5 research outputs found

    Churn Identification and Prediction from a Large-Scale Telecommunication Dataset Using NLP

    Get PDF
    The identification of customer churn is a major issue for large telecom businesses. In order to manage the data of current customers as well as acquire and manage new customers, every day, a substantial volume of data gets generated. Therefore, it's crucial to identify the causes of client churn so that the appropriate steps can be taken to lower it. Numerous researchers have already discussed their efforts to combine static and dynamic approaches in order to reduce churn in big data sets, but these systems still have many issues when it comes to actually identifying churn. In this paper, we suggested two methods, the first of which is churn identification and using Natural Language Processing (NLP) methods and machine learning techniques, we make predictions based on a vast telecommunication data set. The NLP process involves data pre-processing, normalization, feature extraction, and feature selection. For feature extraction, we employ unique techniques like TF-IDF, Stanford NLP, and occurrence correlation methods, have been suggested. Throughout the lesson, a machine learning classification algorithm is used for training and testing. Finally, the system employs a variety of cross validation techniques and training and evaluating Machine learning algorithms. The experimental analysis shows the system's efficacy and accuracy

    GAN Base feedback analysis system for industrial IOT networks

    Get PDF
    The internet, like automated tools, has grown to better our daily lives. Interacting IoT products and cyber-physical systems. Generative Adversarial Network’s (GANs’) generator and discriminator may have different inputs, allowing feedback in supervised models. AI systems use neural networks, and adversarial networks analyse neural network feedback. Cyber-physical production systems (CPPS) herald intelligent manufacturing . CPPS may launch cross-domain attacks since the virtual and real worlds are interwoven. This project addresses enhanced Cyber-Physical System(CPS) feedback structure for Denial-of-Service (DoS) defence . Comparing sensor-controller and controller-to-actuator DoS attack channels shows a swapping system modelling solution for the CPS’s complex response feedback. Because of the differential in bandwidth between the two channels and the suspects’ limited energy, one person can only launch so many DoS assaults. DoS attacks are old and widespread. Create a layered switching paradigm that employs packet-based transfer techniques to prevent assaults. The discriminator’s probability may be used to assess whether feedback samples came from real or fictional data. Cognitive feedback can assess GA feedback data

    Empowering sustainable farming practices with AI-enabled interactive visualization of hyperspectral imaging data

    No full text
    In the context of sustainable applications, this research investigates using artificial intelligence (AI) in interactive visualization for hyperspectral pictures. Detailed spectrum data about the Earth's surface is provided through hyperspectral imaging, allowing for the monitoring and analyzing several phenomena about agriculture, land use, and environmental sustainability. However, processing, analyzing, and interpreting the massive data produced by hyperspectral sensors is challenging. AI methods and interactive visualization provide practical tools for deriving useful information from hyperspectral data and assisting in decision-making for environmentally friendly applications. This study examines the key elements of an interactive visualization framework powered by AI and emphasizes the advantages and implications for sustainable agricultural operations. This sector's difficulties and potential possibilities are also discussed, focusing on the need for data processing optimization, technology integration, user-friendly interfaces, and ethical issues. In general, interactive hyperspectral image visualization powered by AI shows potential for improving sustainability in agriculture and other related fields

    GAN Base feedback analysis system for industrial IOT networks

    No full text
    The internet, like automated tools, has grown to better our daily lives. Interacting IoT products and cyber-physical systems. Generative Adversarial Network's (GANs') generator and discriminator may have different inputs, allowing feedback in supervised models. AI systems use neural networks, and adversarial networks analyse neural network feedback. Cyber-physical production systems (CPPS) herald intelligent manufacturing . CPPS may launch cross-domain attacks since the virtual and real worlds are interwoven. This project addresses enhanced Cyber-Physical System(CPS) feedback structure for Denial-of-Service (DoS) defence . Comparing sensor-controller and controller-to-actuator DoS attack channels shows a swapping system modelling solution for the CPS's complex response feedback. Because of the differential in bandwidth between the two channels and the suspects' limited energy, one person can only launch so many DoS assaults. DoS attacks are old and widespread. Create a layered switching paradigm that employs packet-based transfer techniques to prevent assaults. The discriminator's probability may be used to assess whether feedback samples came from real or fictional data. Cognitive feedback can assess GA feedback data
    corecore