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IDENTIFYING GREAT TEACHERS THROUGH THEIR ONLINE PRESENCE Evanthia Faliagka, Maria Rigou, Spiros Sirmakessis Qualities of good teachers Teachers are distinguished as liked or disliked based on three criteria: academic qualifications, relationship with students and personality traits Traits that yield positive educational results Conscientiousness (efficient, not lazy, thorough) Agreeableness (warm, forgiving, sympathetic) Openness to experience (curious, imaginative, excitable) Extroverted (sociable, enthusiastic, forceful, positive) Emotionally stable (calm, self-confident, not shy) Big-Five personality model (NEO PI-R) Previous work Academic qualifications of teachers come from: Teacher personality is typically evaluated through CVs and accompanying documents LinkedIn special purpose questionnaires/tests Interviews Recruiting teachers could be performed online provided that we can have some unbiased feedback on teacher personality Social web data (from Facebook, Twitter, LinkedIn, etc.) can be the source of such feedback especially in the case of active users if we can interpret social web activities in terms of personality traits demonstrated. Proposed system A system that automates candidate teacher prescreening process providing an overall candidate ranking based on supervised learning and automatically extracting applicant personality measures from tweets and Fb posts This approach has been implemented as a web based teacher evaluation system Position requirements Architecture School director CV data Login to Candidate teachers Login to Personality traits of the candidate are assessed by analyzing posts to Twitter and Fb Applicant education, work experience and loyalty are directly extracted from LinkedIn Extracting candidate’s skills Data mining algorithms Calculating personality traits Ranked list of teachers Academic qualifications Education (in years of formal academic training) Work experience (in years of working at relevant job positions Loyalty (average number of years spent per job) Personality mining Judging a teacher’s personality (or ANY personality) is a hard problem for automated e-recruitment systems We focus on the extroversion personality trait It is reflected through language use in written speech It is discriminated through text analysis It is a crucial characteristic in teacher personality The emotional positivity and social orientation of a person, both directly extracted from LIWC frequencies, can act as predictors of the extroversion trait Linguistic Inquiry and Word Count system Calculation of teacher extroversion To find which words are mentioned most frequently by the candidate we analyze the raw text of tweets and Facebook posts The words identified are input to the TreeTagger tool for lexical analysis and lemmatization Then using the LIWC dictionary the system classifies the canonical form of word output by the TreeTagger A dictionary of word stems classified in certain psycholinguistic categories We calculate the LIWC extroversion score E E is estimated directly from LIWC scores, by summing the emotional positivity score and the social orientation score Calculation of teacher extroversion Finally, we use the regression model which was trained in a previous work of ours that predicts the candidates’ extroversion from their LIWC scores in the {posemo, negemo, social} categories E = S +1.335*P - 2.25*N Where: E is the extroversion score S the frequency of social words P the frequency of positive emotion works N the frequency of negative emotion words Login page Experience mining Ranking Our system uses machine learning algorithms It requires a training set as an input It automatically builds the ranking model It calculates the final scoring function h(x) It returns the final ranked list of teachers by applying the learned function to sort them Learning-to-rank Pilot Scenario 42 teachers logged in to our system as candidates for a job position in a private elementary school The job position was also announced through the system Teachers were also evaluated manually on their academic qualifications and interviewed for assessing their personality by the school director Automated extroversion scores were compared to the interview results referring to each teacher’s extroversion The data collected are to be used as the training set for the ranking algorithm Pilot Scenario Grading scale for the personality extroversion score: 0-5 We used Weka to test the correlation of the scores output from the system (i.e. model predictions) with the actual scores assigned by the director Comparison metrics (system vs director): Overlap size of the top-k list Correlation coefficient of the top-k candidates Mean absolute difference of top-k candidates’ ranks k=8 Top-k Correlation Ranking error Candidates 6 (75%) 0.72 2,6 Conclusions The proposed system could be of practical value in speeding up the teacher recruitment process Automating qualifications and personality assessment Future work: Use larger training sets Instead of manual character assessment, use special questionnaires and train the system with their results Use additional social network metrics (LinkedIn endorsements and recommendations, no of re-tweets, Fb likes and shares, etc) Incorporate automated assessment of teacher scores in more personality traits (agreeableness, openness to experience, etc) Thank you!