12,658 research outputs found

    Forecasting of financial data: a novel fuzzy logic neural network based on error-correction concept and statistics

    Get PDF
    First, this paper investigates the effect of good and bad news on volatility in the BUX return time series using asymmetric ARCH models. Then, the accuracy of forecasting models based on statistical (stochastic), machine learning methods, and soft/granular RBF network is investigated. To forecast the high-frequency financial data, we apply statistical ARMA and asymmetric GARCH-class models. A novel RBF network architecture is proposed based on incorporation of an error-correction mechanism, which improves forecasting ability of feed-forward neural networks. These proposed modelling approaches and SVM models are applied to predict the high-frequency time series of the BUX stock index. We found that it is possible to enhance forecast accuracy and achieve significant risk reduction in managerial decision making by applying intelligent forecasting models based on latest information technologies. On the other hand, we showed that statistical GARCH-class models can identify the presence of leverage effects, and react to the good and bad news.Web of Science421049

    Nonexistence of linear operators extending Lipschitz (pseudo)metric

    Full text link
    We present an example of a zero-dimensional compact metric space XX and its closed subspace AA such that there is no continuous linear extension operator for the Lipschitz pseudometrics on AA to the Lipschitz pseudometrics on XX. The construction is based on results of A. Brudnyi and Yu. Brudnyi concerning linear extension operators for Lipschitz functions.Comment: arXiv admin note: substantial text overlap with arXiv:math/040820
    corecore