Volume 14 , Issue 2 , PP: 186-197, 2024 | Cite this article as | XML | Html | PDF | Full Length Article
P. Ramya 1 * , R. Anitha 2 , J. Rajalakshmi 3 , R. Dineshkumar 4
Doi: https://doi.org/10.54216/JCIM.140213
The exponential growth of digital data and the increasing sophistication of cyber threats demand more advanced methods for threat analysis. This paper explores the integration of quantum computing and natural language processing (NLP) to enhance cyber threat analysis. Traditional computing methods struggle to keep up with the scale and complexity of modern cyber threats, but quantum computing offers a promising avenue for accelerated data processing, while NLP provides sophisticated tools for interpreting and understanding human language, crucial for analysing threat intelligence. Our proposed framework leverages quantum algorithms for rapid anomaly detection and advanced NLP techniques for precise threat identification and analysis. The methodology includes data collection from diverse sources, pre-processing for normalization, quantum-assisted data processing using Grover's search and Quantum Approximate Optimization Algorithm (QAOA), NLP analysis with transformers and BERT-based models, and integration of findings to build comprehensive threat profiles. Experimental results demonstrate significant improvements: quantum algorithms reduced data processing time by up to 50%, NLP models achieved 92% accuracy in threat identification, and the false positive rate was reduced by 30%. These findings indicate a promising direction for next-generation cybersecurity solutions, enabling more proactive and efficient threat mitigation. Future work will focus on refining quantum algorithms, enhancing NLP models, and expanding the framework for real-time threat detection capabilities.
Quantum Computing , Natural Language Processing (NLP) , Cybersecurity , Threat Analysis , Quantum Algorithms , Anomaly Detection , Grover's Search , Quantum Approximate Optimization Algorithm (QAOA)
[1] Ajani, S. N., Khobragade, P., Dhone, M., Ganguly, B., Shelke, N., & Parati, N. (2024). Advancements in Computing: Emerging Trends in Computational Science with Next-Generation Computing. International Journal of Intelligent Systems and Applications in Engineering, 12(7s), 546-559.
[2] Manoharan, A., & Sarker, M. (2023). Revolutionizing Cybersecurity: Unleashing the Power of Artificial Intelligence and Machine Learning for Next-Generation Threat Detection. DOI: https://www. doi. org/10.56726/IRJMETS32644, 1.
[3] Sawalmeh, S. "Algorithms for Cybersecurity in CAVs Based On Deep Learning and Their Applications," Journal of International Journal of Advances in Applied Computational Intelligence, vol. 6, no. 2, pp. 28-36, 2024. DOI: https://doi.org/10.54216/IJAACI.060203
[4] Goswami, S., & Sharma, S. (2024, March). Artificial Intelligence, Quantum Computing and Cloud Computing Enabled Personalized Medicine in Next Generation Sequencing Bioinformatics. In 2024 IEEE International Conference on Interdisciplinary Approaches in Technology and Management for Social Innovation (IATMSI) (Vol. 2, pp. 1-5). IEEE.
[5] Sai, S., Yashvardhan, U., Chamola, V., & Sikdar, B. (2024). Generative ai for cyber security: Analyzing the potential of chatgpt, dall-e and other models for enhancing the security space. IEEE Access.
[6] Hossain, K. A. (2023). The potential and challenges of quantum technology in modern era. Scientific Research Journal, 11(6).
[7] Nair, M. M., Deshmukh, A., & Tyagi, A. K. (2024). Artificial intelligence for cyber security: Current trends and future challenges. Automated Secure Computing for Next‐Generation Systems, 83-114.
[8] Efe, A. (2023). Assessment of the Artificial Intelligence and Quantum Computing in the Smart Management Information Systems. Bilişim Teknolojileri Dergisi, 16(3), 177-188.
[9] Saxena, A., Mancilla, J., Montalban, I., & Pere, C. (2023). Financial Modeling Using Quantum Computing: Design and manage quantum machine learning solutions for financial analysis and decision making. Packt Publishing Ltd.
[10] Shaker, L. M., Al-Amiery, A., Isahak, W. N. R. W., & Al-Azzawi, W. K. (2023). Advancements in quantum optics: harnessing the power of photons for next-generation technologies. Journal of Optics, 1-13.
[11] Hosseinalizadeh, M., Pordanjani, I. R., Sayyadroushan, N., Baneh, A. M., Nasrinasrabadi, M., Farbin, E., ... & Afshari, M. Computing the Future: Research at the Convergence of Computer Engineering, Artificial Intelligence and Intelligent Technologies. Nobel Sciences.
[12] Tuli, E. A., Lee, J. M., & Kim, D. S. (2024). Integration of Quantum Technologies into Metaverse: Applications, Potentials, and Challenges. IEEE Access, 12, 29995-30019.
[13] Padmanaban, H. (2024). Quantum Computing and AI in the Cloud. Journal of Computational Intelligence and Robotics, 4(1), 14-32.
[14] Hemamalini, V., Mishra, A. K., Tyagi, A. K., & Kakulapati, V. (2024). Artificial Intelligence–Blockchain‐Enabled–Internet of Things‐Based Cloud Applications for Next‐Generation Society. Automated Secure Computing for Next‐Generation Systems, 65-82.
[15] A., M. B., Y. M., N. "Mitigating Cybersecurity Threats in Modern Networks Using Intelligent Approach," Journal of International Journal of Wireless and Ad Hoc Communication, vol. 7, no. 2, pp. 56-63, 2023. DOI: https://doi.org/10.54216/IJWAC.070204
[16] Ur Rasool, R., Ahmad, H. F., Rafique, W., Qayyum, A., Qadir, J., & Anwar, Z. (2023). Quantum computing for healthcare: A review. Future Internet, 15(3), 94.
[17] Sharma, S., Prakash, A., & Sugumaran, V. (Eds.). (2024). Developments towards Next Generation Intelligent Systems for Sustainable Development. IGI Global.
[18] Tyagi, A. K., Mishra, A. K., Vedavathi, N., Kakulapati, V., & Sajidha, S. A. (2024). Futuristic Technologies for Smart Manufacturing: Research Statement and Vision for the Future. Automated Secure Computing for Next‐Generation Systems, 415-441.
[19] Abd El-Aziz, R. M., Taloba, A. I., & Alghamdi, F. A. (2022). Quantum computing optimization technique for iot platform using modified deep residual approach. Alexandria Engineering Journal, 61(12), 12497-12509.
[20] Darzi, S., & Yavuz, A. A. (2024). PQC meets ML or AI: Exploring the Synergy of Machine Learning and Post-quantum Cryptography. Authorea Preprints.
[21] Hossain, E., Khan, I., Un-Noor, F., Sikander, S. S., & Sunny, M. S. H. (2019). Application of big data and machine learning in smart grid, and associated security concerns: A review. Ieee Access, 7, 13960-13988.
[22] Alazab, M., Soman, K. P., Srinivasan, S., Venkatraman, S., & Pham, V. Q. (2023). Deep learning for cyber security applications: A comprehensive survey. Authorea Preprints.
[23] Villar, A. S., & Khan, N. (2021). Robotic process automation in banking industry: a case study on Deutsche Bank. Journal of Banking and Financial Technology, 5(1), 71-86.