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另外網站GDPNow - Federal Reserve Bank of Atlanta也說明:... similar to the one used by the U.S. Bureau of Economic Analysis. ... by James H. Stock and Mark W. Watson and Domenico Giannone, Lucrezia Reichlin, ...

亞洲大學 資訊工程學系 陳興忠所指導 CAHYA DAMARJATI的 An Application of Predictive Intelligence in Medicine: Hesitant Pulse Wave Detection with Its Explainability (2021),提出mpw stock analysis關鍵因素是什麼,來自於pulses feature extraction、hesitant pulse wave、explainability AI、clinical decision support systems。

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An Application of Predictive Intelligence in Medicine: Hesitant Pulse Wave Detection with Its Explainability

為了解決mpw stock analysis的問題,作者CAHYA DAMARJATI 這樣論述:

State-of-the-art Artificial Intelligence (AI) methods are progressively strengthened in Traditional Chinese Medicine (TCM), aiding physicians to make comprehensive clinical decisions. One of the well-known proven examinations in TCM i.e., hesitant pulse wave diagnosis, is a sign that the blood circ

ulation of a person is sluggish and can be used to provide a preliminary diagnosis for physiological problems. Modern AI method such as artificial neural networks, achieves better performance than traditional methods, but the interpretability to understand the final decisions are hard to explain. In

clinical situations, an easy-to-understand diagnosis is essential to be provided to the patients when selecting the appropriate clinical treatment. Therefore, this study presents feature extraction and clinical decision support systems based on Pulse-Line Intersection (PLI) and explainability AI (X

AI) methods. The pulses were recorded from 34 patients in 6 different measurement points for 6 seconds. In addition, a comparison of several AI methods was provided to classify hesitant and normal waves. The contribution of each feature in the classification process was analyzed by unboxing each AI

model parameter. The results revealed that all models performed comparably, evaluated using Area under the Curve (AUC) values on the test dataset: logistic regression AUC was 0.83; tree boosting AUC was 0.81; MLP AUC was 0.83. This work suggests that modern AI methods can provide comprehensive expla

inability which is compatible with traditional method rankings.