ISEE: A heterogeneous information system for event explainability in smart connected environments
Tài liệu tham khảo
Thoma, 2012, On IoT-services: Survey, classification and enterprise integration, 257
Wang, 2007, Eventory–an event based media repository, 95
Karaman, 2017, Event detection from social media: 5W1H analysis on big data, 1
Mansour, 2019
Feld, 2011, The automotive ontology: Managing knowledge inside the vehicle and sharing it between cars, 79
N. Guennouni, C. Sallaberry, S. Laborie, R. Chbeir, A novel framework for event interpretation in a heterogeneous information system, in: Proceedings of the 12th International Conference on Management of Digital EcoSystems, 2020, pp. 140–148.
Hamborg, 2019, Giveme5W1H: A universal system for extracting main events from news articles, vol. 2554, 35
Petasis, 2011, Ontology population and enrichment: State of the art, vol. 6050, 134
Lubani, 2019, Ontology population: Approaches and design aspects, J. Inf. Sci., 45, 10.1177/0165551518801819
Svetashova, 2020, Ontology-enhanced machine learning: A bosch use case of welding quality monitoring, vol. 12507, 531
Öztürk, 2020, OPPCAT: Ontology population from tabular data, J. Inf. Sci., 46, 10.1177/0165551519827892
Corcoglioniti, 2016, Frame-based ontology population with PIKES, IEEE Trans. Knowl. Data Eng., 28, 3261, 10.1109/TKDE.2016.2602206
Kordjamshidi, 2015, Global machine learning for spatial ontology population, J. Web Semant., 30, 3, 10.1016/j.websem.2014.06.001
Ayadi, 2019, Ontology population with deep learning-based NLP: a case study on the biomolecular network ontology, vol. 159, 572
Liu, 2017, Device-oriented automatic semantic annotation in IoT, J. Sensors, 2017, 9589064:1, 10.1155/2017/9589064
Otero-Cerdeira, 2015, Ontology matching: A literature review, Expert Syst. Appl., 42, 949, 10.1016/j.eswa.2014.08.032
Euzenat, 2007
Poveda-Villalón, 2018, Extending the SAREF ontology for building devices and topology, vol. 2159, 16
Hong, 2017, High-dimensional time series clustering via cross-predictability, 642
H. Wu, C. Chelmis, V. Sorathia, Y. Zhang, O.P. Patri, V.K. Prasanna, Enriching employee ontology for enterprises with knowledge discovery from social networks, in: Proceedings of the 2013 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining, 2013, pp. 1315–1322.
David, 2011, The alignment API 4.0, Semantic Web, 2, 3, 10.3233/SW-2011-0028
Faria, 2014, Agreementmakerlight 2.0: Towards efficient large-scale ontology matching, vol. 1272, 457
Jain, 2010, Ontology alignment for linked open data, 402
Nasridinov, 2013, Event detection in wireless sensor networks: Survey and challenges, vol. 274, 585
Borzin, 2007, Surveillance event interpretation using generalized stochastic Petri nets, 4
Azough, 2008, Description and discovery of complex events in video surveillance, 27
Cavaliere, 2019, A human-like description of scene events for a proper UAV-based video content analysis, Knowl. Based Syst., 178, 10.1016/j.knosys.2019.04.026
Whitehouse, 2006, Semantic streams: A framework for composable semantic interpretation of sensor data, vol. 3868, 5
Wun, 2007, A system for semantic data fusion in sensor networks, 75
Tan, 2014, Interpreting the public sentiment variations on Twitter, IEEE Trans. Knowl. Data Eng., 26
Thomas, 2015, Event based sentence level interpretation of sentiment variation in twitter data, 1
Ananiadou, 2010, Event interpretation: A step towards event-centred text mining, 103
Jin, 2017, News feature extraction for events on social network platforms, 69
Shao, 2017, Answering who/when, what, how, why through constructing data graph information graph, knowledge graph and wisdom graph, 1
Hamborg, 2018, Extraction of main event descriptors from news articles by answering the journalistic five W and one H questions, 339