Computer Science ›› 2026, Vol. 53 ›› Issue (6A): 250500101-8.doi: 10.11896/jsjkx.250500101

• Artificial Intelligence • Previous Articles     Next Articles

Social Text MBTI Personality Feature Recognition Method Based on Data Fusion and Deep Learning

FU Yue, SHI Wei   

  1. School of Economics and Management,Zhejiang Ocean University,Zhoushan,Zhejiang 316022,China
  • Online:2026-06-16 Published:2026-06-12
  • About author:FU Yue,born in 1983,associate professor.Her main research interests include online public opinion and text mining.
    SHI Wei,born in 1981,professor.His main research interests include Business intelligence and affective computingc affective computing.
  • Supported by:
    Social Science Foundation of Zhejiang Province,China(24NDJC272YBM),Social Science Foundation of China(20BXW013) and 2024 Higher Education Science Research Plan Project of the Chinese Society of Higher Education(4XC0202).

Abstract: With the widespread adoption of social networking platforms,users increasingly express their personal opinions,emotions,and attitudes through text content.These social texts not only carry linguistic information but also implicitly reflect users' behavioral patterns and personality traits.As a fundamental component in areas such as user profiling,personalized recommendation,and mental health analysis,personality recognition has gained increasing research attention.However,current methods still face challenges such as insufficient accuracy and limited model generalization when processing unstructured textual data.To improve the accuracy and efficiency of personality recognition in social texts,a personality trait recognition method based on data mapping and deep learning is proposed.This method firstly introduces a dataset mapping algorithm to effectively unify the feature space of multi-source data and alleviate issues related to inconsistent sample distributions.In terms of model design,multiple mainstream pre-trained language models(such as BERT,RoBERTa,and ERNIE) are fine-tuned to deeply extract personality-related cues from the semantic level of the text.Experiments conducted on a standard social text dataset demonstrate that the ERNIE model achieves the best performance,with an accuracy of 89.942% and an F1 score of 88.576%,significantly outperforming other models.These results validate the effectiveness of multi-source data integration and deep semantic modeling in personality recognition tasks.The proposed method enhances classification performance and provides technical support and methodological reference for future research and practical applications in personality modeling.

Key words: MBTI personality recognition, Data fusion, Deep learning

CLC Number: 

  • TP391.1
[1] GOLDBERG L R.An alternative “Description of personality:The big-five factorstructure[J].Pers.Soc.Psychol,1990,59(6):1216-1229.
[2] FURNHAM A.The big five versus the big four:The relationship between the myers-briggs type indicator(MBTI) and NEO-PI five factor model of personality[J].Pers.Individ.Dif,1996,21(2):303-307.
[3] AIT BAHA T,EL HAJJI M,ES-SAADY Y,et al.The power of personalization:A system-atic review of personality-adaptive chatbots[J].SN Comput.Sci,2023,4(5):661.
[4] MEHTA Y,MAJUMDER N,GELBUKH A,et al.Recent trendsin deep learning based personality detection[J].Artif.Intell,2020,53(4):2313-2339.
[5] DHELIM S,AUNG N,BOURAS M A,et al.A survey on personality-aware recommen- dation systems[M].Artif.Intell.2022:1-46.
[6] ABDELRAHMAN M.Personality traits,risk perception,andprotective behaviors of Arab residents of Qatar during the COVID-19 pandemic[J].Int.J.Ment.Health Addict,2022,20(1):237-248.
[7] ROCCAS S,SAGIV L,SCHWARTZ S H,et al.The big fivepersonality factors and personal values[J].Personality and Social Psychology Bulletin,2002,28(6):789-801.
[8] FANNI S C,FEBI M,AGHAKHANYAN G,et al.Natural language processing[C]//Introduction to Artificial Intelligence.Springer,2023:87-99.
[9] KAUR P,SINGH R K.A review on optimization techniques for medical image analysis[J].Concurr.Comput.Pract.Exp.,2023,35(1):e7443.
[10] HAQ M A,JILANI A K,PRABU P.Deep learning based modeling of groundwater storage change[J].Comput.Mater.Contin.2021,70(3):4599-4617.
[11] HAQ M A.CDLSTM:A novel model for climate change forecasting[J].Comput.Mater.2022,71(2):2363-2381.
[12] HAQ M A,AHMED A,KHAN I,et al.Analysis of environ-mental factors using AI and ML methods[J].Scientific Reports,2022,20(1):13267.
[13] BHARADWAJ S,SRIDHAR S,CHOUDHARY R,et al..Persona traits identification based on myers- briggs type indicator(MBTI)-A text classification approach[C]//2018 Int.Conf.Adv.Comput.,Commun.Inform(ICACCI).2018:1076-1082.
[14] GJURKOVIĆ M,NAJDER J S.Reddit:A gold mine for personality prediction[C]//Proc.Second Workshop Comput.Model.People's Opin.,Pers.,Emot.Soc.Media,2018:87-97.
[15] AZUCAR D,MARENGO D,SETTANNI M.Predicting the big 5 personality traits from digital foot-prints on social media:A meta-analysis[J].Pers.Individ.Dif.,2018(124):150-159.
[16] HAN S,HUANG H,TANG Y.Knowledge of words:An interpretable approach for personality recognition from social media[J].Knowledge-Based Systems,2020(194):105550.
[17] KUMAR K N P,GAVRILOVA M L.Personality traits classification on twitter[C]//2019 16th IEEE Int.Conf.Adv.Video Signal Based Surveill(AVSS).2019:1-8.
[18] SUN X,LIU B,CAO J,et al.Who am I? Personality detection based on deep learning for texts[C]//IEEE Internation Conference on Communications.2018:1-6.
[19] KAMALESH M D,BHARATHI B.Personality prediction mo-del for social media using machine learning technique[J].Computers and Electrical Engineering,2022(100):107852.
[20] SUMAN C,SAHA S,GUPTA A,et al.A multi-modal personality prediction system[J].Knowledge-Based Systems,2022(236):107715.
[21] EL-DEMERDASH K,EL-KHORIBI R A,ISMAIL SHOMAN OMAN M A,et al.Deep learning based fusion strategies for personality prediction[J].Egyptian Informatics Journal,2022,23(1):239-244.
[22] MCCRAER R,COSTA P T.Reinterpreting the Myers-BriggsType Indicator from the perspective of the five-factor model of personality[J].Journal of Personality,2010,57(1):17-40.
[23] ZHENG H C,WU C.Predicting Personality Using FacebookStatus Based on Semi-supervised Learning[C]//The 2019 11th International Conference.2019:59-64.
[24] ZHAO J H,LI A,ZHANG J Y.Research on Personality Prediction of Online Social Network Users Incorporating Multiple Features[J].Journal of Chinese Computer Systems,2025,46(2):321-329.
[25] ZHOU J L,HU F X,GAO Y D,et al.Identification of Unsafe Behaviors of Construction Workers Based on Personality Traits and Machine Learning Classification Algorithms[J].Science Technology and Engineering,2022,22(29):13013-13020.
[26] MO J W,CUI L B.Influence of Proactive Personality on the Safety Behavior of High-altitude Railroad Construction Workers[J].Science Technology and Engineering,2023,23(29):12767-12774.
[27] SUN L L,DONG S,CHEN M W,et al.Social Network Personality Prediction Model Based on Multi-channel Information Fusion[J].Journal of Taiyuan University of Technology,2023,54(3):509-517.
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