skip to main content
research-article

Heterogeneous Network Approach to Predict Individuals’ Mental Health

Published:09 April 2021Publication History
Skip Abstract Section

Abstract

Depression and anxiety are critical public health issues affecting millions of people around the world. To identify individuals who are vulnerable to depression and anxiety, predictive models have been built that typically utilize data from one source. Unlike these traditional models, in this study, we leverage a rich heterogeneous dataset from the University of Notre Dame’s NetHealth study that collected individuals’ (student participants’) social interaction data via smartphones, health-related behavioral data via wearables (Fitbit), and trait data from surveys. To integrate the different types of information, we model the NetHealth data as a heterogeneous information network (HIN). Then, we redefine the problem of predicting individuals’ mental health conditions (depression or anxiety) in a novel manner, as applying to our HIN a popular paradigm of a recommender system (RS), which is typically used to predict the preference that a person would give to an item (e.g., a movie or book). In our case, the items are the individuals’ different mental health states. We evaluate four state-of-the-art RS approaches. Also, we model the prediction of individuals’ mental health as another problem type—that of node classification (NC) in our HIN, evaluating in the process four node features under logistic regression as a proof-of-concept classifier. We find that our RS and NC network methods produce more accurate predictions than a logistic regression model using the same NetHealth data in the traditional non-network fashion as well as a random-approach. Also, we find that the best of the considered RS approaches outperforms all considered NC approaches. This is the first study to integrate smartphone, wearable sensor, and survey data in a HIN manner and use RS or NC on the HIN to predict individuals’ mental health conditions.

Skip Supplemental Material Section

Supplemental Material

References

  1. Maryam Mohammed Aldarwish and Hafiz Farooq Ahmad. 2017. Predicting depression levels using social media posts. In Proceedings of the 2017 IEEE 13th International Symposium on Autonomous Decentralized System (ISADS’17). IEEE, 277--280.Google ScholarGoogle ScholarCross RefCross Ref
  2. Jorge Alvarez-Lozano, Venet Osmani, Oscar Mayora, Mads Frost, Jakob Bardram, Maria Faurholt-Jepsen, and Lars Vedel Kessing. 2014. Tell me your apps and I will tell you your mood: Correlation of apps usage with bipolar disorder state. In Proceedings of the 7th International Conference on Pervasive Technologies Related to Assistive Environments. ACM, 19.Google ScholarGoogle ScholarDigital LibraryDigital Library
  3. Pasquale K. Alvaro, Rachel M. Roberts, and Jodie K. Harris. 2013. A systematic review assessing bidirectionality between sleep disturbances, anxiety, and depression. Sleep 36, 7 (2013), 1059--1068.Google ScholarGoogle ScholarCross RefCross Ref
  4. Brett W. Bader, Richard A. Harshman, and Tamara G. Kolda. 2007. Temporal analysis of semantic graphs using ASALSAN. In Proceedings of the 7th IEEE International Conference on Data Mining (ICDM’07). IEEE, 33--42.Google ScholarGoogle Scholar
  5. Chiara Baglioni, Gemma Battagliese, Bernd Feige, Kai Spiegelhalder, Christoph Nissen, Ulrich Voderholzer, Caterina Lombardo, and Dieter Riemann. 2011. Insomnia as a predictor of depression: A meta-analytic evaluation of longitudinal epidemiological studies. Journal of Affective Disorders 135, 1--3 (2011), 10--19.Google ScholarGoogle ScholarCross RefCross Ref
  6. Michael Berk, Alan Brnabic, Seetal Dodd, Katarina Kelin, Mauricio Tohen, Gin S. Malhi, Lesley Berk, Philippe Conus, and Patrick D. McGorry. 2011. Does stage of illness impact treatment response in bipolar disorder? Empirical treatment data and their implication for the staging model and early intervention. Bipolar Disorders 13, 1 (2011), 87--98.Google ScholarGoogle ScholarCross RefCross Ref
  7. O. Joseph Bienvenu and Murray B. Stein. 2003. Personality and anxiety disorders: A review. Journal of Personality Disorders 17, 2 (2003), 139--151.Google ScholarGoogle ScholarCross RefCross Ref
  8. Mustafa Bilgic, Galileo Mark Namata, and Lise Getoor. 2007. Combining collective classification and link prediction. In Proceedings of the 7th IEEE International Conference on Data Mining Workshops (ICDMW’07). IEEE, 381--386.Google ScholarGoogle ScholarDigital LibraryDigital Library
  9. Andrey Bogomolov, Bruno Lepri, Michela Ferron, Fabio Pianesi, and Alex Sandy Pentland. 2014. Daily stress recognition from mobile phone data, weather conditions and individual traits. In Proceedings of the 22nd ACM International Conference on Multimedia. ACM, 477--486.Google ScholarGoogle ScholarDigital LibraryDigital Library
  10. Daniel J. Buysse, Charles F. Reynolds III, Timothy H. Monk, Carolyn C. Hoch, Amy L. Yeager, and David J. Kupfer. 1991. Quantification of subjective sleep quality in healthy elderly men and women using the Pittsburgh Sleep Quality Index (PSQI). Sleep 14, 4 (1991), 331--338.Google ScholarGoogle Scholar
  11. Paolo Cassano and Maurizio Fava. 2002. Depression and public health: An overview. Journal of Psychosomatic Research 53, 4 (2002), 849--857.Google ScholarGoogle ScholarCross RefCross Ref
  12. Yukuo Cen, Xu Zou, Jianwei Zhang, Hongxia Yang, Jingren Zhou, and Jie Tang. 2019. Representation learning for attributed multiplex heterogeneous network. In Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining (KDD’19). Association for Computing Machinery, 1358--1368.Google ScholarGoogle ScholarDigital LibraryDigital Library
  13. Kenneth M. Cramer, Helen B. Ofosu, and Joanne E. Barry. 2000. An abbreviated form of the social and emotional loneliness scale for adults (SELSA). Personality and Individual Differences 28, 6 (2000), 1125--1131.Google ScholarGoogle ScholarCross RefCross Ref
  14. Faisal Cury and Menezes Rossi. 2007. Prevalence of anxiety and depression during pregnancy in a private setting sample. Archives of Women’s Mental Health 10, 1 (2007), 25--32.Google ScholarGoogle Scholar
  15. Munmun De Choudhury, Michael Gamon, Scott Counts, and Eric Horvitz. 2013. Predicting depression via social media. In Proceedings of the 7th International AAAI Conference on Weblogs and Social Media.Google ScholarGoogle Scholar
  16. Thomas G. Dietterich et al. 2002. Ensemble learning. The Handbook of Brain Theory and Neural Networks 2, 1 (2002), 110--125.Google ScholarGoogle Scholar
  17. Yuxiao Dong, Nitesh V. Chawla, and Ananthram Swami. 2017. metapath2vec: Scalable representation learning for heterogeneous networks. In Proceedings of the 23rd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. ACM, 135--144.Google ScholarGoogle ScholarDigital LibraryDigital Library
  18. Lucas Rego Drumond, Ernesto Diaz-Aviles, Lars Schmidt-Thieme, and Wolfgang Nejdl. 2014. Optimizing multi-relational factorization models for multiple target relations. In Proceedings of the 23rd ACM International Conference on Conference on Information and Knowledge Management. ACM, 191--200.Google ScholarGoogle ScholarDigital LibraryDigital Library
  19. Louis Faust, Rachael Purta, David Hachen, Aaron Striegel, Christian Poellabauer, Omar Lizardo, and Nitesh V. Chawla. 2017. Exploring compliance: Observations from a large scale Fitbit study. In Proceedings of the 2nd International Workshop on Social Sensing. ACM, 55--60.Google ScholarGoogle Scholar
  20. Tom Fawcett. 2006. An introduction to ROC analysis. Pattern Recognition Letters 27, 8 (2006), 861--874.Google ScholarGoogle ScholarDigital LibraryDigital Library
  21. Elizabeth A. Freeman and Gretchen G. Moisen. 2008. A comparison of the performance of threshold criteria for binary classification in terms of predicted prevalence and kappa. Ecological Modelling 217, 1--2 (2008), 48--58.Google ScholarGoogle ScholarCross RefCross Ref
  22. Yiannis Gatsoulis, M. O. Mehmood, Vania G. Dimitrova, Derek R. Magee, B. Sage-Vallier, P. Thiaudiere, Joaquin Valdes, and Anthony G. Cohn. 2016. Learning the repair urgency for a decision support system for tunnel maintenance. In Proceedings of the 22nd European Conference on Artificial Intelligence. IOS Press, 1769--1774.Google ScholarGoogle Scholar
  23. Tasha Glenn and Scott Monteith. 2014. New measures of mental state and behavior based on data collected from sensors, smartphones, and the Internet. Current Psychiatry Reports 16, 12 (2014), 523.Google ScholarGoogle ScholarCross RefCross Ref
  24. Lewis R. Goldberg. 1990. An alternative “description of personality”: The big-five factor structure.Journal of Personality and Social Psychology 59, 6 (1990), 1216.Google ScholarGoogle Scholar
  25. Palash Goyal and Emilio Ferrara. 2018. Graph embedding techniques, applications, and performance: A survey. Knowledge-Based Systems 151, 1 (2018), 78--94.Google ScholarGoogle ScholarCross RefCross Ref
  26. Kerry-Ann Grant, Catherine McMahon, and Marie-Paule Austin. 2008. Maternal anxiety during the transition to parenthood: A prospective study. Journal of Affective Disorders 108, 1--2 (2008), 101--111.Google ScholarGoogle ScholarCross RefCross Ref
  27. Franz Gravenhorst, Amir Muaremi, Gerhard Tröster, Bert Arnrich, and Agnes Gruenerbl. 2013. Towards a mobile galvanic skin response measurement system for mentally disordered patients. In Proceedings of the 8th International Conference on Body Area Networks. ICST, 432--435.Google ScholarGoogle ScholarDigital LibraryDigital Library
  28. Shawn Gu, John Johnson, Fazle E. Faisal, and Tijana Milenković. 2018. From homogeneous to heterogeneous network alignment via colored graphlets. Scientific Reports 8, 1 (2018), 12524.Google ScholarGoogle ScholarCross RefCross Ref
  29. Alex H. S. Harris, Ruth Cronkite, and Rudolf Moos. 2006. Physical activity, exercise coping, and depression in a 10-year cohort study of depressed patients. Journal of Affective Disorders 93, 1--3 (2006), 79--85.Google ScholarGoogle ScholarCross RefCross Ref
  30. Richard A. Harshman and Margaret E. Lundy. 1994. PARAFAC: Parallel factor analysis. Computational Statistics & Data Analysis 18, 1 (1994), 39--72.Google ScholarGoogle ScholarDigital LibraryDigital Library
  31. Afzal Hossain and Christian Poellabauer. 2016. Challenges in building continuous smartphone sensing applications. In Proceedings of the IEEE 12th International Conference on Wireless and Mobile Computing, Networking and Communications (WiMob’16). IEEE, 1--8.Google ScholarGoogle ScholarCross RefCross Ref
  32. Anahita Hosseini, Ting Chen, Wenjun Wu, Yizhou Sun, and Majid Sarrafzadeh. 2018. HeteroMed: Heterogeneous information network for medical diagnosis. In Proceedings of the 27th ACM International Conference on Information and Knowledge Management. ACM, 763--772.Google ScholarGoogle ScholarDigital LibraryDigital Library
  33. Binbin Hu, Chuan Shi, Wayne Xin Zhao, and Philip S. Yu. 2018. Leveraging meta-path based context for top- N recommendation with a neural co-attention model. In Proceedings of the 24th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining. 1531--1540.Google ScholarGoogle Scholar
  34. James S. Jackson, Katherine M. Knight, and Jane A. Rafferty. 2010. Race and unhealthy behaviors: Chronic stress, the HPA axis, and physical and mental health disparities over the life course. American Journal of Public Health 100, 5 (2010), 933--939.Google ScholarGoogle ScholarCross RefCross Ref
  35. Zheng Jing, Liu Jian, Chuan Shi, Fuzhen Zhuang, Jingzhi Li, and Bin Wu. 2016. Recommendation in heterogeneous information network via dual similarity regularization. International Journal of Data Science & Analytics 3, 1 (2016), 35--48.Google ScholarGoogle Scholar
  36. Laura J. Julian. 2011. Measures of anxiety: State-trait anxiety inventory (STAI), beck anxiety inventory (BAI), and hospital anxiety and depression scale-anxiety (HADS-A). Arthritis Care & Research 63, S11 (2011), S467--S472.Google ScholarGoogle ScholarCross RefCross Ref
  37. Frank J. Kohout, Lisa F. Berkman, Denis A. Evans, and Joan Cornoni-Huntley. 1993. Two shorter forms of the CES-D depression symptoms index. Journal of Aging and Health 5, 2 (1993), 179--193.Google ScholarGoogle ScholarCross RefCross Ref
  38. Artus Krohn-Grimberghe, Lucas Drumond, Christoph Freudenthaler, and Lars Schmidt-Thieme. 2012. Multi-relational matrix factorization using bayesian personalized ranking for social network data. In Proceedings of the 5th ACM International Conference on Web Search and Data Mining. ACM, 173--182.Google ScholarGoogle ScholarDigital LibraryDigital Library
  39. Peter M. Lewinsohn, John R. Seeley, Robert E. Roberts, and Nicholas B. Allen. 1997. Center for epidemiologic studies depression scale (CES-D) as a screening instrument for depression among community-residing older adults. Psychology and Aging 12, 2 (1997), 277.Google ScholarGoogle ScholarCross RefCross Ref
  40. Liu Yi Lin, Jaime E. Sidani, Ariel Shensa, Ana Radovic, Elizabeth Miller, Jason B. Colditz, Beth L. Hoffman, Leila M. Giles, and Brian A. Primack. 2016. Association between social media use and depression among US young adults. Depression and Anxiety 33, 4 (2016), 323--331.Google ScholarGoogle ScholarCross RefCross Ref
  41. Suwen Lin, Louis Faust, Pablo Robles-Granda, and Nitesh V. Chawla. 2018. Social network structure is predictive of health and wellness. PloS one 14, 6 (2019), e0217264.Google ScholarGoogle Scholar
  42. Shikang Liu, David Hachen, Omar Lizardo, Christian Poellabauer, Aaron Striegel, and Tijana Milenković. 2018. Network analysis of the NetHealth data: Exploring co-evolution of individuals’ social network positions and physical activities. Applied Network Science 3, 1 (2018), 45.Google ScholarGoogle ScholarCross RefCross Ref
  43. Shikang Liu, David Hachen, Omar Lizardo, Christian Poellabauer, Aaron Striegel, and Tijana Milenkovic. 2020. The power of dynamic social networks to predict individuals’ mental health. In Proceedings of the Pacific Symposium on Biocomputing.Google ScholarGoogle Scholar
  44. Elaine M. McMahon, Paul Corcoran, Grace O’Regan, Helen Keeley, Mary Cannon, Vladimir Carli, Camilla Wasserman, Gergö Hadlaczky, Marco Sarchiapone, Alan Apter, Judit Balazs, Maria Balint, Julio Bobes, Romuald Brunner, Doina Cozman, Christian Haring, Miriam Iosue, Michael Kaess, Jean-Pierre Kahn, Bogdan Nemes, Tina Podlogar, Vita Poštuvan, Pilar Sáiz, Merike Sisask, Alexandra Tubiana, Peeter Värnik, Christina W. Hoven, and Danuta Wasserman. 2017. Physical activity in European adolescents and associations with anxiety, depression and well-being. European Child & Adolescent Psychiatry 26, 1 (2017), 111--122.Google ScholarGoogle ScholarCross RefCross Ref
  45. Lei Meng, Yuriy Hulovatyy, Aaron Striegel, and Tijana Milenković. 2016. On the interplay between individuals’ evolving interaction patterns and traits in dynamic multiplex social networks. IEEE Transactions on Network Science and Engineering 3, 1 (2016), 32--43.Google ScholarGoogle ScholarCross RefCross Ref
  46. Tijana Milenković and Nataša Pržulj. 2008. Uncovering biological network function via graphlet degree signatures. Cancer Informatics 6, 1 (2008), 257--273.Google ScholarGoogle ScholarCross RefCross Ref
  47. David C. Mohr, Mi Zhang, and Stephen M. Schueller. 2017. Personal sensing: Understanding mental health using ubiquitous sensors and machine learning. Annual Review of Clinical Psychology 13, 1 (2017), 23--47.Google ScholarGoogle ScholarCross RefCross Ref
  48. Khalique Newaz and Tijana Milenkovic. 2019. Graphlets in network science and computational biology. In Analyzing Network Data in Biology and Medicine: A Textbook for Training Biological, Medical and Computational Inter-disciplinary Scientists. Cambridge University Press.Google ScholarGoogle Scholar
  49. Maximilian Nickel, Volker Tresp, and Hans-Peter Kriegel. 2011. A three-way model for collective learning on multi-relational data. In Proceedings of the 28th International Conference on International Conference on Machine Learning. Vol. 11. 809--816.Google ScholarGoogle Scholar
  50. William S. Noble. 2009. How does multiple testing correction work? Nature Biotechnology 27, 12 (2009), 1135.Google ScholarGoogle ScholarCross RefCross Ref
  51. World Health Organization.2017. Depression and other common mental disorders: Global health estimates. Retrieved from https://apps.who.int/iris/handle/10665/254610.Google ScholarGoogle Scholar
  52. Bryan Perozzi, Rami Al-Rfou, and Steven Skiena. 2014. Deepwalk: Online learning of social representations. In Proceedings of the 20th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. ACM, 701--710.Google ScholarGoogle ScholarDigital LibraryDigital Library
  53. Rosalind W. Picard, Szymon Fedor, and Yadid Ayzenberg. 2016. Multiple arousal theory and daily-life electrodermal activity asymmetry. Emotion Review 8, 1 (2016), 62--75.Google ScholarGoogle ScholarCross RefCross Ref
  54. Robi Polikar. 2012. Ensemble learning. In Ensemble Machine Learning. Springer, 1--34.Google ScholarGoogle Scholar
  55. Alessandro Puiatti, Steven Mudda, Silvia Giordano, and Oscar Mayora. 2011. Smartphone-centred wearable sensors network for monitoring patients with bipolar disorder. In Proceedings of the 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE, 3644--3647.Google ScholarGoogle ScholarCross RefCross Ref
  56. Rachael Purta, Stephen Mattingly, Lixing Song, Omar Lizardo, David Hachen, Christian Poellabauer, and Aaron Striegel. 2016. Experiences measuring sleep and physical activity patterns across a large college cohort with Fitbits. In Proceedings of the 2016 ACM International Symposium on Wearable Computers. ACM, 28--35.Google ScholarGoogle ScholarDigital LibraryDigital Library
  57. Andrew G. Reece and Christopher M. Danforth. 2017. Instagram photos reveal predictive markers of depression. EPJ Data Science 6, 1 (2017), 15.Google ScholarGoogle ScholarCross RefCross Ref
  58. Denise Rey and Markus Neuhäuser. 2011. Wilcoxon-signed-rank test. In the International Encyclopedia of Statistical Science. Springer, 1658--1659.Google ScholarGoogle Scholar
  59. Francesco Ricci, Lior Rokach, and Bracha Shapira. 2011. Introduction to recommender systems handbook. In Recommender Systems Handbook. Springer, 1--35.Google ScholarGoogle Scholar
  60. Richard W. Robins, Holly M. Hendin, and Kali H. Trzesniewski. 2001. Measuring global self-esteem: Construct validation of a single-item measure and the rosenberg self-esteem scale. Personality and Social Psychology Bulletin 27, 2 (2001), 151--161.Google ScholarGoogle ScholarCross RefCross Ref
  61. J. Niels Rosenquist, James H. Fowler, and Nicholas A. Christakis. 2011. Social network determinants of depression. Molecular Psychiatry 16, 3 (2011), 273.Google ScholarGoogle ScholarCross RefCross Ref
  62. Akane Sano, Andrew J. Phillips, Z. Yu Amy, Andrew W. McHill, Sara Taylor, Natasha Jaques, Charles A. Czeisler, Elizabeth B. Klerman, and Rosalind W. Picard. 2015. Recognizing academic performance, sleep quality, stress level, and mental health using personality traits, wearable sensors and mobile phones. In Proceedings of the 2015 IEEE 12th International Conference on Wearable and Implantable Body Sensor Networks (BSN’15). IEEE, 1--6.Google ScholarGoogle Scholar
  63. David R. Schaefer, Olga Kornienko, and Andrew M. Fox. 2011. Misery does not love company: Network selection mechanisms and depression homophily. American Sociological Review 76, 5 (2011), 764--785.Google ScholarGoogle ScholarCross RefCross Ref
  64. Chuan Shi, Binbin Hu, Wayne Xin Zhao, and Philip S. Yu. 2019. Heterogeneous information network embedding for recommendation. IEEE Transactions on Knowledge and Data Engineering 31, 2 (2019), 357--370.Google ScholarGoogle ScholarDigital LibraryDigital Library
  65. Chuan Shi, Liu Jian, Fuzhen Zhuang, Philip S. Yu, and Bin Wu. 2015. Integrating heterogeneous information via flexible regularization framework for recommendation. Knowledge & Information Systems 49, 3 (2015), 1--25.Google ScholarGoogle Scholar
  66. Chuan Shi, Yitong Li, Jiawei Zhang, Yizhou Sun, and S. Yu Philip. 2017. A survey of heterogeneous information network analysis. IEEE Transactions on Knowledge and Data Engineering 29, 1 (2017), 17--37.Google ScholarGoogle ScholarDigital LibraryDigital Library
  67. Chuan Shi, Zhiqiang Zhang, Luo Ping, Philip S. Yu, and Bin Wu. 2015. Semantic path based personalized recommendation on weighted heterogeneous information networks. In Proceedings of the ACM International on Conference on Information & Knowledge Management.Google ScholarGoogle ScholarDigital LibraryDigital Library
  68. Yu Shi, Qi Zhu, Fang Guo, Chao Zhang, and Jiawei Han. 2018. Easing embedding learning by comprehensive transcription of heterogeneous information networks. In Proceedings of the 24th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining. 2190--2199.Google ScholarGoogle ScholarDigital LibraryDigital Library
  69. Kirsten P. Smith and Nicholas A. Christakis. 2008. Social networks and health. Annual Review of Sociology 34, 1 (2008), 405--429.Google ScholarGoogle ScholarCross RefCross Ref
  70. Julia Friederike Sowislo and Ulrich Orth. 2013. Does low self-esteem predict depression and anxiety? A meta-analysis of longitudinal studies. Psychological Bulletin 139, 1 (2013), 213.Google ScholarGoogle ScholarCross RefCross Ref
  71. Charles D. Spielberger. 2010. State-trait anxiety inventory. In The Corsini Encyclopedia of Psychology. John Wiley & Sons, 1--1.Google ScholarGoogle Scholar
  72. Nitish Srivastava, Geoffrey Hinton, Alex Krizhevsky, Ilya Sutskever, and Ruslan Salakhutdinov. 2014. Dropout: A simple way to prevent neural networks from overfitting. The Journal of Machine Learning Research 15, 1 (2014), 1929--1958.Google ScholarGoogle ScholarDigital LibraryDigital Library
  73. Eric Stice, Chris Hayward, Rebecca P. Cameron, Joel D. Killen, and C. Barr Taylor. 2000. Body-image and eating disturbances predict onset of depression among female adolescents: A longitudinal study. Journal of Abnormal Psychology 109, 3 (2000), 438.Google ScholarGoogle ScholarCross RefCross Ref
  74. Yizhou Sun, Jiawei Han, Peixiang Zhao, Zhijun Yin, Hong Cheng, and Tianyi Wu. 2009. Rankclus: Integrating clustering with ranking for heterogeneous information network analysis. In Proceedings of the 12th International Conference on Extending Database Technology: Advances in Database Technology. ACM, 565--576.Google ScholarGoogle ScholarDigital LibraryDigital Library
  75. Fatemeh Vahedian, Robin Burke, and Bamshad Mobasher. 2017. Multirelational recommendation in heterogeneous networks. ACM Transactions on the Web 11, 3 (2017), 15.Google ScholarGoogle ScholarDigital LibraryDigital Library
  76. Fatemeh Vahedian, Robin D. Burke, and Bamshad Mobasher. 2015. Network-based extension of multi-relational factorization models. In Proceedings of the RecSys Posters.Google ScholarGoogle Scholar
  77. Fatemeh Vahedian, Robin D. Burke, and Bamshad Mobasher. 2016. Meta-path selection for extended multi-relational matrix factorization. In Proceedings of the FLAIRS Conference. 566--571.Google ScholarGoogle Scholar
  78. Jeff K. Vallance, Elisabeth A. H. Winkler, Paul A. Gardiner, Genevieve N. Healy, Brigid M. Lynch, and Neville Owen. 2011. Associations of objectively-assessed physical activity and sedentary time with depression: NHANES (2005--2006). Preventive Medicine 53, 4--5 (2011), 284--288.Google ScholarGoogle ScholarCross RefCross Ref
  79. Kristian Wahlbeck. 2015. Public mental health: The time is ripe for translation of evidence into practice. World Psychiatry 14, 1 (2015), 36--42.Google ScholarGoogle ScholarCross RefCross Ref
  80. Ran Wang, Jian Chen, Philip S. Yu, and Bin Wu. 2014. Ranking-based clustering on general heterogeneous information networks by network projection. In Proceedings of the 23rd ACM International Conference on Conference on Information and Knowledge Management.Google ScholarGoogle Scholar
  81. Xiao Wang, Houye Ji, Chuan Shi, Bai Wang, Yanfang Ye, Peng Cui, and Philip S Yu. 2019. Heterogeneous graph attention network. In Proceedings of the World Wide Web Conference (WWW’19). Association for Computing Machinery, New York, NY, 2022--2032.Google ScholarGoogle ScholarDigital LibraryDigital Library
  82. Xinyu Wang, Chunhong Zhang, and Li Sun. 2013. An improved model for depression detection in micro-blog social network. In Proceedings of the 2013 IEEE 13th International Conference on Data Mining Workshops (ICDMW’13). IEEE, 80--87.Google ScholarGoogle ScholarDigital LibraryDigital Library
  83. Akkapon Wongkoblap, Miguel A. Vadillo, and Vasa Curcin. 2017. Researching mental health disorders in the era of social media: Systematic review. Journal of Medical Internet Research 19, 6 (2017), e228.Google ScholarGoogle ScholarCross RefCross Ref
  84. Xiao Yu, Xiang Ren, Yizhou Sun, Quanquan Gu, Bradley Sturt, Urvashi Khandelwal, Brandon Norick, and Jiawei Han. 2014. Personalized entity recommendation: A heterogeneous information network approach. In Proceedings of the 7th ACM International Conference on Web Search and Data Mining. 283--292.Google ScholarGoogle ScholarDigital LibraryDigital Library
  85. Chuxu Zhang, Dongjin Song, Chao Huang, Ananthram Swami, and Nitesh V. Chawla. 2019. Heterogeneous graph neural network. In Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining. 793--803.Google ScholarGoogle Scholar
  86. Marinka Zitnik, Monica Agrawal, and Jure Leskovec. 2018. Modeling polypharmacy side effects with graph convolutional networks. Bioinformatics 34, 13 (2018), i457--i466.Google ScholarGoogle ScholarCross RefCross Ref

Index Terms

  1. Heterogeneous Network Approach to Predict Individuals’ Mental Health

      Recommendations

      Comments

      Login options

      Check if you have access through your login credentials or your institution to get full access on this article.

      Sign in

      Full Access

      • Published in

        cover image ACM Transactions on Knowledge Discovery from Data
        ACM Transactions on Knowledge Discovery from Data  Volume 15, Issue 2
        Survey Paper and Regular Papers
        April 2021
        524 pages
        ISSN:1556-4681
        EISSN:1556-472X
        DOI:10.1145/3446665
        Issue’s Table of Contents

        Copyright © 2021 ACM

        Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

        Publisher

        Association for Computing Machinery

        New York, NY, United States

        Publication History

        • Published: 9 April 2021
        • Accepted: 1 October 2020
        • Revised: 1 August 2020
        • Received: 1 June 2019
        Published in tkdd Volume 15, Issue 2

        Permissions

        Request permissions about this article.

        Request Permissions

        Check for updates

        Qualifiers

        • research-article
        • Research
        • Refereed

      PDF Format

      View or Download as a PDF file.

      PDF

      eReader

      View online with eReader.

      eReader

      HTML Format

      View this article in HTML Format .

      View HTML Format