<p>This volume comprises six well-versed contributed chapters devoted to report the latest fi ndings on the applications of machine learning for big data analytics. Big data is a term for data sets that are so large or complex that traditional data processing application software is inadequate to de
Machine Learning for Big Data Analysis
โ Scribed by Siddhartha Bhattacharyya (editor); Hrishikesh Bhaumik (editor); Anirban Mukherjee (editor); Sourav De (editor)
- Publisher
- De Gruyter
- Year
- 2018
- Tongue
- English
- Leaves
- 193
- Series
- De Gruyter Frontiers in Computational Intelligence; 1
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
This volume comprises six well-versed contributed chapters devoted to report the latest fi ndings on the applications of machine learning for big data analytics. Big data is a term for data sets that are so large or complex that traditional data processing application software is inadequate to deal with them. The possible challenges in this direction include capture, storage, analysis, data curation, search, sharing, transfer, visualization, querying, updating and information privacy.
Big data analytics is the process of examining large and varied data sets - i.e., big data - to uncover hidden patterns, unknown correlations, market trends, customer preferences and other useful information that can help organizations make more-informed business decisions. This volume is intended to be used as a reference by undergraduate and post graduate students of the disciplines of computer science, electronics and telecommunication, information science and electrical engineering.
THE SERIES: FRONTIERS IN COMPUTATIONAL INTELLIGENCE
The series Frontiers In Computational Intelligence is envisioned to provide comprehensive coverage and understanding of cutting edge research in computational intelligence. It intends to augment the scholarly discourse on all topics relating to the advances in artifi cial life and machine learning in the form of metaheuristics, approximate reasoning, and robotics. Latest research fi ndings are coupled with applications to varied domains of engineering and computer sciences. This field is steadily growing especially with the advent of novel machine learning algorithms being applied to different domains of engineering and technology. The series brings together leading researchers that intend to continue to advance the fi eld and create a broad knowledge about the most recent research.
- Well organized chapters discuss most recent trends of hybrid metaheuristic techniques.
- Most efficient approach especially for industrial research.
- Each chapter with case studies and examples.
๐ SIMILAR VOLUMES
<span><p>This book focuses on research aspects of ensemble approaches of machine learning techniques that can be applied to address the big data problems.</p> <p>In this book, various advancements of machine learning algorithms to extract data-driven decisions from big data in diverse domains such a
This book provides a detailed description of the entire study process concerning gathering and analysing big data and making observations to develop a crime-prediction model that utilises its findings. It offers an in-depth discussion of several processes, including text mining, which extracts usefu
<h2><span>Are you a new business owner? Or an entrepreneur looking to catch up to the big companies in your industrial sector?<br></span></h2><h2><span>Do you want to find a new solution for complex decisions and maybe automate the entire process?</span></h2><h2><span>Don't worry: a background in co
<span><p>This book focuses on research aspects of ensemble approaches of machine learning techniques that can be applied to address the big data problems.</p> <p>In this book, various advancements of machine learning algorithms to extract data-driven decisions from big data in diverse domains such a