Data, engineering and applications Volume 1 /

This book presents a compilation of current trends, technologies, and challenges in connection with Big Data. Many fields of science and engineering are data-driven, or generate huge amounts of data that are ripe for the picking. There are now more sources of data than ever before, and more means of...

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Other Authors: Shukla, Rajesh K.,, Agrawal, Jitendra,, Sharma, Sanjeev (Information technology executive), Tomer, Geetam Singh,, SpringerLink (Online service)
Format: eBook
Language: English
Published: Singapore : Springer, 2019.
Physical Description: 1 online resource (viii, 191 pages) : illustrations (some color)
Subjects:
Table of Contents:
  • Intro; Contents; About the Editors; On Data Mining and Social Networking; A Review of Recommender System and Related Dimensions; 1 Introduction; 1.1 Motivation and Problem Explanation; 2 Literature Review; 3 Recommender System Model; 4 Evaluation Metrics for Recommendation Algorithms; 4.1 For Predict on User Ratings; 5 Dimensions of Recommender System; 6 Conclusion; References; Collaborative Filtering Techniques in Recommendation Systems; 1 Introduction; 2 Goals and Critical Challenges; 2.1 Goals; 2.2 Challenges; 3 Classification; 3.1 Content-Based Filtering System.
  • 2 Proposed Work2.1 System Overview; 2.2 Methodology; 2.3 Proposed Algorithm; 3 Results Analysis; 3.1 Precision; 3.2 Recall; 3.3 F-measures; 3.4 Time Requirements; 3.5 Memory Usage; 4 Conclusion and Future Work; 4.1 Conclusion; 4.2 Future Work; References; Sentiment Analysis on WhatsApp Group Chat Using R; 1 Introduction; 2 Literature Review; 3 Implementation of Sentiment Analysis Using R Studio; 4 Result Analysis; 5 Conclusion; References; A Recent Survey on Information-Hiding Techniques; 1 Introduction; 1.1 Information Hiding; 2 Illustration of Data-Hiding Technique.
  • 2.1 Survey on Reversible Data-Hiding Technique3 Comparison and Discussion; 4 Conclusion; References; Investigation of Feature Selection Techniques on Performance of Automatic Text Categorization; 1 Introduction; 2 Related Work; 3 Material and Methodology; 3.1 Data Source; 3.2 Methodology; 4 Experimental Results and Discussions; 5 Conclusion; References; Identification and Analysis of Future User Interactions Using Some Link Prediction Methods in Social Networks; 1 Introduction; 2 Related Work; 3 Methodology; 3.1 Overview; 3.2 Followers Matrix Computation; 3.3 Celebrity Data Removal.
  • 3.4 Positive Edges Sampling3.5 Negative Edges Generation and Sampling; 3.6 Feature Set Extraction; 3.7 Proximity Feature; 3.8 Ego-Centric Features; 3.9 Aggregation Features; 3.10 Edges Classification; 4 Unsupervised Learning; 4.1 Cosine Similarity; 4.2 Jaccard Similarity Coefficient; 4.3 Adamic-Adar Index; 5 Supervised Learning; 6 KNN; 6.1 Random Forest; 6.2 Non-linear SVM; 7 Experimental Results and Analysis; 8 Conclusion and Future Works; References; Sentiment Prediction of Facebook Status Updates of Youngsters; 1 Introduction; 2 Literature Review; 3 Proposed Methodology.