001435196 000__ 12313cam\a2200709\i\4500 001435196 001__ 1435196 001435196 003__ OCoLC 001435196 005__ 20230309003841.0 001435196 006__ m\\\\\o\\d\\\\\\\\ 001435196 007__ cr\un\nnnunnun 001435196 008__ 210327s2021\\\\si\\\\\\ob\\\\000\0\eng\d 001435196 019__ $$a1243263376$$a1253411490$$a1281391959$$a1283903235$$a1287269551$$a1287875852 001435196 020__ $$a9789813368156$$q(electronic bk.) 001435196 020__ $$a9813368152$$q(electronic bk.) 001435196 020__ $$a9789813368163$$q(print) 001435196 020__ $$a9813368160 001435196 020__ $$a9789813368170$$q(print) 001435196 020__ $$a9813368179 001435196 020__ $$z9813368144 001435196 020__ $$z9789813368149 001435196 0247_ $$a10.1007/978-981-33-6815-6$$2doi 001435196 035__ $$aSP(OCoLC)1243543345 001435196 040__ $$aEBLCP$$beng$$epn$$cEBLCP$$dYDX$$dGW5XE$$dEBLCP$$dOCLCO$$dOCLCF$$dUKAHL$$dVT2$$dLIP$$dN$T$$dAFU$$dOCLCO$$dSOE$$dOCLCQ 001435196 049__ $$aISEA 001435196 050_4 $$aQA76.9.D343$$bT74 2021 001435196 08204 $$a006.3/12$$223 001435196 24500 $$aTrends of data science and applications :$$btheory and practices /$$cSiddharth Swarup Rautaray, Phani Pemmaraju, Hrushikesha Mohanty, editors. 001435196 264_1 $$aSingapore :$$bSpringer,$$c2021. 001435196 300__ $$a1 online resource (xii, 341 pages) 001435196 336__ $$atext$$btxt$$2rdacontent 001435196 337__ $$acomputer$$bc$$2rdamedia 001435196 338__ $$aonline resource$$bcr$$2rdacarrier 001435196 347__ $$atext file 001435196 347__ $$bPDF 001435196 4901_ $$aStudies in Computational Intelligence ;$$vv. 954 001435196 504__ $$aIncludes bibliographical references. 001435196 5050_ $$aIntro -- Preface -- Acknowledgements -- About This Book -- Contents -- About the Editors -- NLP for Sentiment Computation -- 1 Introduction -- 2 Natural Language and Sentiments -- 3 Lexical Based -- 4 Corpora Based -- 5 Aspect Based -- 6 Trends -- 6.1 Social Semantic -- 6.2 Multi Domain -- 7 Conclusion -- References -- Productizing an Artificial Intelligence Solution for Intelligent Detail Extraction-Synergy of Symbolic and Sub-Symbolic Artificial Intelligence Techniques -- 1 Introduction -- 2 Problem Description of Intelligent Detail Extraction -- 3 Components of an IDE -- 4 Survey of Work on Extraction of Characters -- 5 Case Study: Invoice Processing -- 5.1 Details -- 5.2 Architecture -- 5.3 Challenges -- 5.4 Insight -- 5.5 Discovery and Productizing -- 6 Results and Conclusion -- References -- Digital Consumption Pattern and Impacts of Social Media: Descriptive Statistical Analysis -- 1 Introduction -- 2 Review of Literature -- 3 Access of Internet Across Generations -- 4 Impact of Internet on Business-Management -- 5 Impact of Internet on Kids, Adolescents and Adults -- 6 Internet Service Providers (ISP) in India During This COVID-19 Lockdown -- 7 Objective and Methodology of Primary Data Collection -- 8 Data Analysis -- 9 Bi-variate Analysis -- 10 Conclusion -- References -- Applicational Statistics in Data Science and Machine Learning -- 1 Introduction -- 1.1 Statistics and Exploratory Data Analysis -- 1.2 Statistical Tools and Techniques -- 2 Sampling Techniques -- 2.1 Population Versus Sample -- 2.2 Sampling Methods -- 3 Types of Variables -- 3.1 Random Variable -- 3.2 Categorical Data -- 3.3 Numerical Data -- 3.4 Qualitative Data -- 3.5 Quantitative Data -- 4 Visualizing Data -- 4.1 Categorical Data -- 4.2 Numerical Data -- 5 Measures of Central Tendency -- 5.1 Mean -- 5.2 Median -- 5.3 Mode -- 5.4 Variance -- 5.5 Standard Deviation. 001435196 5058_ $$a6 Distributions in Statistics -- 6.1 Probability Distributions -- 6.2 PMF Versus PDF -- 6.3 Common Probability Distributions -- 6.4 Kurtosis -- 6.5 Skewness in Distributions -- 6.6 Scaling and Transformations -- 7 Outlier Treatment -- 7.1 Understanding Outliers -- 7.2 Detecting Outliers -- 8 Correlation Analysis -- 8.1 Steps for Correlation Analysis -- 8.2 Autocorrelation Versus Partial Correlation -- 9 Variance and Covariance Analysis -- 9.1 Analysis of Variance (ANOVA) -- 9.2 Analysis of Covariance (ANCOVA) -- 9.3 Multiple Analysis of Variance (MANOVA) -- 9.4 Multiple Analysis of Covariance (MANCOVA) -- 10 Chi-Square Analysis -- 11 Z-Score -- 12 Bias Versus Variance -- 12.1 Bias-Variance Trade-Off -- 12.2 Overfitting and Underfitting -- 13 Hypothesis Testing -- 13.1 Errors in Hypothesis Testing -- 14 Conclusion -- References -- Evolutionary Algorithms-Based Machine Learning Models -- 1 Introduction -- 2 Application Domains -- 2.1 Engineering Applications -- 2.2 Applied Sciences -- 2.3 Disaster Management -- 2.4 Finance and Economy -- 2.5 Health -- 3 Analysis and Discussion -- 3.1 Issues -- 3.2 Gap Analysis -- 4 Conclusion -- References -- Application to Predict the Impact of COVID-19 in India Using Deep Learning -- 1 Introduction -- 2 Proposed Work -- 3 Proposed Modules -- 4 Deep Learning -- 4.1 CNN Model -- 5 System Implementation -- 5.1 Decomposition of the COVID-19 Data -- 6 Results and Analysis -- 7 Conclusion and Future Direction -- References -- Role of Data Analytics in Bio Cyber Physical Systems -- 1 Introduction -- 2 Cyber Physical Systems -- 2.1 CPS and IoT -- 2.2 Concept Map of Cyber Physical Systems -- 2.3 Bio Cyber Physical Systems -- 3 Health Wearables -- 3.1 Fitness Trackers/Smart Watches -- 3.2 Types of Sensors -- 3.3 Activity Log -- 3.4 Advanced Sensors -- 3.5 Data Gathering -- 4 Diabetes -- 4.1 Complications of Diabetes. 001435196 5058_ $$a5 Case Studies of Diabetic Complications -- 5.1 Heart-Attack -- 5.2 Seizures and Strokes -- 6 Role of Neural Networks in the Case Scenarios -- 6.1 Convolutional Neural Network -- 7 Multi-channel CNN -- 8 Complication Prediction Through LSTM -- 9 Conclusion -- References -- Evolution of Sentiment Analysis: Methodologies and Paradigms -- 1 Introduction -- 2 Foundational Methods -- 2.1 Supervised -- 2.2 Unsupervised and Semi-supervised -- 3 Applications -- 4 Comparative Study -- 4.1 Convolutional and Recurrent Neural Network (with LSTMs) -- 4.2 Word Embeddings/Representations -- 4.3 Deep Belief Networks -- 4.4 Rule-Based and Other Classifiers -- 5 Latest Developments and State-of-the-Art -- 5.1 Transfer Learning and Language Models -- 5.2 Attention and the Transformer -- 5.3 Transformers-Based Architectures -- 5.4 Limits of Transfer Learning -- 6 Conclusions -- References -- Healthcare Analytics: An Advent to Mitigate the Risks and Impacts of a Pandemic -- 1 Introduction -- 1.1 Healthcare Sector -- 1.2 Analytics Domain -- 1.3 Application of Analytics in Healthcare Domain -- 2 Background -- 3 Research on Pandemics and Their Impacts -- 4 Development of Healthcare Information System and Healthcare Analytics -- 5 Results -- 6 Illustration -- 7 Conclusion -- References -- Image Classification for Binary Classes Using Deep Convolutional Neural Network: An Experimental Study -- 1 Introduction -- 2 The Dataset -- 3 Literature Review -- 4 Architecture, Methodology, and Results -- 5 Conclusion -- References -- Leveraging Analytics for Supply Chain Optimization in Freight Industry -- 1 Introduction -- 2 Literature Survey -- 3 Data Storage and Big Data Ecosystem -- 4 Data Processing and Manipulation -- 5 Analytics and Insights -- 6 Machine Learning Implementation -- 6.1 Demand-Supply Matchmaking -- 6.2 Pricing and Incentives. 001435196 5058_ $$a6.3 User Segmentations to Understand User Activities -- 7 Comparative Study of Different Techniques -- 8 Chapter Takeaways and Significance -- 9 Conclusion and Future Scope -- References -- Trends and Application of Data Science in Bioinformatics -- 1 Introduction -- 2 Data Science -- 3 Application of Data Science in Bioinformatics -- 3.1 Genomics -- 3.2 Transcriptomics -- 3.3 Proteomics -- 3.4 Metabolomics -- 3.5 Epigenetics -- 4 Techniques in Data Science that Can Be Used for Bioinformatics -- 4.1 Machine Learning and Deep Learning -- 4.2 Parallel Computing -- 4.3 Cloud Computing -- 5 Future Perspectives -- 6 Conclusion -- References -- Mathematical and Algorithmic Aspects of Scalable Machine Learning -- 1 Introduction -- 1.1 Challenges in Scalable Machine Learning -- 1.2 Reasons for Scaling up Machine Learning -- 2 The Infrastructure of Scalable Machine Learning -- 2.1 Distributed File System -- 2.2 Distributed Topology for Machine Learning -- 3 MapReduce -- 3.1 Benefits of MapReduce -- 4 Linear Regression -- 4.1 Parallel Version of Linear Regression -- 5 Clustering -- 5.1 K-Mean Clustering -- 5.2 Parallel K-mean for a Scalable Environment -- 5.3 DBSCAN -- 5.4 Parallel DBSCAN -- 6 Parallelization of Support Vector Machine -- 7 Decision Tree -- 8 Conclusion -- References -- An Implementation of Text Mining Decision Feedback Model Using Hadoop MapReduce -- 1 Introduction -- 1.1 Conventional Process Flow of Text Mining -- 1.2 Applications of Text Mining -- 2 Literature Survey -- 3 Proposed Decision Feedback-Based Text Mining Model -- 4 Big Data Technologies -- 4.1 Hadoop Distributed File System -- 4.2 MapReduce -- 4.3 Pig -- 4.4 Hive -- 4.5 Sqoop -- 4.6 Oozie -- 4.7 Flume -- 4.8 ZooKeeper -- 5 Word Stemming -- 5.1 Pre-requisites for Stemming -- 5.2 Classification of Stemming -- 6 Proposed Porter Stemmer with Partitioner Algorithm (PSP). 001435196 5058_ $$a7 Hadoop Cluster Operation Modes -- 8 Environment Setup -- 9 Implementation -- 9.1 Data Collection -- 9.2 Text Parsing -- 9.3 Text Filtering -- 9.4 Text Transformation -- 9.5 Feature Selection -- 9.6 Evaluate -- 10 Result and Discussion -- 11 Conclusion and Future Work -- References -- Business Analytics: Process and Practical Applications -- 1 Introduction -- 1.1 Definition -- 1.2 Goal -- 2 Process -- 2.1 CRISP-DM (Cross-Industry Standard Process for Data Mining) -- 2.2 SEMMA (Sample, Explore, Modify, Model, Assess) -- 2.3 Comparative Study -- 2.4 Others Approaches -- 3 Types of Analytics -- 3.1 Descriptive Analytics -- 3.2 Diagnostic Analytics -- 3.3 Predictive Analytics -- 3.4 Prescriptive Analytics -- 3.5 Comparative Study -- 4 Domain and Applications -- 5 Recommendation System(s)-An approach -- 5.1 Types of Recommendation Systems -- 5.2 Benefits of Recommendation System -- 5.3 An Example -- 5.4 Challenges of Recommendation Systems -- 5.5 Comparative Study -- 6 Tools -- 7 Conclusion -- References -- Challenges and Issues of Recommender System for Big Data Applications -- 1 Introduction -- 1.1 Recommendation System Architecture -- 1.2 Big Data -- 2 The Cold Start Problem in Recommendation -- 2.1 New User Cold Start Problem -- 2.2 New Item Cold Start Problem -- 3 Scalability -- 3.1 Scalable Neighborhood Algorithm -- 4 Proactive Recommender System -- 4.1 Proactive Recommendation -- 4.2 Intelligent Proactive Recommender System -- 5 Conclusion -- References. 001435196 506__ $$aAccess limited to authorized users. 001435196 520__ $$aThis book includes an extended version of selected papers presented at the 11th Industry Symposium 2021 held during January 710, 2021. The book covers contributions ranging from theoretical and foundation research, platforms, methods, applications, and tools in all areas. It provides theory and practices in the area of data science, which add a social, geographical, and temporal dimension to data science research. It also includes application-oriented papers that prepare and use data in discovery research. This book contains chapters from academia as well as practitioners on big data technologies, artificial intelligence, machine learning, deep learning, data representation and visualization, business analytics, healthcare analytics, bioinformatics, etc. This book is helpful for the students, practitioners, researchers as well as industry professional. 001435196 588__ $$aDescription based on print version record. 001435196 650_0 $$aData mining. 001435196 650_0 $$aMachine learning. 001435196 650_0 $$aArtificial intelligence. 001435196 650_6 $$aExploration de données (Informatique) 001435196 650_6 $$aApprentissage automatique. 001435196 650_6 $$aIntelligence artificielle. 001435196 655_0 $$aElectronic books. 001435196 7001_ $$aRautaray, Siddharth Swarup. 001435196 7001_ $$aPemmaraju, Phani. 001435196 7001_ $$aMohanty, Hrushikesha. 001435196 77608 $$iPrint version:$$aRautaray, Siddharth Swarup.$$tTrends of Data Science and Applications.$$dSingapore : Springer Singapore Pte. Limited, ©2021$$z9789813368149 001435196 830_0 $$aStudies in computational intelligence ;$$vv. 954. 001435196 852__ $$bebk 001435196 85640 $$3Springer Nature$$uhttps://univsouthin.idm.oclc.org/login?url=https://link.springer.com/10.1007/978-981-33-6815-6$$zOnline Access$$91397441.1 001435196 909CO $$ooai:library.usi.edu:1435196$$pGLOBAL_SET 001435196 980__ $$aBIB 001435196 980__ $$aEBOOK 001435196 982__ $$aEbook 001435196 983__ $$aOnline 001435196 994__ $$a92$$bISE