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Jonathas Magalhães2, Rubens Pessoa, Cleyton Souza, Evandro Costa, Joseana Fechine 
INTRODUCTION 
The 2014 RecSys Challenge [1] consists of ordering tweets shared by users on IMDb 
according to the amount of interaction that they received. The interaction of a tweet is 
defined by the sum of the number of retweets and favorites that it received.Our 
objective is to present a contestant approach to the 2014 RecSys Challenge. 
COMPOSING AND PRE-PROCESSING THE DATASET 
OVERVIEW OF THE RECOMMENDER SYSTEM 
CLASSIFICATION STEP 
1 More information at http://www.grouptips.org. 
2 Corresponding author, e-mail: jonathas@copin.ufcg.edu.br. 
RECSYS CHALLENGE 2014 
FEDERAL UNIVERSITY OF CAMPINA GRANDE 
FEDERAL UNIVERSITY OF ALAGOAS 
Intelligent, Personalized and Social Technologies Group1 
A RECOMMENDER SYSTEM FOR PREDICTING 
USER ENGAGEMENT IN TWITTER 
REGRESSION STEP 
REFERENCES 
[1] A. Said, S. Dooms, B. Loni, and D. Tikk. Recommender systems challenge 2014. In Proceedings of 
the eighth ACM conference on Recommender systems, RecSys ’14, New York, NY, USA, 2014. ACM. 
[2] S. Dooms, T. De Pessemier, and L. Martens. Movietweetings: a movie rating dataset collected from 
twitter. In Workshop on Crowdsourcing and Human Computation for Recommender Systems, 
CrowdRec at RecSys 2013, 2013. 
We use two datasets: 
● The expanded MovieTweetings dataset [2] distributed by the organizers of the 
challenge, with the following attributes: movie id, movie rating, crawled time, tweet 
time, followers count, statuses count, favourites count and engagement. 
● The IMDb dataset which consists of additional information about movies 
referenced by tweets in order to complement the MovieTweetings dataset, with 
the following attributes: IMDb rating, IMDb votes count, Movie year. 
In this work we use three different regressors: Linear Regression, Pace Regression 
and induction model trees algorithm M5Base that is an extension of the Quinlan’s 
algorithm to the regression task. 
Table 2: Regression models and their parameters. 
Besides the models presented in Table 2, we implemented three methods to 
combine them: Average, Median and Ranking. 
Our approach is divided into three steps: 
● Classification; 
● Regression and; 
● Ordering Results. 
In the classification and regression steps we use the Weka API to train the models. 
Figure 1: Overview of the Recommender System. 
We use three classifiers, Naïve Bayes, Support Vector Machines (SVM) and the 
Nearest Neighbor algorithm Ibk. 
Table 1: Classification models and their parameters. 
We also implement a classifier that combine them using Voting. In other words, an 
instance will be classified in a given class if it has obtained the required majority of 
the models presented. 
Table 3 summarizes the factors and the levels used in each one. Considering the 
factors and levels used, we have an experimental design with 2 * 7 * 9 = 126 
treatments without replication. We use the metric normalized Discounted Cumulative 
Gain (nDCG) to compare the methods. 
Table 3: Experimental factors and their levels. 
METHODOLOGY 
Table 4 presents the NDCG@10 results of the ten best configurations of our approach. 
Table 4: The nDCG@10 of the 10 best configurations. 
RESULTS

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A Recommender System for Predicting User Engagement in Twitter

  • 1. Jonathas Magalhães2, Rubens Pessoa, Cleyton Souza, Evandro Costa, Joseana Fechine INTRODUCTION The 2014 RecSys Challenge [1] consists of ordering tweets shared by users on IMDb according to the amount of interaction that they received. The interaction of a tweet is defined by the sum of the number of retweets and favorites that it received.Our objective is to present a contestant approach to the 2014 RecSys Challenge. COMPOSING AND PRE-PROCESSING THE DATASET OVERVIEW OF THE RECOMMENDER SYSTEM CLASSIFICATION STEP 1 More information at http://www.grouptips.org. 2 Corresponding author, e-mail: jonathas@copin.ufcg.edu.br. RECSYS CHALLENGE 2014 FEDERAL UNIVERSITY OF CAMPINA GRANDE FEDERAL UNIVERSITY OF ALAGOAS Intelligent, Personalized and Social Technologies Group1 A RECOMMENDER SYSTEM FOR PREDICTING USER ENGAGEMENT IN TWITTER REGRESSION STEP REFERENCES [1] A. Said, S. Dooms, B. Loni, and D. Tikk. Recommender systems challenge 2014. In Proceedings of the eighth ACM conference on Recommender systems, RecSys ’14, New York, NY, USA, 2014. ACM. [2] S. Dooms, T. De Pessemier, and L. Martens. Movietweetings: a movie rating dataset collected from twitter. In Workshop on Crowdsourcing and Human Computation for Recommender Systems, CrowdRec at RecSys 2013, 2013. We use two datasets: ● The expanded MovieTweetings dataset [2] distributed by the organizers of the challenge, with the following attributes: movie id, movie rating, crawled time, tweet time, followers count, statuses count, favourites count and engagement. ● The IMDb dataset which consists of additional information about movies referenced by tweets in order to complement the MovieTweetings dataset, with the following attributes: IMDb rating, IMDb votes count, Movie year. In this work we use three different regressors: Linear Regression, Pace Regression and induction model trees algorithm M5Base that is an extension of the Quinlan’s algorithm to the regression task. Table 2: Regression models and their parameters. Besides the models presented in Table 2, we implemented three methods to combine them: Average, Median and Ranking. Our approach is divided into three steps: ● Classification; ● Regression and; ● Ordering Results. In the classification and regression steps we use the Weka API to train the models. Figure 1: Overview of the Recommender System. We use three classifiers, Naïve Bayes, Support Vector Machines (SVM) and the Nearest Neighbor algorithm Ibk. Table 1: Classification models and their parameters. We also implement a classifier that combine them using Voting. In other words, an instance will be classified in a given class if it has obtained the required majority of the models presented. Table 3 summarizes the factors and the levels used in each one. Considering the factors and levels used, we have an experimental design with 2 * 7 * 9 = 126 treatments without replication. We use the metric normalized Discounted Cumulative Gain (nDCG) to compare the methods. Table 3: Experimental factors and their levels. METHODOLOGY Table 4 presents the NDCG@10 results of the ten best configurations of our approach. Table 4: The nDCG@10 of the 10 best configurations. RESULTS