Abstract
Understanding how members of a research team cooperate and identifying possible synergies may be crucial for organizational success. Using data-driven approaches, recommender systems may be able to find promising collaborations from publication data. Yet, the outcome of scientific endeavors (i.e. publications) are only produced sparingly in comparison to other forms of data, such as online purchases. In order to facilitate this data in augmenting research cooperation, we suggest to combine data-driven approaches such as text-mining, topic modeling and machine learning with interactive system components in an interactive visual recommendation system. The system leads to an augmented perspective on research cooperation in a network: Interactive visualization analyzes, which cooperation could be intensified due to topical overlap. This allows to reap the benefit of both worlds. First, utilizing the computational power to analyze large bodies of text and, second, utilizing the creative capacity of users to identify suitable collaborations, where machine-learning algorithms may fall short.
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References
Adomavicius G, Tuzhilin A (2005) Toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions. IEEE Trans Knowl Data Eng 17(6):734–749
Bakalov F, Meurs MJ, König-Ries B, Sateli B, Witte R, Butler G, Tsang A (2013) An approach to controlling user models and personalization effects in recommender systems. In: Proceedings of the 2013 int. conf. on Intelligent user interfaces, ACM, pp 49–56
Bennett PN, Kelly D, White RW, Zhang Y (2015) Overview of the special issue on contextual search and recommendation. ACM Trans Inf Syst (TOIS) 33(1):1e
Borràs J, Moreno A, Valls A (2014) Intelligent tourism recommender systems: a survey. Expert Syst Appl 41(16):7370–7389
Bruns S, Calero Valdez A, Greven C, Ziefle M, Schroeder U (2015) What should I read next? a personalized visual publication recommender system. Human Interface and the management of information. Information and knowledge in context. Springer, Berlin, pp 89–100
Burke R (2002) Hybrid recommender systems: survey and experiments. User Model User Adapt Interact 12(4):331–370
Calero Valdez A, Schaar AK, Vaegs T, Thiele T, Kowalski T, Aghassi S, Jansen U, Schulz W, Schuh G, Jeschke S, et al (2014) Scientific cooperation engineering making interdisciplinary knowledge available within research facilities and to external stakeholders. In: Proceedings of the 10th international conference on webometrics, informetrics, and scientometrics (WIS): 15th COLLNET Meeting, Ilmenau, Germany, 3–5 September 2014, pp 77–86
Calero Valdez A, Schaar AK, Ziefle M, Holzinger A, Jeschke S, Brecher C (2014b) Using mixed node publication network graphs for analyzing success in interdisciplinary teams. In: Automation, Communication and Cybernetics in Science and Engineering 2013/2014, Springer International Publishing, pp 737–749
Calero Valdez A, Brauner P, Schaar AK, Holzinger A, Ziefle M (2015) Reducing complexity with simplicity-usability methods for industry 4.0. In: Proceedings 19th triennial congress of the IEA, vol 9, p 14
Calero Valdez A, Bruns S, Greven C, Schroeder U, Ziefle M (2015) What do my colleagues know? dealing with cognitive complexity in organizations through visualizations. In: Learning and collaboration technologies, Springer, pp 449–459
Calero Valdez A, Schaar AK, Bender J, Aghassi S, Schuh G, Ziefle M (2016) Social media applications for knowledge exchange in organizations. Innovations in knowledge management. Springer, Berlin, pp 147–176
Calero Valdez A, Ziefle M, Verbert K (2016) HCI for recommender systems: the past, the present and the future. In: International Conference on Recommender Systems, RecSys’16 Boston, USA, ACM
Calero Valdez A, Ziefle M, Verbert K, Felfernig A, Holzinger A (2016) Recommender systems for health informatics: State-of-the-art and future perspectives. In: Holzinger, A (ed) Machine Learning for Health Informatics, Lecture Notes in Computer Science LNCS 9605, Springer, pp 391–414
Conforti R, de Leoni M, La Rosa M, van der Aalst WM, ter Hofstede AH (2015) A recommendation system for predicting risks across multiple business process instances. Decis Support Syst 69:1–19
De Clercq M, Stock M, De Baets B, Waegeman W (2016) Data-driven recipe completion using machine learning methods. Trends Food Sci Technol 49:1–13
Domingos P (2012) A few useful things to know about machine learning. Commun ACM 55(10):78–87
Drachsler H, Verbert K, Santos OC, Manouselis N (2015) Panorama of recommender systems to support learning. In: Recommender systems handbook, Springer, pp 421–451
Feldman R, Sanger J (2007) The text mining handbook: advanced approaches in analyzing unstructured data. Cambridge University Press, Cambridge
Gavalas D, Konstantopoulos C, Mastakas K, Pantziou G (2014) Mobile recommender systems in tourism. J Netw Comput Appl 39:319–333
Godoy D, Corbellini A (2015) Folksonomy-based recommender systems: a state-of-the-art review. Int J Intell Syst 31(4):314–346
Goldberg D, Nichols D, Oki BM, Terry D (1992) Using collaborative filtering to weave an information tapestry. Commun ACM 35(12):61–70
Gretarsson B, O’Donovan J, Bostandjiev S, Hall C, Höllerer T (2010) Smallworlds: visualizing social recommendations. In: Computer Graphics Forum, Wiley Online Library, vol 29, pp 833–842
Hamann T, Schaar AK, Calero Valdez A, Ziefle M (2016) Strategic knowledge management for interdisciplinary teams-overcoming barriers of interdisciplinary work via an online portal approach. In: International conference on human interface and the management of information. Springer International Publishing, pp 402–413
Hastie T, Tibshirani R, Friedman J (2009) The elements of statistical learning: data mining, inference and prediction, 2nd edn. Springer, http://www-stat.stanford.edu/~tibs/ElemStatLearn/
He C, Parra D, Verbert K (2016) Interactive recommender systems: a survey of the state of the art and future research challenges and opportunities. Expert Syst Appl 56:9–27
Hijikata Y, Kai Y, Nishida S (2012) The relation between user intervention and user satisfaction for information recommendation. In: Proceedings of the 27th annual acm symposium on applied computing. ACM, New York, NY, USA, SAC ’12, pp 2002–2007. doi:10.1145/2245276.2232109
Holzinger A (2014) Trends in interactive knowledge discovery for personalized medicine: cognitive science meets machine learning. IEEE Intell Inform Bull 15(1):6–14
Holzinger A (2016) Interactive machine learning for health informatics: when do we need the human-in-the-loop? Brain Inf 3(2):119–131. doi:10.1007/s40708-016-0042-6
Karni Z, Shapira L (2013) Visualization and exploration for recommender systems in enterprise organization. In: IS&T/SPIE electronic imaging. International Society for Optics and Photonics, p 86640E
Klerkx J, Verbert K, Duval E (2014) Enhancing learning with visualization techniques. In: Handbook of research on educational communications and technology, Springer, pp 791–807
Knijnenburg BP, Reijmer NJ, Willemsen MC (2011) Each to his own: how different users call for different interaction methods in recommender systems. In: Proc. of the Fifth ACM Conf. on recommender systems, ACM, New York, NY, USA, RecSys ’11, pp 141–148. doi:10.1145/2043932.2043960
Konstan JA, Riedl J (2012) Recommender systems: from algorithms to user experience. User Model User Adapt Interact 22(1–2):101–123
Manouselis N, Drachsler H, Verbert K, Santos OC (2014) Recommender systems for technology enhanced learning: research trends and applications. Springer Science & Business Media
McNee SM, Riedl J, Konstan JA (2006) Being accurate is not enough: how accuracy metrics have hurt recommender systems. In: CHI’06 extended abstracts on Human factors in computing systems, ACM, pp 1097–1101
Miner G (2012) Practical text mining and statistical analysis for non-structured text data applications. Academic Press, Amsterdam
Mutlu B, Veas E, Trattner C, Sabol V (2015) Vizrec: a two-stage recommender system for personalized visualizations. In: Proceedings of the 20th international conference on intelligent user interfaces companion, ACM, pp 49–52
O’Donovan J, Smyth B, Gretarsson B, Bostandjiev S, Höllerer T (2008) Peerchooser: visual interactive recommendation. In: Proceedings of the SIGCHI conference on human factors in computing systems, ACM, pp 1085–1088
Park DH, Kim HK, Choi IY, Kim JK (2012) A literature review and classification of recommender systems research. Expert Syst Appl 39(11):10059–10072
Parra D, Brusilovsky P (2015) User-controllable personalization: a case study with setfusion. Int J Hum Comput Stud 78:43–67
Picard RW, Papert S, Bender W, Blumberg B, Breazeal C, Cavallo D, Machover T, Resnick M, Roy D, Strohecker C (2004) Affective learning—a manifesto. BT Technol J 22(4):253–269
Pu P, Chen L, Hu R (2012) Evaluating recommender systems from the user’s perspective: survey of the state of the art. User Model User Adapt Interact 22(4–5):317–355
Resnick P, Varian HR (1997) Recommender systems. Commun ACM 40(3):56–58
Russell SJ, Norvig P, Canny JF, Malik JM, Edwards DD (2003) Artificial intelligence: a modern approach, vol 2. Upper Saddle River, Prentice hall
Rutkin A (2016) Anything you can do. New Sci 229(3065):20–21
Sedlmair M, Meyer M, Munzner T (2012) Design study methodology: reflections from the trenches and the stacks. IEEE Trans Vis Comput Gr 18(12):2431–2440
Stavrianou A, Brun C (2015) Expert recommendations based on opinion mining of user-generated product reviews. Comput Intell 31(1):165–183
Thiele T, Jooß C, Richert A, Jeschke S (2015) Terminology based visualization of interfaces in interdisciplinary research networks. In: 19th Triennial Congress of the IEA
Thiele T, Sommer T, Schröder S, Richert A, Jeschke S (2016) Human-in-the-loop processes as enabler for data analytics in digitalized organizations. In: Mensch und Computer 2016—Workshopbeiträge, MCI Digital Library / Gesellschaft für Informatik e.V
Thiele T, Sommer T, Stiehm S, Richert A, Jeschke S (2016) Exploring research networks with data science: a data-driven microservice architecture for synergy detection. In: Proceedings of the 4th international conference on future internet of things and cloud workshops, Vienna, Austria, 22-24 August 2016, pp 246–251
Tinghuai M, Jinjuan Z, Meili T, Yuan T, Abdullah AD, Mznah AR, Sungyoung L (2015) Social network and tag sources based augmenting collaborative recommender system. IEICE Trans Inf Syst 98(4):902–910
Verbert K, Parra D, Brusilovsky P, Duval E (2013) Visualizing recommendations to support exploration, transparency and controllability. In: Proceedings of the 2013 international conference on intelligent user interfaces, ACM, pp 351–362
Verbert K, Parra D, Brusilovsky P (2016) Agents vs. users: visual recommendation of research talks with multiple dimension of relevance. ACM Trans Interact Intell Syst 6(2):11
Wang C, Blei DM (2011) Collaborative topic modeling for recommending scientific articles. In: Proceedings of the 17th ACM SIGKDD international conference on knowledge discovery and data mining, ACM, New York, NY, USA, KDD ’11, pp 448–456. doi:10.1145/2020408.2020480
Xiong H, Tan PN, Kumar V (2003) Mining strong affinity association patterns in data sets with skewed support distribution. In: Data mining, 2003. ICDM 2003. Third IEEE International Conference on, IEEE, pp 387–394
Yang X, Guo Y, Liu Y, Steck H (2014) A survey of collaborative filtering based social recommender systems. Comput Commun 41:1–10
Yazdi MA, Calero Valdez A, Lichtschlag L, Ziefle M, Borchers J (2016) Visualizing opportunities of collaboration in large research organizations. In: International conference on HCI in Business, Government and Organizations. Springer International Publishing, pp 350–361
Acknowledgements
The authors thank the German Research Council DFG for the friendly support of the research in the excellence cluster “Integrative Production Technology in High Wage Countries”. We also thank the reviewers for their constructive feedback on a previous version of this article.
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Funded by Deutsche Forschungsgemeinschaft under: DFG EXC-128.
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Thiele, T., Valdez, A.C., Stiehm, S. et al. Augmenting research cooperation in production engineering with data analytics. Prod. Eng. Res. Devel. 11, 213–220 (2017). https://doi.org/10.1007/s11740-017-0715-x
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DOI: https://doi.org/10.1007/s11740-017-0715-x