Machine Learning-Based Prediction of Users' Involvement on Social Media

Machine Learning-Based Prediction of Users' Involvement on Social Media

Vibhor Sharma (Swami Rama Himalayan University, India), Lokesh Kumar (Roorkee Institute of Technology, India), and Deepak Srivastava (Swami Rama Himalayan University, India)
DOI: 10.4018/978-1-6684-6909-5.ch008
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Abstract

Useful information can be extracted through the analysis of Facebook posts. Text analysis and image analysis can play a vital role towards this. To predict the users' involvement, text data and image data can be incorporated using some machine learning models. These models can be used to perform testing on advertisements that are posted on Facebook for users' involvement prediction. Count of share and comments with sentiment analysis are included as users' involvement. This chapter contributes to understand the users' involvement on social media along with finding out the best machine learning model for prediction of users' involvement. The procedure of prediction with both text data and image data by suitable models is also discussed. This chapter produces a predictive model for posts of Facebook to predict users' involvement that will be based on the number of shares and comments on the post. The best models are obtained by using the combination of image data and text data. Further, it demonstrated that random models are surpassed by the models that are integrated for prediction.
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Background

According to Li et al., Twitter click-through rates are expected to increase in the future (Li, Fang, Yang, Wang, Lu, & Yang, 2017). Predicting whether a person will click on advertising is known as click-through prediction. To give you an idea, let's say you go to Amazon and look at various products. When the user returns to Amazon, Amazon places a cookie on their browser. Amazon will later pay Twitter to re-display this product on the user's Twitter feed when they are on the social media network's site. Advertisement click rates on user feeds may be predicted using data from this study. Since there are so few clicks, it is difficult to estimate this probability. An ad's click-through rate is often less than one percent. Modeling the likelihood of a user's actions is the purpose of the project. The results of the study were predicted by establishing a link between the interests of users and the relevancy of relevant advertisements. In addition, the study used Twitter sessions as a model.

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