Identifying Personality Trait using Social Media: A Data Mining Approach

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e-issn 2455 1392 Volume 2 Issue 4, April 2016 pp. 489-496 Scientific Journal Impact Factor : 3.468 http://www.ijcter.com Identifying Personality Trait using Social Media: A Data Mining Approach Janhavi Pednekar 1, Shraddha Dubey 2 1,2 Symbiosis Institute of Computer Studies and Research, Symbiosis International University, {janhavi.pednekar, shraddha.dubey}@sicsr.ac.in Abstract - The Social media is no more a new concept today. With increase in the penetration of internet and low cost smart phones access to social media has more become a trend and necessity to many. Having more number of likes and plethora of comments and further sharing the posts has become a social status and prestige issue to the youth of today. The unique aspect about these features is that likes, comments and shares are instant responses of users and it is publicly available and can be accessed by all the friends of a person. This data is not considered as private data. The paper suggests a data mining approach to predict the personality trait of an individual by using the likes, comments and shares available in the social media. The suggested framework takes the likes, comments and shares as input and processes the same to map it to a personality trait. The paper derives the framework by considering Big five personality traits. Keywords - Data Mining; Personality Traits; Social media; Text analytics; Sentiment Analysis I. INTRODUCTION Social media is popular and is growing dynamically. The usage of social media in increasing day by day and as of today we have around 500 million users on facebook alone as compared to mere 115 million users on the entire social media found around a decade back [1]. As information on social media is available to public, it can be extracted from social media for different purposes [2]. Personality traits play an important role in identification of an individual and assessing a role or a responsibility of an individual. There are five types of personality traits namely neuroticism, extraversion, openness, agreeableness and conscientiousness [3]. There are multiple methods to understand personality traits but these methods are time consuming and so there comes a need of a quick way or framework that can be executed easily and the one that accepts natural habits and instant responses of individual. Social media is one of the most easily accessible ways to understand natural behavior of an individual, understand user s likes and dislikes and so we can link information extracted from social media to understand personality traits of social media users. It has been found that lot of work has been done in the past to bridge the gap between social media and personality traits by using the information people reveal in their online profiles. It has been proven that social media can be used to predict personality traits. Amongst all social media sites, face book profiles are reflective of their actual personalities. Text analysis tools are used in the past to aggregate and quantify the data available on social media. [1]. Till now, much work has not been on understanding user personality with the help of Facebook likes and comments and so there is a need to propose a framework that would be used to analyze the likes and comments of users to understand their personality trait. @IJCTER-2016, All rights Reserved 489

If a user s personality can be predicted from their social media profile, online multiple domains can use it for their benefit. For instance, it can also be used by educational institutes to offer the right course for their students; It can be also be used by recruiters to fetch the right employee in an organization and allotting specific work based upon his/her personality. This paper is presented in three sections where Section 1 covers the related work done in the area of identifying personality traits including classic methods and making use of information available on social media network. Section 2 explains the approach of the study and also explores the use of text analytics in social media to depict personality trait of the users. Section 3 proposes a framework that can be implemented to identify the personality traits of social media users by accessing their likes, comments and shares on social media using text analytics. 2.1 Big Five Personality Traits - II. RELATED WORK Personality of an individual can be identified using Big five personality traits also known as the five factor model. The five factor model is a well proven model based on five traits: openness to experience, conscientiousness, extraversion, agreeableness and neuroticism. The model came into existence after a wide research on personality and is well accepted worldwide. There are a lot of attributes associated with every trait. Researchers have concluded on some dominant attributes as found in Table 1 [1]. Openness to experience Consciousness Extraversion Agreeableness Neuroticism Appreciation of art, emotion, adventure, unusual ideas, curiosity, variety of experience, imaginative, independent, intellect Self-discipline, dutifully, aim of achievement, planned, organized, dutifully, Idealism Gregariousness, assertiveness or leadership, social confidence, Orderliness, Industriousness, Self-discipline, Energy, positive emotions, assertiveness, sociability, tendency to seek stimulation, talkativeness Modesty, trust, Empathy, Altruism, Compassionate,cooperative, suspicious, antagonistic,helping nature Ways to experience unpleasant emotions: anger, anxiety, depression, vulnerability, compulsiveness, Rumination 2.2 Benefits of identifying personality traits - Table 1. Characteristics of Big Five traits Personality traits are very useful across the industry in different domains. It helps the decision maker to select the right candidate for a purpose. It has been found that clicks on the likes and dislikes are heavily being used by marketing firms as a marketing tool. The viewer of the marketing firm facebook page will be either having contributing behavior or browsing behavior. Statistical techniques were used on the data collected in terms of number of users visited the page, number of likes posted for a particular product and actual purchase @IJCTER-2016, All rights Reserved 490

of that particular product. Structural equation model was constructed that make use of structural coefficients. The study results into the fact that people with contributing behavior have strong relationship with the purchase value as compared with the browsing behavior [8]. Few research have shown connections between personality traits and success in both professional and personal relationships. Previous work showed that users are more receptive to the information that is presented from the perspective of their own personality features like introvert people prefer messages as a way of communication. If a user s personality is predicted from their social media profile, online marketing and applications can use the same to personalize their message and its presentation [2]. 2.3 Traditional Methods used to identify personality traits - After the theory of Big five personality was put forth, several classic methods were used to understand personality of an individual. These methods were implemented in form of data, ratings, self-reports, questionnaire, data from experimental settings. In the past personality traits were identified by means of selecting a random sample and conducting a survey or gathering information in form of a questionnaire. Using the Samejima s model, traits were estimated and the same was used to discriminate the individuals [5]. In another research, card game was used as method instead of questionnaire. Card game was played between sixty software practitioners.the outcome of the game was used to identify the personality trait of the individual with the help of MBTI scale. The same practitioners were also tested in the industry environment. Most of the people were found to be extroverted in the industry environment as well as outside the industry environment [6]. 2.4 Current Methods used to identify personality traits through Social Media - With change in time as internet geared its popularity, use of social media also become popular. Twitter and Facebook are the most popular tools of building social media network. Social media gave the freedom of speech and an access of communication with people with in a network. Users are expected to show common behavioral patterns when interacting through virtual social networks, and these patterns can be mined in order to predict the tendency of a user personality. TP2010 is a facebook application developed on the basis of inferring personality from the analysis of user interactions within social networks. It has been used to collect information about the personality traits of more than 20,000 users, along with their interactions within Facebook. Based on all the collected data, automatic classifiers were trained by using different machine-learning techniques, with the purpose of looking for interaction patterns that provide information about the user s personality traits. These classifiers are able to predict user personality starting from parameters related to user interactions, such as the number of friends or the number of wall posts. The results show that the classifiers have a high level of accuracy, making the proposed approach a reliable method for predicting the user personality [4]. Study has been conducted to administer the Big Five Personality Inventory to 279 subjects through a Facebook application. In the process, all the public data from their Facebook profiles was gathered. Data was processed and passed through a text analysis tool to obtain a feature set. A model was developed that can predict personality on each of the five personality factors with around 11% variation from actual result [2]. @IJCTER-2016, All rights Reserved 491

Related to the information found on social media, lot of statistical work has been done in the past to find correlations between each profile feature and personality factor. Research reflects that linguistic features can be used to depict personality of user [7]. The work done has a limitation that all facebook users do not put their personal information and hence there can be a lacuna in the findings of the work in case of absence of information. Compared to this approach, if we analyze the likes and dislikes, comments and shares on facebook, which is done more frequently and instantly, we can understand the personality traits better. 3.1 Data Mining Techniques III. APPROACH With growing use of internet, lot of information is being shared worldwide. There is a need to analyze this information by using appropriate techniques to recognize patterns in available information. This implies that use of Data mining techniques is essential in identifying personality trait through social media in the world of internet. Data mining techniques have been applied to some parts of social media. Major information shared through social media network is in form of text. This text shared by millions of users can be categorized using several demo graphs like group of users belonging to a particular geographical location or belonging to a particular gender or users that fall in a particular age-group. After categorization, we can analyze this textual information using data mining techniques. One of the widely used techniques in data mining is text analytics that is best suited for the area of social media. Here, the focus is basically on retrieving some important information from the available text. It generally includes categorization of the text based on the requirement, extracting the concept hidden within that text. The Text mining approach is a wide area into itself. A lot of classification algorithms and decision tree algorithms can be applied in this area. Miner, Gary in his book suggests strongly the area of document classification and concept extraction in web mining [9]. Sentiment analysis is another area in text mining where one can find the emotions of users based on the text they share. Jim Sterne in his paper states that the computer has the ability to perform the sentiment analysis on the text using the tools and techniques. So, by using the phrases included the text, we can identify whether it is used in positive aspect or negative aspect. The mood or emotion of the individual can be thus understood from the text [10]. 3.2 Text Analytics in Social Media Data available from the social media can be in the form of text, images, blog or web page. Here, we are restricting our research towards the text and therefore will be using text analytics as a tool. Text analytics is useful in deriving better quality inferences from the collected text. Better quality in the considered scenario means combination of relevance, interest and novelty [11]. Text analytics is the process of accepting input text, structuring the text, deriving patterns within that text and interpreting the output. Here, the challenge is to apply proper text analytical method for data analysis so as to properly interpret the text used in comments. In general, the text analytics is used to perform sentiment analysis on social media data. @IJCTER-2016, All rights Reserved 492

Figure 1. Text Mining: A measurement tool used to predict personality of social media users Sentiment Analysis translates the text in comments into different contexts, such as positive, negative or neutral which helps to predict the positive, negative or neutral sentiment of the person who is placing that comment. Thus, the task of identifying the personality trait of the individual becomes easy. Studies in past have shown that instead of classifying the sentiments into positive, negative or neutral, they can be categorized into n-point scale as very good, good, satisfactory, bad, very bad etc. Thus, each sentiment will be in one category while classifying the text in the comments. Different classifiers are used to classify the text and comparative study shows that use of multiple classifiers in a hybrid manner can improve the effectiveness of sentiment analysis [12]. By observing the document, the expressions used in the document and also by observing the words used in the document, the associated sentiments can be predicted. The approaches that can be used for the sentiment analysis can be Natural Language Processing (NLP) & pattern-based approach, Machine learning algorithm, Hybrid Classification etc. The classifiers used for the classification of the sentiments are General Inquirer Based Classifier (GIBC), Rule Based Classifier (RBC), Statistics Based Classifier (SBC) and Induction Rule Based Classifier (IRBC). Rule Based Classifier is consists of if-then relation. LHS of the rule will be the condition and RHS of the rule will be the result. If the condition is satisfied by the data during analysis, then the data can be considered into the category specified on the RHS of the rule. For analyzing the sentiments associated with the text used in the comments by individual, rule based classifier can be used. The classifier consists of the rules where the condition will the combination of the words/phrases included in the comments while the result will be the associated sentiment. IV. PROPOSED FRAMEWORK The purpose of the study is to propose a theoretical framework that can be used to identify the personality trait of a social media user. The study considers different actions by the facebook user, e.g., likes on post, sharing of post and comments on the post. Prediction of the personality trait @IJCTER-2016, All rights Reserved 493

involves accepting user actions and applying text analytical methods and algorithms to retrieve the percentage of each type of personality trait. The personality trait with highest percentage can be considered as personality type of the concerned user. Figure 2 shows the flow of the text extracted from comments till the Personality Trait report. Figure 2. Proposed Framework to Identify Personality Trait of Social media users: A data mining approach Step 1: Data Filtering: Data collected from the social media will be the text from comments posted by the user. The filtering of the text requires some phrase and pattern based techniques or term based techniques. Here, the phrase based technique is preferred because phrases carry more semantic information than terms and hence better performance can be expected [9]. The main aim for filtering data is to remove the redundant or irrelevant data. As a result, we will get clean data which can be processed more effectively. First of all, the probable phrases and their synonyms that can occur in the comments are listed. This list helped in extracting those phrases from the text. Also, the dictionary including list of words like a, an, the, you, of, over etc. is made to avoid useless text from getting processed. Step 2: Data Stemming: Data stemming uses the extracted phrases after data filtering. Stemming is the process for reducing the words to their stem or root form. In this, the set of words that can be treated as equivalent are identified and these multiple occurrences are replaced with their root form [11]. There are many stemming algorithms that can be used to serve the purpose like Lookup algorithms, The production technique, Suffix-stripping algorithms, Stochastic algorithms, Porter stemming algorithm, Matching algorithms etc. @IJCTER-2016, All rights Reserved 494

Porter stemming algorithm is one of the most popular algorithm that is used for data stemming. This algorithm removes the suffixes from the words that have been added to the right-hand end of root form. Step 3: Simplified Sentiments: After data stemming is done, the input will be provided for simplifying the sentiments. The sentiments which are associated with the text used in comment may be positive, negative or neutral. The input here is the stem or root form of the words or phrases used in the comments. So, it is easier to identify the corresponding sentiments. Step 4: Personality trait repository: Personality trait repository is used to associate the Big five personality traits with the corresponding attributes. The attributes considered here are listed in Table 1. Each attribute included in the repository is again linked with the synonymous words. The information retrieved is the text in comments. The text is composed of phrases, certain adjectives, smiley and also some punctuation. These phrases and adjectives will be the input to the repository where association between phrases or adjectives and synonymous words will take place. Step 5: Classification Algorithm: There are different existing algorithms that can be used for text analytics like Classification Algorithm, Association Algorithm, and Clustering Algorithm. All these algorithms have their own advantages as well as limitations. Classification algorithm deals with assigning a keyword to document based on a defined keyword set. It requires collection of records where each record has unique record id and fields corresponding to attributes. Methods used for text classification can be Decision trees, Pattern classifiers, SVM classifiers, Neural Network classifiers, Generative classifiers etc. Here, the study involves use of Pattern/rule based classifiers for classification algorithm. The pattern/rule based classifier determines word patterns which are most likely related to the different classes. Researchers have constructed a set of rules where each rule is associated with a keyword. A person cannot be strictly categorized to belong to one of the personality trait. However, a person can have a combination of the characteristics that belong to the five personality traits as explained in table 1. The percentage of those characteristics will vary based on the responses of the user for the post. The personality trait with highest weight-age among the five personality traits can be treated as his/her personality trait. Step 6: Decision tree algorithm: Decision trees are found to be powerful and popular tools for classification and prediction. Decision trees represent rules which can be easily understood by anyone and at the same time, it can be used in a database system. This algorithm requires attribute-value description and pre-defined classes [13]. The properties of the attributes are collected and provided as input to decision tree algorithm. Also, the pre-defined classes from the classification algorithm are provided to the decision tree algorithm. The rules defined here are used to derive results in terms of personality traits. This can further be used to create personality trait report. @IJCTER-2016, All rights Reserved 495

V. CONCLUSION The paper focuses on appropriate usage of features like comments, likes and shares promoted by the users of social media. It discusses various methods used to identify personality traits of social media users and suggests the use of text analytics for the same. Also, few areas of implications where identification of personality type of an individual will be beneficial are mentioned. A framework is proposed to create a word vector from facebook comments and can be used as a tool to identify the personality trait of the facebook user. In future, there is a need of development of a custom algorithm based on the proposed framework. The algorithm can be used effectively in multiple domains like education, recruitment firms or marketing agencies for relative purposes. REFERENCES [1] M. Back, J. Stopfer, S. Vazire, S. Gaddis, S. Schmukle, B. Egloff, and S. Gosling. Facebook Profiles Reflect Actual Personality, Not Self-Idealization. Psychological Science, 21(3):372, 2010. [2] Golbeck, J., Robles, C., & Turner, K. (2011, May). Predicting personality with social media. In CHI'11 Extended Abstracts on Human Factors in Computing Systems (pp. 253-262). ACM [3] Costa, P.T.,Jr. & McCrae, R.R. (1992). Revised NEO Personality Inventory (NEO-PI-R) and NEO Five-Factor Inventory (NEO-FFI) manual. Odessa, FL: Psychological Assessment Resource [4] Ortigosa, A., Carro, R. M., & Quiroga, J. I. (2014). Predicting user personality by mining social interactions in Facebook. Journal of computer and System Sciences, 80(1), 57-71. [5] John, O. P., Naumann, L. P., & Soto, C. J. (2008). Paradigm shift to the integrative big five trait taxonomy. Handbook of personality: Theory and research, 3, 114-158. [6] Yilmaz, M., & O'Connor, R. V. (2012, September). Towards the understanding and classification of the personality traits of software development practitioners: Situational context cards approach. In Software Engineering and Advanced Applications (SEAA), 2012 38th EUROMICRO Conference on (pp. 400-405). IEEE. [7] F. Mairesse, M. Walker, M. Mehl, and R. Moore. Using linguistic cues for the automatic recognition of personality in conversation and text. Journal of Artificial Intelligence Research, 30(1):457 500, 2007. [8] Poyry, E., Parvinen, P., & Malmivaara, T. (2013, January). The Power of'like'--interpreting Usage Behaviors in Company-Hosted Facebook Pages. In System Sciences (HICSS), 2013 46th Hawaii International Conference on (pp. 2773-2782). IEEE. [9] Miner, G. (2012). Practical text mining and statistical analysis for non-structured text data applications. Academic Press. [10] Sterne, J. (2010). Text Analytics for Social Media Evolving Tools for an Evolving Environment. White Paper. [11] Hu, X., & Liu, H. (2012). Text analytics in social media. In Mining text data (pp. 385-414). Springer US. [12] Prabowo, R., & Thelwall, M. (2009). Sentiment analysis: A combined approach. Journal of Informetrics, 3(2), 143-157. @IJCTER-2016, All rights Reserved 496