Predicting the number of comments on facebook posts using an ensemble regression model

The nature and importance of user’s comments in various social media systems play an important role in creating or changing people's perceptions of certain topics or popularizing them. It has now an important place in various fields, including education, sales, prediction, and so on. In this paper, Facebook social network has been considered as a case study. The purpose of this study is to predict the volume of Facebook users' comments on the published content called post. Therefore, the existing problem is classified as a regression problem. In the method presented in this paper, three regression models called elastic network, M5P model, and radial basis function regression model are combined and an ensemble model is made to predict the volume of comments. In order to combine these base models, a strategy called stack generalization is used, based on which the output of the base models is provided to a linear regression model as new features. This linear regression model combines the outputs of the 3 base models and determines the final output of the system. To evaluate the performance of the proposed model, a database of the UCI dataset, which has 5 training sets and 10 test sets, has been used. Each test set in this database has 100 records. In the present study, the efficiency of the base models and the proposed ensemble model is evaluated on all these sets. Finally, it is concluded that the use of the ensemble model can reduce the average correlation coefficient (as one of the evaluation criteria of the model) to 74.4 ± 16.4, which is an acceptable result.

[1]  Javad Haddadnia,et al.  Assessment of a novel computer aided mass diagnosis system in mammograms , 2016 .

[2]  Mohammad Jafar Tarokh,et al.  Multi-objective design of fuzzy logic controller in supply chain , 2012 .

[3]  Maarten de Rijke,et al.  News Comments: Exploring, Modeling, and Online Prediction , 2010, ECIR.

[4]  Javad Haddadnia,et al.  Clustering and screening for breast cancer on thermal images using a combination of SOM and MLP , 2014, Comput. methods Biomech. Biomed. Eng. Imaging Vis..

[5]  Mohammad Reza Yousefi,et al.  Attenuating bullwhip effect using robust-intelligent controller , 2010, 2010 5th IEEE International Conference Intelligent Systems.

[6]  M. Taeibi Rahni,et al.  Multiple-relaxation time color-gradient lattice Boltzmann model for simulating contact angle in two-phase flows with high density ratio , 2019, The European Physical Journal Plus.

[7]  M. de Rijke,et al.  Predicting the volume of comments on online news stories , 2009, CIKM.

[8]  Huzefa Rangwala,et al.  Digging Digg: Comment Mining, Popularity Prediction, and Social Network Analysis , 2009, 2009 International Conference on Web Information Systems and Mining.

[9]  Javad Haddadnia,et al.  Evaluating the thermal imaging system in detecting certain types of breast tissue masses. , 2016 .

[10]  Mohsen Soryani,et al.  A New Local Adaptive Mass Detection Algorithm in Mammograms , 2013, BIOSIGNALS.

[11]  Santanu Chaudhury,et al.  Predicting User-to-content Links in Flickr Groups , 2012, 2012 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining.

[12]  Noah A. Smith,et al.  What's Worthy of Comment? Content and Comment Volume in Political Blogs , 2010, ICWSM.

[13]  J. Haddadnia,et al.  A new method to classify breast cancer tumors and their fractionation , 2015 .

[14]  Torgeir Moan,et al.  Statistical fault diagnosis of wind turbine drivetrain applied to a 5MW floating wind turbine , 2016 .

[15]  Hamid Behnam,et al.  Computer aided detection in automated 3-D breast ultrasound images: a survey , 2019, Artificial Intelligence Review.

[16]  Javad Haddadnia,et al.  Evaluation of a New Ensemble Learning Framework for Mass Classification in Mammograms , 2017, Clinical breast cancer.

[17]  Krisztian Buza,et al.  Feedback Prediction for Blogs , 2012, GfKl.

[18]  Dinesh Kumar,et al.  Comment Volume Prediction Using Neural Networks and Decision Trees , 2015 .

[19]  Muhammad Mahbubur Rahman Intellectual knowledge extraction from online social data , 2012, 2012 International Conference on Informatics, Electronics & Vision (ICIEV).

[20]  A. Shadaram,et al.  Parametric study of a plasma actuator at unsteady actuation by measurements of the induced flow velocity for flow control , 2018 .

[22]  Aoying Zhou,et al.  Dish comment summarization based on bilateral topic analysis , 2015, 2015 IEEE 31st International Conference on Data Engineering.