1,191 research outputs found

    Computational Optimizations for Machine Learning

    Get PDF
    The present book contains the 10 articles finally accepted for publication in the Special Issue “Computational Optimizations for Machine Learning” of the MDPI journal Mathematics, which cover a wide range of topics connected to the theory and applications of machine learning, neural networks and artificial intelligence. These topics include, among others, various types of machine learning classes, such as supervised, unsupervised and reinforcement learning, deep neural networks, convolutional neural networks, GANs, decision trees, linear regression, SVM, K-means clustering, Q-learning, temporal difference, deep adversarial networks and more. It is hoped that the book will be interesting and useful to those developing mathematical algorithms and applications in the domain of artificial intelligence and machine learning as well as for those having the appropriate mathematical background and willing to become familiar with recent advances of machine learning computational optimization mathematics, which has nowadays permeated into almost all sectors of human life and activity

    Analytic Case Study Using Unsupervised Event Detection in Multivariate Time Series Data

    Get PDF
    Analysis of cyber-physical systems (CPS) has emerged as a critical domain for providing US Air Force and Space Force leadership decision advantage in air, space, and cyberspace. Legacy methods have been outpaced by evolving battlespaces and global peer-level challengers. Automation provides one way to decrease the time that analysis currently takes. This thesis presents an event detection automation system (EDAS) which utilizes deep learning models, distance metrics, and static thresholding to detect events. The EDAS automation is evaluated with case study of CPS domain experts in two parts. Part 1 uses the current methods for CPS analysis with a qualitative pre-survey and tasks participants, in their natural setting to annotate events. Part 2 asks participants to perform annotation with the assistance of EDAS’s pre-annotations. Results from Part 1 and Part 2 exhibit low inter-coder agreement for both human-derived and automation-assisted event annotations. Qualitative analysis of survey results showed low trust and confidence in the event detection automation. One correlation or interpretation to the low confidence is that the low inter-coder agreement means that the humans do not share the same idea of what an annotation product should be
    • …
    corecore