Revolutionizing Cardiac Muscle Detection. Harnessing the Power of Machine Learning
| AUTHOR | Rajasekhar, Yenni |
| PUBLISHER | Grin Verlag (01/02/2024) |
| PRODUCT TYPE | Paperback (Paperback) |
Description
Bachelor Thesis from the year 2023 in the subject Medicine - Biomedical Engineering, language: English, abstract: This analysis explores advanced deep-learning techniques for stock price prediction, assessing transfer learning-based DTRSI, CNNs, and collaborative networks with sentiment analysis. DTRSI effectively addresses overfitting, outperforming traditional models. CNNs excel in predicting stock trends across time frames, while collaborative networks combining sentiment analysis and candlestick data show promise, particularly for specific stocks over longer periods. The study investigates the relevance of sentiment analysis from platforms like Twitter and StockTwits in predicting market movements. It introduces an innovative active deep learning approach for stock price forecasting, considering data size and sector impact. Emphasizing LSTM-based models, it highlights their potential to enhance stock price forecasting, offering insights for traders and investors by consolidating diverse prediction methods. This research lays the groundwork for future studies optimizing trading systems via data integration and advanced neural network architectures.
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Product Format
Product Details
ISBN-13:
9783346992628
ISBN-10:
3346992624
Binding:
Paperback or Softback (Trade Paperback (Us))
Content Language:
English
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Page Count:
38
Carton Quantity:
186
Product Dimensions:
5.83 x 0.09 x 8.27 inches
Weight:
0.14 pound(s)
Country of Origin:
US
Subject Information
BISAC Categories
Technology & Engineering | General
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publisher marketing
Bachelor Thesis from the year 2023 in the subject Medicine - Biomedical Engineering, language: English, abstract: This analysis explores advanced deep-learning techniques for stock price prediction, assessing transfer learning-based DTRSI, CNNs, and collaborative networks with sentiment analysis. DTRSI effectively addresses overfitting, outperforming traditional models. CNNs excel in predicting stock trends across time frames, while collaborative networks combining sentiment analysis and candlestick data show promise, particularly for specific stocks over longer periods. The study investigates the relevance of sentiment analysis from platforms like Twitter and StockTwits in predicting market movements. It introduces an innovative active deep learning approach for stock price forecasting, considering data size and sector impact. Emphasizing LSTM-based models, it highlights their potential to enhance stock price forecasting, offering insights for traders and investors by consolidating diverse prediction methods. This research lays the groundwork for future studies optimizing trading systems via data integration and advanced neural network architectures.
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