Visible to the public Biblio

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2023-07-13
Salman, Zainab, Alomary, Alauddin.  2022.  An Efficient Approach to Reduce the Encryption and Decryption Time Based on the Concept of Unique Values. 2022 International Conference on Innovation and Intelligence for Informatics, Computing, and Technologies (3ICT). :535–540.
Data security has become the most important issue in every institution or company. With the existence of hackers, intruders, and third parties on the cloud, securing data has become more challenging. This paper uses a hybrid encryption method that is based on the Elliptic Curve Cryptography (ECC) and Fully Homomorphic Encryption (FHE). ECC is used as a lightweight encryption algorithm that can provide a good level of security. Besides, FHE is used to enable data computation on the encrypted data in the cloud. In this paper, the concept of unique values is combined with the hybrid encryption method. Using the concept of unique values contributes to decreasing the encryption and decryption time obviously. To evaluate the performance of the combined encryption method, the provided results are compared with the ones in the encryption method without using the concept of unique values. Experiments show that the combined encryption method can reduce the encryption time up to 43% and the decryption time up to 56%.
ISSN: 2770-7466
2023-06-30
Şenol, Mustafa.  2022.  Cyber Security and Defense: Proactive Defense and Deterrence. 2022 3rd International Informatics and Software Engineering Conference (IISEC). :1–6.
With the development of technology, the invention of computers, the use of cyberspace created by information communication systems and networks, increasing the effectiveness of knowledge in all aspects and the gains it provides have increased further the importance of cyber security day by day. In parallel with the developments in cyber space, the need for cyber defense has emerged with active and passive defense approaches for cyber security against internal and external cyber-attacks of increasing type, severity and complexity. In this framework, proactive cyber defense and deterrence strategies have started to be implemented with new techniques and methods.
2023-04-28
Suryotrisongko, Hatma, Ginardi, Hari, Ciptaningtyas, Henning Titi, Dehqan, Saeed, Musashi, Yasuo.  2022.  Topic Modeling for Cyber Threat Intelligence (CTI). 2022 Seventh International Conference on Informatics and Computing (ICIC). :1–7.
Topic modeling algorithms from the natural language processing (NLP) discipline have been used for various applications. For instance, topic modeling for the product recommendation systems in the e-commerce systems. In this paper, we briefly reviewed topic modeling applications and then described our proposed idea of utilizing topic modeling approaches for cyber threat intelligence (CTI) applications. We improved the previous work by implementing BERTopic and Top2Vec approaches, enabling users to select their preferred pre-trained text/sentence embedding model, and supporting various languages. We implemented our proposed idea as the new topic modeling module for the Open Web Application Security Project (OWASP) Maryam: Open-Source Intelligence (OSINT) framework. We also described our experiment results using a leaked hacker forum dataset (nulled.io) to attract more researchers and open-source communities to participate in the Maryam project of OWASP Foundation.
2023-02-03
Ouamour, S., Sayoud, H..  2022.  Computational Identification of Author Style on Electronic Libraries - Case of Lexical Features. 2022 5th International Symposium on Informatics and its Applications (ISIA). :1–4.
In the present work, we intend to present a thorough study developed on a digital library, called HAT corpus, for a purpose of authorship attribution. Thus, a dataset of 300 documents that are written by 100 different authors, was extracted from the web digital library and processed for a task of author style analysis. All the documents are related to the travel topic and written in Arabic. Basically, three important rules in stylometry should be respected: the minimum document size, the same topic for all documents and the same genre too. In this work, we made a particular effort to respect those conditions seriously during the corpus preparation. That is, three lexical features: Fixed-length words, Rare words and Suffixes are used and evaluated by using a centroid based Manhattan distance. The used identification approach shows interesting results with an accuracy of about 0.94.
2023-01-20
Fujii, Shota, Kawaguchi, Nobutaka, Kojima, Shoya, Suzuki, Tomoya, Yamauchi, Toshihiro.  2022.  Design and Implementation of System for URL Signature Construction and Impact Assessment. 2022 12th International Congress on Advanced Applied Informatics (IIAI-AAI). :95–100.
The attacker’s server plays an important role in sending attack orders and receiving stolen information, particularly in the more recent cyberattacks. Under these circumstances, it is important to use network-based signatures to block malicious communications in order to reduce the damage. However, in addition to blocking malicious communications, signatures are also required not to block benign communications during normal business operations. Therefore, the generation of signatures requires a high level of understanding of the business, and highly depends on individual skills. In addition, in actual operation, it is necessary to test whether the generated signatures do not interfere with benign communications, which results in high operational costs. In this paper, we propose SIGMA, a system that automatically generates signatures to block malicious communication without interfering with benign communication and then automatically evaluates the impact of the signatures. SIGMA automatically extracts the common parts of malware communication destinations by clustering them and generates multiple candidate signatures. After that, SIGMA automatically calculates the impact on normal communication based on business logs, etc., and presents the final signature to the analyst, which has the highest blockability of malicious communication and non-blockability of normal communication. Our objectives with this system are to reduce the human factor in generating the signatures, reduce the cost of the impact evaluation, and support the decision of whether to apply the signatures. In the preliminary evaluation, we showed that SIGMA can automatically generate a set of signatures that detect 100% of suspicious URLs with an over-detection rate of just 0.87%, using the results of 14,238 malware analyses and actual business logs. This result suggests that the cost for generation of signatures and the evaluation of their impact on business operations can be suppressed, which used to be a time-consuming and human-intensive process.
2023-01-13
Y, Justindhas., Kumar, G. Anil, Chandrashekhar, A, Raman, R Raghu, Kumar, A. Ravi, S, Ashwini.  2022.  Internet of Things based Data Security Management using Three Level Cyber Security Policies. 2022 International Conference on Advances in Computing, Communication and Applied Informatics (ACCAI). :1–8.
The Internet of Things devices is rapidly becoming widespread, as are IoT services. Their achievement has not gone unnoticed, as threats as well as attacks towards IoT devices as well as services continue to grow. Cyber attacks are not unique to IoT, however as IoT becomes more ingrained in our lives as well as communities, it is imperative to step up as well as take cyber defense seriously. As a result, there is a genuine need to protect IoT, which necessitates a thorough understanding of the dangers and attacks against IoT infrastructure. The purpose of this study is to define threat types, as well as to assess and characterize intrusions and assaults against IoT devices as well as services
2022-12-09
Janani, V.S., Devaraju, M..  2022.  An Efficient Distributed Secured Broadcast Stateless Group Key Management Scheme for Mobile Ad Hoc Networks. 2022 International Conference on Advances in Computing, Communication and Applied Informatics (ACCAI). :1—5.

This paper addresses the issues in managing group key among clusters in Mobile Ad hoc Networks (MANETs). With the dynamic movement of the nodes, providing secure communication and managing secret keys in MANET is difficult to achieve. In this paper, we propose a distributed secure broadcast stateless groupkey management framework (DSBS-GKM) for efficient group key management. This scheme combines the benefits of hash function and Lagrange interpolation polynomial in managing MANET nodes. To provide a strong security mechanism, a revocation system that detects and revokes misbehaviour nodes is presented. The simulation results show that the proposed DSBS-GKM scheme attains betterments in terms of rekeying and revocation performance while comparing with other existing key management schemes.

2022-11-18
Pratama, Jose Armando, Almaarif, Ahmad, Budiono, Avon.  2021.  Vulnerability Analysis of Wireless LAN Networks using ISSAF WLAN Security Assessment Methodology: A Case Study of Restaurant in East Jakarta. 2021 4th International Conference of Computer and Informatics Engineering (IC2IE). :435—440.
Nowadays the use of Wi-Fi has been widely used in public places, such as in restaurants. The use of Wi-Fi in public places has a very large security vulnerability because it is used by a wide variety of visitors. Therefore, this study was conducted to evaluate the security of the WLAN network in restaurants. The methods used are Vulnerability Assessment and Penetration Testing. Penetration Testing is done by conducting several attack tests such as Deauthentication Attack, Evil Twin Attack with Captive Portal, Evil Twin Attack with Sniffing and SSL stripping, and Unauthorized Access.
2022-10-12
Lim, Jaewan, Zhou, Lina, Zhang, Dongsong.  2021.  Verbal Deception Cue Training for the Detection of Phishing Emails. 2021 IEEE International Conference on Intelligence and Security Informatics (ISI). :1—3.
Training on cues to deception is one of the promising ways of addressing humans’ poor performance in deception detection. However, the effect of training may be subject to the context of deception and the design of training. This study aims to investigate the effect of verbal cue training on the performance of phishing email detection by comparing different designs of training and examining the effect of topic familiarity. Based on the results of a lab experiment, we not only confirm the effect of training but also provide suggestions on how to design training to better facilitate the detection of phishing emails. In addition, our results also discover the effect of topic familiarity on phishing detection. The findings of this study have significant implications for the mitigation and intervention of online deception.
2022-08-26
Chinnasamy, P., Vinothini, B., Praveena, V., Subaira, A.S., Ben Sujitha, B..  2021.  Providing Resilience on Cloud Computing. 2021 International Conference on Computer Communication and Informatics (ICCCI). :1—4.
In Cloud Computing, a wide range of virtual platforms are integrated and offer users a flexible pay-as-you-need service. Compared to conventional computing systems, the provision of an acceptable degree of resilience to cloud services is a daunting challenge due to the complexities of the cloud environment and the need for efficient technology that could sustain cloud advantages over other technologies. For a cloud guest resilience service solution, we provide architectural design, installation specifics, and performance outcomes throughout this article. Virtual Machine Manager (VMM) enables execution statistical test of the virtual machine states to be monitored and avoids to reach faulty states.
Goel, Raman, Vashisht, Sachin, Dhanda, Armaan, Susan, Seba.  2021.  An Empathetic Conversational Agent with Attentional Mechanism. 2021 International Conference on Computer Communication and Informatics (ICCCI). :1–4.
The number of people suffering from mental health issues like depression and anxiety have spiked enormously in recent times. Conversational agents like chatbots have emerged as an effective way for users to express their feelings and anxious thoughts and in turn obtain some empathetic reply that would relieve their anxiety. In our work, we construct two types of empathetic conversational agent models based on sequence-to-sequence modeling with and without attention mechanism. We implement the attention mechanism proposed by Bahdanau et al. for neural machine translation models. We train our model on the benchmark Facebook Empathetic Dialogue dataset and the BLEU scores are computed. Our empathetic conversational agent model incorporating attention mechanism generates better quality empathetic responses and is better in capturing human feelings and emotions in the conversation.
2022-07-05
Wang, Caixia, Wang, Zhihui, Cui, Dong.  2021.  Facial Expression Recognition with Attention Mechanism. 2021 14th International Congress on Image and Signal Processing, BioMedical Engineering and Informatics (CISP-BMEI). :1—6.
With the development of artificial intelligence, facial expression recognition (FER) has greatly improved performance in deep learning, but there is still a lot of room for improvement in the study of combining attention to focus the network on key parts of the face. For facial expression recognition, this paper designs a network model, which use spatial transformer network to transform the input image firstly, and then adding channel attention and spatial attention to the convolutional network. In addition, in this paper, the GELU activation function is used in the convolutional network, which improves the recognition rate of facial expressions to a certain extent.
2022-05-09
M, Kiruthika., M.S, Saravanan..  2021.  A Related work on secure event logs protection with user identity using privacy preservation for the cloud infrastructure. 2021 International Conference on Computer Communication and Informatics (ICCCI). :1–4.
The cloud infrastructure is not new to the society from past one decade. But even in recent time, the companies started migrating from local services to cloud services for better connectivity and for other requirements, this is due to companies financial limitations on existing infrastructure, they are migrating to less cost and hire and fire support based cloud infrastructures. But the proposed cloud infrastructure require security on event logs accessed by different end users on the cloud environment. To adopt the security on local services to cloud service based infrastructure, it need better identify management between end users. Therefore this paper presents the related works of user identity as a service for each user involving in cloud service and the accessing permission and protection will be monitored and controlled by the cloud security infrastructures.
2022-05-05
Salman, Zainab, Hammad, Mustafa, Al-Omary, Alauddin Yousif.  2021.  A Homomorphic Cloud Framework for Big Data Analytics Based on Elliptic Curve Cryptography. 2021 International Conference on Innovation and Intelligence for Informatics, Computing, and Technologies (3ICT). :7—11.
Homomorphic Encryption (HE) comes as a sophisticated and powerful cryptography system that can preserve the privacy of data in all cases when the data is at rest or even when data is in processing and computing. All the computations needed by the user or the provider can be done on the encrypted data without any need to decrypt it. However, HE has overheads such as big key sizes and long ciphertexts and as a result long execution time. This paper proposes a novel solution for big data analytic based on clustering and the Elliptical Curve Cryptography (ECC). The Extremely Distributed Clustering technique (EDC) has been used to divide big data into several subsets of cloud computing nodes. Different clustering techniques had been investigated, and it was found that using hybrid techniques can improve the performance and efficiency of big data analytic while at the same time data is protected and privacy is preserved using ECC.
2022-04-20
Wang, Jinbao, Cai, Zhipeng, Yu, Jiguo.  2020.  Achieving Personalized \$k\$-Anonymity-Based Content Privacy for Autonomous Vehicles in CPS. IEEE Transactions on Industrial Informatics. 16:4242–4251.
Enabled by the industrial Internet, intelligent transportation has made remarkable achievements such as autonomous vehicles by carnegie mellon university (CMU) Navlab, Google Cars, Tesla, etc. Autonomous vehicles benefit, in various aspects, from the cooperation of the industrial Internet and cyber-physical systems. In this process, users in autonomous vehicles submit query contents, such as service interests or user locations, to service providers. However, privacy concerns arise since the query contents are exposed when the users are enjoying the services queried. Existing works on privacy preservation of query contents rely on location perturbation or k-anonymity, and they suffer from insufficient protection of privacy or low query utility incurred by processing multiple queries for a single query content. To achieve sufficient privacy preservation and satisfactory query utility for autonomous vehicles querying services in cyber-physical systems, this article proposes a novel privacy notion of client-based personalized k-anonymity (CPkA). To measure the performance of CPkA, we present a privacy metric and a utility metric, based on which, we formulate two problems to achieve the optimal CPkA in term of privacy and utility. An approach, including two modules, to establish mechanisms which achieve the optimal CPkA is presented. The first module is to build in-group mechanisms for achieving the optimal privacy within each content group. The second module includes linear programming-based methods to compute the optimal grouping strategies. The in-group mechanisms and the grouping strategies are combined to establish optimal CPkA mechanisms, which achieve the optimal privacy or the optimal utility. We employ real-life datasets and synthetic prior distributions to evaluate the CPkA mechanisms established by our approach. The evaluation results illustrate the effectiveness and efficiency of the established mechanisms.
Conference Name: IEEE Transactions on Industrial Informatics
2022-03-08
P, Charitha Reddy, K, SaiTulasi, J, Anuja T, R, Rajarajeswari, Mohan, Navya.  2021.  Automatic Test Pattern Generation of Multiple stuck-at faults using Test Patterns of Single stuck-at faults. 2021 5th International Conference on Trends in Electronics and Informatics (ICOEI). :71–75.
The fabricated circuitries are getting massive and denser with every passing year due to which a normal automatic test pattern generation technique to detect only the single stuck-at faults will overlook the multiple stuck-at faults. But generating test patterns that can detect all possible multiple stuck-at fault is practically not possible. Hence, this paper proposes a method, where multiple faults can be detected by using test vectors for detecting single stuck-at faults. Here, the patterns for detecting single faults are generated and their ability to detect multiple stuck-at faults is also analyzed. From the experimental results it was observed that, the generated vectors for single faults cover maximum number of the multiple faults and then new test vectors are generated for the undetermined faults. The generated vectors are optimized for the compact test patterns in order to reduce the test power.
2022-03-01
Mishra, Dheerendra, Obaidat, Mohammad S., Mishra, Ankita.  2021.  Privacy Preserving Location-based Content Distribution Framework for Digital Rights Management Systems. 2021 International Conference on Communications, Computing, Cybersecurity, and Informatics (CCCI). :1–5.
Advancement in network technology provides an opportunity for e-commerce industries to sell digital content. However, multimedia content has the drawback of easy copy and redistribution, which causes rampant piracy. Digital rights management (DRM) systems are developed to address content piracy. Basically, DRM focuses to control content consumption and distribution. In general, to provide copyright protection, DRM system loses flexibility and creates a severe threat to users’ privacy. Moreover, traditional DRM systems are client-server architecture, which cannot handle strategies geographically. These disadvantages discourage the adoption of DRM systems. At the same time, multi-distributor DRM (MD-DRM) system provides a way to facilitate content distribution more effectively. Most of the existing multi-distributor DRM systems are privacy encroaching and do not discuss the useful content distribution framework. To overcome the drawbacks of existing schemes, we propose a privacy-preserving MD-DRM system, which is flexible enough to support location-based content distribution. The proposed scheme maintains a flexible and transparent content distribution without breaching consumer privacy. Besides, the proposed scheme does not violate accountability parameters. This mechanism makes traitor identification possible without violating the privacy rights of authorized consumers.
2021-12-20
Shelke, Sandeep K., Sinha, Sanjeet K., Patel, Govind Singh.  2021.  Study of Improved Median Filtering Using Adaptive Window Architecture. 2021 International Conference on Computer Communication and Informatics (ICCCI). :1–6.
Over the past few years computer vision has become the essential aspect of modern era of technology. This computer vision is manly based on image processing whereas the image processing includes three important aspects as image filtering, image compression & image security. The image filtering can be achieved by using various filtering techniques but the PSNR & operating frequency are the most challenging aspects of image filtering. This paper mainly focused on overcoming the challenges appears while removing the salt & pepper noise with conventional median filtering by developing improved adaptive moving window architecture median filter & comparing its performance to have improved performance in terms of PSNR & operating frequency.
2021-11-08
Hedabou, Mustapha, Abdulsalam, Yunusa Simpa.  2020.  Efficient and Secure Implementation of BLS Multisignature Scheme on TPM. 2020 IEEE International Conference on Intelligence and Security Informatics (ISI). :1–6.
In many applications, software protection can not be sufficient to provide high security needed by some critical applications. A noteworthy example are the bitcoin wallets. Designed the most secure piece of software, their security can be compromised by a simple piece of malware infecting the device storing keys used for signing transactions. Secure hardware devices such as Trusted Platform Module (TPM) offers the ability to create a piece of code that can run unmolested by the rest of software applications hosted in the same machine. This has turned out to be a valuable approach for preventing several malware threats. Unfortunately, their restricted functionalities make them inconsistent with the use of multi and threshold signature mechanisms which are in the heart of real world cryptocurrency wallets implementation. This paper proposes an efficient multi-signature scheme that fits the requirement of the TPM. Based on discrete logarithm and pairings, our scheme does not require any interaction between signers and provide the same benefits as the well established BLS signature scheme. Furthermore, we proposed a formal model of our design and proved it security in a semi-honest model. Finally, we implemented a prototype of our design and studied its performance. From our experimental analysis, the proposed design is highly efficient and can serve as a groundwork for using TPM in future cryptocurrency wallets.
2021-10-12
Suharsono, Teguh Nurhadi, Anggraini, Dini, Kuspriyanto, Rahardjo, Budi, Gunawan.  2020.  Implementation of Simple Verifiability Metric to Measure the Degree of Verifiability of E-Voting Protocol. 2020 14th International Conference on Telecommunication Systems, Services, and Applications (TSSA. :1–3.
Verifiability is one of the parameters in e-voting that can increase confidence in voting technology with several parties ensuring that voters do not change their votes. Voting has become an important part of the democratization system, both to make choices regarding policies, to elect representatives to sit in the representative assembly, and to elect leaders. the more voters and the wider the distribution, the more complex the social life, and the need to manage the voting process efficiently and determine the results more quickly, electronic-based voting (e-Voting) is becoming a more promising option. The level of confidence in voting depends on the capabilities of the system. E-voting must have parameters that can be used as guidelines, which include the following: Accuracy, Invulnerability, Privacy and Verifiability. The implementation of the simple verifiability metric to measure the degree of verifiability in the e-voting protocol, the researchers can calculate the degree of verifiability in the e-voting protocol and the researchers have been able to assess the proposed e-voting protocol with the standard of the best degree of verifiability is 1, where the value of 1 is is absolutely verified protocol.
2021-09-21
Walker, Aaron, Sengupta, Shamik.  2020.  Malware Family Fingerprinting Through Behavioral Analysis. 2020 IEEE International Conference on Intelligence and Security Informatics (ISI). :1–5.
Signature-based malware detection is not always effective at detecting polymorphic variants of known malware. Malware signatures are devised to counter known threats, which also limits efficacy against new forms of malware. However, existing signatures do present the ability to classify malware based upon known malicious behavior which occurs on a victim computer. In this paper we present a method of classifying malware by family type through behavioral analysis, where the frequency of system function calls is used to fingerprint the actions of specific malware families. This in turn allows us to demonstrate a machine learning classifier which is capable of distinguishing malware by family affiliation with high accuracy.
2021-08-17
Wang, Zhuoyao, Guo, Changguo, Fu, Zhipeng, Yang, Shazhou.  2020.  Identifying the Development Trend of ARM-based Server Ecosystem Using Linux Kernels. 2020 IEEE International Conference on Progress in Informatics and Computing (PIC). :284—288.
In the last couple of years ARM-based servers have been gradually adopted by cloud service providers and utilized in the data centers. Such tendency may provide great business opportunities for various companies in the industry. Hence, the ability to timely track the development trend of the ARM-based server ecosystem (ASE) from technical perspective is of great importance. In this paper the level of development of the ASE is quantitatively assessed based on open-source data analysis. In particular, statistical data is extracted from 42 Linux kernels to analyze the development process of the ASE. Furthermore, an estimate of the development trend of the ASE in the next 10 years is made based on the statistical data. The estimated results provide insight on when the ASE may become as mature as today's x86-based server ecosystem.
2021-07-08
Abdo, Mahmoud A., Abdel-Hamid, Ayman A., Elzouka, Hesham A..  2020.  A Cloud-based Mobile Healthcare Monitoring Framework with Location Privacy Preservation. 2020 International Conference on Innovation and Intelligence for Informatics, Computing and Technologies (3ICT). :1—8.
Nowadays, ubiquitous healthcare monitoring applications are becoming a necessity. In a pervasive smart healthcare system, the user's location information is always transmitted periodically to healthcare providers to increase the quality of the service provided to the user. However, revealing the user's location will affect the user's privacy. This paper presents a novel cloud-based secure location privacy-preserving mobile healthcare framework with decision-making capabilities. A user's vital signs are sensed possibly through a wearable healthcare device and transmitted to a cloud server for securely storing user's data, processing, and decision making. The proposed framework integrates a number of features such as machine learning (ML) for classifying a user's health state, and crowdsensing for collecting information about a person's privacy preferences for possible locations and applying such information to a user who did not set his privacy preferences. In addition to location privacy preservation methods (LPPM) such as obfuscation, perturbation and encryption to protect the location of the user and provide a secure monitoring framework. The proposed framework detects clear emergency cases and quickly decides about sending a help message to a healthcare provider before sending data to the cloud server. To validate the efficiency of the proposed framework, a prototype is developed and tested. The obtained results from the proposed prototype prove its feasibility and utility. Compared to the state of art, the proposed framework offers an adaptive context-based decision for location sharing privacy and controlling the trade-off between location privacy and service utility.
2021-05-25
Chen, Yingquan, Wang, Yong.  2020.  Efficient Conversion Scheme Of Access Matrix In CP-ABE With Double Revocation Capability. 2020 IEEE International Conference on Progress in Informatics and Computing (PIC). :352–357.
To achieve a fine-grained access control function and guarantee the data confidentiality in the cloud storage environment, ciphertext policy attribute-based encryption (CP-ABE) has been widely implemented. However, due to the high computation and communication overhead, the nature of CP-ABE mechanism makes it difficult to be adopted in resource constrained terminals. Furthermore, the way of realizing varying levels of undo operations remains a problem. To this end, the access matrix that satisfies linear secret sharing scheme (LSSS) was optimized with Cauchy matrix, and then a user-level revocation scheme based on Chinese Remainder Theorem was proposed. Additionally, the attribute level revocation scheme which is based on the method of key encrypt key (KEK) and can help to reduce the storage overhead has also been improved.
2021-04-08
Colbaugh, R., Glass, K., Bauer, T..  2013.  Dynamic information-theoretic measures for security informatics. 2013 IEEE International Conference on Intelligence and Security Informatics. :45–49.
Many important security informatics problems require consideration of dynamical phenomena for their solution; examples include predicting the behavior of individuals in social networks and distinguishing malicious and innocent computer network activities based on activity traces. While information theory offers powerful tools for analyzing dynamical processes, to date the application of information-theoretic methods in security domains has focused on static analyses (e.g., cryptography, natural language processing). This paper leverages information-theoretic concepts and measures to quantify the similarity of pairs of stochastic dynamical systems, and shows that this capability can be used to solve important problems which arise in security applications. We begin by presenting a concise review of the information theory required for our development, and then address two challenging tasks: 1.) characterizing the way influence propagates through social networks, and 2.) distinguishing malware from legitimate software based on the instruction sequences of the disassembled programs. In each application, case studies involving real-world datasets demonstrate that the proposed techniques outperform standard methods.