Peng Wang | Computer Science | Best Paper Award

Best Paper Award

Dual-Enhancement Product Bundling: Bridging Interactive Graph and Large Language Model
Peng Wang
Affiliation Beijing Zhijingling Technology Co., Ltd.
Country China
Article Title Dual-Enhancement Product Bundling: Bridging Interactive Graph and Large Language Model
Google Scholar ID Rr1cJGoAAAAJ
Article Type Research Article
Article View 165
Reference Count 22
Award Category Best Paper Award
Event International Research Excellence and Best Paper Awards

The Best Paper Award recognizes scholarly excellence demonstrated through original research, methodological rigor, and meaningful contributions to the advancement of knowledge. Peng Wang received recognition for the article titled Dual-Enhancement Product Bundling: Bridging Interactive Graph and Large Language Model, published in 2026 through MDPI. The research addresses emerging challenges in intelligent recommendation systems by integrating graph-based interaction modeling with large language model capabilities, offering a framework that supports more effective product bundling recommendations in complex digital environments.[1]

Abstract

This article examines an advanced recommendation framework that combines interactive graph representations with large language model technologies to improve product bundling performance. The study investigates how structured user–item relationships and semantic understanding can be integrated within a unified architecture to address limitations in traditional recommendation systems. Through the incorporation of graph-based interaction learning and contextual language modeling, the proposed approach enhances recommendation accuracy, relevance, and interpretability. The research contributes to ongoing developments in intelligent commerce systems by presenting a scalable methodology capable of supporting complex recommendation environments while improving user engagement and decision-making effectiveness.[1]

Keywords

Product Bundling; Large Language Model; Interactive Graph; Graph-To-Text Modeling; Recommendation System.

Introduction

Product bundling has become an important strategy within digital commerce platforms because it enables organizations to enhance customer experiences while increasing transaction value. As recommendation environments become increasingly complex, conventional algorithms often struggle to capture nuanced user preferences and contextual relationships. Recent advances in graph learning and language modeling have created opportunities for more adaptive recommendation frameworks capable of generating personalized and semantically meaningful bundle suggestions across large-scale datasets.[2]

Research Profile

Peng Wang is affiliated with Beijing Zhijingling Technology Co., Ltd. and has contributed to research within the field of computer science, particularly in intelligent recommendation systems and data-driven applications. According to the available academic profile, the researcher maintains a Google Scholar record with ten indexed publications, approximately 1,380 citations, and an h-index of seven. These indicators reflect continuing engagement with emerging computational methodologies and practical applications of artificial intelligence technologies.[3]

Scientific Background

The development of recommendation systems has evolved from rule-based approaches to sophisticated machine learning architectures capable of processing large volumes of behavioral and contextual information. Graph neural networks have demonstrated effectiveness in modeling relational structures among users and products, while large language models have introduced advanced semantic reasoning capabilities. Integrating these technologies offers opportunities to overcome challenges related to sparse data, contextual ambiguity, and recommendation diversity within commercial ecosystems.[2][4]

Methodology

The study employs a dual-enhancement architecture that combines interactive graph learning mechanisms with large language model representations. User behaviors, product attributes, and relational interactions are incorporated into graph structures that capture latent dependencies among entities. Simultaneously, language-based contextual understanding is utilized to enrich semantic representations. The integration process enables complementary learning between structural and contextual information sources, resulting in a unified recommendation framework designed to generate more accurate and interpretable product bundles.[1]

Key Findings

The findings indicate that combining graph-based interaction modeling with large language model capabilities improves recommendation quality across multiple evaluation measures. Enhanced semantic awareness allows the system to better understand product relationships, while graph representations strengthen the identification of user preferences. The resulting framework demonstrates improved predictive performance and contributes to more relevant product bundle generation, supporting practical deployment within intelligent commerce platforms and recommendation-driven applications.[1][4]

Scientific Contributions

This research contributes to the growing intersection of graph intelligence and language-based artificial intelligence by demonstrating how complementary computational paradigms can be integrated within recommendation systems. The proposed framework expands methodological possibilities for product bundling analysis, improves recommendation interpretability, and provides a foundation for future investigations into hybrid AI architectures. The work also highlights practical pathways for deploying advanced recommendation technologies within contemporary digital marketplaces.[1][5]

Conclusion

The recognition of Peng Wang through the Best Paper Award reflects the scholarly significance of research that advances recommendation technologies through interdisciplinary innovation. By integrating interactive graph structures with large language model capabilities, the study presents a meaningful contribution to computer science and intelligent commerce research. Its methodological insights and practical implications support continued exploration of scalable, context-aware recommendation frameworks capable of addressing evolving challenges within digital ecosystems.[1]

References

  1. Wang, P. (2026). Dual-Enhancement Product Bundling: Bridging Interactive Graph and Large Language Model. Electronics, MDPI.
    https://doi.org/10.3390/electronics15122659
  2. MDPI. (2026). Electronics Journal: Research in intelligent systems and recommendation technologies.
    https://www.mdpi.com/journal/electronics
  3. Google Scholar. (n.d.). Author Profile: Peng Wang, Scholar ID Rr1cJGoAAAAJ.
    https://scholar.google.com/citations?hl=en&user=Rr1cJGoAAAAJ
  4. P Wang, J Xu, B Xu, C Liu, H Zhang, F Wang, H Hao. (2015). Semantic clustering and convolutional neural network for short text categorization.
    https://doi.org/10.3115/v1%2FP15-2058
  5. Peng Wang, Heng Zhang, Bo Xu, Chenglin Liu & Hongwei Hao. (2014). Short text feature enrichment using link analysis on topic-keyword graph.
    https://doi.org/10.1007/978-3-662-45924-9_8

Guenther Witzany | Biochemistry, Genetics and Molecular Biology | Excellence in Research Award

Excellence in Research Award

Guenther Witzany
Telos – Philosophische Praxis

Guenther Witzany
Researcher Guenther Witzany
Affiliation Telos – Philosophische Praxis
Country Austria
Scopus ID 14629725000
Documents 29
Citations 288
h-index 11
Subject Area Biochemistry, Genetics and Molecular Biology
Event International Research Excellence and Best Paper Awards

Guenther Witzany, affiliated with Telos – Philosophische Praxis, Austria, is recognized through the Excellence in Research Award for his scholarly contributions to biocommunication theory, evolutionary biology, genetics, and molecular biology. His interdisciplinary work explores communication processes within living systems and advances understanding of biological information exchange. The recognition reflects a sustained publication record, measurable citation impact, and contributions to contemporary scientific discourse within the broader field of molecular and evolutionary sciences.[1]

Abstract

The Excellence in Research Award acknowledges the academic contributions of Guenther Witzany in advancing interdisciplinary understanding of communication processes in living systems. His work integrates concepts from molecular biology, genetics, evolution, and philosophy of science to examine how biological entities generate, exchange, and interpret information. Through publications, theoretical frameworks, and scholarly engagement, Witzany has contributed to discussions concerning biological signaling, genetic regulation, and evolutionary adaptation. His research profile demonstrates sustained productivity, international visibility, and measurable scientific influence, supporting recognition within the International Research Excellence and Best Paper Awards program.[2]

Keywords

Biocommunication, Molecular Biology, Evolutionary Theory, Genetics, Biological Signaling, Scientific Communication, Systems Biology, Research Excellence.

Introduction

Modern biological research increasingly recognizes communication and information exchange as fundamental components of living systems. Guenther Witzany has contributed to this perspective by examining the role of signaling processes across organisms and biological structures. His work bridges scientific and philosophical approaches, offering frameworks that help explain regulatory interactions within genetics, cellular systems, and evolutionary processes. Such interdisciplinary scholarship contributes to broader understanding of biological complexity and adaptive behavior.[3]

Research Profile

Guenther Witzany’s research profile reflects expertise in molecular biology, genetics, evolutionary studies, and theoretical biology. His scholarly activities emphasize communication-based interpretations of biological processes and the significance of information exchange in living organisms. With a documented publication record and international citations, his work contributes to academic discussions regarding the mechanisms through which biological systems coordinate, regulate, and evolve.[1]

Research Contributions

A significant aspect of Witzany’s scholarship involves the development of biocommunication theory, which investigates how organisms employ signs, signals, and contextual interactions. His research highlights the communicative dimensions of cellular activity, genetic regulation, and evolutionary adaptation. These contributions have provided conceptual models used to interpret biological organization beyond purely mechanistic explanations, encouraging interdisciplinary dialogue among researchers from multiple scientific domains.[4]

Publications

  • Biocommunication and Natural Genome Editing.
  • Introduction to Biosemiotics: The New Biological Synthesis.
  • Biocommunication of Fungi.
  • Biocommunication of Plants.
  • Communication and Information Exchange in Evolutionary Systems.

Research Impact

The research impact of Guenther Witzany is reflected through citation performance, continued scholarly engagement, and the adoption of communication-centered perspectives within biological sciences. His publications have contributed to discussions regarding genome regulation, evolutionary innovation, and biological information processing. By encouraging integration between empirical research and conceptual analysis, his work has influenced interdisciplinary investigations across molecular biology and related scientific fields.[2]

Award Suitability

The Excellence in Research Award recognizes sustained scholarly achievement, publication quality, citation influence, and contributions to advancing scientific understanding. Guenther Witzany’s interdisciplinary research portfolio aligns with these criteria through his established record of publications, measurable research impact, and continued engagement with emerging questions in genetics, molecular biology, and evolutionary theory. His work demonstrates both academic rigor and relevance to contemporary scientific inquiry.[5]

Conclusion

Guenther Witzany’s research contributions illustrate the value of interdisciplinary approaches in understanding biological systems. Through investigations of communication, information exchange, and evolutionary processes, he has contributed to scientific discussions that extend across multiple domains of biology. His publication record, citation performance, and conceptual innovations support recognition through the Excellence in Research Award and highlight the continuing relevance of his scholarly work within contemporary life sciences.

References

  1. Elsevier. (n.d.). Scopus author details: Guenther Witzany, Author ID 14629725000. Scopus.
    https://www.scopus.com/authid/detail.uri?authorId=14629725000
  2. Witzany, G. (2016). The biocommunication method: On the road to an integrative biology. Taylor & Francis.
    https://doi.org/10.1080/19420889.2016.1164374
  3. Witzany, G. (2025). Plant Growth and Development from Biocommunication Perspective. MDPI.
    https://doi.org/10.3390/ijpb16020063
  4. Witzany, G. (2012). Introduction: Keylevels of Biocommunication of Ciliates. Springer.
    https://doi.org/10.1007/978-3-319-32211-7_1
  5. International Research Excellence and Best Paper Awards. (n.d.). Award Evaluation and Recognition Framework.
    https://bestpaperawards.com/

Arti | Computer Science | Best Paper Award

Best Paper Award

Arti
Sanatan Dharma College, Ambala Cantt, India

Arti
Affiliation Sanatan Dharma College, Ambala Cantt
Country India
Scopus ID Research Profile Available
Documents 12
Citations 2
h-index 1
Subject Area Computer Science
Event Best Paper Awards

The Best Paper Award recognition highlights the scholarly contributions of Arti, a researcher affiliated with Sanatan Dharma College, Ambala Cantt, India. The recognition reflects participation in academic research activities within the field of Computer Science and acknowledges contributions demonstrated through peer-reviewed publications, scholarly dissemination, and engagement with contemporary research topics. The award evaluation considers publication quality, originality, methodological rigor, relevance to emerging technological challenges, and the broader academic significance of the research work.

Abstract

This article presents an academic overview of Arti’s research profile and suitability for recognition under the Best Paper Award framework. The assessment is based on scholarly productivity, citation performance, publication record, and research relevance within Computer Science. Particular emphasis is placed on the quality of published work, methodological soundness, innovation potential, and contribution to ongoing scientific discourse. The profile reflects active engagement in research activities and demonstrates alignment with the objectives of academic excellence and knowledge dissemination.

Keywords

Computer Science, Research Excellence, Scholarly Publications, Academic Recognition, Scientific Contribution, Citation Analysis, Best Paper Award, Research Evaluation, Innovation, Knowledge Dissemination.

Introduction

Recognition through a Best Paper Award is generally reserved for research that demonstrates originality, technical rigor, clarity of presentation, and meaningful contribution to its respective discipline. Within Computer Science, award-winning research often addresses emerging challenges, proposes innovative methodologies, or advances theoretical and practical understanding of technological systems. Arti’s academic profile reflects participation in this broader scholarly ecosystem through published research outputs and contributions to scientific communication.

Research Profile

Arti is affiliated with Sanatan Dharma College, Ambala Cantt, India, and has established a developing scholarly record within the Computer Science domain. The available bibliometric indicators show a publication portfolio consisting of 12 indexed documents, supported by citation activity and an h-index of 1. Such indicators provide measurable evidence of academic engagement and demonstrate the visibility of research contributions within scholarly databases.

Research Contributions

The papers collectively address issues associated with modern computing environments, digital transformation, information processing, algorithmic approaches, and emerging technological trends. Such research contributes to the broader objective of enhancing efficiency, innovation, and problem-solving capacity within computing systems. The documented work further reflects adherence to scholarly publication standards, including peer review, methodological transparency, and academic integrity.

Publications

The publication portfolio consists of 12 documented research outputs indexed within scholarly databases. These publications represent sustained academic participation and provide a foundation for assessing research productivity, impact, and contribution to the field. Publication quality remains an important criterion in academic award evaluations because it reflects both scientific rigor and relevance.

 

Research Impact

Research impact may be assessed through citation activity, scholarly visibility, publication quality, and influence on subsequent studies. With documented citations and indexed publications, the available evidence suggests that Arti’s work has contributed to academic discussions and has achieved measurable recognition within the research community. While bibliometric indicators represent only one dimension of impact, they remain widely accepted tools for evaluating scholarly influence.

Award Suitability

Based on the available academic indicators, publication activity, and demonstrated commitment to scholarly research, Arti exhibits characteristics commonly associated with Best Paper Award consideration. The profile demonstrates research productivity, engagement with scientific inquiry, and contribution to knowledge development within Computer Science. The documented body of work supports evaluation under criteria such as originality, technical merit, academic relevance, and scholarly communication effectiveness.

Conclusion

Arti’s academic profile reflects meaningful participation in Computer Science research through published scholarly work, measurable bibliometric indicators, and contributions to the advancement of scientific knowledge. The combination of publication output, citation activity, and research engagement provides a reasonable basis for recognition within the Best Paper Award framework. Continued scholarly activity is expected to further strengthen the visibility and impact of future research contributions.

References

  1. Digital Twin Applications in Agriculture: Emerging Prospects and Opportunities.
    https://link.springer.com/chapter/10.1007/978-981-95-5915-2_13

  2. Deep learning-based facial recognition: A comparative study of CNN, VGG-16, and MobileNetV2.
    https://www.researchgate.net/publication/405125071_Deep_learning-based_facial_recognition_A_comparative_study_of_CNN_VGG-16_and_MobileNetV2

Tetiana Tatarchuk | Materials Science | Editorial Board Member

Dr. Tetiana Tatarchuk | Materials Science | Editorial Board Member 

Assistant Professor | Vasyl Stefanyk Precarpathian National University | Ukraine

Tetiana Tatarchuk is an accomplished Ukrainian chemist and Associate Professor at the Department of Chemistry, Vasyl Stefanyk Carpathian National University, Ivano-Frankivsk, where she has been serving since 2005. Her research primarily focuses on the synthesis, characterization, and application of metal oxide and ferrite nanomaterials for environmental remediation, catalytic processes, and water treatment. She has extensively explored the development of cobalt, nickel-cobalt, zinc-cobalt, and gadolinium-substituted ferrites, emphasizing their structural, morphological, magnetic, optical, and catalytic properties. Her work includes green and eco-friendly synthesis approaches using plant extracts, demonstrating significant advancements in adsorption, photocatalysis, and Fenton-like oxidation for the degradation of organic pollutants such as dyes, pharmaceuticals, and toxic chemicals. Tatarchuk has also contributed to studies on TiO₂-based photocatalysts, halloysite nanotubes, and magnetite nanoparticles, highlighting their potential in environmental purification, hyperthermia applications, and advanced oxidation processes. Her publications in high-impact journals reveal a consistent focus on sustainable and practical solutions for environmental challenges, including water disinfection, pollutant degradation, and heavy metal removal. In addition to experimental research, she has investigated fundamental aspects of spinel ferrite defects, cation distribution, inversion degree, and their influence on catalytic performance, combining theoretical modeling with practical applications. Tatarchuk has collaborated extensively with international researchers, contributing to multidisciplinary projects that integrate chemistry, materials science, and environmental engineering. She has also reviewed topics such as virus elimination, microplastics removal, and green synthesis principles, reflecting her commitment to addressing global environmental and health issues. With over 80 publications, numerous citations, and active engagement in peer review, her career demonstrates a blend of innovative research, teaching excellence, and scientific leadership, establishing her as a prominent figure in nanomaterials and environmental chemistry. Her work continues to impact sustainable technology development and water treatment methodologies, emphasizing the translation of laboratory research into real-world solutions for pollution control and resource management.

Profiles: Google Scholar | ORCID | Scopus

Featured Publications

  1. Tatarchuk, T., Kotsyubynsky, V. (2025). CeO2-Cobalt Ferrite Composite as a Dual-Function Catalyst for Hydrogen Peroxide Decomposition and Organic Pollutants Degradation. Metals, 15(9), 985.

  2. Tatarchuk, T., Bilovol, V., Shyichuk, A., Danyliuk, I., Sokołowski, K., Gajewska, M. (2025). Mesoporous Co-Mn ferrites as highly radical-forming catalysts for wet peroxide oxidation of 4-nitrophenol. Applied Surface Science, 2025, 162610.

  3. Starko, I., Tatarchuk, T., Sokolowski, K., Naushad, M. (2025). Engineering of Mesoporous Gd-substituted Ni-Co Ferrites as Adsorbents for Efficient Elimination of Congo Red Dye and Oxytetracycline. Water, Air, & Soil Pollution, 236, 78.

  4. Tatarchuk, T., Shyichuk, A., Kotsyubynsky, V., Danyliuk, N. (2025). Catalytically active cobalt ferrites synthesized using plant extracts: Insights into structural, optical, and catalytic properties. Ceramics International, 51, 470.

  5. Liaskovska, M., Tatarchuk, T., Kotsyubynsky, V. (2025). Green Synthesis of Cobalt–Zinc Ferrites and Their Activity in Dye Elimination via Adsorption and Catalytic Wet Peroxide Oxidation. Metals, 15(1), 44.

Tetiana Tatarchuk’s work advances sustainable environmental chemistry by developing innovative nanomaterials and green catalytic processes for water purification and pollutant removal. Her research bridges fundamental science and practical applications, offering solutions that benefit society, industry, and global environmental sustainability.

M M Abdullah Al Mamun Sony | Social Sciences | Best Researcher Award | 10112

Mr. M M Abdullah Al Mamun Sony | Social Sciences | Best Researcher Award

Research Associate | ChangeMaker Nexus Ltd | Bangladesh

Mr. M.M. Abdullah Al Mamun Sony is an accomplished researcher and academic specializing in sociology, disaster management, gender studies, and social-environmental research. He is currently pursuing a Ph.D. at the University of Debrecen, Hungary, at the Géza Marton Doctoral School of Legal Studies with an outstanding grade of 4.98/5.00, reflecting his strong academic capabilities and commitment to research excellence. Sony holds a Master of Social Science in Sociology from Khulna University, Bangladesh, where he specialized in disaster management, gender policy, and sociological research methods, and a Bachelor of Social Science (Honours) in Sociology, also from Khulna University, demonstrating a solid academic foundation. His professional experience spans several significant roles, including Locally-led Action Research Consultant for the Bangladesh Preparedness Partnership, DOSZ Ambassador of Bangladesh fostering scientific collaboration with Hungary, and research associate and consultant for multiple social science and disaster management projects funded by Khulna University Research Cell, UGC Bangladesh, and international agencies. His research interests encompass social-environmental risk assessment, disaster coping mechanisms, gender-based studies, education quality, and labor market inclusion. Sony has developed strong research skills in quantitative and qualitative methods, including SPSS, NVivo, Atlas.ti, EndNote, and advanced data collection, analysis, and reporting techniques. He has an impressive publication record in Q1 and SSCI-indexed journals such as Social Sciences & Humanities Open, Sustainability, and the International Journal of Disaster Risk Reduction, with 22 citations, 7 documents, and an H-index of 3. Sony has received multiple awards and honors, including the Stipendium Hungaricum PhD Fellowship, Bangladesh Sweden Trust Fund travel grant, Best Leadership Award, Best Youth Icon Award, and recognition for outstanding presentations at international conferences. With his academic excellence, extensive research experience, international collaborations, leadership roles, and community engagement, Mr. M.M. Abdullah Al Mamun Sony demonstrates exceptional potential to contribute significantly to global social science research, making him a highly deserving candidate for recognition and awards in the field.

Profiles: Google Scholar | Scopus | ORCID | LinkedIn | ResearchGate

Featured Publications

  1. Yu, X., Amin, M. B., Olga, P., Rahaman, M. A., & Sony, M. M. A. A. M. (2024). Gender-based emergency response and crisis management knowledge assessment: A cross-sectional study on Chinese tertiary student. International Journal of Disaster Risk Reduction, 112, 104800. [Citations: 18]

  2. Mollah, M. A., Rana, M., Amin, M. B., Sony, M. M. A. A. M., Rahaman, M. A., & Fenyves, V. (2024). Examining the role of AI-augmented HRM for sustainable performance: Key determinants for digital culture and organizational strategy. Sustainability, 16(24), 10843. [Citations: 15]

  3. Roy, T., Chandra, D., Sony, M. M. A. A. M., & Rahman, M. S. (2021). Impact of salinity intrusion on health of coastal people: Reflections from Dacope upazila of Khulna district, Bangladesh. Khulna University Studies, 17(1 & 2), 57-66. [Citations: 14]

  4. Roy, T., Nasreen, M., Hasan, M. K., & Sony, M. M. A. A. M. (2023). Community priorities in disaster risk reduction interventions: A critical perspective from Bangladesh. In Coastal disaster risk management in Bangladesh (pp. 335-355). [Citations: 8]

  5. Hasan, M. K., & Sony, M. M. A. A. M. (2023). Covid-19, social change, and society 5.0. In The Palgrave Handbook of Global Social Change (pp. 1-19). [Citations: 8]

Sarvesh Tanwar | Computer Science | Excellence in Research Award

Prof. Dr. Sarvesh Tanwar | Computer Science | Excellence in Research Award

Professor | Amity University | India

Dr. Sarvesh Tanwar is an accomplished researcher and academic with a strong background in cryptography, cybersecurity, blockchain, and computer network security. She earned her Ph.D. in Computer Science, where her research focused on securing IoT networks and blockchain-based systems. Over the years, she has gained extensive professional experience as a faculty member, project lead, and mentor for undergraduate and graduate students, contributing to multiple national and international research projects. Her research interests span cybersecurity, public key infrastructure, intrusion detection systems, secure communication protocols, and blockchain applications in digital security. She possesses advanced research skills in cryptographic algorithm design, network security analysis, blockchain architecture, IoT security frameworks, and data-driven cybersecurity solutions. Dr. Tanwar has an impressive record of publications in top-tier journals and conferences, including IEEE, Scopus-indexed journals, and Springer, reflecting her ability to address complex security challenges with innovative approaches. Her contributions have been recognized through multiple awards and honors, including research excellence recognitions, best paper awards, and memberships in prestigious professional organizations such as IEEE and CRSI. She has also served as a resource person, guest editor, and technical program committee member, demonstrating leadership in the academic and research community. With a strong focus on mentoring, global collaboration, and advancing secure computing research, Dr. Tanwar continues to make high-impact contributions to both academia and industry. Her work not only advances theoretical knowledge but also emphasizes practical applications in secure digital systems, demonstrating her commitment to societal and technological advancement. Overall, her educational background, professional achievements, research expertise, and recognized contributions establish her as a leading figure in cybersecurity and blockchain research, making her highly deserving of recognition and awards in the field.

Profiles: Google Scholar | Scopus | ORCID | ResearchGate

Featured Publications

  1. Tanwar, S., & Bojarajulu, B. (2023). Intelligent IoT-BOTNET attack detection model with convolutional neural network. Computers, Materials & Continua, 70(2), 2077–2093.Citations: 44

  2. Tanwar, S., Choudhary, V., Choudhury, T., & Kotecha, K. (2024). Towards secure IoT networks: A comprehensive study of metaheuristic algorithms in conjunction with CNN using a self-generated dataset. Computational Intelligence and Neuroscience, 2024, Article ID 11107349.Citations: 11

  3. Tanwar, S., & Kumar, K. (2024). Deep-learning-based cryptanalysis through topic modeling. Engineering, Technology & Applied Science Research, 14(1), 12524–12529.Citations: 4

  4. Tanwar, S., & Kumar, K. (2024). MAN-C: A masked autoencoder neural cryptography based encryption scheme for CT scan images. Engineering, Technology & Applied Science Research, 14(1), 12524–12529.Citations: 4

  5. Tanwar, S., & Kumar, K. (2024). Generation and evaluation of datasets for anomaly-based intrusion detection systems in IoT environments. Engineering, Technology & Applied Science Research, 14(1), 12524–12529.Citations: 4