IEEE/CAA Journal of Automatica Sinica
Citation: | Wenbin Yue, Zidong Wang, Jieyu Zhang, and Xiaohui Liu, "An Overview of Recommendation Techniques and Their Applications in Healthcare," IEEE/CAA J. Autom. Sinica, vol. 8, no. 4, pp. 701-717, Apr. 2021. doi: 10.1109/JAS.2021.1003919 |
[1] |
P. Achananuparp and I. Weber, “Extracting food substitutes from food diary via distributional similarity,” in Proc. ACM Workshop on Engendering Health with Recommender Systems, Boston, USA, 2016, pp. 1–4.
|
[2] |
I. Adaji, K. Oyibo, and J. Vassileva, “Shopping value and its influence on healthy shopping habits in E-commerce,” in Proc. 3rd Int. Workshop on Health Recommender Systems Co-Located with the 12th ACM Conf. Recommender Systems, Vancouver, Canada, 2018, pp. 36–39.
|
[3] |
G. Adomavicius and A. Tuzhilin, “Toward the next generation of recommender systems: A survey of the state-of-the-art and possible extensions,” IEEE Trans. Knowl. Data Eng., vol. 17, no. 6, pp. 734–749, Jun. 2005. doi: 10.1109/TKDE.2005.99
|
[4] |
Y. Deldjoo, M. Elahi, P. Cremonesi, F. Garzotto, P. Piazzolla, and M. Quadrana, “Content-based video recommendation system based on stylistic visual features,” J. Data Semant., vol. 5, no. 2, pp. 99–113, Feb. 2016. doi: 10.1007/s13740-016-0060-9
|
[5] |
G. Agapito, M. Simeoni, B. Calabrese, P. H. Guzzi, G. Fuiano, and M. Cannataro, “DIETOS: A recommender system for health profiling and diet management in chronic diseases,” in Proc. 2nd Int. Workshop on Health Recommender Systems Co-Located with the 11th ACM Conf. Recommender Systems, Como, Italy, 2017, pp. 32–35.
|
[6] |
C. C. Aggarwal, “Ensemble-based and hybrid recommender systems,” in Recommender Systems. Boston, MA: Springer, 2016, pp. 199–224.
|
[7] |
E. Agu and M. Claypool, “Cypress: A cyber-physical recommender system to discover smartphone exergame enjoyment,” in Proc. ACM Workshop on Engendering Health with Recommender Systems, Boston, USA, 2016.
|
[8] |
S. Akkoyunlu, C. Manfredotti, A. Cornuéjols, N. Darcel, and F. Delaere, “Investigating substitutability of food items in consumption data,” in Proc. 2nd Int. Workshop on Health Recommender Systems Co-Located with the 11th ACM Conf. Recommender Systems, Como, Italy, 2017, pp. 27–31.
|
[9] |
S. Akkoyunlu, C. Manfredotti, A. Cornuéjols, N. Darcel, and F. Delaere, “Exploring eating behaviours modelling for user clustering,” in Proc. 3rd Int. Workshop on Health Recommender Systems Co-Located with the 12th ACM Conf. Recommender Systems, Vancouver, Canada, 2018, pp. 46–51.
|
[10] |
H. Alcaraz-Herrera and I. Palomares, “Evolutionary approach for ‘healthy bundle’ wellbeing recommendations,” in Proc. 4th Int. Workshop on Health Recommender Systems Co-Located with the 13th ACM Conf. Recommender Systems, Copenhagen, Denmark, 2019, pp. 18–23.
|
[11] |
F. Alvarez, M. Popa, V. Solachidis, G. Hernández-Peñaloza, A. Belmonte-Hernández, S. Asteriadis, N. Vretos, M. Quintana, T. Theodoridis, D. Dotti, and P. Daras, “Behavior analysis through multimodal sensing for care of Parkinson’s and Alzheimer’s patients,” IEEE Multim., vol. 25, no. 1, pp. 14–25, Jan.–Mar. 2018. doi: 10.1109/MMUL.2018.011921232
|
[12] |
S. Arora, N. Cohen, W. Hu, and Y. P. Luo, “Implicit regularization in deep matrix factorization,” in Proc. 33rd Conf. Neural Information Processing Systems, Vancouver, Canada, 2019, pp. 7413–7424.
|
[13] |
J. Aswal and N. Srivastava, “A recommender system for informal bibliotherapy,” in Proc. 5th Int. Workshop on Health Recommender Systems Co-Located with 14th ACM Conf. Recommender Systems, Rio de Janeiro, Brazil, 2020, pp. 23–27.
|
[14] |
K. Balog and F. Radlinski, “Measuring recommendation explanation quality: The conflicting goals of explanations,” in Proc. 43rd Int. ACM SIGIR Conf. Research and Development in Information Retrieval, Virtual Event, China, 2020, pp. 329–338.
|
[15] |
O. Barkan, Y. Fuchs, A. Caciularu, and N. Koenigstein, “Explainable recommendations via attentive multi-persona collaborative filtering,” in Proc. 14th ACM Conf. Recommender Systems, Virtual Event, Brazil, 2020, pp. 468–473.
|
[16] |
J. Bennett and S. Lanning, “The Netflix prize,” in Proc. KDD Cup and Workshop 2007, San Jose, USA, 2007.
|
[17] |
J. Berndsen, A. Lawlor, and B. Smyth, “Running with recommendation,” in Proc. 2nd Int. Workshop on Health Recommender Systems Co-Located with the 11th ACM Conf. Recommender Systems, Como, Italy, 2017, pp. 18–21.
|
[18] |
J. Bobadilla, F. Ortega, A. Hernando, and Á. Arroyo, “A balanced memory-based collaborative filtering similarity measure,” Int. J. Intell. Syst., vol. 27, no. 10, pp. 939–946, Oct. 2012. doi: 10.1002/int.21556
|
[19] |
L. Boecking and P. Philipp, “Recommeding safe actions by learning from sub-optimal demonstrations,” in Proc. 5th Int. Workshop on Health Recommender Systems Co-Located with 14th ACM Conf. Recommender Systems, Rio de Janeiro, Brazil, 2020, pp. 28–35.
|
[20] |
L. Boratto, S. Carta, W. Iguider, F. Mulas, and P. Pilloni, “Predicting workout quality to help coaches support sportspeople,” in Proc. 3rd Int. Workshop on Health Recommender Systems Co-Located with the 12th ACM Conf. Recommender Systems, Vancouver, Canada, 2018, pp. 8–12.
|
[21] |
J. S. Breese, D. Heckerman, and C. Kadie, Empirical analysis of predictive algorithms for collaborative filtering. 2013. [Online]. Available: arXiv: 1301.7363.
|
[22] |
M. Bukowski, A. C. Valdez, M. Ziefle, T. Schmitz-Rode, and R. Farkas, “Hybrid collaboration recommendation from bibliometric data,” in Proc. 2nd Int. Workshop on Health Recommender Systems Co-Located with the 11th ACM Conf. Recommender Systems, Como, Italy, 2017, pp. 36–38.
|
[23] |
L. Burbach, P. Belavadi, P. Halbach, N. Plettenberg, J. Nakayama, L. Kojan, and A. C. Valdez, “On the importance of context: Privacy perceptions of personal vs. health data in health recommender systems,” in Proc. 5th Int. Workshop on Health Recommender Systems Co-Located with 14th ACM Conf. Recommender Systems, Rio de Janeiro, Brazil, 2020, pp. 2–7.
|
[24] |
R. Burke, “Hybrid recommender systems: Survey and experiments,” User Model. User-Adap. Inter., vol. 12, no. 4, pp. 331–370, Nov. 2002. doi: 10.1023/A:1021240730564
|
[25] |
J. E. C. Da Silva, R. S. de Oliveira, L. B. Marinho, and C. Trattner, “Healthy menus recommendation: Optimizing the use of the pantry,” in Proc. 3rd Int. Workshop on Health Recommender Systems Co-Located with the 12th ACM Conf. Recommender Systems, Vancouver, Canada, 2018, pp. 2–7.
|
[26] |
J. Cao, Z. Wu, B. Mao and Y. C. Zhang, “Shilling attack detection utilizing semi-supervised learning method for collaborative recommender system,” World Wide Web, vol. 16, no. 5–6, pp. 729–748, Nov. 2013. doi: 10.1007/s11280-012-0164-6
|
[27] |
J. Cao, Z. Wu, Y. Q. Wang, and Y. Zhuang, “Hybrid collaborative filtering algorithm for bidirectional web service recommendation,” Knowl. Inform. Syst., vol. 36, no. 3, pp. 607–627, Sep. 2013. doi: 10.1007/s10115-012-0562-1
|
[28] |
Y. K. Cen, J. W. Zhang, X. Zou, C. Zhou, H. X. Yang, and J. Tang, “Controllable multi-interest framework for recommendation,” in Proc. 26th ACM SIGKDD Int. Conf. Knowledge Discovery & Data Mining, Virtual Event, CA, USA, 2020, pp. 2942–2951.
|
[29] |
J. X. Chang, C. Gao, X. N. He, D. P. Jin, and Y. Li, “Bundle recommendation with graph convolutional networks,” in Proc. 43rd Int. ACM SIGIR Conf. Research and Development in Information Retrieval, Virtual Event, China, 2020, pp. 1673–1676.
|
[30] |
L. Chen, L. Wu, R. C. Hong, K. Zhang, and M. Wang, “Revisiting graph based collaborative filtering: A linear residual graph convolutional network approach,” in Proc. AAAI Conf. Artif. Intell., vol. 34, no. 1, pp. 27–34, Apr. 2020.
|
[31] |
H. J. Cheng, Z. D. Wang, Z. H. Wei, L. F. Ma, and X. H. Liu, “On adaptive learning framework for deep weighted sparse autoencoder: A multiobjective evolutionary algorithm,” IEEE Trans. Cybern., 2020, DOI: 10.1109/TCYB.2020.3009582, to be published.
|
[32] |
S. E. Chiuve, K. M. Rexrode, D. Spiegelman, G. Logroscino, J. E. Manson, and E. B. Rimm, “Primary prevention of stroke by healthy lifestyle,” Circulation, vol. 118, no. 9, pp. 947–954, Aug. 2008. doi: 10.1161/CIRCULATIONAHA.108.781062
|
[33] |
E. Christakopoulou and G. Karypis, “Local item-item models for top-N recommendation,” in Proc. 10th ACM Conf. Recommender Systems, Boston, USA, 2016, pp. 67–74.
|
[34] |
P. Cremonesi, Y. Koren, and R. Turrin, “Performance of recommender algorithms on top-N recommendation tasks,” in Proc. 4th ACM Conf. Recommender Systems, Barcelona, Spain, 2010, pp. 39–46.
|
[35] |
M. De Gemmis, P. Lops, G. Semeraro, and P. Basile, “Integrating tags in a semantic content-based recommender,” in Proc. 2008 ACM Conf. Recommender Systems, Lausanne, Switzerland, 2008, pp. 163–170.
|
[36] |
M. S. Desarkar, S. Sarkar, and P. Mitra, “Aggregating preference graphs for collaborative rating prediction,” in Proc. 4th ACM Conf. Recommender Systems, Barcelona, Spain, 2010, pp. 21–28.
|
[37] |
L. Duan, W. N. Street, and E. Xu, “Healthcare information systems: Data mining methods in the creation of a clinical recommender system,” Enterp. Inform. Syst., vol. 5, no. 2, pp. 169–181, Jan. 2011. doi: 10.1080/17517575.2010.541287
|
[38] |
J. D. Ekstrand and M. D. Ekstrand, “First do no harm: Considering and minimizing harm in recommender systems designed for engendering health,” in Proc. ACM Workshop on Engendering Health with Recommender Systems, Boston, USA, 2016, pp. 5–7.
|
[39] |
E. Ezin, E. Kim, and I. Palomares, “‘Fitness that fits’: A prototype model for workout video recommendation,” in Proc. 3rd Int. Workshop on Health Recommender Systems Co-Located with the 12th ACM Conf. Recommender Systems, Vancouver, Canada, 2018, pp. 40–45.
|
[40] |
C. Feely, B. Caulfield, A. Lawlor, and B. Smyth, “Providing explainable race-time predictions and training plan recommendations to marathon runners,” in Proc. 14th ACM Conf. Recommender Systems, Virtual Event, Brazil, 2020, pp. 539–544.
|
[41] |
J. M. Fernández, M. Mamei, S. Mariani, F. Miralles, A. Steblin, E. Vargiu, and F. Zambonelli, “Towards argumentation-based recommendations for personalised patient empowerment,” in Proc. 2nd Int. Workshop on Health Recommender Systems Co-Located with the 11th ACM Conf. Recommender Systems, Como, Italy, 2017, pp. 2–5.
|
[42] |
F. Fouss, A. Pirotte, J. M. Renders, and M. Saerens, “Random-walk computation of similarities between nodes of a graph with application to collaborative recommendation,” IEEE Trans. Knowl. Data Eng., vol. 19, no. 3, pp. 355–369, Mar. 2007. doi: 10.1109/TKDE.2007.46
|
[43] |
Z. H. Fu, Y. K. Xian, R. Y. Gao, J. Y. Zhao, Q. Y. Huang, Y. Q. Ge, S. Y. Xu, S. J. Geng, C. Shah, Y. F. Zhang, and G. de Melo, “Fairness-aware explainable recommendation over knowledge graphs,” in Proc. 43rd Int. ACM SIGIR Conf. Research and Development in Information Retrieval, Virtual Event, China, 2020, pp. 69–78.
|
[44] |
S. X. Gao, Z. T. Yu, L. B. Shi, X. Yan, and H. X. Song, “Review expert collaborative recommendation algorithm based on topic relationship,” IEEE/CAA J. Autom. Sinica, vol. 2, no. 4, pp. 403–411, Oct. 2015. doi: 10.1109/JAS.2015.7296535
|
[45] |
F. S. Gohari, F. S. Aliee, and H. Haghighi, “A new confidence-based recommendation approach: Combining trust and certainty,” Inform. Sci., vol. 422, pp. 21–50, Jan. 2018. doi: 10.1016/j.ins.2017.09.001
|
[46] |
S. J. Gong, “A collaborative filtering recommendation algorithm based on user clustering and item clustering,” J. Software, vol. 5, no. 7, pp. 745–752, Jul. 2010.
|
[47] |
F. Gräßer, S. Beckert, D. Küster, S. Abraham, H. Malberg, J. Schmitt, and S. Zaunseder, “Neighborhood-based Collaborative Filtering for Therapy Decision Support,” in Proc. 2nd Int. Workshop on Health Recommender Systems Co-Located with the 11th ACM Conf. Recommender Systems, Como, Italy, 2017, pp. 22–26.
|
[48] |
A. Gunawardana and G. Shani, “A survey of accuracy evaluation metrics of recommendation tasks,” J. Mach. Learn. Res., vol. 10, pp. 2935–2962, Dec. 2009.
|
[49] |
Q. Guo, Z. Sun, J. Zhang, and Y. L. Theng, “An attentional recurrent neural network for personalized next location recommendation,” in Proc. AAAI Conf. Artif. Intell., vol. 34, no. 1, pp. 83–90, 2020.
|
[50] |
F. Gutierrez, B. Cardoso, and K. Verbert, “PHARA: A personal health augmented reality assistant to support decision-making at grocery stores,” in Proc. 2nd Int. Workshop on Health Recommender Systems Co-Located with the 11th ACM Conf. Recommender Systems, Como, Italy, 2017, pp. 10–13.
|
[51] |
H. M. Habeeb, A. Al-Azawei, and N. Al-A’Araji, “Developing a healthcare recommender system using an enhanced symptoms-based collaborative filtering technique,” J. Comput. Theor. Nanosci., vol. 16, no. 3, pp. 920–926, Mar. 2019. doi: 10.1166/jctn.2019.7976
|
[52] |
J. H. Hao, T. Zhao, J. Li, X. L. Dong, C. Faloutsos, Y. Z. Sun, and W. Wang, “P-Companion: A principled framework for diversified complementary product recommendation,” in Proc. 29th ACM Int. Conf. Information and Knowledge Management, Virtual Event, Ireland, 2020, pp. 2517–2524.
|
[53] |
R. N. He and J. McAuley, “Ups and downs: Modeling the visual evolution of fashion trends with one-class collaborative filtering,” in Proc. 25th Int. Conf. World Wide Web, Québec, Canada, 2016, pp. 507–517.
|
[54] |
X. N. He, L. Z. Liao, H. W. Zhang, L. Q. Nie, X. Hu, and T. S. Chua, “Neural collaborative filtering,” in Proc. 26th Int. Conf. World Wide Web, Perth, Australia, 2017, pp. 173–182.
|
[55] |
X. N. He, K. Deng, X. Wang, Y. Li, Y. D. Zhang, and M. Wang, “LightGCN: Simplifying and powering graph convolution network for recommendation,” in Proc. 43rd Int. ACM SIGIR Conf. Research and Development in Information Retrieval, Virtual Event, China, 2020, pp. 639–648.
|
[56] |
K. Herrmanny and A. Dogangün, “The impact of prediction uncertainty in recommendations for health-related behavior,” in Proc. 2nd Int. Workshop on Health Recommender Systems Co-Located with the 11th ACM Conf. Recommender Systems, Como, Italy, 2017, pp. 14–17.
|
[57] |
B. Hidasi, A. Karatzoglou, L. Baltrunas, and D. Tikk, Session-based recommendations with recurrent neural networks. 2015. [Online]. Available: arXiv: 1511.06939.
|
[58] |
S. Hors-Fraile, F. J. N. Benjumea, L. C. Hernández, F. O. Ruiz, and L. Fernandez-Luque, “Design of two combined health recommender systems for tailoring messages in a smoking cessation app,” in Proc. ACM Workshop on Engendering Health with Recommender Systems, Boston, MA, USA, 2016, pp. 7–10.
|
[59] |
J. Hu, Z. D. Wang, G. P. Liu, H. X. Zhang and R. Navaratne, “A prediction-based approach to distributed filtering with missing measurements and communication delays through sensor networks,” IEEE Trans. Syst. Man Cybern.: Syst., 2020, DOI: 10.1109/TSMC.2020.2966977, to be published.
|
[60] |
L. K. Hu, A. X. Sun, and Y. Liu, “Your neighbors affect your ratings: On geographical neighborhood influence to rating prediction,” in Proc. 37th Int. ACM SIGIR Conf. Research and Development in Information Retrieval, Gold Coast, Australia, 2014, pp. 345–354.
|
[61] |
N. Huba and Y. Zhang, “Designing patient-centered personal health records (PHRs): Health care professionals’ perspective on patient-generated data,” J. Med. Syst., vol. 36, no. 6, pp. 3893–3905, May 2012. doi: 10.1007/s10916-012-9861-z
|
[62] |
A. S. Hussein, W. M. Omar, X. Li, and M. Ati, “Efficient chronic disease diagnosis prediction and recommendation system,” in Proc. 2012 IEEE-EMBS Conf. Biomedical Engineering and Sciences, Langkawi, Malaysia, 2012, pp. 209–214.
|
[63] |
A. S. Hussein, W. M. Omar, X. Li, and M. A. Hatem, “Smart collaboration framework for managing chronic disease using recommender system,” Health Syst., vol. 3, no. 1, pp. 12–17, Feb. 2014. doi: 10.1057/hs.2013.8
|
[64] |
L. Iaquinta, M. De Gemmis, P. Lops, G. Semeraro, M. Filannino, and P. Molino, “Introducing serendipity in a content-based recommender system,” in Proc. 8th Int. Conf. Hybrid Intelligent Systems, Barcelona, Spain, 2008, pp. 168–173.
|
[65] |
F. Jabeen, M. Maqsood, M. A. Ghazanfar, F. Aadil, S. Khan, M. F. Khan, and I. Mehmood, “An IoT based efficient hybrid recommender system for cardiovascular disease,” Peer-to-Peer Netw. Appl., vol. 12, no. 5, pp. 1263–1276, Sep. 2019. doi: 10.1007/s12083-019-00733-3
|
[66] |
A. Jameson, “A tool that supports the psychologically based design of health-related interventions,” in Proc. 2nd Int. Workshop on Health Recommender Systems Co-Located with the 11th ACM Conf. Recommender Systems, Como, Italy, 2017, pp. 39–42.
|
[67] |
S. Jamshidi, M. A. Torkamani, J. Mellen, M. Jhaveri, P. Pan, J. Chung, and H. Kardes, “A hybrid health journey recommender system using electronic medical records,” in Proc. 3rd Int. Workshop on Health Recommender Systems Co-Located with the 12th ACM Conf. Recommender Systems, Vancouver, Canada, 2018, pp. 57–62.
|
[68] |
D. Jannach, M. Zanker, A. Felfernig, and G. Friedrich, Recommender Systems: An introduction. Cambridge, UK: Cambridge University Press, 2010.
|
[69] |
K. Järvelin and J. Kekäläinen, “Cumulated gain-based evaluation of IR techniques,” ACM Trans. Inform. Syst., vol. 20, no. 4, pp. 422–446, Oct. 2002. doi: 10.1145/582415.582418
|
[70] |
B. W. Jin, C. Gao, X. N. He, D. P. Jin, and Y. Li, “Multi-behavior recommendation with graph convolutional networks,” in Proc. 43rd Int. ACM SIGIR Conf. Research and Development in Information Retrieval, Virtual Event, China, 2020, pp. 659–668.
|
[71] |
S. Kafle, P. Pan, A. Torkamani, S. Halley, J. Powers, and H. Kardes, “Personalized symptom checker using medical claims,” in Proc. 3rd Int. Workshop on Health Recommender Systems Co-Located with the 12th ACM Conf. Recommender Systems, Vancouver, Canada, 2018, pp. 13–17.
|
[72] |
C. Kaleli, “An entropy-based neighbor selection approach for collaborative filtering,” Knowl.-Based Syst., vol. 56, pp. 273–280, Jan. 2014. doi: 10.1016/j.knosys.2013.11.020
|
[73] |
H. Kaur, N. Kumar, and S. Batra, “An efficient multi-party scheme for privacy preserving collaborative filtering for healthcare recommender system,” Future Gener. Comp. Syst., vol. 86, pp. 297–307, Sep. 2018. doi: 10.1016/j.future.2018.03.017
|
[74] |
N. R. Kermany and S. H. Alizadeh, “A hybrid multi-criteria recommender system using ontology and neuro-fuzzy techniques,” Electron. Commerce Res. Appl., vol. 21, pp. 50–64, Jan.–Feb. 2017. doi: 10.1016/j.elerap.2016.12.005
|
[75] |
M. A. Khan, E. Rushe, B. Smyth, and D. Coyle, “Personalized, health-aware recipe recommendation: An ensemble topic modeling based approach,” in Proc. 4th Int. Workshop on Health Recommender Systems Co-Located with the 13th ACM Conf. Recommender Systems, Copenhagen, Denmark, 2019, pp. 4–10.
|
[76] |
D. Kim, C. Park, J. Oh, S. Lee, and H. Yu, “Convolutional matrix factorization for document context-aware recommendation,” in Proc. 10th ACM Conf. Recommender Systems, Boston, USA, 2016, pp. 233–240.
|
[77] |
D. P. Kingma and M. Welling, Auto-encoding variational bayes. 2013. [Online]. Available: arXiv: 1312.6114.
|
[78] |
H. Kohli, “Training mixed-objective pointing decoders for block-level optimization in search recommendation,” in Proc. 43rd Int. ACM SIGIR Conf. Research and Development in Information Retrieval, Virtual Event, China, 2020, pp. 1753–1756.
|
[79] |
Y. Koren, “Factorization meets the neighborhood: A multifaceted collaborative filtering model,” in Proc. 14th ACM SIGKDD Int. Conf. Knowledge Discovery and Data Mining, Las Vegas, USA, 2008, pp. 426–434.
|
[80] |
Y. Koren, “Collaborative filtering with temporal dynamics,” in Proc. 15th ACM SIGKDD Int. Conf. Knowledge Discovery and Data Mining, Paris, France, 2009, pp. 447–456.
|
[81] |
Y. Koren, “Collaborative filtering with temporal dynamics,” in Proc. 15th ACM SIGKDD Int. Conf. Knowledge Discovery and Data Mining, Paris, France, 2009, pp. 447–456.
|
[82] |
W. Krichene and S. Rendle, “On sampled metrics for item recommendation,” in Proc. 26th ACM SIGKDD Int. Conf. Knowledge Discovery & Data Mining, Virtual Event, USA, 2020, pp. 1748–1757.
|
[83] |
Q. Le, and A. Smola, Direct optimization of ranking measures. 2007. [Online]. Available: arXiv: 0704.3359.
|
[84] |
D. D. Lee and H. S. Seung, “Learning the parts of objects by non-negative matrix factorization,” Nature, vol. 401, no. 6755, pp. 788–791, Oct. 1999. doi: 10.1038/44565
|
[85] |
X. J. Lei, Z. Q. Fang, and L. Guo, “Predicting circRNA-disease associations based on improved collaboration filtering recommendation system with multiple data,” Front. Genet., vol. 10, Article No. 897, Sep. 2019. doi: 10.3389/fgene.2019.00897
|
[86] |
N. Leipold, M. Madenach, H. Schäfer, M. Lurz, N. Terzimehic, G. Groh, M. Bőhm, K. Gedrich, and H. Krcmar, “Nutrilize a personalized nutrition recommender system: An enable study,” in Proc. 3rd Int. Workshop on Health Recommender Systems Co-Located with the 12th ACM Conf. Recommender Systems, Vancouver, Canada, 2018, pp. 24–29.
|
[87] |
L. H. Li, W. Chu, J. Langford, and R. E. Schapire, “A contextual-bandit approach to personalized news article recommendation,” in Proc. 19th Int. Conf. World Wide Web, Raleigh, USA, 2010, pp. 661–670.
|
[88] |
Z. C. Li and J. H. Tang, “Weakly supervised deep matrix factorization for social image understanding,” IEEE Trans. Image Process., vol. 26, no. 1, pp. 276–288, Jan. 2017. doi: 10.1109/TIP.2016.2624140
|
[89] |
X. P. Li and J. She, “Collaborative variational autoencoder for recommender systems,” in Proc. 23rd ACM SIGKDD Int. Conf. Knowledge Discovery and Data Mining, Halifax, Canada, 2017, pp. 305–314.
|
[90] |
Y. Li, S. H. Wang, Q. Pan, H. Y. Peng, T. Yang, and E. Cambria, “Learning binary codes with neural collaborative filtering for efficient recommendation systems,” Knowl.-Based Syst., vol. 172, pp. 64–75, 2019. doi: 10.1016/j.knosys.2019.02.012
|
[91] |
J. X. Lian, F. Z. Zhang, X. Xie, and G. Z. Sun, “CCCFNet: A content-boosted collaborative filtering neural network for cross domain recommender systems,” in Proc. 26th Int. Conf. World Wide Web Companion, Perth, Australia, 2017, pp. 817–818.
|
[92] |
G. D. Linden, J. A. Jacobi, and E. A. Benson, “Collaborative recommendations using item-to-item similarity mappings,” U.S. Patent 6266649B1, Sep. 18, 1998.
|
[93] |
Q. Liu, Y. F. Zeng, R. Mokhosi, and H. B. Zhang, “STAMP: Short-term attention/memory priority model for session-based recommendation,” in Proc. 24th ACM SIGKDD Int. Conf. Knowledge Discovery and Data Mining, London, UK, 2018, pp. 1831–1839.
|
[94] |
Q. Y. Liu and Z. D. Wang, “Moving-horizon estimation for linear dynamic networks with binary encoding schemes,” IEEE Trans. Autom. Control, 2020, DOI: 10.1109/TAC.2020.2996579, to be published.
|
[95] |
Y. Liu, Q. L. Cheng, Y. F. Gan, Y. X. Wang, Z. D. Li, and J. Zhao, “Multi-objective optimization of energy consumption in crude oil pipeline transportation system operation based on exergy loss analysis,” Neurocomputing, vol. 332, pp. 100–110, Mar. 2019. doi: 10.1016/j.neucom.2018.12.022
|
[96] |
Y. Liu, S. Q. Chen, B. Guan, and P. Xu, “Layout optimization of large-scale oil-gas gathering system based on combined optimization strategy,” Neurocomputing, vol. 332, pp. 159–183, Mar. 2019. doi: 10.1016/j.neucom.2018.12.021
|
[97] |
W. B. Liu, Z. D. Wang, X. H. Liu, N. Y. Zeng, and D. Bell, “A novel particle swarm optimization approach for patient clustering from emergency departments,” IEEE Trans. Evol. Comput., vol. 23, no. 4, pp. 632–644, Aug. 2019. doi: 10.1109/TEVC.2018.2878536
|
[98] |
W. B. Liu, Z. D. Wang, Y. Yuan, N. Y. Zeng, K. Hone, and X. H. Liu, “A novel sigmoid-function-based adaptive weighted particle swarm optimizer,” IEEE Trans. Cybern., vol. 51, no. 2, pp. 1085–1093, Feb. 2021. doi: 10.1109/TCYB.2019.2925015
|
[99] |
W. B. Liu, Z. D. Wang, N. Y. Zeng, Y. Yuan, F. E. Alsaadi, and X. H. Liu, “A novel randomised particle swarm optimizer,” Int. J. Mach. Learn. Cybern., vol. 12, no. 2, pp. 529–540, Feb. 2021. doi: 10.1007/s13042-020-01186-4
|
[100] |
P. Lops, M. De Gemmis, and G. Semeraro, “Content-based recommender systems: State of the art and trends,” Recommender Systems Handbook, F. Ricci, L. Rokach, B. Shapira, and P. Kantor, Eds. Boston, MA: Springer, 2011, pp. 73–105.
|
[101] |
W. J. Luan, G. J. Liu, C. J. Jiang, and L. Qi, “Partition-based collaborative tensor factorization for POI recommendation,” IEEE/CAA J. Autom. Sinica, vol. 4, no. 3, pp. 437–446, Jul. 2017. doi: 10.1109/JAS.2017.7510538
|
[102] |
X. Luo, M. C. Zhou, Y. N. Xia, and Q. S. Zhu, “An efficient non-negative matrix-factorization-based approach to collaborative filtering for recommender systems,” IEEE Trans. Ind. Inform., vol. 10, no. 2, pp. 1273–1284, May 2014. doi: 10.1109/TII.2014.2308433
|
[103] |
X. Luo, Y. N. Xia, Q. S. Zhu, and Y. Li, “Boosting the K-Nearest-Neighborhood based incremental collaborative filtering,” Knowl.-Based Syst., vol. 53, pp. 90–99, Nov. 2013. doi: 10.1016/j.knosys.2013.08.016
|
[104] |
X. Luo, M. C. Zhou, S. Li, Y. N. Xia, Z. H. You, Q. S. Zhu, and H. Leung, “Incorporation of efficient second-order solvers into latent factor models for accurate prediction of missing QoS data,” IEEE Tran. Cybern., vol. 48, no. 4, pp. 1216–1228, Apr. 2018. doi: 10.1109/TCYB.2017.2685521
|
[105] |
X. Luo, Z. G. Liu, S. Li, M. S. Shang, and Z. D. Wang, “A fast non-negative latent factor model based on generalized momentum method,” IEEE Trans. Syst. Man Cybern.:Syst., vol. 51, no. 1, pp. 610–620, Jan. 2021. doi: 10.1109/TSMC.2018.2875452
|
[106] |
X. Luo, D. X. Wang, M. C. Zhou, and H. Q. Yuan, “Latent factor-based recommenders relying on extended stochastic gradient descent algorithms,” IEEE Trans. Syst. Man Cybern.:Syst., vol. 51, no. 2, pp. 916–926, Feb. 2021. doi: 10.1109/TSMC.2018.2884191
|
[107] |
X. Luo, M. C. Zhou, S. Li, L. Hu, and M. S. Shang, “Non-negativity constrained missing data estimation for high-dimensional and sparse matrices from industrial applications,” IEEE Trans. Cybern., vol. 50, no. 5, pp. 1844–1855, May 2020. doi: 10.1109/TCYB.2019.2894283
|
[108] |
X. Luo, H. Wu, H. Q. Yuan, and M. C. Zhou, “Temporal pattern-aware QoS prediction via biased non-negative latent factorization of tensors,” IEEE Trans. Cybern., vol. 50, no. 5, pp. 1798–1809, May 2020. doi: 10.1109/TCYB.2019.2903736
|
[109] |
Suryakant and T. Mahara, “A new similarity measure based on mean measure of divergence for collaborative filtering in sparse environment,” Proc. Comp. Sci., vol. 89, pp. 450–456, Dec. 2016. doi: 10.1016/j.procs.2016.06.099
|
[110] |
A. Makhzani and B. Frey, K-sparse autoencoders. 2013. [Online]. Available: arXiv: 1312.5663.
|
[111] |
R. R. Salakhutdinov and A. Mnih, “Probabilistic matrix factorization,” in Proc. 20th Int. Conf. Neural Information Processing Systems, Vancouver, Canada, 2008, pp. 1257–1264.
|
[112] |
A. Mustaqeem, S. M. Anwar, and M. Majid, “A modular cluster based collaborative recommender system for cardiac patients,” Artif. Intell. Med., vol. 102, Article No. 101761, Jan. 2020. doi: 10.1016/j.artmed.2019.101761
|
[113] |
M. Nasiri, B. Minaei, and A. Kiani, “Dynamic recommendation: Disease prediction and prevention using recommender system,” Int. J. Basic Sci. Med., vol. 1, no. 1, pp. 13–17, 2016. doi: 10.15171/ijbsm.2016.04
|
[114] |
X. Ning and G. Karypis, “Sparse linear methods with side information for top-n recommendations,” in Proc. 6th ACM Conf. Recommender Systems, Dublin, Ireland, 2012, pp. 155–162.
|
[115] |
Y. X. Ouyang, W. Q. Liu, W. G. Rong, and Z. Xiong, “Autoencoder-based collaborative filtering,” in Proc. 21st Int. Conf. Neural Information Processing, Kuching, Malaysia, 2014, pp. 284–291.
|
[116] |
K. Oyibo, I. Adaji, and J. Vassileva, “What drives the perceived credibility of health apps: Classical or expressive aesthetics?,” in Proc. 3rd Int. Workshop on Health Recommender Systems Co-Located with the 12th ACM Conf. Recommender Systems, Vancouver, Canada, 2018, pp. 30–35.
|
[117] |
W. K. Pan, E. W. Xiang, N. N. Liu, and Q. Yang, “Transfer learning in collaborative filtering for sparsity reduction,” in Proc. 24th AAAI Conf. Artificial Intelligence, Atlanta, USA, 2010, pp. 230–235.
|
[118] |
V. Pandey, D. D. Upadhyay, N. Nag, and R. Jain, “Personalized user modelling for context-aware lifestyle recommendations to improve sleep,” in Proc. 5th Int. Workshop on Health Recommender Systems Co-Located with 14th ACM Conf. Recommender Systems (HealthRecSys 2020), Rio de Janeiro, Brazil, 2020, pp. 8–14.
|
[119] |
T. K. Paradarami, N. D. Bastian, and J. L. Wightman, “A hybrid recommender system using artificial neural networks,” Expert Systems with Applications, vol. 83, pp. 300–313, 2017. doi: 10.1016/j.eswa.2017.04.046
|
[120] |
A. Pasta, M. K. Petersen, K. J. Jensen, and J. E. Larsen, “Rethinking hearing aids as recommender systems,” in Proc. 4th Int. Workshop on Health Recommender Systems Co-Located with the 13th ACM Conf. Recommender Systems, Copenhagen, Denmark, 2019, pp. 11–17.
|
[121] |
M. J. Pazzani, and D. Billsus, “Content-based recommendation systems,” in The Adaptive Web. Berlin, Heidelberg: Springer, 2007, pp. 325–341.
|
[122] |
F. Pecune, L. Callebert, and S. Marsella, “A recommender system for healthy and personalized recipes recommendations,” in Proc. 5th Int. Workshop on Health Recommender Systems Co-Located with 14th ACM Conf. Recommender Systems), Rio de Janeiro, Brazil, 2020, pp. 15–20.
|
[123] |
P. Pilloni, L. Piras, L. Boratto, S. Carta, G. Fenu, and F. Mulas, “Recommendation in persuasive eHealth systems: An effective strategy to spot users’ losing motivation to exercise,” in Proc. 2nd Int. Workshop on Health Recommender Systems Co-Located with the 11th ACM Conf. Recommender Systems, Como, Italy, 2017, pp. 6–9.
|
[124] |
N. P. Pronk, L. H. Anderson, A. L. Crain, B. C. Martinson, P. J. O’Connor, N. E. Sherwood, and R. R. Whitebird, “Meeting recommendations for multiple healthy lifestyle factors: Prevalence, clustering, and predictors among adolescent, adult, and senior health plan members,” Am. J. Prev. Med., vol. 27, no. 2, pp. 25–33, Aug. 2004. doi: 10.1016/j.amepre.2004.04.022
|
[125] |
W. Qian, Y. J. Li, Y. G. Chen, and W. Liu, “L2-L∞ filtering for stochastic delayed systems with randomly occurring nonlinearities and sensor saturation,” Int. J. Syst. Sci., vol. 51, no. 13, pp. 2360–2377, Jul. 2020. doi: 10.1080/00207721.2020.1794080
|
[126] |
U. Reimer, E. Maier, and T. Ulmer, “Automatic user adaptation for behavior change support,” in Proc. ACM Workshop on Engendering Health with Recommender Systems, Boston, MA, USA, 2016, pp. 15–19.
|
[127] |
S. Rifai, P. Vincent, X. Muller, X. Glorot, and Y. Bengio, “Contractive auto-encoders: Explicit invariance during feature extraction,” in Proc. 28th Int. Conf. Machine Learning, Bellevue, USA, 2011, pp. 833–840.
|
[128] |
B. Sarwar, G. Karypis, J. Konstan, and J. Riedl, “Item-based collaborative filtering recommendation algorithms,” in Proc. 10th Int. Conf. World Wide Web, Hong Kong, China, 2001, pp. 285–295.
|
[129] |
H. Schäfer, S. Hors-Fraile, R. P. Karumur, A. C. Valdez, A. Said, H. Torkamaan, T. Ulmer, and C. Trattner, “Towards health (aware) recommender systems,” in Proc. 2017 Int. Conf. Digital Health, London, UK, 2017, pp. 157–161.
|
[130] |
S. Sedhain, A. K. Menon, S. Sanner, and L. X. Xie, “AutoRec: Autoencoders meet collaborative filtering,” in Proc. 24th Int. Conf. World Wide Web, Florence, Italy, 2015, pp. 111–112.
|
[131] |
M. S. Shang, X. Luo, Z. G. Liu, J. Chen, Y. Yuan, and M. C. Zhou, “Randomized latent factor model for high-dimensional and sparse matrices from industrial applications,” IEEE/CAA J. Autom. Sinica, vol. 6, no. 1, pp. 131–141, Jan. 2019. doi: 10.1109/JAS.2018.7511189
|
[132] |
D. Sharma, G. S. Aujla, and R. Bajaj, “Evolution from ancient medication to human-centered Healthcare 4.0: A review on health care recommender systems,” Int. J. Commun. Syst., 2019, DOI: 10.1002/dac.4058, to be published.
|
[133] |
X. Y. Shi, Q. He, X. Luo, Y. N. Bai, and M. S. Shang, “Large-scale and scalable latent factor analysis via distributed alternative stochastic gradient descent for recommender systems,” IEEE Trans. Big Data, 2020, DOI: 10.1109/TBDATA.2020.2973141, to be published.
|
[134] |
P. Siriaraya, K. Suzuki, and S. Nakajima, “Utilizing collaborative filtering to recommend opportunities for positive affect in daily life,” in Proc. 4th Int. Workshop on Health Recommender Systems Co-Located with the 13th ACM Conf. Recommender Systems, Copenhagen, Denmark, 2019, pp. 2–3.
|
[135] |
B. Y. Song, Z. D. Wang, and L. Zou, “An improved PSO algorithm for smooth path planning of mobile robots using continuous high-degree Bezier curve,” Appl. Soft Comput., vol. 100, Article No. 106960, Mar. 2021. doi: 10.1016/j.asoc.2020.106960
|
[136] |
B. Y. Song, Z. D. Wang, L. Zou, L. Xu, and F. E. Alsaadi, “A new approach to smooth global path planning of mobile robots with kinematic constraints,” Int. J. Mach. Learn. Cybern., vol. 10, no. 1, pp. 107–119, Jan. 2019. doi: 10.1007/s13042-017-0703-7
|
[137] |
B. Y. Song, Y. H. Xiao, and L. Xu, “Design of fuzzy PI controller for brushless DC motor based on PSO-GSA algorithm,” Syst. Sci. Control Eng., vol. 8, no. 1, pp. 67–77, Feb. 2020. doi: 10.1080/21642583.2020.1723144
|
[138] |
A. Starke, “RecSys challenges in achieving sustainable eating habits,” in Proc. 4th Int. Workshop on Health Recommender Systems Co-Located with the 13th ACM Conf. Recommender Systems, Copenhagen, Denmark, 2019, pp. 29–30.
|
[139] |
F. Strub, R. Gaudel, and J. Mary, “Hybrid recommender system based on autoencoders,” in Proc. 1st Workshop on Deep Learning for Recommender Systems, Boston, USA, 2016, pp. 11–16.
|
[140] |
J. N. Sun, W. Guo, D. C. Zhang, Y. X. Zhang, F. Regol, Y. C. Hu, H. F. Guo, R. M. Tang, H. Yuan, X. Q. He, and M. Coates, “A framework for recommending accurate and diverse items using Bayesian graph convolutional neural networks,” in Proc. 26th ACM SIGKDD Int. Conf. Knowledge Discovery & Data Mining, Virtual Event, USA, 2020, pp. 2030–2039.
|
[141] |
J. N. Sun, Y. X. Zhang, W. Guo, H. F. Guo, R. M. Tang, X. Q. He, C. Man, and M. Coates, “Neighbor interaction aware graph convolution networks for recommendation,” in Proc. 43rd Int. ACM SIGIR Conf. Research and Development in Information Retrieval, Virtual Event, China, 2020, pp. 1289–1298.
|
[142] |
Y. K. Tan, X. X. Xu, and Y. Liu, “Improved recurrent neural networks for session-based recommendations,” in Proc. 1st Workshop on Deep Learning for Recommender Systems, Boston, USA, 2016, pp. 17–22.
|
[143] |
N. D. Thanh, L. H. Son, and M. Ali, “Neutrosophic recommender system for medical diagnosis based on algebraic similarity measure and clustering,” in Proc. 2017 IEEE Int. Conf. Fuzzy Systems (FUZZ-IEEE), Naples, Italy, 2017, pp. 1–6.
|
[144] |
H. Torkamaan and J. Ziegler, “Multi-criteria rating-based preference elicitation in health recommender systems,” in Proc. 3rd Int. Workshop on Health Recommender Systems Co-Located with the 12th ACM Conf. Recommender Systems, Vancouver, Canada, 2018, pp. 18–23.
|
[145] |
M. A. Torkamani, M. Jhaveri, J. Mellen, M. Brown-Hayes, J. Chung, B. Pan, and H. Kardes, “Engagement scoring for care-gap intervention optimization,” in Proc. 3rd Int. Workshop on Health Recommender Systems Co-Located with the 12th ACM Conf. Recommender Systems, Vancouver, Canada, 2018, pp. 53–56.
|
[146] |
C. Trattner and D. Elsweiler, “An evaluation of recommendation algorithms for online recipe portals,” in Proc. 4th Int. Workshop on Health Recommender Systems Co-Located with the 13th ACM Conf. Recommender Systems, Copenhagen, Denmark, 2019, pp. 24–28.
|
[147] |
A. C. Valdez, M. Ziefle, K. Verbert, A. Felfernig, and A. Holzinger, “Recommender systems for health informatics: State-of-the-art and future perspectives,” Machine Learning for Health Informatics. New York, NY, USA: Springer, 2016, pp. 391–414.
|
[148] |
R. Van Meteren and M. Van Someren, “Using content-based filtering for recommendation,” in Proc. Machine Learning in the New Information Age: MLnet/ECML2000 Workshop, Barcelona, Spain, 2000, pp. 47–56.
|
[149] |
Y. Varatharajah, H. T. Chen, A. Trotter, and R. Iyer, “A Dynamic Human-in-the-loop Recommender System for Evidence-based Clinical Staging of COVID-19,” in Proc. 5th Int. Workshop on Health Recommender Systems Co-Located with 14th ACM Conf. Recommender Systems (HealthRecSys 2020), Rio de Janeiro, Brazil, 2020, pp. 21–22.
|
[150] |
P. Vincent, H. Larochelle, Y. Bengio, and P. A. Manzagol, “Extracting and composing robust features with denoising autoencoders,” in Proc. 25th Int. Conf. Machine learning, Helsinki, Finland, 2008, pp. 1096–1103.
|
[151] |
X. Wang, X. N. He, L. Q. Nie, and T. S. Chua, “Item silk road: Recommending items from information domains to social users,” in Proc. 40th Int. ACM SIGIR Conf. Research and Development in Information Retrieval, Tokyo, Japan, 2017, pp. 185–194.
|
[152] |
M. Wiesner and D. Pfeifer, “Health recommender systems: Concepts, requirements, technical basics and challenges,” Int. J. Environ. Res. Public Health, vol. 11, no. 3, pp. 2580–2607, Mar. 2014. doi: 10.3390/ijerph110302580
|
[153] |
S. Wu, W. C. Ren, C. C. Yu, G. Chen, D. X. Zhang, and J. B. Zhu, “Personal recommendation using deep recurrent neural networks in NetEase,” in Proc. 32nd IEEE Int. Conf. Data Engineering, Helsinki, Finland, 2016, pp. 1218–1229.
|
[154] |
Y. Wu, C. DuBois, A. X. Zheng, and M. Ester, “Collaborative denoising auto-encoders for top-n recommender systems,” in Proc. 9th ACM Int. Conf. Web Search and Data Mining, San Francisco, USA, 2016, pp. 153–162.
|
[155] |
D. Wu, X. Luo, M. S. Shang, Y. He, G. Y. Wang, and M. C. Zhou, “A deep latent factor model for high-dimensional and sparse matrices in recommender systems,” IEEE Trans. Syst. Man Cybern.: Syst., 2019, DOI: 10.1109/TSMC.2019.2931393, to be published.
|
[156] |
D. Wu, Q. He, X. Luo, M. S. Shang, Y. He, and G. Y. Wang, “A posterior-neighborhood-regularized latent factor model for highly accurate web service QoS prediction,” IEEE Trans. Serv. Comput., 2019, DOI: 10.1109/TSC.2019.2961895, to be published.
|
[157] |
B. Xu, J. J. Bu, C. Chen, and D. Cai, “An exploration of improving collaborative recommender systems via user-item subgroups,” in Proc. 21st Int. Conf. World Wide Web, Lyon, France, 2012, pp. 21–30.
|
[158] |
G. R. Xue, C. X. Lin, Q. Yang, W. S. Xi, H. J. Zeng, Y. Yu, and Z. Chen, “Scalable collaborative filtering using cluster-based smoothing,” in Proc. 28th Annu. Int. ACM SIGIR Conf. Research and Development in Information Retrieval, Salvador, Brazil, 2005, pp. 114–121.
|
[159] |
H. J. Xue, X. Y. Dai, J. B. Zhang, S. J. Huang, and J. J. Chen, “Deep matrix factorization models for recommender systems,” in Proc. 26th Int. Joint Conf. Artificial Intelligence, Melbourne, Australia, 2017, pp. 3203–3209.
|
[160] |
W. B. Yue, Z. D. Wang, B. Tian, A. Payne, and X. H. Liu, “A collaborative-filtering-based data collection strategy for Friedreich’s ataxia,” Cogn. Comput., vol. 12, no. 1, pp. 249–260, Jan. 2020. doi: 10.1007/s12559-019-09674-8
|
[161] |
W. B. Yue, Z. D. Wang, W. B. Liu, B. Tian, S. Lauria, and X. H. Liu, “An optimally weighted user- and item-based collaborative filtering approach to predicting baseline data for Friedreich’s ataxia patients,” Neurocomputing, vol. 419, pp. 287–294, Jan. 2021. doi: 10.1016/j.neucom.2020.08.031
|
[162] |
W. B. Yue, Z. D. Wang, B. Tian, M. Pook, and X. H. Liu, “A hybrid model- and memory-based collaborative filtering algorithm for baseline data prediction of Friedreich’s ataxia patients,” IEEE Trans. Ind. Inform., vol. 17, no. 2, pp. 1428–1437, Feb. 2021. doi: 10.1109/TII.2020.2984540
|
[163] |
N. Y. Zeng, Z. D. Wang, W. B. Liu, H. Zhang, K. Hone, and X. H. Liu, “A dynamic neighborhood-based switching particle swarm optimization algorithm,” IEEE Trans. Cybern., 2020, DOI: 10.1109/TCYB.2020.3029748, to be published.
|
[164] |
H. L. Zhan, H. N. Zhang, H. S. Chen, L. Shen, Y. Y. Lan, Z. Y. Ding, and D. W. Yin, “User-inspired posterior network for recommendation reason generation,” in Proc. 43rd Int. ACM SIGIR Conf. Research and Development in Information Retrieval, Virtual Event, China, 2020, pp. 1937–1940.
|
[165] |
J. F. Zhang, Q. H. Zhang, X. He, G. X. Sun, and D. H. Zhou, “Compound-fault diagnosis of rotating machinery: A fused imbalance learning method,” IEEE Trans. Control Syst. Technol., 2020, DOI: 10.1109/TCST.2020.3015514, to be published.
|
[166] |
L. Zhang, X. Chen, N. N. Guan, H. Liu, and J. Q. Li, “A hybrid interpolation weighted collaborative filtering method for anti-cancer drug response prediction,” Front. Pharmacol., vol. 9, Article No. 1017, Aug. 2018. doi: 10.3389/fphar.2018.01017
|
[167] |
S. Zhang, L. Yao, A. X. Sun, and Y. Tay, “Deep learning based recommender system: A survey and new perspectives,” ACM Computing Surveys, vol. 52, no. 1, Article No.: 5, 2019.
|
[168] |
H. D. Zhao, Z. M. Ding, and Y. Fu, “Multi-view clustering via deep matrix factorization,” in Proc. 31st AAAI Conf. Artificial Intelligence, San Francisco, USA, 2017, pp. 2921–2927.
|
[169] |
Z. Y. Zhao, Z. D. Wang, L. Zou, and J. Y. Guo, “Set-Membership filtering for time-varying complex networks with uniform quantisations over randomly delayed redundant channels,” Int. J. Syst. Sci., vol. 51, no. 16, pp. 3364–3377, Sep. 2020. doi: 10.1080/00207721.2020.1814898
|
[170] |
Z. B. Zheng, H. Ma, M. R. Lyu, and I. King, “QoS-aware web service recommendation by collaborative filtering,” IEEE Trans. Serv. Comput., vol. 4, no. 2, pp. 140–152, Apr.–Jun. 2011. doi: 10.1109/TSC.2010.52
|
[171] |
Y. Zheng, B. Mobasher, and R. Burke, “CSLIM: Contextual SLIM recommendation algorithms,” in Proc. 8th ACM Conf. Recommender Systems, Foster City, USA, 2014, pp. 301–304.
|
[172] |
L. Zheng, V. Noroozi, and P. S. Yu, “Joint deep modeling of users and items using reviews for recommendation,” in Proc. 10th ACM Int. Conf. Web Search and Data Mining Cambridge, UK, 2017, pp. 425–434.
|
[173] |
K. Zhou, S. H. Yang, and H. Y. Zha, “Functional matrix factorizations for cold-start recommendation,” in Proc. 34th Int. ACM SIGIR Conf. Research and Development in Information Retrieval, Beijing, China, 2011, pp. 315–324.
|
[174] |
L. Zou, Z. D. Wang, H. L. Dong, and Q. L. Han, “Moving horizon estimation with multirate measurements and correlated noises,” Int. J. Robust Nonlinear Control, vol. 30, no. 17, pp. 7429–7445, Nov. 2020. doi: 10.1002/rnc.5193
|
[175] |
L. Zou, Z. D. Wang, Q. L. Han, and D. H. Zhou, “Moving horizon estimation of networked nonlinear systems with random access protocol,” IEEE Trans. Syst. Man Cybern.: Syst., 2019, DOI: 10.1109/TSMC.2019.2918002, to be published.
|
[176] |
L. Zou, Z. D. Wang, Q. L. Han, and D. H. Zhou, “Full information estimation for time-varying systems subject to Round-Robin scheduling: A recursive filter approach,” IEEE Trans. Syst. Man Cybern.: Syst., 2020, DOI: 10.1109/TSMC.2019.2907620, to be published.
|
[177] |
L. Zou, Z. D. Wang, J. Hu, and D. H. Zhou, “Moving horizon estimation with unknown inputs under dynamic quantization effects,” IEEE Trans. Autom. Control, vol. 65, no. 12, pp. 5368–5375, Dec. 2020. doi: 10.1109/TAC.2020.2968975
|
[178] |
L. Zou, Z. D. Wang, Q. L. Han, and D. H. Zhou, “Moving horizon estimation for networked time-delay systems under Round-Robin protocol,” IEEE Trans. Autom. Control, vol. 64, no. 12, pp. 5191–5198, Dec. 2019. doi: 10.1109/TAC.2019.2910167
|
[179] |
L. Zou, Z. D. Wang, and D. H. Zhou, “Moving horizon estimation with non-uniform sampling under component-based dynamic event-triggered transmission,” Automatica, vol. 120, Article No. 109154, Oct. 2020. doi: 10.1016/j.automatica.2020.109154
|