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    請使用永久網址來引用或連結此文件: https://irlib.pccu.edu.tw/handle/987654321/35853


    題名: An emerging hybrid mechanism for information disclosure forecasting
    作者: Hsu, YS (Hsu, Yu-Shan)
    Lin, SJ (Lin, Sin-Jin)
    貢獻者: 會計系
    關鍵詞: Ensemble learning
    Manifold learning
    Disclosure
    Rough set theory
    Forecasting
    日期: 2016-12
    上傳時間: 2017-04-11 12:39:53 (UTC+8)
    摘要: Corporate governance mechanisms ensure that investors get a fair return on their investment. A well-established governance mechanism reduces the information asymmetry and agency cost between a firm's management and stakeholders, but decision makers find it difficult to assess the corporate governance status of publicly-listed firms before the annual official announcement the following year. This study proposes a hybrid ensemble learning forecasting mechanism (HELM), whose single-component candidates from the extreme learning machine (ELM) algorithm with dissimilar ensemble strategies (that is, data diversity, parameter diversity, kernel diversity, and preprocessing diversity) form one initial dataset. We implement locally linear embedding into the proposed mechanism to handle the dimensionality task and then utilize the weighted voting taken from the base components' cross-validation performance on a training dataset as the integration mechanism. Experimental results show that the proposed HELM significantly outperforms the other classifiers, but its superior performance under many real-life application domains comes with a critical drawback: it is incapable of providing an explanation for the underlying reasoning mechanisms. Thus, this study advances the utilized rough set theory with its explanation capability to extract the inherent knowledge from the ensemble mechanism (HELM). The informative rules can be used as a guideline for decision makers to make a reliable judgment under turbulent financial markets.
    關聯: INTERNATIONAL JOURNAL OF MACHINE LEARNING AND CYBERNETICS 卷: 7期: 6 頁碼: 943-952
    顯示於類別:[Department of Accounting & Graduate Institute of Accounting] periodical articles

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