
Intelligent Data Analytics for Terror Threat Prediction
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This book provides innovative insights that will help obtain interventions to undertake emerging dynamic scenarios of criminal activities. Furthermore, it presents emerging issues, challenges and management strategies in public safety and crime control development across various domains. The book will play a vital role in improvising human life to a great extent. Researchers and practitioners working in the fields of data mining, machine learning and artificial intelligence will greatly benefit from this book, which will be a good addition to the state-of-the-art approaches collected for intelligent data analytics. It will also be very beneficial for those who are new to the field and need to quickly become acquainted with the best performing methods. With this book they will be able to compare different approaches and carry forward their research in the most important areas of this field, which has a direct impact on the betterment of human life by maintaining the security of our society. No other book is currently on the market which provides such a good collection of state-of-the-art methods for intelligent data analytics-based models for terror threat prediction, as intelligent data analytics is a newly emerging field and research in data mining and machine learning is still in the early stage of development.
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Persons
Subhendu Kumar Pani received his PhD from Utkal University Odisha, India in 2013. He is a professor in the Department of Computer Science & Engineering, Orissa Engineering College (OEC), Bhubaneswar, India. He has published more than 50 articles in international journals, authored 5 books and edited 2 volumes.
Sanjay Kumar Singh is a professor in the Department of Computer Science and Engineering at the Indian Institute of Technology, Varanasi. He has published more than 130 international publications, 4 edited books and 2 patents.
Lalit Garg received his PhD from the University of Ulster, UK in Computing and Information Engineering. He is a senior lecturer in Computer Information Systems, University of Malta, Malta.
Ram Bilas Pachori received his PhD degree in Electrical Engineering from the Indian Institute of Technology (IIT) Kanpur, India in 2008. He is now a professor of Electrical Engineering, IIT Indore, India. He has more than 170 publications which include journal papers, conference papers, books, and book chapters.
Xiaobo Zhang obtained his Master of Computer Science, Doctor of Engineering (Control Theory and Control Engineering) and is now working in the Internet of Things Department of Automation, Guangdong University of Technology, China. He has published more than 30 journal articles, edited 3 books, and has applied for more than 40 invention patents and obtained 6 software copyrights.
Content
Preface xv
1 Rumor Detection and Tracing its Source to Prevent Cyber-Crimes on Social Media 1
Ravi Kishore Devarapalli and Anupam Biswas
1.1 Introduction 2
1.2 Social Networks 4
1.2.1 Types of Social Networks 4
1.3 What is Cyber-Crime? 7
1.3.1 Definition 7
1.3.2 Types of Cyber-Crimes 7
1.3.2.1 Hacking 7
1.3.2.2 Cyber Bullying 7
1.3.2.3 Buying Illegal Things 8
1.3.2.4 Posting Videos of Criminal Activity 8
1.3.3 Cyber-Crimes on Social Networks 8
1.4 Rumor Detection 9
1.4.1 Models 9
1.4.1.1 Naïve Bayes Classifier 10
1.4.1.2 Support Vector Machine 13
1.4.2 Combating Misinformation on Instagram 14
1.5 Factors to Detect Rumor Source 15
1.5.1 Network Structure 15
1.5.1.1 Network Topology 16
1.5.1.2 Network Observation 16
1.5.2 Diffusion Models 18
1.5.2.1 SI Model 18
1.5.2.2 SIS Model 19
1.5.2.3 SIR Model 19
1.5.2.4 SIRS Model 20
1.5.3 Centrality Measures 21
1.5.3.1 Degree Centrality 21
1.5.3.2 Closeness Centrality 21
1.5.3.3 Betweenness Centrality 22
1.6 Source Detection in Network 22
1.6.1 Single Source Detection 23
1.6.1.1 Network Observation 23
1.6.1.2 Query-Based Approach 25
1.6.1.3 Anti-Rumor-Based Approach 26
1.6.2 Multiple Source Detection 26
1.7 Conclusion 27
References 28
2 Internet of Things (IoT) and Machine to Machine (M2M) Communication Techniques for Cyber Crime Prediction 31
Jaiprakash Narain Dwivedi
2.1 Introduction 32
2.2 Advancement of Internet 33
2.3 Internet of Things (IoT) and Machine to Machine (M2M) Communication 34
2.4 A Definition of Security Frameworks 38
2.5 M2M Devices and Smartphone Technology 39
2.6 Explicit Hazards to M2M Devices Declared by Smartphone Challenges 41
2.7 Security and Privacy Issues in IoT 43
2.7.1 Dynamicity and Heterogeneity 43
2.7.2 Security for Integrated Operational World with Digital World 44
2.7.3 Information Safety with Equipment Security 44
2.7.4 Data Source Information 44
2.7.5 Information Confidentiality 44
2.7.6 Trust Arrangement 44
2.8 Protection in Machine to Machine Communication 48
2.9 Use Cases for M2M Portability 52
2.10 Conclusion 53
References 54
3 Crime Predictive Model Using Big Data Analytics 57
Hemanta Kumar Bhuyan and Subhendu Kumar Pani
3.1 Introduction 58
3.1.1 Geographic Information System (GIS) 59
3.2 Crime Data Mining 60
3.2.1 Different Methods for Crime Data Analysis 62
3.3 Visual Data Analysis 63
3.4 Technological Analysis 65
3.4.1 Hadoop and MapReduce 65
3.4.1.1 Hadoop Distributed File System (HDFS) 65
3.4.1.2 MapReduce 65
3.4.2 Hive 67
3.4.2.1 Analysis of Crime Data using Hive 67
3.4.2.2 Data Analytic Module With Hive 68
3.4.3 Sqoop 68
3.4.3.1 Pre-Processing and Sqoop 68
3.4.3.2 Data Migration Module With Sqoop 68
3.4.3.3 Partitioning 68
3.4.3.4 Bucketing 68
3.4.3.5 R-Tool Analyse Crime Data 69
3.4.3.6 Correlation Matrix 69
3.5 Big Data Framework 69
3.6 Architecture for Crime Technical Model 72
3.7 Challenges 73
3.8 Conclusions 74
References 75
4 The Role of Remote Sensing and GIS in Military Strategy to Prevent Terror Attacks 79
Sushobhan Majumdar
4.1 Introduction 80
4.2 Database and Methods 81
4.3 Discussion and Analysis 82
4.4 Role of Remote Sensing and GIS 83
4.5 Cartographic Model 83
4.5.1 Spatial Data Management 85
4.5.2 Battlefield Management 85
4.5.3 Terrain Analysis 86
4.6 Mapping Techniques Used for Defense Purposes 87
4.7 Naval Operations 88
4.7.1 Air Operations 89
4.7.2 GIS Potential in Military 89
4.8 Future Sphere of GIS in Military Science 89
4.8.1 Defense Site Management 90
4.8.2 Spatial Data Management 90
4.8.3 Intelligence Capability Approach 90
4.8.4 Data Converts Into Information 90
4.8.5 Defense Estate Management 91
4.9 Terrain Evolution 91
4.9.1 Problems Regarding the Uses of Remote Sensing and GIS 91
4.9.2 Recommendations 92
4.10 Conclusion 92
References 93
5 Text Mining for Secure Cyber Space 95
Supriya Raheja and Geetika Munjal
5.1 Introduction 95
5.2 Literature Review 97
5.2.1 Text Mining With Latent Semantic Analysis 100
5.3 Latent Semantic Analysis 101
5.4 Proposed Work 102
5.5 Detailed Work Flow of Proposed Approach 104
5.5.1 Defining the Stop Words 106
5.5.2 Stemming 107
5.5.3 Proposed Algorithm: A Hybrid Approach 109
5.6 Results and Discussion 111
5.6.1 Analysis Using Hybrid Approach 111
5.7 Conclusion 115
References 115
6 Analyses on Artificial Intelligence Framework to Detect Crime Pattern 119
R. Arshath Raja, N. Yuvaraj and N.V. Kousik
6.1 Introduction 120
6.2 Related Works 121
6.3 Proposed Clustering for Detecting Crimes 122
6.3.1 Data Pre-Processing 123
6.3.2 Object-Oriented Model 124
6.3.3 MCML Classification 124
6.3.4 GAA 124
6.3.5 Consensus Clustering 124
6.4 Performance Evaluation 124
6.4.1 Precision 125
6.4.2 Sensitivity 125
6.4.3 Specificity 131
6.4.4 Accuracy 131
6.5 Conclusions 131
References 132
7 A Biometric Technology-Based Framework for Tackling and Preventing Crimes 133
Ebrahim A.M. Alrahawe, Vikas T. Humbe and G.N. Shinde
7.1 Introduction 134
7.2 Biometrics 135
7.2.1 Biometric Systems Technologies 137
7.2.2 Biometric Recognition Framework 141
7.2.3 Biometric Applications/Usages 142
7.3 Surveillance Systems (CCTV) 144
7.3.1 CCTV Goals 146
7.3.2 CCTV Processes 146
7.3.3 Fusion of Data From Multiple Cameras 149
7.3.4 Expanding the Use of CCTV 149
7.3.5 CCTV Effectiveness 150
7.3.6 CCTV Limitations 150
7.3.7 Privacy and CCTV 150
7.4 Legality to Surveillance and Biometrics vs. Privacy and Human Rights 151
7.5 Proposed Work (Biometric-Based CCTV System) 153
7.5.1 Biometric Surveillance System 154
7.5.1.1 System Component and Flow Diagram 154
7.5.2 Framework 156
7.6 Conclusion 158
References 159
8 Rule-Based Approach for Botnet Behavior Analysis 161
Supriya Raheja, Geetika Munjal, Jyoti Jangra and Rakesh Garg
8.1 Introduction 161
8.2 State-of-the-Art 163
8.3 Bots and Botnets 166
8.3.1 Botnet Life Cycle 166
8.3.2 Botnet Detection Techniques 167
8.3.3 Communication Architecture 168
8.4 Methodology 171
8.5 Results and Analysis 175
8.6 Conclusion and Future Scope 177
References 177
9 Securing Biometric Framework with Cryptanalysis 181
Abhishek Goel, Siddharth Gautam, Nitin Tyagi, Nikhil Sharma and Martin Sagayam
9.1 Introduction 182
9.2 Basics of Biometric Systems 184
9.2.1 Face 185
9.2.2 Hand Geometry 186
9.2.3 Fingerprint 187
9.2.4 Voice Detection 187
9.2.5 Iris 188
9.2.6 Signature 189
9.2.7 Keystrokes 189
9.3 Biometric Variance 192
9.3.1 Inconsistent Presentation 192
9.3.2 Unreproducible Presentation 192
9.3.3 Fault Signal/Representational Accession 193
9.4 Performance of Biometric System 193
9.5 Justification of Biometric System 195
9.5.1 Authentication ("Is this individual really the authenticate user or not?") 195
9.5.2 Recognition ("Is this individual in the database?") 196
9.5.3 Concealing ("Is this a needed person?") 196
9.6 Assaults on a Biometric System 196
9.6.1 Zero Effort Attacks 197
9.6.2 Adversary Attacks 198
9.6.2.1 Circumvention 198
9.6.2.2 Coercion 198
9.6.2.3 Repudiation 198
9.6.2.4 DoB (Denial of Benefit) 199
9.6.2.5 Collusion 199
9.7 Biometric Cryptanalysis: The Fuzzy Vault Scheme 199
9.8 Conclusion & Future Work 203
References 205
10 The Role of Big Data Analysis in Increasing the Crime Prediction and Prevention Rates 209
Galal A. AL-Rummana, Abdulrazzaq H. A. Al-Ahdal and G.N. Shinde
10.1 Introduction: An Overview of Big Data and Cyber Crime 210
10.2 Techniques for the Analysis of BigData 211
10.3 Important Big Data Security Techniques 216
10.4 Conclusion 219
References 219
11 Crime Pattern Detection Using Data Mining 221
Dipalika Das and Maya Nayak
11.1 Introduction 221
11.2 Related Work 222
11.3 Methods and Procedures 224
11.4 System Analysis 227
11.5 Analysis Model and Architectural Design 230
11.6 Several Criminal Analysis Methods in Use 233
11.7 Conclusion and Future Work 235
References 235
12 Attacks and Security Measures in Wireless Sensor Network 237
Nikhil Sharma, Ila Kaushik, Vikash Kumar Agarwal, Bharat Bhushan and Aditya Khamparia
12.1 Introduction 238
12.2 Layered Architecture of WSN 239
12.2.1 Physical Layer 239
12.2.2 Data Link Layer 239
12.2.3 Network Layer 240
12.2.4 Transport Layer 240
12.2.5 Application Layer 241
12.3 Security Threats on Different Layers in WSN 241
12.3.1 Threats on Physical Layer 241
12.3.1.1 Eavesdropping Attack 241
12.3.1.2 Jamming Attack 242
12.3.1.3 Imperil or Compromised Node Attack 242
12.3.1.4 Replication Node Attack 242
12.3.2 Threats on Data Link Layer 242
12.3.2.1 Collision Attack 243
12.3.2.2 Denial of Service (DoS) Attack 243
12.3.2.3 Intelligent Jamming Attack 243
12.3.3 Threats on Network Layer 243
12.3.3.1 Sybil Attack 243
12.3.3.2 Gray Hole Attack 243
12.3.3.3 Sink Hole Attack 244
12.3.3.4 Hello Flooding Attack 244
12.3.3.5 Spoofing Attack 244
12.3.3.6 Replay Attack 244
12.3.3.7 Black Hole Attack 244
12.3.3.8 Worm Hole Attack 245
12.3.4 Threats on Transport Layer 245
12.3.4.1 De-Synchronization Attack 245
12.3.4.2 Flooding Attack 245
12.3.5 Threats on Application Layer 245
12.3.5.1 Malicious Code Attack 245
12.3.5.2 Attack on Reliability 246
12.3.6 Threats on Multiple Layer 246
12.3.6.1 Man-in-the-Middle Attack 246
12.3.6.2 Jamming Attack 246
12.3.6.3 Dos Attack 246
12.4 Threats Detection at Various Layers in WSN 246
12.4.1 Threat Detection on Physical Layer 247
12.4.1.1 Compromised Node Attack 247
12.4.1.2 Replication Node Attack 247
12.4.2 Threat Detection on Data Link Layer 247
12.4.2.1 Denial of Service Attack 247
12.4.3 Threat Detection on Network Layer 248
12.4.3.1 Black Hole Attack 248
12.4.3.2 Worm Hole Attack 248
12.4.3.3 Hello Flooding Attack 249
12.4.3.4 Sybil Attack 249
12.4.3.5 Gray Hole Attack 250
12.4.3.6 Sink Hole Attack 250
12.4.4 Threat Detection on the Transport Layer 251
12.4.4.1 Flooding Attack 251
12.4.5 Threat Detection on Multiple Layers 251
12.4.5.1 Jamming Attack 251
12.5 Various Parameters for Security Data Collection in WSN 252
12.5.1 Parameters for Security of Information Collection 252
12.5.1.1 Information Grade 252
12.5.1.2 Efficacy and Proficiency 253
12.5.1.3 Reliability Properties 253
12.5.1.4 Information Fidelity 253
12.5.1.5 Information Isolation 254
12.5.2 Attack Detection Standards in WSN 254
12.5.2.1 Precision 254
12.5.2.2 Germane 255
12.5.2.3 Extensibility 255
12.5.2.4 Identifiability 255
12.5.2.5 Fault Forbearance 255
12.6 Different Security Schemes in WSN 256
12.6.1 Clustering-Based Scheme 256
12.6.2 Cryptography-Based Scheme 256
12.6.3 Cross-Checking-Based Scheme 256
12.6.4 Overhearing-Based Scheme 257
12.6.5 Acknowledgement-Based Scheme 257
12.6.6 Trust-Based Scheme 257
12.6.7 Sequence Number Threshold-Based Scheme 258
12.6.8 Intrusion Detection System-Based Scheme 258
12.6.9 Cross-Layer Collaboration-Based Scheme 258
12.7 Conclusion 264
References 264
13 Large Sensing Data Flows Using Cryptic Techniques 269
Hemanta Kumar Bhuyan
13.1 Introduction 270
13.2 Data Flow Management 271
13.2.1 Data Flow Processing 271
13.2.2 Stream Security 272
13.2.3 Data Privacy and Data Reliability 272
13.2.3.1 Security Protocol 272
13.3 Design of Big Data Stream 273
13.3.1 Data Stream System Architecture 273
13.3.1.1 Intrusion Detection Systems (IDS) 274
13.3.2 Malicious Model 275
13.3.3 Threat Approaches for Attack Models 276
13.4 Utilization of Security Methods 277
13.4.1 System Setup 278
13.4.2 Re-Keying 279
13.4.3 New Node Authentication 279
13.4.4 Cryptic Techniques 280
13.5 Analysis of Security on Attack 280
13.6 Artificial Intelligence Techniques for Cyber Crimes 281
13.6.1 Cyber Crime Activities 282
13.6.2 Artificial Intelligence for Intrusion Detection 282
13.6.3 Features of an IDPS 284
13.7 Conclusions 284
References 285
14 Cyber-Crime Prevention Methodology 291
Chandra Sekhar Biswal and Subhendu Kumar Pani
14.1 Introduction 292
14.1.1 Evolution of Cyber Crime 294
14.1.2 Cybercrime can be Broadly Defined as Two Types 296
14.1.3 Potential Vulnerable Sectors of Cybercrime 296
14.2 Credit Card Frauds and Skimming 297
14.2.1 Matrimony Fraud 297
14.2.2 Juice Jacking 298
14.2.3 Technicality Behind Juice Jacking 299
14.3 Hacking Over Public WiFi or the MITM Attacks 299
14.3.1 Phishing 300
14.3.2 Vishing/Smishing 302
14.3.3 Session Hijacking 303
14.3.4 Weak Session Token Generation/Predictable Session Token Generation 304
14.3.5 IP Spoofing 304
14.3.6 Cross-Site Scripting (XSS) Attack 305
14.4 SQLi Injection 306
14.5 Denial of Service Attack 307
14.6 Dark Web and Deep Web Technologies 309
14.6.1 The Deep Web 309
14.6.2 The Dark Web 310
14.7 Conclusion 311
References 312
Index 313
Preface
Intelligent data analytics for terror threat prediction is an emerging field of research at the intersection of information science and computer science. Intelligent data analytics for terror threat prediction is a new era that brings tremendous opportunities and challenges due to easily available criminal data for further analysis. The aim of this data analytics is to prevent threats before they happen using classical statistical issues, machine learning and artificial intelligence, rule induction methods, neural networks, fuzzy logic, and stochastic search methods on various data sources including social media, GPS devices, video feeds from street cameras and license-plate readers, travel and credit-card records and the news media, as well as government and propriety systems. Intelligent data analytics is to ensure the efficient data mining techniques to get solutions for crime investigation. Prediction of future terrorist attacks according to city, attack type, target type, claim mode, weapon type and motive of attack through classification techniques, facilitates the decision making process by security organizations, as well as to learn from the previous stored attack information and then rate the targeted sectors/areas accordingly for security measures. Intelligent data analytics models with multiple level of representation in which at each level the system learns raw to higher abstract level representation. Intelligent data analytics-based algorithms have demonstrated great performance to a variety of areas including data visualization, data pre-processing (fusion, editing, transformation, filtering, and sampling), data engineering, database mining techniques, tools and applications, etc.
This edited book, titled "Intelligent Data Analytics for Terror Threat Prediction" emerges as a consequence of the vital need for public safety in various domains and parts of the world. It is particularly targeted at resource constrained environments such as in developing nations, where crime is growing at a frightening rate across various domains of life and impeding economic growth. By source constrained situation, we mean environments where crime intelligence skilled personnel are limited and inadequate technological solutions are in place to gather operational safety information for citizens' security. In particular, of interest is the quest to realize the nature, scope and level of impact of present crime mining solutions across various domains and to develop novel paradigms for a more comprehensive solution. This will present innovative insights that will help to obtain interventions to undertake emerging dynamic scenarios of criminal activities. Further, this book presents emerging issues, challenges and management strategies in public safety and crime control development across various domains. The book will play a vital role in improving human life to a great extent. All researchers and practitioners will highly benefit from reading this book, especially those who are working in the fields of data mining, machine learning, and artificial intelligence. This book is a good collection on the state-of-the-art approaches for intelligent data analytics. It will be very beneficial for the new researchers and practitioners working in the field to quickly know the best performing methods.
Organization of the Book
This book consists of 14 chapters. It includes quality chapters that present scientific concepts, framework and ideas on intelligent data analytics for terror threat prediction across different crime domains. The editors and expert reviewers have confirmed the high caliber of chapters through careful refereeing of the papers. For the purpose of coherence, we have organized the chapters with respect to similarity of topic addressed. The topics addressed range from crime mining issues pertaining to cyber-crime, cyber-crimes on social media, intrusion detection system, cryptography Internet of Things (IoT) and machine to machine comm. and analysis of crime scenarios.
Chapter 1, "Rumor Detection and Tracing its Source to Prevent Cyber-Crimes on Social Media" by Ravi Kishore Devarapalli, Anupam Biswas, presents the different automated rumor detection systems in social net-works and techniques to trace the source of rumor.
Chapter 2, "Internet of Things (IoT) and Machine to Machine (M2M) Communication Techniques for Cyber Crime Prediction" by Jaiprakash Narain Dwivedi presents a response to crime issues by offering a novel security structure that is based on the examination of the "limits and capacities" of M2M devices and improves the structures headway life cycle for the general IoT natural framework.
In Chapter 3, "Crime Predictive Model Using Big Data Analytics" by Hemanta Kumar Bhuyan and Subhendu Kumar Pani presents detailed information on the methods of machine learning to develop different techniques to catch criminals based on their track of activities.
Sushobhan Majumdar presents an important discussion and analysis in Chapter 4 on "The Role of Remote Sensing and GIS in Military Strategy to Prevent Terror Attacks". He focuses on the role of RS and GIS in constructing defense strategies to prevent terror attacks.
In Chapter 5, Supriya Raheja and Geetika Munjal present "Text Mining for Secure Cyber Space". The chapter presents an expert system for extracting similarity score of cyber-attack related keywords among various resources. The proposed work uses text mining approach for making a secure cyber space.
R. Arshath Raja, N. Yuvaraj, and N.V. Kousik provide an insightful discussion and analysis in Chapter 6 on "Analyses on Artificial Intelligence Framework to Detect the Crime Pattern". The chapter describes the performance of the proposed clustering model for crime pattern investigation and is compared with time series analysis, support vector machine, artificial neural network. The analysis is carried out against various performance metrics that includes: accuracy, specificity, sensitivity and f-measure.
In Chapter 7, Ebrahim A.M. Alrahawe, Vikas T. Humbe, and G.N. Shinde present the issue of "Biometric Technology-Based Framework for Tackling and Preventing Crimes". The chapter provides an insight into the possibility of integrating surveillance systems with biometric systems at a single system in order to predict crime by identifying criminals and crime tools.
In Chapter 8, Supriya Raheja, Geetika Munjal, Jyoti Jangra, and Rakesh Garg provide a useful discussion "Rule-Based Approach for Botnet Behavior Analysis". The chapter also proposes that botnet traffic in any network is a matter of serious concern. They are used for many activities of malicious type like distributed denial of service (DDOS) attacks, mass spam, phishing attacks, click frauds, stealing the user's confidential infor-mation like passwords and other types of cyber-crimes.
Abhishek Goel, Siddharth Gautam, Nitin Tyagi, Nikhil Sharma, and Martin Sagayam present an important discussion and analysis in Chapter 9 on the role of "Securing Biometric Framework with Cryptanalysis". The chapter investigates the different contentions for and against biometrics and argues that while biometrics may present real protection concerns, these issues can be satisfactorily ameliorated.
In Chapter 10, Galal A. Al-Rummana, Abdulrazzaq H.A. Al-Ahdal and G. N. Shinde present "The Role of Big Data Analysis in Increasing the Crime Prediction and Prevention Rates". The chapter discusses different big data analysis techniques.
Dipalika Das and Maya Nayak present an important discussion and analysis in Chapter 11 on the "Crime Pattern Detection Using Data Mining". The chapter discusses how statistical data related to crime are monitored and analysed by various investigating bodies so that various strategies can be planned to prevent crimes from happening.
In Chapter 12, Nikhil Sharma, Ila Kaushik, Vikash Kumar Agarwal, Bharat Bhushan, and Aditya Khamparia present the role of "Attacks & Security Measures in Wireless Sensor Network". The chapter presents different layer attacks along with security mechanisms to avoid the effect of attack in the network. Security is considered as one of the main constraints in any type of network so it becomes very important to take into consideration the key elements of security which are availability, integrity and confidentiality.
Hemanta Kumar Bhuyan presents an important discussion and analysis in Chapter 13 on the role of "Large Sensing Data Flows Using Cryptic Techniques". The chapter discusses the replicated crimes using cyberspace by criminals.
In Chapter 14, Chandra Sekhar Biswal and Subhendu Kumar Pani present the role of "Cyber-Crime Methodology and its Prevention Techniques". The chapter places the emphasis on various frauds and cyber-crime happening in India, as well as the different types of cyber-crimes along with the probable solutions for that.
Dr. Subhendu Kumar Pani
Department of Computer Science & Engineering, Orissa Engineering College, BPUT, Odisha, India
Dr. Sanjay Kumar Singh
Department of Computer Science and Engineering, Indian Institute of Technology Campus, BHU, Varanasi, Indore, India
Dr. Lalit Garg
Department of Computer Information Systems at University of Malta, Msida
Dr. Ram Bilas Pachori
Department of Electrical Engineering, Indian Institute of Technology Campus, Indore,...
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