IEEE Access (Jan 2024)

Long-Term Interbank Bond Rate Prediction Based on ICEEMDAN and Machine Learning

  • Yue Yu,
  • Guangwu Kuang,
  • Jianrui Zhu,
  • Lei Shen,
  • Mengjia Wang

DOI
https://doi.org/10.1109/ACCESS.2024.3381500
Journal volume & issue
Vol. 12
pp. 46241 – 46262

Abstract

Read online

The application of time series forecasting utilizing historical data has become increasingly essential across a variety of industries including finance, healthcare, meteorology, and industrial sectors. The assessment of bond transaction rates in the interbank bond market serves as a crucial indicator for assessing bank risk. In this paper, we proposed a composite model to forecast the transaction interest rates of China’s interbank bonds over a long period. Specifically, our model integrates an intrinsic complete ensemble empirical mode decomposition with adaptive noise (ICEEMDAN) model along with various long-term prediction models including long short-term memory network, temporal convolutional network, transformer, and autoformer. Our findings reveal that: 1) predictive performance of different long-term prediction models varies across different frequencies of single time series data; 2) predictive efficacy of diverse model combinations differs across varying prediction time lengths; 3) best results can be realized by using different prediction model combinations for high-frequency, medium-frequency and low-frequency data under different time steps.

Keywords