Management Decision Making Big Data and Analytics

Management Decision Making  Big Data and Analytics
Author: Simone Gressel,David J. Pauleen,Nazim Taskin
Publsiher: SAGE
Total Pages: 354
Release: 2020-10-12
Genre: Business & Economics
ISBN: 9781529738285

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Accessible and concise, this exciting new textbook examines data analytics from a managerial and organizational perspective and looks at how they can help managers become more effective decision-makers. The book successfully combines theory with practical application, featuring case studies, examples and a ‘critical incidents’ feature that make these topics engaging and relevant for students of business and management. The book features chapters on cutting-edge topics, including: • Big data • Analytics • Managing emerging technologies and decision-making • Managing the ethics, security, privacy and legal aspects of data-driven decision-making The book is accompanied by an Instructor’s Manual, PowerPoint slides and access to journal articles. Suitable for management students studying business analytics and decision-making at undergraduate, postgraduate and MBA levels.

Big Data on Campus

Big Data on Campus
Author: Karen L. Webber,Henry Y. Zheng
Publsiher: Johns Hopkins University Press
Total Pages: 337
Release: 2020-11-03
Genre: Education
ISBN: 9781421439037

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Webber, Henry Y. Zheng, Ying Zhou

Big Data Analytics for Improved Accuracy Efficiency and Decision Making in Digital Marketing

Big Data Analytics for Improved Accuracy  Efficiency  and Decision Making in Digital Marketing
Author: Singh, Amandeep
Publsiher: IGI Global
Total Pages: 310
Release: 2021-06-18
Genre: Business & Economics
ISBN: 9781799872337

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The availability of big data, low-cost commodity hardware, and new information management and analytic software have produced a unique moment in the history of data analysis. The convergence of these trends means that we have the capabilities required to analyze astonishing data sets quickly and cost-effectively for the first time in history. They represent a genuine leap forward and a clear opportunity to realize enormous gains in terms of efficiency, productivity, revenue, and profitability especially in digital marketing. Data plays a huge role in understanding valuable insights about target demographics and customer preferences. From every interaction with technology, regardless of whether it is active or passive, we are creating new data that can describe us. If analyzed correctly, these data points can explain a lot about our behavior, personalities, and life events. Companies can leverage these insights for product improvements, business strategy, and marketing campaigns to cater to the target customers. Big Data Analytics for Improved Accuracy, Efficiency, and Decision Making in Digital Marketing aids understanding of big data in terms of digital marketing for meaningful analysis of information that can improve marketing efforts and strategies using the latest digital techniques. The chapters cover a wide array of essential marketing topics and techniques, including search engine marketing, consumer behavior, social media marketing, online advertising, and how they interact with big data. This book is essential for professionals and researchers working in the field of analytics, data, and digital marketing, along with marketers, advertisers, brand managers, social media specialists, managers, sales professionals, practitioners, researchers, academicians, and students looking for the latest information on how big data is being used in digital marketing strategies.

Bursting the Big Data Bubble

Bursting the Big Data Bubble
Author: Jay Liebowitz
Publsiher: CRC Press
Total Pages: 356
Release: 2014-07-25
Genre: Business & Economics
ISBN: 9781040074985

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As we get caught up in the quagmire of big data and analytics, it is important to be able to reflect and apply insights, experience, and intuition as part of the decision-making process. This book focuses on this intuition-based decision making. The first part of the book presents contributions from leading researchers worldwide on the topic of intuition-based decision making as applied to management. In the second part, executives and senior managers in industry, government, universities, and not-for-profits present vignettes that illustrate how they have used intuition in making key decisions.

Big Data Mining and Analytics

Big Data  Mining  and Analytics
Author: Stephan Kudyba
Publsiher: CRC Press
Total Pages: 306
Release: 2014-03-12
Genre: Computers
ISBN: 9781466568716

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This book ties together big data, data mining, and analytics to explain how readers can leverage them to transform their business strategy. Illustrating basic approaches of business intelligence to data and text mining, the book guides readers through the process of extracting valuable knowledge from the varieties of data currently being generated in the brick and mortar and Internet environments. It considers the broad spectrum of analytics approaches for decision making, including dashboards, OLAP cubes, data mining, and text mining.

Intelligent and Fuzzy Techniques in Big Data Analytics and Decision Making

Intelligent and Fuzzy Techniques in Big Data Analytics and Decision Making
Author: Cengiz Kahraman,Selcuk Cebi,Sezi Cevik Onar,Basar Oztaysi,A. Cagri Tolga,Irem Ucal Sari
Publsiher: Springer
Total Pages: 1392
Release: 2019-07-05
Genre: Technology & Engineering
ISBN: 9783030237561

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This book includes the proceedings of the Intelligent and Fuzzy Techniques INFUS 2019 Conference, held in Istanbul, Turkey, on July 23–25, 2019. Big data analytics refers to the strategy of analyzing large volumes of data, or big data, gathered from a wide variety of sources, including social networks, videos, digital images, sensors, and sales transaction records. Big data analytics allows data scientists and various other users to evaluate large volumes of transaction data and other data sources that traditional business systems would be unable to tackle. Data-driven and knowledge-driven approaches and techniques have been widely used in intelligent decision-making, and they are increasingly attracting attention due to their importance and effectiveness in addressing uncertainty and incompleteness. INFUS 2019 focused on intelligent and fuzzy systems with applications in big data analytics and decision-making, providing an international forum that brought together those actively involved in areas of interest to data science and knowledge engineering. These proceeding feature about 150 peer-reviewed papers from countries such as China, Iran, Turkey, Malaysia, India, USA, Spain, France, Poland, Mexico, Bulgaria, Algeria, Pakistan, Australia, Lebanon, and Czech Republic.

Big Data Quantification for Complex Decision Making

Big Data Quantification for Complex Decision Making
Author: Zhang, Chao,Li, Wentao
Publsiher: IGI Global
Total Pages: 328
Release: 2024-04-16
Genre: Business & Economics
ISBN: 9798369315835

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Many professionals are facing a monumental challenge: navigating the intricate landscape of information to make impactful choices. The sheer volume and complexity of big data have ushered in a shift, demanding innovative methodologies and frameworks. Big Data Quantification for Complex Decision-Making tackles this challenge head-on, offering a comprehensive exploration of the tools necessary to distill valuable insights from datasets. This book serves as a tool for professionals, researchers, and students, empowering them to not only comprehend the significance of big data in decision-making but also to translate this understanding into real-world decision making. The central objective of the book is to examine the relationship between big data and decision-making. It strives to address multiple objectives, including understanding the intricacies of big data in decision-making, navigating methodological nuances, managing uncertainty adeptly, and bridging theoretical foundations with real-world applications. The book's core aspiration is to provide readers with a comprehensive toolbox, seamlessly integrating theoretical frameworks, practical applications, and forward-thinking perspectives. This equips readers with the means to effectively navigate the data-rich landscape of modern decision-making, fostering a heightened comprehension of strategic big data utilization. Tailored for a diverse audience, this book caters to researchers and academics in data science, decision science, machine learning, artificial intelligence, and related domains.

Big Data Analytics Using Multiple Criteria Decision Making Models

Big Data Analytics Using Multiple Criteria Decision Making Models
Author: Ramakrishnan Ramanathan,Muthu Mathirajan,A. Ravi Ravindran
Publsiher: CRC Press
Total Pages: 569
Release: 2017-07-12
Genre: Computers
ISBN: 9781351648691

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Multiple Criteria Decision Making (MCDM) is a subfield of Operations Research, dealing with decision making problems. A decision-making problem is characterized by the need to choose one or a few among a number of alternatives. The field of MCDM assumes special importance in this era of Big Data and Business Analytics. In this volume, the focus will be on modelling-based tools for Business Analytics (BA), with exclusive focus on the sub-field of MCDM within the domain of operations research. The book will include an Introduction to Big Data and Business Analytics, and challenges and opportunities for developing MCDM models in the era of Big Data.