the objects to be classified, and extracting features
from these data. Then, a CO is initially developed
upon the knowledge base extracted from ontological
data such as corpuses, experts, databases and domain
ontologies. After that, data-driven evaluation is
proposed to evaluate CO and to guide the further
improvement and promotion of the ontology. Data
acquisition, data exploitation, ontology evaluation
and mechanism for ontology promotion are
addressed in
Spirals. Especially, not only in the
phase of learning, but also in the ontology evaluation,
data are made full use of, aiming at enhancing the
efficiency of the ontology development and the
performances of OBC.
OntoStar is developed under the guidance of
Spirals. The OBC system for space object named
Clairvoyant is built upon OntoStar. Experiments
conducted on the dataset of space objects RSODS
show that Clairvoyant is competitive against
baseline classifiers, in terms of
common indexes of
classification and robustness with respect to missing
an important feature. The results also show that
Spirals can further improve the performances of
OBC. One of the main advantages of OBC,
integrating domain knowledge to build the initial CO,
is also OBC’s main disadvantage, because manual
work is required.
Spirals is still in its exploration
and needs further improvements. In the following
step,
Spirals will be extended and applied to develop
more COs to further test its effectiveness. It will also
be further studied for the optimization of its
activities, including expanding the sources and types
of MLK, further investigation of the data-driven
evaluation and promotion of CO.
ACKNOWLEDGMENTS
This work is framed within the National Natural
Science Foundation of China (No. 71371184).
REFERENCES
Belgiu, M., Tomljenovic, I., Lampoltshammer, T. J.,
Blaschke, T. & Höfle, B. 2014. Ontology-based
classification of building types detected from airborne
laser scanning data. Remote Sensing, 6, 1347-1366.
Brank, J., Grobelnik, M. & Mladenic, D. A survey of
ontology evaluation techniques. Proceedings of the
conference on data mining and data warehouses
(SigKDD 2005), 2005. 166-170.
Breiman, L. 2001. Random Forests. Machine Learning, 45,
5-32.
Brewster, C., Alani, H., Dasmahapatra, S. & Wilks, Y.
Data driven ontology evaluation. Proceedings of Int.
Conf. on Language Resources and Evaluation, 2004
Lisbon.
Casellas, N. 2011. Methodologies, Tools and Languages
for Ontology Design, Springer Netherlands.
Cohen, W. W. Fast effective rule induction. Proceedings
of the twelfth international conference on machine
learning, 1995. 115-123.
Cox, A. P., Nebelecky, C. K., Rudnicki, R., Tagliaferri, W.
A., Crassidis, J. L. & Smith, B. 2016. The Space
Object Ontology. Fusion 2016. Heidelberg, Germany:
IEEExplore.
Dellschaft, K. & Staab, S. Strategies for the Evaluation of
Ontology Learning. Conference on Ontology
Learning and Population: Bridging the Gap Between
Text and Knowledge, 2010. S256.
Di Beneditto, M. E. M. & De Barros, L. N. 2004. Using
concept hierarchies in knowledge discovery. Advances
in Artificial Intelligence–SBIA 2004. Springer.
Erb, D. R. J. 1995. The Backpropagation Neural Network
— A Bayesian Classifier. Clinical Pharmacokinetics,
29, 69-79.
Fürnkranz, J. & Kliegr, T. A Brief Overview of Rule
Learning. RuleML 2015: Rule Technologies:
Foundations, Tools, and Applications, 2015. 54-69.
Friedman, N., Dan, G. & Goldszmidt, M. 1997. Bayesian
Network Classifiers. Machine Learning, 29, 131-163.
Fruh, C., Jah, M., Valdez, E., Kervin, P. & Kelecy, T.
2013. Taxonomy and classification scheme for
artificial space objects. Kirtland AFB,NM,87117: Air
Force Research Laboratory (AFRL),Space Vehicles
Directorate.
Gómez-Romero, J., Serrano, M. A., García, J., Molina, J.
M. & Rogova, G. 2015. Context-based multi-level
information fusion for harbor surveillance.
Information Fusion, 21, 173-186.
Godfray, H. 2007. Linnaeus in the information age. Nature,
446, 259-260.
Haghighi, P. D., Burstein, F., Zaslavsky, A. & Arbon, P.
2013. Development and evaluation of ontology for
intelligent decision support in medical emergency
management for mass gatherings. Decision Support
Systems, 54, 1192-1204.
Han, J., Kamber, M. & Pei, J. 2011. Data mining:
concepts and techniques: concepts and techniques
,
Elsevier.
Han, Y., Sun, H., Feng, J. & Li, L. 2014. Analysis of the
optical scattering characteristics of different types of
space targets. Measurement Science and Technology,
25, 075203.
Hastings, J., Magka, D., Batchelor, C. R., Duan, L.,
Stevens, R., Ennis, M. & Steinbeck, C. 2012.
Structure-based classification and ontology in
chemistry. J. Cheminformatics, 4, 8.
Henderson, L. S. 2014. Modeling, estimation, and analysis
of unresolved space object tracking and identification.
Doctor Doctoral, The University of Texas at Arlington.
Hloman, H. & Stacey, D. A. 2014. Multiple Dimensions to
Data-Driven Ontology Evaluation. Knowledge