Biblio

Found 5756 results

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2020-03-30
2021-02-22
[Anonymous].  Submitted.  Natural Language Processing Characterization of Recurring Calls in Public Security Services.
Extracting knowledge from unstructured data silos, a legacy of old applications, is mandatory for improving the governance of today's cities and fostering the creation of smart cities. Texts in natural language often compose such data. Nevertheless, the inference of useful information from a linguistic-computational analysis of natural language data is an open challenge. In this paper, we propose a clustering method to analyze textual data employing the unsupervised machine learning algorithms k-means and hierarchical clustering. We assess different vector representation methods for text, similarity metrics, and the number of clusters that best matches the data. We evaluate the methods using a real database of a public record service of security occurrences. The results show that the k-means algorithm using Euclidean distance extracts non-trivial knowledge, reaching up to 93% accuracy in a set of test samples while identifying the 12 most prevalent occurrence patterns.
2023-02-17
[Anonymous].  Submitted.  Spam image detection based on convolutional block attention module.
Digital communication platforms, such as Gmail and Yahoo, are become essential in our professional and personal lives. In addition to the low cost of e-mails, they are fast. Despite the advantages of these tools, spammers try to send unsolicited e-mail, known as spam, daily. Recently, image spam, a new type of spam e-mail, is developed by spammers in order to avoid detection based on text-based spam filtering systems. Image spam contains more complex information as compared to text spam. For this reason, the detection of image spam is still a challenging task for researchers. Most of the developed image spam filtering systems are based on hand-crafted features and machine learning techniques, which are time-consuming and less efficient. In addition, these systems do not focus on the important features, which can have an impact on the detection process. In this paper, we apply the convolutional block attention module (CBAM) model in order to address the problem of image spam. The experiments are conducted on the available dataset, called image spam hunter (ISH). The results obtained are then compared, using the CBAM model, to other existing state-of-the-art methods. The results obtained have demonstrated that the convolutional block attention module (CBAM) is efficient for image spam detection.
2023-08-24
Peng, Haoran, Chen, Pei-Chen, Chen, Pin-Hua, Yang, Yung-Shun, Hsia, Ching-Chieh, Wang, Li-Chun.  2022.  6G toward Metaverse: Technologies, Applications, and Challenges. 2022 IEEE VTS Asia Pacific Wireless Communications Symposium (APWCS). :6–10.
Metaverse opens up a new social networking paradigm where people can experience a real interactive feeling without physical space constraints. Social interactions are gradually evolving from text combined with pictures and videos to 3-dimensional virtual reality, making the social experience increasingly physical, implying that more metaverse applications with immersive experiences will be developed in the future. However, the increasing data dimensionality and volume for new metaverse applications present a significant challenge in data acquisition, security, and sharing. Furthermore, metaverse applications require high capacity and ultrareliability for the wireless system to guarantee the quality of user experience, which cannot be addressed in the current fifth-generation system. Therefore, reaching the metaverse is dependent on the revolution in the sixth-generation (6G) wireless communication, which is expected to provide low-latency, high-throughput, and secure services. This article provides a comprehensive view of metaverse applications and investigates the fundamental technologies for the 6G toward metaverse.
2023-04-14
Hossen, Imran, Hei, Xiali.  2022.  aaeCAPTCHA: The Design and Implementation of Audio Adversarial CAPTCHA. 2022 IEEE 7th European Symposium on Security and Privacy (EuroS&P). :430–447.
CAPTCHAs are designed to prevent malicious bot programs from abusing websites. Most online service providers deploy audio CAPTCHAs as an alternative to text and image CAPTCHAs for visually impaired users. However, prior research investigating the security of audio CAPTCHAs found them highly vulnerable to automated attacks using Automatic Speech Recognition (ASR) systems. To improve the robustness of audio CAPTCHAs against automated abuses, we present the design and implementation of an audio adversarial CAPTCHA (aaeCAPTCHA) system in this paper. The aaeCAPTCHA system exploits audio adversarial examples as CAPTCHAs to prevent the ASR systems from automatically solving them. Furthermore, we conducted a rigorous security evaluation of our new audio CAPTCHA design against five state-of-the-art DNN-based ASR systems and three commercial Speech-to-Text (STT) services. Our experimental evaluations demonstrate that aaeCAPTCHA is highly secure against these speech recognition technologies, even when the attacker has complete knowledge of the current attacks against audio adversarial examples. We also conducted a usability evaluation of the proof-of-concept implementation of the aaeCAPTCHA scheme. Our results show that it achieves high robustness at a moderate usability cost compared to normal audio CAPTCHAs. Finally, our extensive analysis highlights that aaeCAPTCHA can significantly enhance the security and robustness of traditional audio CAPTCHA systems while maintaining similar usability.
2023-07-21
Cai, Chuanjie, Zhang, Yijun, Chen, Qian.  2022.  Adaptive control of bilateral teleoperation systems with false data injection attacks and attacks detection. 2022 41st Chinese Control Conference (CCC). :4407—4412.
This paper studies adaptive control of bilateral teleoperation systems with false data injection attacks. The model of bilateral teleoperation system with false data injection attacks is presented. An off-line identification approach based on the least squares is used to detect whether false data injection attacks occur or not in the communication channel. Two Bernoulli distributed variables are introduced to describe the packet dropouts and false data injection attacks in the network. An adaptive controller is proposed to deal stability of the system with false data injection attacks. Some sufficient conditions are proposed to ensure the globally asymptotical stability of the system under false data injection attacks by using Lyapunov functional methods. A bilateral teleoperation system with two degrees of freedom is used to show the effectiveness of gained results.
2023-05-12
Belmouhoub, Amina, Bouzid, Yasser, Medjmadj, Slimane, Derrouaoui, Saddam Hocine, Guiatni, Mohamed.  2022.  Advanced Backstepping Control: Application on a Foldable Quadrotor. 2022 19th International Multi-Conference on Systems, Signals & Devices (SSD). :609–615.
This paper deals with the implementation of robust control, based on the finite time Lyapunov stability theory, to solve the trajectory tracking problem of an unconventional quadrotor with rotating arms (also known as foldable drone). First, the model of this Unmanned Aerial Vehicle (UAV) taking into consideration the variation of the inertia, the Center of Gravity (CoG) and the control matrix is presented. The theoretical foundations of backstepping control enhanced by a Super-Twisting (ST) algorithm are then discussed. Numerical simulations are performed to demonstrate the effectiveness of the proposed control strategy. Finally, a qualitative and quantitative comparative study is made between the proposed controller and the classical backstepping controller. Overall, the results obtained show that the proposed control approach provides better performance in terms of accuracy and resilience.
ISSN: 2474-0446
2023-01-06
Chandrashekhar, RV, Visumathi, J, Anandaraj, A. PeterSoosai.  2022.  Advanced Lightweight Encryption Algorithm for Android (IoT) Devices. 2022 International Conference on Advances in Computing, Communication and Applied Informatics (ACCAI). :1—5.
Security and Controls with Data privacy in Internet of Things (IoT) devices is not only a present and future technology that is projected to connect a multitude of devices, but it is also a critical survival factor for IoT to thrive. As the quantity of communications increases, massive amounts of data are expected to be generated, posing a threat to both physical device and data security. In the Internet of Things architecture, small and low-powered devices are widespread. Due to their complexity, traditional encryption methods and algorithms are computationally expensive, requiring numerous rounds to encrypt and decode, squandering the limited energy available on devices. A simpler cryptographic method, on the other hand, may compromise the intended confidentiality and integrity. This study examines two lightweight encryption algorithms for Android devices: AES and RSA. On the other hand, the traditional AES approach generates preset encryption keys that the sender and receiver share. As a result, the key may be obtained quickly. In this paper, we present an improved AES approach for generating dynamic keys.
2023-08-04
Sinha, Arunesh.  2022.  AI and Security: A Game Perspective. 2022 14th International Conference on COMmunication Systems & NETworkS (COMSNETS). :393–396.
In this short paper, we survey some work at the intersection of Artificial Intelligence (AI) and security that are based on game theoretic considerations, and particularly focus on the author's (our) contribution in these areas. One half of this paper focuses on applications of game theoretic and learning reasoning for addressing security applications such as in public safety and wildlife conservation. In the second half, we present recent work that attacks the learning components of these works, leading to sub-optimal defense allocation. We finally end by pointing to issues and potential research problems that can arise due to data quality in the real world.
ISSN: 2155-2509
2023-05-12
Kostis, Ioannis - Aris, Karamitsios, Konstantinos, Kotrotsios, Konstantinos, Tsolaki, Magda, Tsolaki, Anthoula.  2022.  AI-Enabled Conversational Agents in Service of Mild Cognitive Impairment Patients. 2022 International Conference on Electrical and Information Technology (IEIT). :69–74.
Over the past two decades, several forms of non-intrusive technology have been deployed in cooperation with medical specialists in order to aid patients diagnosed with some form of mental, cognitive or psychological condition. Along with the availability and accessibility to applications offered by mobile devices, as well as the advancements in the field of Artificial Intelligence applications and Natural Language Processing, Conversational Agents have been developed with the objective of aiding medical specialists detecting those conditions in their early stages and monitoring their symptoms and effects on the cognitive state of the patient, as well as supporting the patient in their effort of mitigating those symptoms. Coupled with the recent advances in the the scientific field of machine and deep learning, we aim to explore the grade of applicability of such technologies into cognitive health support Conversational Agents, and their impact on the acceptability of such applications bytheir end users. Therefore, we conduct a systematic literature review, following a transparent and thorough process in order to search and analyze the bibliography of the past five years, focused on the implementation of Conversational Agents, supported by Artificial Intelligence technologies and in service of patients diagnosed with Mild Cognitive Impairment and its variants.
2023-06-30
Bhuyan, Hemanta Kumar, Arun Sai, T., Charan, M., Vignesh Chowdary, K., Brahma, Biswajit.  2022.  Analysis of classification based predicted disease using machine learning and medical things model. 2022 Second International Conference on Advances in Electrical, Computing, Communication and Sustainable Technologies (ICAECT). :1–6.
{Health diseases have been issued seriously harmful in human life due to different dehydrated food and disturbance of working environment in the organization. Precise prediction and diagnosis of disease become a more serious and challenging task for primary deterrence, recognition, and treatment. Thus, based on the above challenges, we proposed the Medical Things (MT) and machine learning models to solve the healthcare problems with appropriate services in disease supervising, forecast, and diagnosis. We developed a prediction framework with machine learning approaches to get different categories of classification for predicted disease. The framework is designed by the fuzzy model with a decision tree to lessen the data complexity. We considered heart disease for experiments and experimental evaluation determined the prediction for categories of classification. The number of decision trees (M) with samples (MS), leaf node (ML), and learning rate (I) is determined as MS=20
2023-09-08
Shi, Kun, Chen, Songsong, Li, Dezhi, Tian, Ke, Feng, Meiling.  2022.  Analysis of the Optimized KNN Algorithm for the Data Security of DR Service. 2022 IEEE 6th Conference on Energy Internet and Energy System Integration (EI2). :1634–1637.
The data of large-scale distributed demand-side iot devices are gradually migrated to the cloud. This cloud deployment mode makes it convenient for IoT devices to participate in the interaction between supply and demand, and at the same time exposes various vulnerabilities of IoT devices to the Internet, which can be easily accessed and manipulated by hackers to launch large-scale DDoS attacks. As an easy-to-understand supervised learning classification algorithm, KNN can obtain more accurate classification results without too many adjustment parameters, and has achieved many research achievements in the field of DDoS detection. However, in the face of high-dimensional data, this method has high operation cost, high cost and not practical. Aiming at this disadvantage, this chapter explores the potential of classical KNN algorithm in data storage structure, K-nearest neighbor search and hyperparameter optimization, and proposes an improved KNN algorithm for DDoS attack detection of demand-side IoT devices.
2023-07-21
Neuimin, Oleksandr S., Zhuk, Serhii Ya., Tovkach, Igor O., Malenchyk, Taras V..  2022.  Analysis Of The Small UAV Trajectory Detection Algorithm Based On The “l/n-d” Criterion Using Kalman Filtering Due To FMCW Radar Data. 2022 IEEE 16th International Conference on Advanced Trends in Radioelectronics, Telecommunications and Computer Engineering (TCSET). :741—745.
Promising means of detecting small UAVs are FMCW radar systems. Small UAVs with an RCS value of the order of 10−3••• 10−1m2 are characterized by a low SNR (less than 10 dB). To ensure an acceptable probability of detection in the resolution element (more than 0.9), it becomes necessary to reduce the detection threshold. However, this leads to a significant increase in the probability of false alarms (more than 10−3) and is accompanied by the appearance of a large number of false plots. The work describes an algorithm for trajectory detecting of a small UAV based on a “l/n-d” criterion using Kalman filtering in a spherical coordinate system due to FMCW radar data. Statistical analysis of algorithms based on two types of criteria “3/5-2” and “5/9-2” is performed. It is shown that the algorithms allow to achieve the probability of target trajectory detection greater than 0.9 and low probability of false detection of the target trajectory less than 10−4 with the false alarm probability in the resolution element 10−3••• 10−2•
2023-06-30
Wu, Zhiyong, Cao, Yanhua.  2022.  Analysis of “Tripartite and Bilateral” Space Deterrence Based on Signaling Game. 2022 IEEE 6th Information Technology and Mechatronics Engineering Conference (ITOEC). 6:2100–2104.
A “tripartite and bilateral” dynamic game model was constructed to study the impact of space deterrence on the challenger's military strategy in a military conflict. Based on the signal game theory, the payment matrices and optimal strategies of the sheltering side and challenging side were analyzed. In a theoretical framework, the indicators of the effectiveness of the challenger's response to space deterrence and the influencing factors of the sheltering's space deterrence were examined. The feasibility and effective means for the challenger to respond to the space deterrent in a “tripartite and bilateral” military conflict were concluded.
ISSN: 2693-289X
2023-02-17
Das, Lipsa, Ahuja, Laxmi, Pandey, Adesh.  2022.  Analysis of Twitter Spam Detection Using Machine Learning Approach. 2022 3rd International Conference on Intelligent Engineering and Management (ICIEM). :764–769.
Now a days there are many online social networks (OSN) which are very popular among Internet users and use this platform for finding new connections, sharing their activities and thoughts. Twitter is such social media platforms which is very popular among this users. Survey says, it has more than 310 million monthly users who are very active and post around 500+ million tweets in a day and this attracts, the spammer or cyber-criminal to misuse this platform for their malicious benefits. Product advertisement, phishing true users, pornography propagation, stealing the trending news, sharing malicious link to get the victims for making money are the common example of the activities of spammers. In Aug-2014, Twitter made public that 8.5% of its active Twitter users (monthly) that is approx. 23+ million users, who have automatically contacted their servers for regular updates. Thus for a spam free environment in twitter, it is greatly required to detect and filter these spammer from the legitimate users. Here in our research paper, effectiveness & features of twitter spam detection, various methods are summarized with their benefits and limitations are presented. [1]
2022-12-09
Thiagarajan, K., Dixit, Chandra Kumar, Panneerselvam, M., Madhuvappan, C.Arunkumar, Gadde, Samata, Shrote, Jyoti N.  2022.  Analysis on the Growth of Artificial Intelligence for Application Security in Internet of Things. 2022 Second International Conference on Artificial Intelligence and Smart Energy (ICAIS). :6—12.
Artificial intelligence is a subfield of computer science that refers to the intelligence displayed by machines or software. The research has influenced the rapid development of smart devices that have a significant impact on our daily lives. Science, engineering, business, and medicine have all improved their prediction powers in order to make our lives easier in our daily tasks. The quality and efficiency of regions that use artificial intelligence has improved, as shown in this study. It successfully handles data organisation and environment difficulties, allowing for the development of a more solid and rigorous model. The pace of life is quickening in the digital age, and the PC Internet falls well short of meeting people’s needs. Users want to be able to get convenient network information services at any time and from any location
2023-03-17
Al-Kateb, Mohammed, Eltabakh, Mohamed Y., Al-Omari, Awny, Brown, Paul G..  2022.  Analytics at Scale: Evolution at Infrastructure and Algorithmic Levels. 2022 IEEE 38th International Conference on Data Engineering (ICDE). :3217–3220.
Data Analytics is at the core of almost all modern ap-plications ranging from science and finance to healthcare and web applications. The evolution of data analytics over the last decade has been dramatic - new methods, new tools and new platforms - with no slowdown in sight. This rapid evolution has pushed the boundaries of data analytics along several axis including scalability especially with the rise of distributed infrastructures and the Big Data era, and interoperability with diverse data management systems such as relational databases, Hadoop and Spark. However, many analytic application developers struggle with the challenge of production deployment. Recent experience suggests that it is difficult to deliver modern data analytics with the level of reliability, security and manageability that has been a feature of traditional SQL DBMSs. In this tutorial, we discuss the advances and innovations introduced at both the infrastructure and algorithmic levels, directed at making analytic workloads scale, while paying close attention to the kind of quality of service guarantees different technology provide. We start with an overview of the classical centralized analytical techniques, describing the shift towards distributed analytics over non-SQL infrastructures. We contrast such approaches with systems that integrate analytic functionality inside, above or adjacent to SQL engines. We also explore how Cloud platforms' virtualization capabilities make it easier - and cheaper - for end users to apply these new analytic techniques to their data. Finally, we conclude with the learned lessons and a vision for the near future.
ISSN: 2375-026X
2023-06-09
Choucri, Nazli, Agarwal, Gaurav.  2022.  Analytics for Cybersecurity Policy of Cyber-Physical Systems. 2022 IEEE International Symposium on Technologies for Homeland Security (HST). :1—7.
Guidelines, directives, and policy statements are usually presented in “linear” text form - word after word, page after page. However necessary, this practice impedes full understanding, obscures feedback dynamics, hides mutual dependencies and cascading effects and the like-even when augmented with tables and diagrams. The net result is often a checklist response as an end in itself. All this creates barriers to intended realization of guidelines and undermines potential effectiveness. We present a solution strategy using text as “data”, transforming text into a structured model, and generate network views of the text(s), that we then can use for vulnerability mapping, risk assessments and note control point analysis. For proof of concept we draw on NIST conceptual model and analysis of guidelines for smart grid cybersecurity, more than 600 pages of text.
2023-04-28
Iqbal, Sarfraz.  2022.  Analyzing Initial Design Theory Components for Developing Information Security Laboratories. 2022 6th International Conference on Cryptography, Security and Privacy (CSP). :36–40.
Online information security labs intended for training and facilitating hands-on learning for distance students at master’s level are not easy to develop and administer. This research focuses on analyzing the results of a DSR project for design, development, and implementation of an InfoSec lab. This research work contributes to the existing research by putting forth an initial outline of a generalized model for design theory for InfoSec labs aimed at hands-on education of students in the field of information security. The anatomy of design theory framework is used to analyze the necessary components of the anticipated design theory for InfoSec labs in future.
2023-02-17
Aartsen, Max, Banga, Kanta, Talko, Konrad, Touw, Dustin, Wisman, Bertus, Meïnsma, Daniel, Björkqvist, Mathias.  2022.  Analyzing Interoperability and Security Overhead of ROS2 DDS Middleware. 2022 30th Mediterranean Conference on Control and Automation (MED). :976–981.
Robot Operating System 2 (ROS2) is the latest release of a framework for enabling robot applications. Data Distribution Service (DDS) middleware is used for communication between nodes in a ROS2 cluster. The DDS middleware provides a distributed discovery system, message definitions and serialization, and security. In ROS2, the DDS middleware is accessed through an abstraction layer, making it easy to switch from one implementation to another. The existing middleware implementations differ in a number of ways, e.g., in how they are supported in ROS2, in their support for the security features, their ease of use, their performance, and their interoperability. In this work, the focus is on the ease of use, interoperability, and security features aspects of ROS2 DDS middleware. We compare the ease of installation and ease of use of three different DDS middleware, and test the interoperability of different middleware combinations in simple deployment scenarios. We highlight the difference that enabling the security option makes to interoperability, and conduct performance experiments that show the effect that turning on security has on the communication performance. Our results provide guidelines for choosing and deploying DDS middleware on a ROS2 cluster.
ISSN: 2473-3504
2023-04-14
Qian, Jun, Gan, Zijie, Zhang, Jie, Bhunia, Suman.  2022.  Analyzing SocialArks Data Leak - A Brute Force Web Login Attack. 2022 4th International Conference on Computer Communication and the Internet (ICCCI). :21–27.
In this work, we discuss data breaches based on the “2012 SocialArks data breach” case study. Data leakage refers to the security violations of unauthorized individuals copying, transmitting, viewing, stealing, or using sensitive, protected, or confidential data. Data leakage is becoming more and more serious, for those traditional information security protection methods like anti-virus software, intrusion detection, and firewalls have been becoming more and more challenging to deal with independently. Nevertheless, fortunately, new IT technologies are rapidly changing and challenging traditional security laws and provide new opportunities to develop the information security market. The SocialArks data breach was caused by a misconfiguration of ElasticSearch Database owned by SocialArks, owned by “Tencent.” The attack methodology is classic, and five common Elasticsearch mistakes discussed the possibilities of those leakages. The defense solution focuses on how to optimize the Elasticsearch server. Furthermore, the ElasticSearch database’s open-source identity also causes many ethical problems, which means that anyone can download and install it for free, and they can install it almost anywhere. Some companies download it and install it on their internal servers, while others download and install it in the cloud (on any provider they want). There are also cloud service companies that provide hosted versions of Elasticsearch, which means they host and manage Elasticsearch clusters for their customers, such as Company Tencent.
2023-05-12
Arca, Sevgi, Hewett, Rattikorn.  2022.  Anonymity-driven Measures for Privacy. 2022 6th International Conference on Cryptography, Security and Privacy (CSP). :6–10.
In today’s world, digital data are enormous due to technologies that advance data collection, storage, and analyses. As more data are shared or publicly available, privacy is of great concern. Having privacy means having control over your data. The first step towards privacy protection is to understand various aspects of privacy and have the ability to quantify them. Much work in structured data, however, has focused on approaches to transforming the original data into a more anonymous form (via generalization and suppression) while preserving the data integrity. Such anonymization techniques count data instances of each set of distinct attribute values of interest to signify the required anonymity to protect an individual’s identity or confidential data. While this serves the purpose, our research takes an alternative approach to provide quick privacy measures by way of anonymity especially when dealing with large-scale data. This paper presents a study of anonymity measures based on their relevant properties that impact privacy. Specifically, we identify three properties: uniformity, variety, and diversity, and formulate their measures. The paper provides illustrated examples to evaluate their validity and discusses the use of multi-aspects of anonymity and privacy measures.
2023-09-08
Bai, Songhao, Zhang, Zhen.  2022.  Anonymous Identity Authentication scheme for Internet of Vehicles based on moving target Defense. 2021 International Conference on Advanced Computing and Endogenous Security. :1–4.
As one of the effective methods to enhance traffic safety and improve traffic efficiency, the Internet of vehicles has attracted wide attention from all walks of life. V2X secure communication, as one of the research hotspots of the Internet of vehicles, also has many security and privacy problems. Attackers can use these vulnerabilities to obtain vehicle identity information and location information, and can also attack vehicles through camouflage.Therefore, the identity authentication process in vehicle network communication must be effectively protected. The anonymous identity authentication scheme based on moving target defense proposed in this paper not only ensures the authenticity and integrity of information sources, but also avoids the disclosure of vehicle identity information.
2023-07-12
Sreeja, C.S., Misbahuddin, Mohammed.  2022.  Anticounterfeiting Method for Drugs Using Synthetic DNA Cryptography. 2022 International Conference on Trends in Quantum Computing and Emerging Business Technologies (TQCEBT). :1—5.
Counterfeited products are a significant problem in both developed and developing countries and has become more critical as an aftermath of COVID-19, exclusively for drugs and medical equipment’s. In this paper, an innovative approach is proposed to resist counterfeiting which is based on the principles of Synthetic DNA. The proposed encryption approach has employed the distinctive features of synthetic DNA in amalgamation with DNA encryption to provide information security and functions as an anticounterfeiting method that ensures usability. The scheme’s security analysis and proof of concept are detailed. Scyther is used to carry out the formal analysis of the scheme, and all of the modeled assertions are verified without any attacks.
2023-02-03
Wibawa, Dikka Aditya Satria, Setiawan, Hermawan, Girinoto.  2022.  Anti-Phishing Game Framework Based on Extended Design Play Experience (DPE) Framework as an Educational Media. 2022 7th International Workshop on Big Data and Information Security (IWBIS). :107–112.
The main objective of this research is to increase security awareness against phishing attacks in the education sector by teaching users about phishing URLs. The educational media was made based on references from several previous studies that were used as basic references. Development of antiphishing game framework educational media using the extended DPE framework. Participants in this study were vocational and college students in the technology field. The respondents included vocational and college students, each with as many as 30 respondents. To assess the level of awareness and understanding of phishing, especially phishing URLs, participants will be given a pre-test before playing the game, and after completing the game, the application will be given a posttest. A paired t-test was used to answer the research hypothesis. The results of data analysis show differences in the results of increasing identification of URL phishing by respondents before and after using educational media of the anti-phishing game framework in increasing security awareness against URL phishing attacks. More serious game development can be carried out in the future to increase user awareness, particularly in phishing or other security issues, and can be implemented for general users who do not have a background in technology.