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Bibliographic Details
Main Authors: Katariya, Dwipam, Origgi, Juan Manuel, Wang, Yage, Caputo, Thomas
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.12825
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author Katariya, Dwipam
Origgi, Juan Manuel
Wang, Yage
Caputo, Thomas
author_facet Katariya, Dwipam
Origgi, Juan Manuel
Wang, Yage
Caputo, Thomas
contents Users engage with financial services companies through multiple channels, often interacting with mobile applications, web platforms, call centers, and physical locations to service their accounts. The resulting interactions are recorded at heterogeneous temporal resolutions across these domains. This multi-channel data can be combined and encoded to create a comprehensive representation of the customer's journey for accurate intent prediction. This demands sequential learning solutions. NMT transformers achieve state-of-the-art sequential representation learning by encoding context and decoding for the next best action to represent long-range dependencies. However, three major challenges exist while combining multi-domain sequences within an encoder-decoder transformers architecture for intent prediction applications: a) aligning sequences with different sampling rates b) learning temporal dynamics across multi-variate, multi-domain sequences c) combining dynamic and static sequences. We propose an encoder-decoder transformer model to address these challenges for contextual and sequential intent prediction in financial servicing applications. Our experiments show significant improvement over the existing tabular method.
format Preprint
id arxiv_https___arxiv_org_abs_2410_12825
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle TIMeSynC: Temporal Intent Modelling with Synchronized Context Encodings for Financial Service Applications
Katariya, Dwipam
Origgi, Juan Manuel
Wang, Yage
Caputo, Thomas
General Finance
Machine Learning
Users engage with financial services companies through multiple channels, often interacting with mobile applications, web platforms, call centers, and physical locations to service their accounts. The resulting interactions are recorded at heterogeneous temporal resolutions across these domains. This multi-channel data can be combined and encoded to create a comprehensive representation of the customer's journey for accurate intent prediction. This demands sequential learning solutions. NMT transformers achieve state-of-the-art sequential representation learning by encoding context and decoding for the next best action to represent long-range dependencies. However, three major challenges exist while combining multi-domain sequences within an encoder-decoder transformers architecture for intent prediction applications: a) aligning sequences with different sampling rates b) learning temporal dynamics across multi-variate, multi-domain sequences c) combining dynamic and static sequences. We propose an encoder-decoder transformer model to address these challenges for contextual and sequential intent prediction in financial servicing applications. Our experiments show significant improvement over the existing tabular method.
title TIMeSynC: Temporal Intent Modelling with Synchronized Context Encodings for Financial Service Applications
topic General Finance
Machine Learning
url https://arxiv.org/abs/2410.12825