MC-DBN: A Deep Belief Network-Based Model for Modality Completion
- URL: http://arxiv.org/abs/2402.09782v3
- Date: Wed, 20 Mar 2024 08:50:46 GMT
- Title: MC-DBN: A Deep Belief Network-Based Model for Modality Completion
- Authors: Zihong Luo, Zheng Tao, Yuxuan Huang, Kexin He, Chengzhi Liu,
- Abstract summary: We propose a Modality Completion Deep Belief Network-Based Model (MC-DBN)
This approach utilizes implicit features of complete data to compensate for gaps between itself and additional incomplete data.
It ensures that the enhanced multi-modal data closely aligns with the dynamic nature of the real world to enhance the effectiveness of the model.
- Score: 3.7020486533725605
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recent advancements in multi-modal artificial intelligence (AI) have revolutionized the fields of stock market forecasting and heart rate monitoring. Utilizing diverse data sources can substantially improve prediction accuracy. Nonetheless, additional data may not always align with the original dataset. Interpolation methods are commonly utilized for handling missing values in modal data, though they may exhibit limitations in the context of sparse information. Addressing this challenge, we propose a Modality Completion Deep Belief Network-Based Model (MC-DBN). This approach utilizes implicit features of complete data to compensate for gaps between itself and additional incomplete data. It ensures that the enhanced multi-modal data closely aligns with the dynamic nature of the real world to enhance the effectiveness of the model. We conduct evaluations of the MC-DBN model in two datasets from the stock market forecasting and heart rate monitoring domains. Comprehensive experiments showcase the model's capacity to bridge the semantic divide present in multi-modal data, subsequently enhancing its performance. The source code is available at: https://github.com/logan-0623/DBN-generate
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