FUZZY INTERACTIVE CLUSTERING METHOD
DOI:
https://doi.org/10.26906/SUNZ.2024.2.152Keywords:
clustering, data, decision making, efficiency, neural netAbstract
The article examines an example of a system in which a large number of short texts are generated. In it, participants create strategic planning documents, within which key performance indicators are determined. The formulations of key performance indicators form a data set consisting of short texts. Within the framework of this system, there is an urgent task of forming and updating a classifier based on this set. A solution to this problem is presented using the fuzzy interactive clustering method. This method allows expert to perform clustering sets of short texts, issuing reverse communication based on the results of each step interactive clustering. Collection procedure reverse does not imply any connection availability of an expert special knowledge about work neural network and is assembled in human-readable form matrices reverse communications. Such an approach has advantages over clustering methods requiring adjustments metaparameters algorithm not related directly with the clustering results. Also important advantage the proposed method is opportunity realize clustering sets data related to various language domains that do not match the domain on which was produced education language models, due to proposed extension method dictionary language models This property allows use the proposed algorithm in a narrow way specialized domains, as well as in domains that do not allow you to obtain a full-fledged corpus of texts for yourself training language models.Downloads
References
McCann, B., Bradbury, J., Xiong, C., Socher R. (2017), Learned in Translation: Contextualized Word Vectors. NIPS. I. Guyon, U. von Luxburg, S. Bengio, H.M. Wallach, R.Fergus, S.V.N. Vishwanathan, R. Garnett (eds). P. 6297-6308.
Meier B.B., Elezi, I., Amirian, M., Dürr, O.. Stadelmann, T. (2018), “Learning Neural Models for End-to-End Clustering”, Artificial Neural Networks in Pattern Recognition, Lecture Notes in Computer Science, Springer, Cham. / L. Pancioni, F. Schwenker, E. Trentin (eds.). Vol 11081.
Kammoun, N., Abassi, R., Guemara, S. (2019). Towards a new clustering algorithm based on trust management and edge computing for IoT. 2019 15th International Wireless Communications and Mobile Computing Conference, IWCMC 2019, 1570–1575, 8766492. doi: https://doi.org/10.1109/IWCMC.2019.8766492
Kovalenko, A., Kuchuk, H. (2022), Methods to Manage Data in Self-healing Systems. Studies in Systems, Decision and Control, 425, 113–171, doi: https://doi.org/10.1007/978-3-030-96546-4_3
Yang, J., Bao, L., Liu, W., Yang, R., Wu, C.Q. (2023). On a Meta Learning-Based Scheduler for Deep Learning Clusters. IEEE Transactions on Cloud Computing, 11(4), 3631–3642. doi: https://doi.org/10.1109/TCC.2023.3308161
Gomathi, B., Saravana Balaji, B., Krishna Kumar, V., Abouhawwash, M., Aljahdali, S., Masud, M. and Kuchuk, N. (2022), “Multi-Objective Optimization of Energy Aware Virtual Machine Placement in Cloud Data Center”, Intelligent Automation and Soft Computing, Vol. 33(3), pp. 1771–1785, doi: http://dx.doi.org/10.32604/iasc.2022.024052
Zuev, A., Karaman, D., Olshevskiy, A. (2023). Wireless sensor synchronization method for monitoring short-term events. Advanced Information Systems, 7(4), 33–40. doi: https://doi.org/10.20998/2522-9052.2023.4.04
Petrovska, I., Kuchuk, H. (2023). Adaptive resource allocation method for data processing and security in cloud environment. Advanced Information Systems, 7(3), 67–73. doi: https://doi.org/10.20998/2522-9052.2023.3.10
Kuchuk, N., Mozhaiev, O., Semenov, S., Haichenko, A., Kuchuk, H., Tiulieniev, S., Mozhaiev, M., Davydov, V., Brusakova, O., Gnusov, Y. (2023). Devising a method for balancing the load on a territorially distributed foggy environment. Eastern-European Journal of Enterprise Technologies, 1(4 (121), 48–55. doi: https://doi.org/10.15587/1729-4061.2023.274177
Kuchuk, N., Kovalenko, A., Ruban, I., Shyshatskyi, A., Zakovorotnyi, O., Sheviakov, I. (2023). Traffic Modeling for the Industrial Internet of NanoThings. 2023 IEEE 4th KhPI Week on Advanced Technology, KhPI Week 2023 - Conference Proceedings, 2023, doi: 194480. http://dx.doi.org/10.1109/KhPIWeek61412.2023.10312856
G. Khoroshun, O. Ryazantsev, and M. Cherpitskyi, “Clustering and anomalies of USA stock market volatility index data”, Advanced Information Systems, vol. 7, no. 2, pp. 9–15, Jun. 2023. doi: 10.20998/2522-9052.2023.2.02.
Li, G., Liu, Y., Wu, J., Lin, D., Zhao, Sh. (2019). Methods of Resource Scheduling Based on Optimized Fuzzy Clustering in Fog Computing. Sensors, MDPI, 19(9). doi: https://doi.org/10.3390/s19092122