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Explainable Artificial Intelligence Based on Neuro-Fuzzy Modeling with Applications in Finance: Studies in Computational Intelligence, cartea 964

Autor Tom Rutkowski
en Limba Engleză Hardback – 8 iun 2021
The book proposes techniques, with an emphasis on the financial sector, which will make recommendation systems both accurate and explainable. The vast majority of AI models work like black box models. However, in many applications, e.g., medical diagnosis or venture capital investment recommendations, it is essential to explain the rationale behind AI systems decisions or recommendations. Therefore, the development of artificial intelligence cannot ignore the need for interpretable, transparent, and explainable models. First, the main idea of the explainable recommenders is outlined within the background of neuro-fuzzy systems. In turn, various novel recommenders are proposed, each characterized by achieving high accuracy with a reasonable number of interpretable fuzzy rules. The main part of the book is devoted to a very challenging problem of stock market recommendations. An original concept of the explainable recommender, based on patterns from previous transactions, is developed; it recommends stocks that fit the strategy of investors, and its recommendations are explainable for investment advisers.

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Specificații

ISBN-13: 9783030755201
ISBN-10: 3030755207
Pagini: 167
Ilustrații: XIX, 167 p. 118 illus., 72 illus. in color.
Dimensiuni: 155 x 235 mm
Greutate: 0.44 kg
Ediția:1st ed. 2021
Editura: Springer International Publishing
Colecția Springer
Seria Studies in Computational Intelligence

Locul publicării:Cham, Switzerland

Cuprins

​Introduction.- Neuro-Fuzzy Approach and its Application in Recommender Systems.- Novel Explainable Recommenders Based on Neuro-Fuzzy.- Explainable Recommender for Investment Advisers.- Summary and Final Remarks.

Textul de pe ultima copertă

The book proposes techniques, with an emphasis on the financial sector, which will make recommendation systems both accurate and explainable. The vast majority of AI models work like black box models. However, in many applications, e.g., medical diagnosis or venture capital investment recommendations, it is essential to explain the rationale behind AI systems decisions or recommendations. Therefore, the development of artificial intelligence cannot ignore the need for interpretable, transparent, and explainable models. First, the main idea of the explainable recommenders is outlined within the background of neuro-fuzzy systems. In turn, various novel recommenders are proposed, each characterized by achieving high accuracy with a reasonable number of interpretable fuzzy rules. The main part of the book is devoted to a very challenging problem of stock market recommendations. An original concept of the explainable recommender, based on patterns from previous transactions, is developed; it recommends stocks that fit the strategy of investors, and its recommendations are explainable for investment advisers.


Caracteristici

Proposes techniques, with an emphasis on the financial sector, which will make recommendation systems both accurate and explainable Provides the main idea of the explainable recommenders outlined within the background of neuro-fuzzy systems Declares various novel recommenders, each characterized by achieving high accuracy with a reasonable number of interpretable fuzzy rules The main part of the book is devoted to a very challenging problem of stock market recommendations Develops an original concept of the explainable recommender, based on patterns from previous transactions Recommends stocks that fit the strategy of investors and its recommendations are explainable for investment advisers