- 1 Agmon, N., and Ahituv, N. Assessing Data Reliability in an Information Systems. J. of Manage. Info. Syst. 4, 2 (1987), pp. 34-44. Google ScholarDigital Library
- 2 Angeles, P.A. Dictionary of Philosophy. Harper Perennial, NewYork, 1981.Google Scholar
- 3 Anthony, R.N., and Reece,J.S. Accounting: Text and Cases. Richard D. Irwin, Homewood, Ill. 1979.Google Scholar
- 4 Ballou, D.P., and Pazer, H.L. Modeling data and process quality in multi-input, multi-output information systems. Manage. Sci. 31, 2 (1985), pp. 150-162.Google ScholarDigital Library
- 5 Brodie, M.L. Data quality in information systems, lnfo. Manage. (1980), pp. 245-258.Google Scholar
- 6 Bunge, M. Ontology I: The furniture of the world. Treaties on Basic Philosophy, Vol. 3-4. Reidel Publishing, Boston, Mass. 1977, 1979.Google ScholarCross Ref
- 7 Ciborra, C., Migliarese, P,. and Romano, P.A. Methodological inquiry of organizational noise in sociotechnical systems. Human Relations 37, 80 (1984), pp. 565-588.Google ScholarCross Ref
- 8 Elmasri, R., and Navathe, S. Fundamentals of Database Systems. Benjamin/Cummings, Reading, Mass., 1994. Google ScholarDigital Library
- 9 Feltham, G. The value of information. Account. Rev. 43, 4 (1968), pp. 684-696.Google Scholar
- 10 Firth, C.P., and Wang, R.Y. Data Quality Systems: Evaluation and Implementation. Cambridge Market Intelligence, London. 1996.Google Scholar
- 11 Hansen, J. V. Audit considerations in distributed processing systems. Commun. ACM 26, 5 (1983), pp. 562-569. Google ScholarDigital Library
- 12 Kent, W. Data and Reality. North Holland, NewYork. 1978.Google Scholar
- 13 Kriebel, C.H. Evaluating the quality of information systems. Design and Implementation of Computer Based Inforraation Systems. N. Szysperski and E. Grochla, Ed. Sijthtoff & Noordhoff, Germantown. 1979.Google Scholar
- 14 Land, F. The Information Systems Domain. Information Systems Research --Issues, Methods and Practical Guidelines. R. Galliers, Ed. Blackwell Scientific Publications, Oxford, England. 1992.Google Scholar
- 15 Marschak, J., and Miyasawa, K. Economic comparability of information systems. Int. Econ. Rev. 9, 2 (1968), pp. 137-174.Google ScholarCross Ref
- 16 Marschak, J., and Radner, R. Economic Theory of Teams. Yale University Press, New Haven, Conn. 1972.Google Scholar
- 17 Shannon, C.E., and Weaver, W. The Mathematical Theory of Communication. University of Illinois Press, Urbana, Ill. 1949. Google ScholarDigital Library
- 18 Stamper, R. Critical Issues in Information Systems Research. RJ. Boland and R.A. Hirschheim, Ed. John Wiley, New York, 1987. Google ScholarDigital Library
- 19 Sterling, R.R. Toward a Science of Accounting. Scholars Book, Houston, Tex. 1979.Google Scholar
- 20 Wand, Y., and Weber, R. On the deep structure of information systems.J. Info. Syst. (1995), pp. 203-223.Google ScholarCross Ref
- 21 Wand, Y., and Weber, R. On the ontological expressiveness of information systems analysis and design grammars. J. lnfo. Syst. 3, 3 (1993), pp. 21%237.Google Scholar
- 22 Wand, Y., and Weber, R. An Ontological Model of an Information System./EEE Trans. Soft. Eng. 16, 11 (1990). pp. 1282-1292. Google ScholarDigital Library
- 23 Wang, R.Y., Kon, H.B., and Madnick, S.E. Data quality requirements analysis and modeling. In Proceedings of the the 9th International Conference on Data Engineering. (Vienna, Austria, 1993), pp. 670-677. 1993 Google ScholarDigital Library
- 24 Wang, R.Y., Reddy, M. P., and Kon, H.B. Toward quality data: An attribute-based approach. Decision Support Syst. (1995) pp. 349-372. Google ScholarDigital Library
- 25 Wang, R.Y., Storey, V.C., and Firth, C.P. A framework for analysis of data quality research. /EEE Trans. on Knowl. Data Eng. 7, 4 (1995), pp. 623-640. Google ScholarDigital Library
Index Terms
- Anchoring data quality dimensions in ontological foundations
Recommendations
Exploitation of ontological approaches in Big Data: A State of the Art
ICIST '20: Proceedings of the 10th International Conference on Information Systems and TechnologiesThe emergence of web technologies is generating a data deluge called Big Data. All this data is in fact a gold mine to be exploited. However, we are confronted with huge volumes of heterogeneous data (various formats) and varied data (various sources) ...
Ontological engineering in data warehousing
APWeb'06: Proceedings of the 8th Asia-Pacific Web conference on Frontiers of WWW Research and DevelopmentIn our previous work, we proposed the ontology-based integration of data warehousing to make existing data warehouse system more user-friendly, adaptive and automatic. This paper further outlines a high-level picture of the ontological engineering in ...
Comments