A lattice conceptual clustering system and its application to browsing retrieval (original) (raw)
References
Anderson, J., & Matessa, M. (1992). Exploration of an incremental Bayesian algorithm for categorization. Machine Learning, 9:275–308. Google Scholar
Carpineto, C., & Romano, G. (1993a) GALOIS: An order-theoretic approach to conceptual clustering. Proceedings of the Tenth International Conference on Machine Learning (pp. 33–40), Amherst, MA: Morgan Kaufmann. Google Scholar
Carpineto, C., & Romano, G. (1993b). Adding background knowledge to a Galois lattice classification structure (Technical Report 5T02093). Rome, Italy: Fondazione Ugo Bordoni. Google Scholar
Carpineto, C., & Romano, G. (1994). Dynamically bounding browsable retrieval spaces: an application to Galois lattices. Proceedings of RIAO 94: Intelligent Multimedia Information Retrieval Systems and Management (pp. 520–533). New York, N.Y.: Jouve. Google Scholar
Crouch, D., Crouch, C., & Andreas, G. (1989). The use of cluster hierarchies in hypertext information retrieval. Proceedings of the ACM Hypertext '89 Conference (pp. 225–237). Pittsburgh, PA: ACM. Google Scholar
Cutting, D., Karger, D., Pedersen, J., & Tukey, J. (1992). Scatter/Gather: A cluster-based approach to browsing large document collections. Proceedings of the Fifteenth Annual International ACM SIGIR Conference on Research and Development in Information Retrieval (pp. 318–329). New York, N.Y.: ACM SIGIR Forum. Google Scholar
Davey, B., & Priestley, H. (1990). Introduction to Lattices and Order, Cambridge University Press, Cambridge, Great Britain. Google Scholar
Fisher, D. (1987). Knowledge acquisition via incremental conceptual clustering. Machine Learning, 2:139–172. Google Scholar
Frei, H., & Jauslin, J. (1983). Graphical presentation of information and services: a user oriented interface. Information Technology: Research and Development, 2:23–42. Google Scholar
Furnas, G. (1985). Experience with an adaptive indexing scheme. Proceedings of ACM CHI'85 Conference on Human Factors in Computings Systems (pp. 130–135). San Francisco, CA: ACM. Google Scholar
Furnas, G. (1986). Generalized fisheye views. Proceedings of ACM CHI'86 Conference on Human Factors in Computing Systems (pp. 16–23). Boston, MA: ACM. Google Scholar
Ganascia, J.-G. (1987). CHARADE: A rule system learning system. Proceedings of the Tenth International Conference on Artificial Intelligence (pp. 345–347). Milan, Italy: Morgan Kaufmann. Google Scholar
Ganter, B. (1988). Composition and decomposition of data in formal concept analysis. In H. Bock (Ed.), Classification and Related Methods of Data Analysis. North-Holland.
Gennari, J., Langley, P., & Fisher, D. (1989). Models of incremental concept formation. Artificial Intelligence, 40: 12–61. Google Scholar
Godin, R., Gecsei, J., & Pichet, C. (1989). Design of a browsing interface for information retrieval. Proceedings of the Twelfth Annual International ACM SIGIR Conference on Research and Development in Information Retrieval (pp. 32–39). Cambridge, MA: ACM SIGIR Forum. Google Scholar
Godin, R., Missaoui, R., & Aloui, H. (1991). Learning algorithms using a Galois lattice structure. Proceedings of the 1991 IEEE International Conference on Tools for AI (pp. 22–29). San Jose, CA: IEEE Computer Society Press. Google Scholar
Godin, R., Missaoui, R., & April, A. (1993). Experimental comparison of navigation in a Galois lattice with conventional information retrieval methods. International Journal of Man-machine Studies, 38:747–767. Google Scholar
Guénoche, A. (1990). Construction du treillis de Galois d'une relation binaire. Math\'matiques et Sciences Humaines, 109:41–53. Google Scholar
Hadzikadic, M., & Yun, D. (1989). Concept formation by incremental conceptual clustering. Proceedings of the Eleventh International Joint Conference on Artificial Intelligence (pp. 831–836). Detroit, MI: Morgan Kaufmann. Google Scholar
Hanson, S., & Bauer, M. (1989). Conceptual clustering, categorization, and polymorphy. Machine Learning, 3:343–372. Google Scholar
Hull, D. (1993). Using statistical testing in the evaluation of retrieval experiments. Proceedings of the Sixteenth Annual International ACM SIGIR Conference on Research and Development in Information Retrieval (pp. 329–338). Pittsburgh, PA: ACM SIGIR Forum, 1993. Google Scholar
Lebowitz, M. (1986). Concept learning in a rich input domain: generalization-based memory. In R.S. Michalski, J.G. Carbonell, & T.M. Mitchell (Eds.), Machine Learning: An Artificial Intelligence Approach (Vol. 2). Morgan Kaufmann, San Mateo, CA. Google Scholar
Levinson, R. (1984). A self-organizing retrieval system for graphs. Proceedings of the Fourth National Conference on Artificial Intelligence (pp. 203–206). Austin, TX: Morgan Kaufmann. Google Scholar
Maarek, Y., Berry, D., & Kaiser, G. (1991). An information retrieval approach for automatically constructing software libraries. IEEE Transactions on Software Engineering, 17(8):800–813. Google Scholar
Marchionini, G., & Shneiderman, B. (1988). Finding facts vs. browsing knowledge in hypertext systems. IEEE Computer, 21:70–80. Google Scholar
Martin, J., & Billman, D. (1994). Acquiring and combining overlapping concepts. Machine Learning, 16(1–2):121–155. Google Scholar
McKusick, K., & Langley, P. (1991). Constraints on tree structure in concept formation. Proceedings of the Thirteenth International Joint Conference on Artificial Intelligence (pp. 810–816). Sidney, Australia: Morgan Kaufmann. Google Scholar
Michalski, R.S. (1983). A theory and methodology of inductive learning. Artificial Intelligence, 20:111–161. Google Scholar
Michalski, R.S., Stepp, R. (1983). Learning from observation: conceptual clustering. In R.S. Michalski, J.G. Carbonell, & T.M. Mitchell (Eds.), Machine Learning: An Artificial Intelligence Approach (Vol. 1). Palo Alto, CA: Tioga Publishing. Google Scholar
Mitchell, T.M. (1982). Generalization as search. Artificial Intelligence, 18:203–226. Google Scholar
Nielsen, J. (1990). Hypertext & Hypermedia, Academic Press, San Diego, CA. Google Scholar
Oosthuizen, G., & McGregor, D. (1988). Induction through knowledge base normalisation. In Proceedings of the Eight European Conference on Artificial Intelligence (pp. 396–401). Munich, Germany: Pitman. Google Scholar
Pedersen, G. (1993). A browser for bibliographic information retrieval based on an application of lattice theory. Proceedings of the Sixteenth Annual International ACM SIGIR Conference on Research and Development in Information Retrieval (pp. 270–279). Pittsburgh, PA.
Piatetsky-Shapiro, G.,& Frawley, W. (Eds.) (1992). Knowledge Discovery in Databases, AAAI Press, Palo Alto, CA. Google Scholar
Salton, G., & McGill, M. (1983). Introduction to Modern Information Retrieval, McGraw Hill, New York, N.Y. Google Scholar
Shneiderman, B. (1987). Designing the User Interface: Strategies for Effective Human-Computer Interaction, Addison Wesley, Reading, MA. Google Scholar
Stepp, R., & Michalski, R.S. (1986). Conceptual clustering: inventing goal-oriented classifications of structured objects. In R.S. Michalski, J.G. Carbonell, & T.M. Mitchell (Eds.), Machine Learning: An Artificial Intelligence Approach (Vol. 2). Morgan Kaufmann, San Mateo, CA. Google Scholar
Tague-Sutcliffe, J. (1992). The pragmatics of information retrieval experimentation, revisited. Information Processing & Management, 28(4):467–490. Google Scholar
Thompson, K., Langley, P., & Iba, W. (1991). Using background knowledge in concept formation. Proceedings of the Eight International Workshop on Machine Learning (pp. 554–558). Evanston, IL: Morgan Kaufmann. Google Scholar
Thompson, R., & Croft, B. (1989). Support for browsing in an intelligent text retrieval system: International Journal of Man-machine Studies, 30:639–668. Google Scholar
van Rijsbergen, J., & Croft, B. (1975). Document clustering: An evaluation of some experiments with the Cranfield 1400 collection. Information Processing & Management, 11:171–182. Google Scholar
Wille, R. (1984). Line diagrams of hierarchical concept systems. International Classification, 2:77–86. Google Scholar
Willet, P. (1988). Recent trends in hierarchic document clustering: A critical review. Information Processing & Management, 24(5):577–597. Google Scholar
Yu, C., Meng, W., & Park, S. (1989). A framework for effective retrieval. ACM Transactions on Database Systems, 14(2):147–167. Google Scholar