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AI in Banking : Practical Applications and Case Studies / by Liyu Shao, Qin Chen, Min He.

Springer Nature - Springer Computer Science (R0) eBooks 2025 English International Available online

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Format:
Book
Author/Creator:
Shao, Liyu., Author.
Chen, Qin., Author.
He, Min, Author.
Series:
Computer Science Series
Language:
English
Subjects (All):
Machine learning.
Artificial intelligence--Data processing.
Artificial intelligence.
Computer vision.
Natural language processing (Computer science).
Biometric identification.
Python (Computer program language).
Machine Learning.
Data Science.
Computer Vision.
Natural Language Processing (NLP).
Biometrics.
Python.
Local Subjects:
Machine Learning.
Data Science.
Computer Vision.
Natural Language Processing (NLP).
Biometrics.
Python.
Physical Description:
1 online resource (XXII, 354 p. 264 illus., 7 illus. in color.)
Edition:
1st ed. 2025.
Place of Publication:
Singapore : Springer Nature Singapore : Imprint: Springer, 2025.
Summary:
Big data and artificial intelligence (AI) cannot remain limited to academic theoretical research. It is crucial to utilize them in practical business scenarios, enabling cutting-edge technology to generate tangible value. This book delves into the application of AI from theory to practice, offering detailed insights into AI project design and code implementation across eleven business scenarios in four major sectors: retail banking, e-banking, bank credit, and tech operations. It provides hands-on examples of various technologies, including automatic machine learning, integrated learning, graph computation, recommendation systems, causal inference, generative adversarial networks, supervised learning, unsupervised learning, computer vision, reinforcement learning, fuzzy control, automatic control, speech recognition, semantic understanding, Bayesian networks, edge computing, and more. This book stands as a rare and practical guide to AI projects in the banking industry. By avoiding complex mathematical formulas and theoretical analyses, it uses plain language to illustrate how to apply AI technology in commercial banking business scenarios. With its strong readability and practical approach, this book enables readers to swiftly develop their own AI projects.
Contents:
Part I: Smart Marketing
Chapter 1. Mobile Banking Potential Monthly Active Customer Mining: Automated Machine Learning Techniques
Chapter 2. Retail Potential High-value Customer Identification: Graph Neural Network Technology
Chapter 3. Accurate Recommendation for Banking: Recommender System
Chapter 4. Assessing the Value of Bank Online Marketing Posts: Reinforcement Learning Techniques
Chapter 5: Modeling Binary Causal Effects of Related Repayments: Causal Inference Techniques
Part II: Intelligent Risk Control
Chapter 6. Telecom Fraud Money Laundering Account Recognition Case: Multiple Machine Learning Techniques
Chapter 7. Developing a Dialectal Speech Phone Collection Bimodal Robot from Scratch: Intelligent Voice Q&A Technology
Chapter 8. Chattel Collateral Warehouse Visual Monitoring Project: Image Understanding Technology
Chapter 9. Personal Loan Delinquency Prediction Project: Bayesian Network Techniques
Part III: Intelligent Operation
Chapter 10. Enterprise WeChat Private Traffic Customer Cold Start Program: Automated Control Technology
Chapter 11 Intelligent Inspection Robot for Commercial Bank Data Centers: Computer Vision Technology.
Notes:
Description based on publisher supplied metadata and other sources.
ISBN:
981-9638-37-2
OCLC:
1514649923

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