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Recommender System for Improving Customer Loyalty - Katarzyna Tarnowska, Zbigniew W. Ras, Lynn Daniel

Recommender System for Improving Customer Loyalty

Buch | Hardcover
XVIII, 124 Seiten
2019 | 1st ed. 2020
Springer International Publishing (Verlag)
978-3-030-13437-2 (ISBN)
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This book presents the Recommender System for Improving Customer Loyalty. The data mining techniques employed in the Recommender System allow users to "learn" from the experiences of others, without sharing proprietary information.

This book presents the Recommender System for Improving Customer Loyalty. New and innovative products have begun appearing from a wide variety of countries, which has increased the need to improve the customer experience. When a customer spends hundreds of thousands of dollars on a piece of equipment, keeping it running efficiently is critical to achieving the desired return on investment. Moreover, managers have discovered that delivering a better customer experience pays off in a number of ways. A study of publicly traded companies conducted by Watermark Consulting found that from 2007 to 2013, companies with a better customer service generated a total return to shareholders that was 26 points higher than the S&P 500. This is only one of many studies that illustrate the measurable value of providing a better service experience.

The Recommender System presented here addresses several important issues. (1) It provides a decision framework to help managers determine which actions are likely to have the greatest impact on the Net Promoter Score. (2) The results are based on multiple clients. The data mining techniques employed in the Recommender System allow users to "learn" from the experiences of others, without sharing proprietary information. This dramatically enhances the power of the system. (3) It supplements traditional text mining options. Text mining can be used to identify the frequency with which topics are mentioned, and the sentiment associated with a given topic. The Recommender System allows users to view specific, anonymous comments associated with actual customers. Studying these comments can provide highly accurate insights into the steps that can be taken to improve the customer experience. (4) Lastly, the system provides a sensitivity analysis feature. In some cases, certain actions can be more easily implemented than others. The Recommender System allows managers to "weigh" these actions and determine which ones would have a greater impact.

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Chapter 1: Introduction.- Chapter 2: Customer Loyalty Improvement.- Chapter 3: State of the Art.- Chapter 4: Background.- Chapter 5: Overview of Recommender System Engine.- Chapter 6: Visual Data Analysis.- Chapter 7: Improving Performance of Knowledge Miner.- Chapter 8: Recommender System Based on Unstructured Data.- Chapter 9: Customer Attrition Problem.- Chapter 10: Conclusion.

Erscheinungsdatum
Reihe/Serie Studies in Big Data
Zusatzinfo XVIII, 124 p. 40 illus., 30 illus. in color.
Verlagsort Cham
Sprache englisch
Maße 155 x 235 mm
Gewicht 373 g
Themenwelt Informatik Datenbanken Data Warehouse / Data Mining
Informatik Theorie / Studium Künstliche Intelligenz / Robotik
Technik
Wirtschaft Betriebswirtschaft / Management Marketing / Vertrieb
Schlagworte actionable knowledge • Big Data • CLIRS • Computational Intelligence • Customer Loyalty Improvement Recommender System • Customer Retention • Meta-action Retraction • Recommendation from Action Rules • Recommender Systems • sentiment analysis
ISBN-10 3-030-13437-7 / 3030134377
ISBN-13 978-3-030-13437-2 / 9783030134372
Zustand Neuware
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