2021
DOI: 10.1155/2021/2446543
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Stock Price Forecast Based on CNN-BiLSTM-ECA Model

Abstract: Financial data as a kind of multimedia data contains rich information, which has been widely used for data analysis task. However, how to predict the stock price is still a hot research problem for investors and researchers in financial field. Forecasting stock prices becomes an extremely challenging task due to high noise, nonlinearity, and volatility of the stock price time series data. In order to provide better prediction results of stock price, a new stock price prediction model named as CNN-BiLSTM-ECA is… Show more

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Cited by 32 publications
(24 citation statements)
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“…The ECA could not only create the weights to all channels, along learn the correlation amongst the distinct channels. To the time series data, the superior weight has been allocated to the key feature and lesser weight to the irrelevant feature [18]. So, ECA efforts on the suitable data that enhances the sensitivity of network to essential features.…”
Section: Fire Detection Using Acnn-blstm Modelmentioning
confidence: 99%
“…The ECA could not only create the weights to all channels, along learn the correlation amongst the distinct channels. To the time series data, the superior weight has been allocated to the key feature and lesser weight to the irrelevant feature [18]. So, ECA efforts on the suitable data that enhances the sensitivity of network to essential features.…”
Section: Fire Detection Using Acnn-blstm Modelmentioning
confidence: 99%
“…After analyzing our data, we chose attention-based CNN-BiLSTM Model to solve this time series forecasting problem due to its reported success in various prediction and forecasting works [54]- [58].…”
Section: Related Workmentioning
confidence: 99%
“…Berdasarkan literatur pertama terkait peramalan volatilitas harga saham, metode BiLSTM bekerja lebih baik menggunakan timestep sebanyak 5 dan 10 [17]. Berikutnya pada literatur kedua, akurasi tertinggi pada model BiLSTM dihasilkan dari 10 timestep [18]. Maka dari itu, pada tugas akhir ini akan dilakukan percobaan menggunakan nilai timestep sebesar 5 dan 10 mengacu pada literatur sebelumnya.…”
Section: Implementasi Model Bilstmunclassified