scholarly journals WEB RECOMMENDER SYSTEM BASED ON CONSUMER BEHAVIOR MODELING USING FUZZY REPRESENTATION

2011 ◽  
Vol 57 (2) ◽  
pp. 962-969 ◽  
Author(s):  
A. Fong ◽  
Baoyao Zhou ◽  
S. Hui ◽  
Guan Hong ◽  
The Do

2021 ◽  
Vol 27 (2) ◽  
pp. 417-429
Author(s):  
Denis Yu. RAZUMOVSKII

Subject. The article discusses the financial behavior of households, and financial decisions. Objectives. I model patterns of households' financial behavior, referring the impact of stress factors on financial decisions. Methods. The financial behavior was analyzed through approaches proposed by D. Kahneman, A. Tversky and R. Thaler. However, instead of experiments, I rely upon surveys evaluating the financial literacy and behavior of people in the Sverdlovsk Oblast via social networks and conduct my research as a member of the task force of the Regions Center for Financial Literacy at the Ural State University of Economics. I took part in the preparation of questionnaires. Results. I proposed model patterns of financial behavior and substantiate what determines the behavioral pattern of people in distress. I also conclude that the impact of the COVID-19 on the financial and consumer behavior of people triggers destabilizing effects for the macroeconomic situation. Conclusions. Financial behavior modeling will help forecast financial and consumer shocks when the macroeconomic situation is destabilized, thus transforming the social policy.


2017 ◽  
Vol 13 (4) ◽  
pp. 61-77 ◽  
Author(s):  
Oleksandr Dorokhov ◽  
Liudmyla Dorokhova ◽  
Milica Delibasic ◽  
Justas Streimikis

Author(s):  
Pengyu Zhao ◽  
Kecheng Xiao ◽  
Yuanxing Zhang ◽  
Kaigui Bian ◽  
Wei Yan

Recently, deep learning models have been widely explored in recommender systems. Though having achieved remarkable success, the design of task-aware recommendation models usually requires manual feature engineering and architecture engineering from domain experts. To relieve those efforts, we explore the potential of neural architecture search (NAS) and introduce AMEIR for Automatic behavior Modeling, interaction Exploration and multi-layer perceptron (MLP) Investigation in the Recommender system. Specifically, AMEIR divides the complete recommendation models into three stages of behavior modeling, interaction exploration, MLP aggregation, and introduces a novel search space containing three tailored subspaces that cover most of the existing methods and thus allow for searching better models. To find the ideal architecture efficiently and effectively, AMEIR realizes the one-shot random search in recommendation progressively on the three stages and assembles the search results as the final outcome. The experiment over various scenarios reveals that AMEIR outperforms competitive baselines of elaborate manual design and leading algorithmic complex NAS methods with lower model complexity and comparable time cost, indicating efficacy, efficiency, and robustness of the proposed method.


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