Leonid Alemán Gonzales, Kalaivani S, Saranya S S, Anto Bennet M, Srinivasarao B, Alhi Jordan Herrera Osorio
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引用次数: 0
摘要
从智能家居设备到可穿戴设备,电子产品已成为现代生活不可或缺的一部分。这些电子设备收集了大量数据,揭示了设备通信、用户行为等方面的精确信息。改进设备功能、深入了解用户体验以及检测安全风险只是这些信息众多用途中的一部分。然而,要成功地利用这些海量数据,需要先进的分析方法。本研究采用 K 均值聚类算法来分析不同类型电子设备发送和接收的数据。研究的第一步是收集数据,目的是建立一个使用各种设备和通信方法的具有代表性的样本。收集数据后,有必要对数据进行预处理,以确保数据能被成功分析。下一步,K-means 算法将信息分类为代表不同互动模式的子集。研究的主要目的是通过展示用户交流方式、设备交流方式以及增强功能和安全性的可能性,加深对这些群体的了解。
Harnessing K-means Clustering to Decode Communication Patterns in Modern Electronic Devices
From smart home devices to wearable devices, electronics have become an indispensable part of modern life. Vast volumes of data have been collected by these electronic devices, revealing precise information about device communications, user behaviours, and more. Improvements to device features, insights into the user experience, and the detection of security risks are just some of the many uses for this information. However, advanced analytical methods are required to make sense of this plethora of data successfully. The K-means clustering algorithm is used in the present research to analyse the data sent and received by different types of electronics. The first step of the research is collecting data, intending to create a representative sample of people using various devices and communication methods. After collecting data, preprocessing is necessary to ensure it can be analysed successfully. In the next step, the K-means algorithm classifies the information into subsets that stand for distinct modes of interaction. The primary objective of the research is to gain an improved understanding of these groups by demonstrating how users communicate, device communication, and possibilities for enhancing functionality and security.