arXiv Open Access 2021

Dynamic Customer Embeddings for Financial Service Applications

Nima Chitsazan Samuel Sharpe Dwipam Katariya Qianyu Cheng Karthik Rajasethupathy
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Abstrak

As financial services (FS) companies have experienced drastic technology driven changes, the availability of new data streams provides the opportunity for more comprehensive customer understanding. We propose Dynamic Customer Embeddings (DCE), a framework that leverages customers' digital activity and a wide range of financial context to learn dense representations of customers in the FS industry. Our method examines customer actions and pageviews within a mobile or web digital session, the sequencing of the sessions themselves, and snapshots of common financial features across our organization at the time of login. We test our customer embeddings using real world data in three prediction problems: 1) the intent of a customer in their next digital session, 2) the probability of a customer calling the call centers after a session, and 3) the probability of a digital session to be fraudulent. DCE showed performance lift in all three downstream problems.

Topik & Kata Kunci

Penulis (5)

N

Nima Chitsazan

S

Samuel Sharpe

D

Dwipam Katariya

Q

Qianyu Cheng

K

Karthik Rajasethupathy

Format Sitasi

Chitsazan, N., Sharpe, S., Katariya, D., Cheng, Q., Rajasethupathy, K. (2021). Dynamic Customer Embeddings for Financial Service Applications. https://arxiv.org/abs/2106.11880

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Tahun Terbit
2021
Bahasa
en
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arXiv
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Open Access ✓