Data Science and Productivity Analytics Data Science and Productivity Analytics
International Series in Operations Research & Management Science

Data Science and Productivity Analytics

Vincent Charles and Others
    • $129.99
    • $129.99

Publisher Description

This book includes a spectrum of concepts, such as performance, productivity, operations research, econometrics, and data science, for the practically and theoretically important areas of ‘productivity analysis/data envelopment analysis’ and ‘data science/big data’. Data science is defined as the collection of scientific methods, processes, and systems dedicated to extracting knowledge or insights from data and it develops on concepts from various domains, containing mathematics and statistical methods, operations research, machine learning, computer programming, pattern recognition, and data visualisation, among others.

Examples of data science techniques include linear and logistic regressions, decision trees, Naïve Bayesian classifier, principal component analysis, neural networks, predictive modelling, deep learning, text analysis, survival analysis, and so on, all of which allow using the data to make more intelligent decisions. On the other hand, it is without a doubt that nowadays the amount of data is exponentially increasing, and analysing large data sets has become a key basis of competition and innovation, underpinning new waves of productivity growth. This book aims to bring a fresh look onto the various ways that data science techniques could unleash value and drive productivity from these mountains of data.

Researchers working in productivity analysis/data envelopment analysis will benefit from learning about the tools available in data science/big data that can be used in their current research analyses and endeavours. The data scientists, on the other hand, will also get benefit from learning about the plethora of applications available in productivity analysis/data envelopment analysis.

GENRE
Business & Personal Finance
RELEASED
2020
May 23
LANGUAGE
EN
English
LENGTH
449
Pages
PUBLISHER
Springer International Publishing
SELLER
Springer Nature B.V.
SIZE
42.3
MB
Modeling Data Irregularities and Structural Complexities in Data Envelopment Analysis Modeling Data Irregularities and Structural Complexities in Data Envelopment Analysis
2007
Applications of Management Science Applications of Management Science
2018
Applications of Management Science Applications of Management Science
2012
Advanced Business Analytics Advanced Business Analytics
2015
Applications of Management Science Applications of Management Science
2015
City, Society, and Digital Transformation City, Society, and Digital Transformation
2022
Data Envelopment Analysis with GAMS Data Envelopment Analysis with GAMS
2023
Modern Indices for International Economic Diplomacy Modern Indices for International Economic Diplomacy
2022
Big Data and Blockchain for Service Operations Management Big Data and Blockchain for Service Operations Management
2022
Data-Enabled Analytics Data-Enabled Analytics
2021
Stochastic Benchmarking Stochastic Benchmarking
2021
Big Data for the Greater Good Big Data for the Greater Good
2018
Supply Chain Disruption Management Supply Chain Disruption Management
2020
Scheduling in Industry 4.0 and Cloud Manufacturing Scheduling in Industry 4.0 and Cloud Manufacturing
2020
Advances in Efficiency and Productivity II Advances in Efficiency and Productivity II
2020
Making Better Decisions Making Better Decisions
2020
The Multi-Criteria Approach for Decision Support The Multi-Criteria Approach for Decision Support
2020
Cross-Chain Collaboration in Logistics Cross-Chain Collaboration in Logistics
2020