Data Mining for Dining Pattern

Data Mining for Dining Pattern

Description

This book highlights the issues of data mining as related to restaurant survival analysis, to collaborative joint learning, and to dining recommender system. With the development of new ways to collect business data, it is possible to leverage multiple domains' knowledge to build an intelligent model for business assessment. The first part of the book discusses what the potential indicators are for the long-term survival of a physical store. Among different recommendation techniques, collaborative filtering usually suffer from limited performance due to the sparsity of user-item interactions. The second part investigates how to leverage the heterogeneous information in a knowledge base to improve the quality of recommender systems. The rapid growth of location-based services can enable food-service industry to accurately predict consumer's dining behavior. The third part, by leveraging users' historical dining pattern, socio-demographic characteristics and restaurants' attributes aims at generating the top-K restaurants for a user's next dining. This book presents a novelty-seeking based dining recommender system, termed NDRS, in consideration of both exploration and exploitation.


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Details

Author(s)
Fuzheng Zhang
Format
Paperback | 52 pages
Dimensions
150 x 220 x 3mm | 93g
Publication date
09 Sep 2018
Publisher
LAP Lambert Academic Publishing
Language
English
ISBN10
3330341394
ISBN13
9783330341395