Risk Analysis in Customer Relationship Management via Quantile Region Convolutional Neural Network-Long Short-Term Memory and Cross-Attention Mechanism
Risk analysis is an important business decision support task in customer relationship management (CRM), involving the identification of potential risks or challenges that may affect customer satisfaction, retention rates, and overall business performance. To enhance risk analysis in CRM, this paper...
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Zusammenfassung: | Risk analysis is an important business decision support task in customer
relationship management (CRM), involving the identification of potential risks
or challenges that may affect customer satisfaction, retention rates, and
overall business performance. To enhance risk analysis in CRM, this paper
combines the advantages of quantile region convolutional neural network-long
short-term memory (QRCNN-LSTM) and cross-attention mechanisms for modeling. The
QRCNN-LSTM model combines sequence modeling with deep learning architectures
commonly used in natural language processing tasks, enabling the capture of
both local and global dependencies in sequence data. The cross-attention
mechanism enhances interactions between different input data parts, allowing
the model to focus on specific areas or features relevant to CRM risk analysis.
By applying QRCNN-LSTM and cross-attention mechanisms to CRM risk analysis,
empirical evidence demonstrates that this approach can effectively identify
potential risks and provide data-driven support for business decisions. |
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DOI: | 10.48550/arxiv.2408.12113 |