية، ويقدم أمثلة واقعية لكيفية استخدام هذه الأساليب عبر الصناعات. يبدأ الكتاب بمناقشة أهمية النمذجة القائمة على البيانات والتحليلات التنبؤية في الأعمال والتمويل، مما يسلط الضوء على أهميتها المتزايدة في عالم اليوم القائم على البيانات. ثم يتعمق في أساسيات التنقيب عن البيانات، بما في ذلك أنواع البيانات، ومعالجة البيانات مسبقًا، وتصور البيانات، قبل الانتقال إلى موضوعات أكثر تقدمًا مثل التعلم الآلي والنمذجة الإحصائية. في جميع أنحاء الكتاب، يؤكد المؤلف على الحاجة إلى نموذج شخصي للإدراك للعملية التكنولوجية لتطوير المعرفة الحديثة، بحجة أن هذا ضروري للبقاء في عالم سريع التغير.
商業和金融中的數據驅動建模和預測分析(基於商業和金融中的數據的建模和預測分析)一書全面概述了商業和金融中的基於數據的建模和預測分析,為讀者提供了在當今快速變化的數據世界中做出明智決策所需的工具和方法。該書探討了諸如數據挖掘,機器學習,統計建模和預測分析之類的主題,並提供了如何在各個行業中使用這些方法的真實示例。本書首先討論了基於數據的建模和預測分析在商業和金融中的重要性,強調了它們在當今基於數據的世界中的日益重要性。然後深入研究數據挖掘的基礎,包括數據類型、數據預處理和數據可視化,然後轉向機器學習和統計建模等更高級的主題。在整個書中,作者強調需要個人範式來感知現代知識發展的過程過程,並認為這對於在快速變化的世界中生存至關重要。

You may also be interested in:

Advanced Analytics with Transact-SQL: Exploring Hidden Patterns and Rules in Your Data
Green Computing for Sustainable Smart Cities A Data Analytics Applications Perspective
Machine Learning for Civil and Environmental Engineers A Practical Approach to Data-driven Analysis, Explainability, and Causality
The Family Firm: A Data-Driven Guide to Better Decision Making in the Early School Years (The ParentData Series)
Machine Learning for Civil and Environmental Engineers: A Practical Approach to Data-Driven Analysis, Explainability, and Causality
CRC Handbook of Basic Tables for Chemical Analysis Data-Driven Methods and Interpretation, Fourth Edition
Statistics 101 From Data Analysis and Predictive Modeling to Measuring Distribution and Determining Probability, Your Essential Guide to Statistics (Adams 101)
Machine Learning in Python for Dynamic Process Systems A practitioner’s guide for building process modeling, predictive, and monitoring solutions using dynamic data
Machine Learning in Python for Dynamic Process Systems A practitioner’s guide for building process modeling, predictive, and monitoring solutions using dynamic data
Management in the Era of Big data Issues and Challenges (Data Analytics Applications)
No-Code Data Science Mastering Advanced Analytics, Machine Learning, and Artificial Intelligence
Health Analytics with R Learning Data Science Using Examples from Healthcare and Direct-to-Consumer Genetics
Football Analytics with Python & R Learning Data Science Through the Lens of Sports (Final)
No-Code Data Science Mastering Advanced Analytics, Machine Learning, and Artificial Intelligence
Data Mining for Business Analytics Concepts, Techniques, and Applications with XLMiner, 3rd Edition
Amazon Redshift The Definitive Guide Jump-Start Analytics Using Cloud Data Warehousing
The Analytics Revolution in Higher Education: Big Data, Organizational Learning, and Student Success
Football Analytics with Python & R Learning Data Science Through the Lens of Sports (Final)
AWS Certified Data Analytics Study Guide Specialty (DAS-C01) Exam
Advanced Metaheuristic Methods in Big Data Retrieval and Analytics (Advances in Computational Intelligence and Robotics)
Product Analytics Applied Data Science Techniques for Actionable Consumer Insights (Rough Cuts)
Machine Learning Cookbook with Python Create ML and Data Analytics Projects Using Some Amazing Open Datasets
Google BigQuery The Definitive Guide Data Warehousing, Analytics, and Machine Learning at Scale, First Edition
Learn Microsoft Fabric: A practical guide to performing data analytics in the era of artificial intelligence
Data Analytics for Discourse Analysis with Python: The Case of Therapy Talk (Routledge Studies in Linguistics)
Extending Excel with Python and R: Unlock the potential of analytics languages for advanced data manipulation and visualization
Graph-Powered Analytics and Machine Learning with TigerGraph: Driving Business Outcomes with Connected Data
Planning and Reporting in BI-supported Controlling: Fundamentals, Business Intelligence, Mobile BI, Big Data Analytics and AI
Deciphering Data Architectures Choosing Between a Modern Data Warehouse, Data Fabric, Data Lakehouse, and Data Mesh
Deciphering Data Architectures Choosing Between a Modern Data Warehouse, Data Fabric, Data Lakehouse, and Data Mesh
Multimedia-enabled Sensors in IoT Data Delivery and Traffic Modelling
The Application of Airborne Lidar Data in the Modelling of 3D Urban Landscape Ecology
Cyber-Physical Systems Data Science, Modelling and Software Optimization
Innovations in Data Analytics: Selected Papers of ICIDA 2022 (Advances in Intelligent Systems and Computing, 1442)
Proceedings of Data Analytics and Management: ICDAM 2022 (Lecture Notes in Networks and Systems Book 572)
Applied Data Analytics - Principles and Applications (River Publishers Series in Signal, Image and Speech Processing)
Google Analytics and GA4: Improve your online sales by better understanding customer data and how customers interact with your website
Data Science and Risk Analytics in Finance and Insurance (Chapman and Hall CRC Financial Mathematics Series)
Python for Beginners A Step by Step Guide to Python Programming, Data Science, and Predictive Model. A Practical Introduction to Machine Learning with Python
Advanced Analytics with Power BI and Excel Learn Powerful Visualization and Data Analysis Techniques Using Microsoft BI Tools along with Python and R