Inicio  /  Future Internet  /  Vol: 13 Par: 6 (2021)  /  Artículo
ARTÍCULO
TITULO

A Multi-Model Approach for User Portrait

Yanbo Chen    
Jingsha He    
Wei Wei    
Nafei Zhu and Cong Yu    

Resumen

Age, gender, educational background, and so on are the most basic attributes for identifying and portraying users. It is also possible to conduct in-depth mining analysis and high-level predictions based on such attributes to learn users? preferences and personalities so as to enhance users? online experience and to realize personalized services in real applications. In this paper, we propose using classification algorithms in machine learning to predict users? demographic attributes, such as gender, age, and educational background, based on one month of data collected with the Sogou search engine with the goal of making user portraits. A multi-model approach using the fusion algorithms is adopted and hereby described in the paper. The proposed model is a two-stage structure using one month of data with demographic labels as the training data. The first stage of the structure is based on traditional machine learning models and neural network models, whereas the second one is a combination of the models from the first stage. Experimental results show that our proposed multi-model method can achieve more accurate results than the single-model methods in predicting user attributes. The proposed approach also has stronger generalization ability in predicting users? demographic attributes, making it more adequate to profile users.

 Artículos similares

       
 
Sana Sahar Guia, Abdelkader Laouid, Mohammad Hammoudeh, Ahcène Bounceur, Mai Alfawair and Amna Eleyan    
Complex systems are often designed in a decentralized and open way so that they can operate on heterogeneous entities that communicate with each other. Numerous studies consider the process of components simulation in a complex system as a proven approac... ver más
Revista: Future Internet

 
David R. Judi, Cynthia L. Rakowski, Scott R. Waichler, Youcan Feng and Mark S. Wigmosta    
Flooding is a prevalent natural disaster with both short and long-term social, economic, and infrastructure impacts. Changes in intensity and frequency of precipitation (including rain, snow, and rain-on-snow) events create challenges for the planning an... ver más
Revista: Water

 
Linus Zhang and Xiaoliu Yang    
Given the substantial impacts that are expected due to climate change, it is crucial that accurate rainfall?runoff results are provided for various decision-making purposes. However, these modeling results often generate uncertainty or bias due to the im... ver más
Revista: Water

 
Marco Giacopetti, Ezio Crestaz, Marco Materazzi, Gilberto Pambianchi and Kristijan Posavec    
A conceptual model related to a mountain aquifer that is characterized by a lack of data of hydrogeological parameters and boundary conditions, which were based on a single available observational dataset used for calibration, was studied using numerical... ver más
Revista: Water

 
Bastian Klein, Dennis Meissner, Hans-Ulrich Kobialka, Paolo Reggiani     Pág. 1 - 22
Predictive uncertainty (PU) is defined as the probability of occurrence of an observed variable of interest, conditional on all available information. In this context, hydrological model predictions and forecasts are considered to be accessible but yet u... ver más
Revista: Water