chapter 6 bibliography -...

29
243 CHAPTER 6 BIBLIOGRAPHY 1. A Transactional Approach to Parallel Data Warehouse Maintenance by Bin Liu,Songting Chen, and Elke A. Rundensteiner. Worcester Polytechnicque institute.2002. 2. A Benchmark Comparison of Maintenance Policies in a Data Warehouse Environment, Henrik Engstr, Gionata Gelati, Brian Lings. 3. A definition of data warehousing by Michael Read of Technology Evaluation. http://www.intranetjournal.com/features/datawarehousing.html 4. A Transactional Approach to Parallel Data Warehouse Maintenance by Bin Liu, Songting Chen, and Elke A. Rundensteiner. Worcester Polytechnic institute.2002 5. A conceptual model for temporal data warehouses and its transformation to the ER and the object relational models Data & Knowledge Engineering, Volume 64, Issue 1, January 2008, Pages 101-133,E. Malinowski, E. Zimányi 6. A definition of data warehousing by Michael Read of Technology Evaluation http://www.intranetjournal.com/features/datawarehousing.html 7. A UML 2.0 profile to define security requirements for Data Warehouses, Computer Standards & Interfaces, Volume 31, Issue 5, September 2009, Pages 969-983, Juan Trujillo, Emilio Soler, Eduardo Fernández- Medina, Mario Piattini 8. A user-centered design for a spatial data warehouse for data exploration in environmental research, Ecological Informatics, Volume 3, Issues 4- 5, October 2008, Pages 273-285, Michael McGuire, Aryya Gangopadhyay, Anita Komlodi, Christopher Swan

Upload: others

Post on 13-Mar-2020

14 views

Category:

Documents


0 download

TRANSCRIPT

243

CHAPTER – 6

BIBLIOGRAPHY

1. A Transactional Approach to Parallel Data Warehouse Maintenance by

Bin Liu,Songting Chen, and Elke A. Rundensteiner. Worcester

Polytechnicque institute.2002.

2. A Benchmark Comparison of Maintenance Policies in a Data

Warehouse Environment, Henrik Engstr, Gionata Gelati, Brian Lings.

3. A definition of data warehousing by Michael Read of Technology

Evaluation. http://www.intranetjournal.com/features/datawarehousing.html

4. A Transactional Approach to Parallel Data Warehouse Maintenance

by Bin Liu, Songting Chen, and Elke A. Rundensteiner. Worcester

Polytechnic institute.2002

5. A conceptual model for temporal data warehouses and its transformation to

the ER and the object relational models Data & Knowledge

Engineering, Volume 64, Issue 1, January 2008, Pages 101-133,E.

Malinowski, E. Zimányi

6. A definition of data warehousing by Michael Read of Technology

Evaluation http://www.intranetjournal.com/features/datawarehousing.html

7. A UML 2.0 profile to define security requirements for Data Warehouses,

Computer Standards & Interfaces, Volume 31, Issue 5, September

2009, Pages 969-983, Juan Trujillo, Emilio Soler, Eduardo Fernández-

Medina, Mario Piattini

8. A user-centered design for a spatial data warehouse for data exploration in

environmental research, Ecological Informatics, Volume 3, Issues 4-

5, October 2008, Pages 273-285, Michael McGuire, Aryya Gangopadhyay,

Anita Komlodi, Christopher Swan

244

9. A view can be materialized by storing the tuples by Ashish Gupta in

Bulletin of the Technical Committee on Data Engineering June,1995

Vol.18 No.2 IEEE Computer Society

10. Adamson, C. and Venerable, M. Data Warehouse Design Solutions 1st

edition, John Wiley and Sons, New York, 1998.

11. Agosta, L. (2004, November). Data warehousing lessons learned: A time of

growth for data warehousing. DM Review Magazine. Retrieved on

1/17/2005, from

http://www.dmreview.com/article_sub.cfm?articleId=1012461

12. Alex Berson, Stephen j. Smith, Data Warehousing, Data Mining & OLAP,

McGraw Hill Series on Data Warehousing and Data Management, 1997

13. Algorithms for Materialized View Design in Data Warehousing

Environment, Jian Yang, Kamalakar Karlapalem. Qin g Li. Proceed

ings of the 23rd VLDB conference, Athens, Greece, 1997

14. An Overview of Data Warehousing and OLAP Technology by Surajit

Chaudhry and Umeshwar Dayal

15. Baker, S. & Baker, K. (1999). The best little warehouse in business. Journal

of Business Strategy, 20(2), 32-37.

16. Belsley, D., Kuh, E., & Welsch, R. (1980). Regression diagnosis:

Identifying influential data and sources of collinearity. New York: John

Wiley & Sons.

17. Ben Kao, Kamyiu Lam, Brad Adelberg, Reynold Cheng, and Tony

S.H.Lee. Maintaining temporal consistency of discrete objects in soft real

time database systems. IEEE Transactions on Computers,52[3):373-

389,2003.

18. Bischoff, Joyce. [1997). “Introduction to Data Warehousing”, Data

warehouse: Practical Advice From the Experts. New Jersey: Prentice- Hall,

Inc.

245

19. Bussen, W., & Myers, M.D. (1997). Executive information system failure:

A New Zealand case study. Journal of Information Technology, 12, 145-

153.

20. Call Center Benefits By Michael Russell in Article Source:

http://EzineArticles.com/134169

21. Chen, L., Soliman, K., Mao, E., & Frolick, M. (2000). Measuring user

satisfaction with data warehouses: An exploratory study. Information &

Management, 37, 103-110.

22. Christian Thomsen, Torben Bach Pedersen, and Wolfgang Lehner. RiTE:

Providing on-demand Data for right-time data warehousing. In ICDE,

pages456-465, 2008.

23. CI99: The corporate information factory. Claudia Imhoff. 1999 DMReview

magazine

24. Conner, D. (2003). Data warehouse failures commonplace. Network World,

I(3), 24.

25. Cooper, B.L., Watson, H.J., Wixom, B.H., & Goodhue, D.L. (2000). Data

warehousing supports corporate

26. Cross and Blue Shield of North Carolina. Decision Support Systems, 38,

435-450.

27. Dallan Quassand Jennifer Widom. Online warehouse view maintenance. In

SIGMOD Conference, pages393-404, 1997.

28. Das, D. “Making Database Optimizers More Extensible" Ph.D.

dissertation, The University of Texas at Austin, 1995.

29. Data Warehouse Performance Management Techniques. Andrew

Holdworth of Oracle Corporation. 1996

30. Data warehouse, Practical advice from the experts. 1997. Pren tice

hall by Joyce Bischoff & Ted Alexander

246

31. Data Warehouse Information Center.

www.dwinfocenter.org/gotchas.html Copyright 2005 Larry Greenfield

32. Data Warehouse Information Center. www.dwinfocenter.org/gotchas.html

Copyright 2005 Larry Greenfield

33. Data Warehouse Management Handbook by Richard Kachur. 2000 Prentice

Hall 1#.

34. Data Warehouse Performance Management Techniques. Andrew

Holdworth of Oracle Corporation. 1996

35. Data warehouse Practical advice from the experts. 1997. Prentice hall

by Joyce Bischoff & Ted Alexander

36. DeLone, W. & McLean, E. (1992). Information systems success: The quest

for the dependent variable. Information Systems Research, 3(1), 60-95.

37. DeLone, W. & McLean, E. (2003). The DeLone and McLean model of

information systems success: A ten-year update. Journal of Management

Information Systems, 19(4), 9-30.

38. Desai, A. (1999). For pharmaceutical companies, a data warehouse can be

just what the doctor ordered. Health Management Technology, 20(2), 20-

22.

39. Doherty, N.F. & Doig, G. (2003). An analysis of the anticipated cultural

impacts of the implementation of data warehouses. IEEE Transactions on

Engineering Management, 50(1), 78-88

40. Draper, N.R., & Smith, H. (1998). Applied regression analysis (3rd ed.).

New York: John Wiley & Sons. Gagnon, G. (1999, March 19). Data

warehousing: An overview. PC Magazine, 245-246.

41. Efficient View Maintenance at Data Warehouses. Agrawal, A. E.

Abbadi, A. Singh, and T. Yurek.

247

42. Efficient incremental view maintenance in data warehouses. Ki Yong Lee,

Jin Hyun Son, Myoung Ho Kim. Korea Advanced Institute of Science and

Technology

43. Fahad Sultan et al. Ideal Strategy to Improve Datawarehouse Performance

[IJCSE) International Journal on Computer Science and Engineering Vol.

02, No. 02, 2010, 409-415

44. Fundamentals of database systems. 4th Edition. Persons

45. Gardner, S. (1998). Building the data warehouse. Communications of the

ACM, 41(9), 52-60.

46. Gorla, N. (2003). Features to consider in a data warehousing system.

Communications of the ACM, 46(11), 111-115.

47. Günther Pernul, Database Security,Advances in Computers, Vol. 38, p. 1

72, 1994

48. Gupta, A., Harinarayan, V. and Quass, D. “Aggregate-Query Processing in

Data Warehousing Environments”, In Proceedings of 21st International

Conference on Very Large Data Bases, pp. 358—369, 1995.

49. Gupta, H. V. Jagadish, and I. S. Mumick. Data integration using

self-maintainable views. Technical Memorandum 113880-941101-

32, AT&T Bell Laboratories, November 1994.

50. H. V. Jagadish, I. S. Mumick, and A. Silberschatz. View

maintenance issues in the chronicle datamodel. In 14th PODS, pages

113-124, 1995.

51. Hessinger, Paul, [1997). "A Renaissance for Information Technology",

Data warehouse:

52. Heun, C.T. (2000, December 11). Harrah’s bet on IT to understand its

customers. InformationWeek, 816, 10-12.

53. Hocking, R. (1976). The analysis and selection of variables in linear

regression. Biometrics, 32(1), 1-49.

248

54. http://documents.bmc.com/products/documents/93/24/9324/100034259/ind

ex.htm#1002863

http://publib.boulder.ibm.com/infocenter/rb63help/index.jsp?topic=/com.ib

m.redbrick.doc6.3/perf/perf11.htm

55. http://www.articlesbase.com/customer-service-articles/use-a-call-center-to-

create-profitable-customer-relationships-619968.html

56. Huh, Y. U., Keller, F. R., Redman, T. C., and Watkins, A. R. “Data

Quality,” Information and Software Technology (32:8), 1990, pp. 559-565.

57. Hwang, M.I., & Cappel, J.J. (2002). Data warehouse development and

management: Practices of some large companies. Journal of Computer

Information Systems, 43(1), 3-6.

58. Hwang, M.I., & Thorn, R. (1999). The effect of user engagement on system

success: a meta-analytical integration of research findings. Information &

Management, 35(4), 229-236.

59. Incremental View Maintenance: An Algorithmic Approach by Abdulaziz S.

Almazyad in International Journal of Electrical & Computer Sciences

IJECS-IJENS Vol: 10 No: 03

60. Information from Answers.com, http://www.answers.com

/capacity%20planning

61. Information from IBM website

62. Inmon, W. H. Building the Data warehouse, Wellesley, MA: QED

Technical Publishing Group, 1992.

63. International and Addison Wesley. Ramez Elmasri and Shamkant B.

Navathe

64. Jain, R. “Key Constructs in Successful IS Implementation: South-East

Asian Experience,” Omega (25:3), 1997, pp. 267-284.

249

65. Jarke, M. And Nicols, M. 2000. Telecommunications Databases –

Applications and Performance Analysis. In Databases in

Telecommunications, 1-15.

66. Jennifer Widom .Review- an overview of data warehousing and olap

technology. ACM SIGMOD Digital Review,1,1999.

67. Jennifer Widom. Research problems in data warehousing. In CIKM, pages

25-30,1995.

68. Johnson, L.K. (2004). Strategies for data warehousing. MIT Sloan

Management Review, 45(3), 9.

69. Joshi, K. & Curtis, M. (1999). Issues in building a successful data

warehouse. Information Strategy, 15(2), 28-35.

70. Kelly, S. (1997). Data warehousing in action. Chichester: John Wiley &

Sons.

71. Kimball, R. The Data Warehouse Toolkit, John Wiley & Sons, New York,

1996.

72. Alan R. Simon Data Warehousing For Dummies,in 2009

73. Kimball, R., Reeves, L., Ross, M., and Thornthwaite, W. The Data

Warehouse-Lifecycle Toolkit, New York: Wiley, 1998.

74. KO00: Data Warehousing Technology. Ken Orr. A white paper.

Revised edition, 2000 by Ken Orr Institute.

75. Latha S.Colby, Akira Kawaguchi, Daniel F.Lieuwen, Inderpal Singh

Mumick, and Kenneth A.Ross. Supporting multiple view maintenance

policies. In SIGMOD Conference, pages 405-416, 1997.

76. Lessons from a successful data warehouse implementation. Dr. John. D

Porter and john. J Rome. Arizona State university.

77. Levinson, M. (2000). Slices of lives. CIO, 13(21), 126-136.

78. Lewis, D. (2001). Data warehousing: Planning key to payoff. InternetWeek,

853, 52.

250

79. Li, E. Y. “Perceived Importance of Information System Success Factors: A

Meta Analysis of GroupDifferences,” Information & Management (32:1),

1997, pp. 15-28.

80. Lyons, D. (2004, December 13). Too much information. Forbes, 110-115.

81. Magal, S. R., Carr, H. H., and Watson, H. J. “Critical Success Factors for

Information CenterManagers,” MIS Quarterly (12:3), 1988, pp. 413-425.

82. Maintenance of Materialized Views: Problems, Techniques, and

Applications, Ashish Gupta and Inderpal Singh Mumick. ACM digital

library

83. Marquardt, M. J. Building the Learning Organization, New York:

McGraw-Hill, 1996.

84. McKeen, J. D., Guimaraes, T., and Wetherbe, J. C. “The Relationship

between User Participationand User Satisfaction: An Investigation of Four

Contingency Factors,” MIS Quarterly (18:4), 1994, pp. 427-451.

85. Michael Haisten, “Planning for a Data Warehouse,” InfoDB, Volume 9,

Number 1.

86. Ming-Chuan Wuand Alejandro P.Buchmann. Research issues in

datawarehousing. In BTW, Pages 61-82,1997.

87. Modeling and managing ETL processes by Alkis Simitsis in National

Technical University of Athens, Dept. of Electrical and Computer Eng.,

Computer Science Division, Iroon Polytechniou 9, Zografou 15773,Athens,

Greece

88. Moore, A., and Wells, D. “How to Do a Data Warehouse Assessment (And

Why),” Knowledge Partners, Inc., available online at

http://www.kpiusa.com/ReadingRoom/DWH%20Assessment.htm;

retrieved on November 13, 2000 (originally published in Journal of Data

Warehousing).

251

89. Mukherjee, D., & D’Souza D. (2003). Think phased implementation for

successful data warehousing. Information Systems Management, 82-90.

90. Nandhakumar, J. (1996). Design for success? Critical success factors in

executive information systems development. European Journal of

Information Systems, 5(1), 62-72.

91. Nathan Folkert, Abhinav Gupta, Andrew Witkowski, Sankar Subrmanian,

Srikanth Bellamkonda, Shrikanth Shankar, Tolga Bozgaya, Lei Sheng,

“Optimising Regresh Set of Materialized View”. Proceedings of VLDB

Conference, Norway, 2005.

92. Nutt, W.; Sagiv, Y.; Shurin, S.: Deciding Equivalence among Aggregate

Queries, in: 17th Symposium on Principles of Database Systems [PODS’98,

Seattle,Washington, USA, June [1-3), 1998

93. On Scheduling Data Loading and View Maintenance in Soft Real-time

Data Warehouses by Nguyen Hoang Vu Vivekanand Gopalkrishnan by 15th

International Conference on Management of Data COMAD 2009, Mysore,

India, December 9-12, 2009

94. Optimization strategies for data warehouse maintenance in distributed

environments. Master’s thesis by Bin Liu of Worcester Polytechnic

Institute

95. Data warehousing, data mining & olap authors: Alex Berson and

Stephen J. Smith Publisher: Mcgraw Hill

96. Pitt, L. F., Watson, R. T., and Kavan, C. B. “Service Quality: A Measure

of Information SystemsEffectiveness,” MIS Quarterly (19:2), 1995, p. 173-

187.

97. Practical Advice From the experts, Prentice Hall.

98. Quaddus, M., and Intrapairot, A. “Management Policies and the Diffusion

of Data Warehouse: ACase Study Using System Dynamics-Based

252

Decision Support System,” Decision SupportSystems (31:2), 2001, pp.

223-240.

99. Qualitative data analysis: A sourcebook of new methods. Miles M.M. &

Huberman A. M.1994, Sage publications

100. Query optimization for data warehouse applications by Moutaz Haddara,

2003, Master Thesis

101. Raghunathan, B., and Raghunathan, T. S. “Adaptation of a Planning

System Success Model to Information Systems Planning,” Information

Systems Research (5:3), 1994, pp. 326-340.

102. Research Design Explained 3rd edition. Mark Mitchell and Janina Jolley

(1996 ).

103. Risks in Data Warehouse Project Management, Sid Adelman and Larissa

Moss, Addison Wesley Longman, 2000

104. Rivard, S. “Successful Implementation of End-User Computing,”

Interfaces (17:3), 1987, pp. 25-33.

105. Rivard, S., and Huff, S. L. “An Empirical Study of Users as Application

Developers,” Information & Management (8:2), 1985, pp. 89-102.

106. S. Chakravarthy and D. Lomet, editors. Special Issue on Active Databases,

IEEE Data Engineering Bullet in 15[4),December 1992.

107. Saharia, A., and Babad, Y. M. “Enhancing Data Warehouse Performance

through Query Caching,” Database for Advances in Information Systems

(31:3), 2000, pp. 43-63.

108. Sakaguchi, T. & Frolick, M. (1997). A review of the data warehousing

literature. Journal of Data Warehousing, 2(1), 34-54.

109. Sakaguchi, T. and Frolick, M. N. “A Review of the Data Warehousing

Literature,” Unpublished Manuscript, 1996, available online at

http://www.nku.edu/~sakaguch/dw-web.htm (retrieved on November 13,

2000).

253

110. Sammon, D., & Finnegan, P. (2000 Fall). The ten commandments of data

warehousing. Database for Advances in Information Systems, 31(4), 82-91.

111. Seddon, P. B. “A Respecification and Extension of the DeLone and

McLean Model of IS Success,” Information Systems Research (8:3), 1997,

pp. 240-253.

112. Segars, A. H., and Grover, V. “Strategic Information Systems Planning

Success: An Investigation of the Construct and Its Measurement,” MIS

Quarterly (22:2), 1998, pp. 139-163.

113. Selection of views to materialize in data ware house: A.Boukra, M.Ahmed

Nacer and S.Bouroubri, International Journal of computational Intelligence

Research, ISS N 0973-1873 Vol.3

114. Sen, A., and Jacob, V. S. “Industrial-Strength Data Warehousing,”

Communications of the ACM (41:9), 1998, pp. 28-31.

115. Shim, J.P., Warkentin, M., Courtney, J.F., Power, D.J., Sharda, R., &

Carlsson, C. (2002). Past, present, and future of decision support

technology. Decision Support Systems, 33(2), 111-126.

116. Shin, B. (2003). An exploratory investigation of system success factors in

data warehousing. Journal of the Association for Information Systems, 4,

141-170.

117. Shin, B. S. “A Case of Data Warehousing Project Management,”

Information & Management (39:7), 2002, pp. 581-592.

118. Shin, B. S., Higa, K., Sheng, O., and Ide, T. “Analyzing the Media Usage

Behavior of Telework Groups: A Contingency Approach,” IEEE

Transactions on Systems, Man, and Cybernetics (29:1), 1999, pp. 127-139.

119. Sigal, M. (1998). A common sense of development strategy.

Communications of the ACM, 41(9), 42-43.

120. Simple strategies to improve data warehouse performance. Masters

thesis by Reena Mathews of North Carolina State University, 2004.

254

121. Sinn, B. (2003). A hunt for treasure? Best’s Review, 103(10), 90.

122. Slemo Warigon, Data Warehouse Control and Security,Association of

College and University Auditors LEDGER, Vol.41, No. 2, April 1997; pp.

37

123. Srivastava, J., and Chen, P. Y. “Warehouse Creation—A Potential

Roadblock to Data Warehousing,”IEEE Transactions on Knowledge and

Data Engineering (11:1), 1999, pp. 118-126.

124. Stedman, C. “Warehousing Projects Hard to Finish,” Computerworld

(32:12), 1998, p. 29.

125. strategy at First American Corporation. MIS Quarterly, 24(4), 547-567.

126. Surajit Chaudhuri and Umeshwar Dayal.An overview of data warehousing

and olap technology. SIGMOD Record, 26[1):65-74,1997.

127. System Analysis and Design. 2nd Edition. 1999. Elias M. Awad

128. The evolving data warehouse market: Part2. Charlie Garry copyright

2004 Meta Delta.

129. The ETL in a box. Claudia Imhoff and Tom Kerr. 2003 DMReview

Magazine

130. The evolving data warehouse market: Part1. Charlie Garry copyright 2004

Meta Delta.

131. Thong, J., and Yap, C. “Information Systems Effectiveness: A User

Satisfaction Approach, “Information Processing and Management (32:5),

(5), 1996, pp. 601-610.

132. Trembly, A. (2001). Experts: Technology is not to blame for data

warehouse failures. National Underwriter, 105(45), 32, 41.

133. Trowbridge, D. (2000) Database overload overwhelms database

administrators. Computer Technology Review, 20(6), 20, 22.

134. Using the Data Warehouse by W.H. Inmon and R.D. Hackathorn. 1994

John Wiley and Sons.

255

135. Vatanasombut B., & Gray, P. (1999). Factors for success in data

warehousing: What the literature tells us. Journal of Data Warehousing,

4(3), 25-33.

136. Voelker, M. (2001). Databases: The next generation. Insurance &

Technology, 26(3), 30-34.

137. W.H. Inmon and C. Kelley. Rdb/VMS: Developing the Data Warehouse.

QED Publishing Group, Boston, Massachusetts,1993.

138. Wang, R. Y., and Strong, D. M. “Beyond Accuracy: What Data Qquality

Means to Data Customers, “Journal of Management Information Systems

(12:4), 1996, pp. 5-34.

139. Watson, H. J., and Wixom, B. H. “Data Warehousing: A Framework and

Survey of Current Practices,” Journal of Data Warehousing (2:1), 1997, pp.

10-17.

140. Watson, H. J., and Wixom, B. H. “Managerial Considerations,”

Communications of the ACM (41:9), 1998, pp. 32-37.

141. Watson, H., & Haley, B. (1997). Data warehousing: A framework and

survey of current practices. Journal of Data Warehousing, 2(1), 10-17.

142. Watson, H., Abraham, D., Chen, D., Preston, D., & Thomas, D. (2004).

Data warehousing ROI: Justifying and assessing a data warehouse.

Business Intelligence Journal, Spring, 6-17.

143. Watson, H., Annino, D., Wixom, B., Avery, K. & Rutherford, M. (2001).

Current practices in data warehousing. Information Systems Management,

18(1), 47-55.

144. Watson, H.J., Fuller, C., & Ariyachandra, T. (2004). Data warehouse

governance: Best practices at Blue

145. Whiting, R. (1999, May 24). Warehouse ROI. InformationWeek, 735, 99-

104.

146. Wilburt Labio,Yue Zhuge, Janet L.Wiener, Himanshu Gupta, Hector

256

Garcia Molina, and Jennifer Widom.The whips prototype for data

warehouse creation and maintenance .In SIGMOD Conference, pages 557

-559,1997.

147. Williams, J. J., and Ramaprasad, A. “A Taxonomy of Critical Success

Factors,” European Journal of Information Systems (5:4), 1996, pp. 250-

260.

148. Winter, R., & Meyer, M. (2001). Organization of data warehousing in large

service organizations: A matrix approach based on data ownership and

competence centers. Journal of Data Warehousing, 6(4), 23-29.

149. Wixom, B. H., and Watson, H. J. “An Empirical Investigation of the

Factors Affecting DataWarehousing Success,” MIS Quarterly (25:1), 2001,

pp. 17-41.

150. Yap, C. S., Soh, C. P. P, and Raman, K. S. “Information System Success

Factors in Small Business,” Omega (20:5/6), 1992, pp. 597-609.

151. Yoon, Y., Guimares, T., and ONeal, Q. “Exploring the Factors Associated

with Expert Systems Success,” MIS Quarterly (19:1), 1995, pp. 83-106.

152. Yue Zhuge, Hector Garcia-Molina, and Janet L.Wiener. The strobe

algorithms for multi-source Ware house consistency. In PDIS,pages146-

157, 1996.

153. Yue Zhuge, Hector Garcia-Molina, Joachim Hammer and Jennifer Widom.

View maintenance in a warehousing environment. In SIGMOD

Conference, pages316-327,1995.

154. Zigurs, I., and Buckland, B. K. “A Theory of Task/Technology Fit and

Group Support Systems Effectiveness,” MIS Quarterly (22:3), 1998, pp.

313-334.

155. Achtert, E., Bohm, C., Kriegel, H.-P., Kr¨oger, P.: Online Hierarchical

Clustering in a Data Warehouse Environment Data Mining. In: Proceedings

257

of the Fifth IEEE International Conference on Data Mining, pp. 10–17

(2005)

156. Farran, B., Saunders, C.: Voted Spheres: An online Fast Approach to Large

Scale Learning. In: IEEE International Symposium on Mining and Web

(2009)

157. Ding, C.H., Dubchak, I.: Multi-class protein fold recognition using support

vector machines and neural networks. Bioinformatics 17(4), 349–358

(2001)

158. Eisen, M.B., Spellman, P.T., Brown, P.O., Botstein, D.: Cluster analysis

and display of genome-wide expression patterns. Proceedings of the

National Academy of Sciences USA 95(25), 14863–14868 (1998)

159. Frey, B.J., Dueck, D.: Clustering by Passing Messages between Data

Points. Science AAAS 315, 972–976 (2007)

160. Hasan, M., Jue, J.: Online Clustering for Hierarchical WDM Networks. In:

IEEE/OSA Conference on Optical Fiber Communication, San Diego, CA,

pp. 1–3 (2008)

161. Kadirkamanathan, V., Niranjan, M.: A Function Estimation Approach to

Sequential Learning with Neural Networks. Neural Computation 5, 954–

975 (1993)

162. Kaplan, N., Friedlich, M., Fromer, M., Linial, M.: A functional hierarchical

organization of the protein sequence space. BMC Bioinformatics 5, 196

(2004)

163. Kull, M., Vilo, J.: Fast approximate hierarchical clustering using similarity

heuristics. BioData Mining 1, 9 (2008)

164. Loewenstein, Y., Portugaly, E., Fromer, M., Linial, M.: Efficient algorithms

for accurate hierarchical clustering of huge datasets: tackling the entire

protein space. Bioinformatics 24(13), 41–49 (2008)

258

165. Molina, C., Niranjan, M.: Pruning with replacement on limited resource

allocating networks by f-projections. Neural Computation 8(4), 855–868

(1996)

166. Lo Conte, L., Ailey, B., Hubbard, T.J., Brenner, S.E., Murzin, A.G.,

Chothia,C.: SCOP: a Structural Classification Of Proteins database. Nucleic

Acids Research 28(1), 257–259 (2000)

167. Needleman, S.B., Wunsch, C.D.: A General Method Applicable to the

Search for Similarities in the Amino Acid Sequence of two Proteins.

Journal of Molecular Biology 48(3), 443–453 (1970)

168. Platt, J.C.: A Resource-Allocating Network for Function Interpolation.

Neural Computation 3, 213–225 (1991)

169. Ramanan, A., Niranjan, M.: Designing a Resource-Allocating Discriminant

Codebook for Visual Object Recognition. Neural Computation (2009)

(under review)

170. Smith, T.F., Waterman, M.S.: Identification of Common Molecular

Subsequences. Journal of Molecular Biology 147, 195–197 (1981)

171. El-Sonbaty, Y., Ismail, M.A.: On-line hierarchical clustering. Pattern

Recognition Letters 19, 1285–1291 (1998)

172. Wu, C.H., Apweiler, R., Bairoch, A., Natale, D.A., Barker, W.C.,

Boeckmann, B., Ferro, S., Gasteiger, E., Huang, H., Lopez, R., et al.: The

Universal Protein Resource (UniProt): an expanding universe of protein

information. Nucleic Acids Research 34, D187–D191 (2006)

173. Zhao, Y., Karypis, G., Fayyad, U.: Hierarchical Clustering Algorithms for

Document Datasets. Data Mining and Knowledge Discovery 10(2), 141–

168 (2005)

174. Zhang, J., Marszalek, M., Lazebnik, S., Schmid, C.: Local Features and

Kernels for Classification of Texture and Object Categories: A

259

Comprehensive Study. International Journal of Computer Vision 73, 213–

238 (2007)

175. Aggarwal, C. C., Han, J., Wang, J., Yu, P. S. A Framework for Clustering

Evolving Data Streams. In VLDB’03, 81-92, 2003.

176. Ankerst, M., Breuing, M., Kriegel, H-P., Sander, J. OPTICS: Ordering

Points to Identify the Clustering Structure. In SIGMOD’99, 49-60, 1999.

177. Braunmueller, M. E. B., and Kriegel, H-P. Efficiently Supporting Multiple

Similarity Queries for Mining in Metric Databases. In ICDE’00, 256-267,

2000.

178. Barbara, D. Requirements for Clustering Data Streams. SIGKDD

Explorations, 3:23-27, 2002.

179. Breuing, M., Kriegel, H-P, Kroger, P., Sander, J. Data Bubbles: Quality

Preserving Performance Boosting for Hierarchical Clustering. In

SIGMOD’01, 79-90, 2001.

180. Charikar, M., Chekuri, C., Feder, T., Motwani, R. Incremental Clustering

and Dynamic Information Retrieval. In 29th Symposium on Theory of

Computing, 626-635, 1997.

181. Chen, C., Hwang, S., Oyang, Y. An Incremental Hierarchical Data

Clustering Algorithm Based on Gravity Theory. In 6th Pacific Asia

Conference on Knowledge Discovery and Data Mining, 2002.

182. Elkan, C. Using the Triangle Inequality to Accelerate kmeans. In ICML’03,

2003.

183. Ester, M., Kriegel, H-P., Sander, J., Xu, X. A Density Based Algorithm for

Discovering Clusters in Large Spatial Databases with Noise. KDD’96, 226-

231, 1996.

184. Ester, M., Kriegel, H-P., Sander, J. Wimmer, M., Xu, X. Incremental

Clustering for Mining in a Data Warehousing Enviornment. VLDB’98,

323-333, 1998.

260

185. Filho, R. F. S., Traina, A. J. M., Triana Jr., C., Faloutsos, C. Similarity

Search without Tears: The OMNI Family of Allpurpose Access Methods.

ICDE’01, 623-630.

186. D. Theodoratos, M. Bouzeghoub, paper entitled “Data Currency Quality

Factors in Data Warehouse Design” at International Workshop on Design

and Management of Data Warehouses (DMDW’99), Heidelberg, Germany,

14. - 15.6. 1999

187. Ganti, V., Gehrke, J., Ramakrishnan, R. Mining Data Streams under Block

Evolution. SIGKDD Explorations, 3:1-10, 2002.

188. Larsen, B., Aone, C. Fast and Effective Text Mining Using Linear-time

Document Clustering. In KDD’99, 16-22, 1999.

189. MacQueen, J. Some Methods for Classification and Analysis of

Multivariate Observations. In 5th Berkeley Symp. Math Statist. Prob., 281-

297, 1967.

190. Ang & Teo, Management issues in data warehousing: insights from the

Housing and Development Board (December 6, 1999)

191. O’Callaghan, L., Mishra, N., Meyerson, A., Guha, S., Motwani, R.

Streaming-data Algorithms for High-quality Clustering. ICDE’02, 685-704,

2002.

192. Sander, J., Qin, X., Lu, Z., Niu, N, Kovarsky, A. Automated Extraction of

Clusters from Hierarchical Clustering Representations. PAKDD’03.

193. Sibson, R. SLINK: An Optimally Efficient Algorithm for the Single-link

Cluster Method. The Computer Journal, 16(1): 30-34, 1973.

194. Triola, M. F., Goodman, W. M., Law, R. Elementary Statistics First

Canadian Edition, Addison-Wesley, Don Mills, Ontario, 1999.

195. Widyantoro, D. H., Ioerger, T. R., Yen, J. An Incremental Approach to

Building a Cluster Hierarchy. ICDM’02, 705-708, 2002.

261

196. Zhang, T., Ramakrishnan, R., Linvy, M. BIRCH: An Efficient Data

Clustering Method for Very Large Databases. SIGMOD’96, 103-114, 1996

197. Jianxi Zhang, Peiying Zhao, Lin Shang and Lunsheng Wang, "Web usage

mining based on fuzzy clustering in identifying target group", ISECS

International Colloquium on Computing, Communication, Control, and

Management, Vol. 4, Pp. 209-212, 2009.

198. Houqun Yang, Jingsheng Lei and Fa Fu, "An Approach of Multi-path

Segmentation Clustering Based on Web Usage Mining", Fourth

International Conference on Fuzzy Systems and Knowledge Discovery,

Vol. 4, Pp. 644-648, 2007.

199. Bamshad Mobasher, “Data Mining for Web Personalization,” LCNS,

Springer-Verleg Berlin Heidelberg, 2007.

200. Jaideep Srivastava , Robert Cooley , Mukund Deshpande, Pang-Ning Tan-

“Web Usage Mining: Discovery and Applications of Usage Patterns from

Web Data”, 2008.

201. Honghua Dai and Bamshad Mobasher-“Integrating Semantic Knowledge

with Web Usage Mining for Personalization”, 2007.

202. Mark E. Snyder, Ravi Sundaram, Mayur Thakur“Preprocessing DNS Log

Data for Effective Data Mining”, 2008.

203. Two Phase Utility Mining Algorithm G. Sunil Kumar, C.V.K Sirisha,

Kanaka Durga.R, A.Devi. Wen, X.L., et al. .Large-scale temporal gene

expression mapping of central nervous system development.. Proceedings

of the National Academy of Science USA, 96 335-339, January,1998

204. Tamayo, P., et al. .Interpreting patterns of gene expression with self-

organizing maps: Methods and application to hematopoietic

differentiation.. Proceedings of the National Academy of Science USA, 96

2907-2912, March 1999.

262

205. Smet, F., Mathys, J., Marchal, K., Thijs, G., Moor, B., and Moreau, Y.,

.Adaptive qualitybased clustering of gene expression profiles..

Bioinformatics. 2002 May, 18(6):736-56.

206. Yeung, K.Y., et al. .Model-Based Clustering and Data Transformations for

Gene Expression Data.. The Third Georgia Tech-Emory International

Conference on Bioinformatics. 2001

207. Luo, F., Khan, L., Bastani, F., Yen, I. and Zhou, J., .A Dynamical Growing

Self-Organizing Tree (DGSOT) for Hierarchical Clustering Gene

Expression Profiles,. Bioinformatics Journal,20(16): 2606-2617 (2005),

Oxford University Press.

http://www.ics.uci.edu/~mlearn/MLRepository.html

208. Alohakoon, D., Halgamuge, S.K., .Dynamic Self-Organizing Maps with

Controlled Growth for Knowledge Discovery.. IEEE Transactions on

Neural Networks. Vol 11, No., 601-615, May 2000

209. Hodge, V.J., Austin, J., .Hierarchical Growing Cell Structures: TreeGCS..

IEEE Transactions on Knowledge and Data Engineering. Vol 13, No. 2,

207-218, March/April 2001.

210. Fritzke, B., .Growing cell structures - a self-organizing network for

unsupervised and supervised learning., Neural Networks, Volume 7, 1151-

1160, 1995.

211. Kohonen, T., .Self -Organizing Maps., Second Edition, Springer 1997.

Dopazo, J., Carazo, J.M., .Phylogenetic Reconstruction Using an

Unsupervised Growing Neural Network That Adopts the Topology of a

Phylogenetic Tree. Journal of Molecular Evolution, Vol 55, 226-233 1997.

212. Dittenbach, M., Merkl, D., Rauber, A., .The Growing Hierarchical Self-

Organizing Map.Proceeding International Joint Conference on Neural

Networks (IJCNN), vol. 6, 16-19, July, Como, Italy, 2000.

263

213. Fred R. McFadden in their paper entitled “Data Warehouse for EIS:

Some Issues and Impacts” at 29th Annual Hawaii International

Conference on System Sciences - 1996.

214. Hurley and Harris, paper on “facilitating corporate knowledge: building the

data warehouse”, in Information management & computer security by

survey in KPMG management consulting and the Nolan Norton institute.

1997

215. Panos, Vassiliadis, Data Warehouse Modeling and Quality Issues (June

2000) Transaction Processing Performance Council (TPC), “TPC

Benchmark D, Decision Support”, Standard Specification Revision 2.0.1,

December 5, 1998, http://www.tpc.org.

216. OLAP Council, “APB-1 OLAP Benchmark Release II”, November

1998.http://www.olapcouncil.org

217. Vanichayobon S., Gruenwald L., “Indexing Techniques for Data

Warehouses‟ Queries”

218. Maher G. El, Haddouti H., “Bitmap indexing and related indexing

techniques”

219. Ghanjaoui Y., Haddouti H., “Indexing Techniques in Data

Warehousing Environment the UB-Tree Algorithm”

220. Weigel F. ,”A Survey of Indexing Techniques for Semi structured

Documents”

221. Azefack S.,Aouiche K. andDarmont J., “Dynamic index selection in data

warehouses

222. P. O‟Neil and G. Graefe, “Multi-Table joins through Bitmapped join

indices”, SIGMOD Record, Vol. 24, No. 3, Sep. 1995.

223. P. O‟Neil and D. Quass, “Improved Query Performance with Variant

Indexes”, SIGMOD, 1997.

264

224. Jens Albrecht, Holger Gunzel, Wolfgang Lehner, “An Architecture for

Distributed OLAP”, International Conference on Parallel and

Distributed Processing Techniques and Applications PDPTA’98, 1998.

225. APB-1 Benchmark, Olap Council, November 1998. Available at

http://www.olpacouncil.org.

226. S. Chauduri and U. Dayal, “An overview of data warehousing and OLAP

technology”, SIGMOD Record, 26(1):65-74, March 1997.

227. D. Comer, “The ubiquitous B-tree”, ACM Computing Surveys,

11(2):121-137, 1979.

228. Anindaya Datta, Bongki Moon and Helen Thomas, “A Case for

Parallellism in Data Warehousing and OLAP ”, Proceedings of the

9th International Conference on Database and Expert Systems

Applications (DEXA’98), September 1998.

229. D.J. DeWitt, Jim Gray, “Parallel Database Systems: The future of

high performance database systems”, Comm. of the ACM, 35(6), June

1992, pp.85-98.

230. C.I. Ezeife, K. Barker, “A Comprehensive Approach to Horizontal

Class Fragmentation in a Distributed Object Based System”,

Distributed and Parallel Databases, 1:247-272, 1995.

231. C.I. Ezeife. “A Partition-Selection Scheme for Warehouse Aggregate

Views”, Int. Conf. of Computing and Information, Manitoba, Canada, June,

1998.

232. Philipp J. Gill, “SIZE: Breaking the Warehouse Barrier”, Oracle

Magazine, January/February 2000, Volume IX, Issue 1, pp. 38-44.

233. Jim Gray, “What Next? A Dozen Information-Technology Research

Goals”, Turing Talk Award, June 1999, Technical Report MS-TR-99-50.

265

234. Venky Harinarayan, Anand Rajaraman, and Jeffrey Ullman.

Implementing Data Cubes Efficiently. In ACM SIGMOD Proceedings,

June 1996.

235. “HP Intelligent Warehouse”, Hewlett Packard white paper,

http://www.hp.com, 1997.

236. “Enterprise-Scalable Data Marts: A New Strategy for Building and

Deploying Fast, Scalable Data Warehousing Systems”, Informatica

white paper, http://www.informatica.com, 1997.

237. Marcus Jurgens and Hans-J. Lenz, “Tree Based Indexes vs. Bitmap

Indexes: A Performance Study”, Intl. Workshop DMDW’99,

Heidelberg, Germany, 1999.

238. S.J. Lim and Y.-K. Ng, “A Formal Approach for Horizontal

Fragmentation in Distributed Deductive Database Design”, Int.

Conference on Database and Expert Systems Applications (DEXA’96),

pp234-243, Zurich, Switzerland, September 1996.

239. Hongjun Lu, Beng Chin. Ooi, and Kian Lee Tan, Query Processing

in Parallel Relational Database Systems, IEEE Computer Society, May

1994.

240. M.E. Meredith and A. Khader, “Divide and Aggregate: Designing

Large Warehouses”, Database Programming and Design, 9(6), June 1996.

241. Patrick O’Neil and Dallan Quass, “Improved Query Performance with

Variant Indexes”, ACM SIGMOD Proceedings, 1997, pp. 38–49.

242. M. Ozsu and P. Valduriez. Principles of Distributed Database

Systems.Second edition, Prentice-Hall, New Jersey, 1999.

243. D. A. Patterson, G. Gibson, R. H. Katz, “A case for Redundant

Arrays of Inespensive Disks (RAID)”, ACM SIGMOD Proceedings, June

1988.

266

244. TPC Benchmark H, Transaction Processing Council, June 1999.

Available at http://www.tpc.org/.

245. M. Wu and A. Buchmann, “Research Issues in Data Warehousing”,

BTW’97, March 1997.

246. Sudesh M. Duggal, Inna Pylyayeva in their research paper entitled “Data

Warehouse – Strategic Advantage” at IACIS 2001

247. Hsin-Ginn Hwang, Cheng-Yuan Ku, David C. Yen, Chi-Chung Cheng in

their research on “ Critical factor influencing the adoption of data

warehouse technology: A study of the banking industry in Taiwan”,

Decision support systems, 2004

248. Gavin and Powell, Oracle Data Warehouse Tuning for 10g (2005)

249. M.D. Solomon, Ensuring A Successful Data Warehouse Initiative. ; In

Proceedings of IS Management. 2005, 26-36. 2005 in ACM.

250. Hugh J. Watson and Thilini Ariyachandra in research entitled “Data

Warehouse Architectures: Factors in the Selection Decision and the

Success of the Architectures” in July 2005

251. Roger L. Hayen, Cedric D.Rutashobya and Daniel E. Vetter paper entitled

“An Investigation of the Factors Affecting Data Warehousing Success” in

Issues in Information Systems Volume VIII, No. 2, 2007

252. Jeff Theobald in “Strategies for Testing Data Warehouse Applications”

publishes at Information Management Magazine, June 2007

253. Mark I Hwang; Hongjiang Xu in paper entitled “A Structural Model of

Data Warehousing Success” in 2008

254. Six tips for improving data warehouse performance” by Dr. Mark

Whitehorn, Co-Founder, Penguin Soft Consulting Ltd. in search data

management express.

267

255. Victor González Castro in research thesis entitled “The Use of Alternative

Data Models in Data Warehousing Environments” at Heriot-Watt

University, Edinburgh, United Kingdom in may 2009

256. Kimball, R in book entitled “The Data Warehousing Toolkit: Practical

Techniques for Building Dimensional Data Warehouses” ISBN 0-471-

15337-0

257. Li, T., Tang, Y.Y., Fang, L.Y., .A Structure-Parameter-Adaptive (SPA)

Neural Tree for the Recognition of Large Character Set.. Pattern

Recognition, Vol 28, No. 3, 316-329, 1996.

258. Kong, H.S., Guan, L., .Self-Organizing Tree Map for Eliminating Impulse

Noise with Random intensity Distributions.. Journal of Electronic Imaging

7(1), 36-55, January 1998.

259. Song, H.H., Lee, S.W., .A Self-Organizing Neural Tree for Large-Set

Pattern Classification. IEEE Transactions on Neural Networks. Vol 9, No.3,

369-380, May 1998.

260. Dittenbach, M., Merkl, D., Rauber, A., .The Growing Hierarchical Self-

Organizing Map.Proceeding International Joint Conference on Neural

Networks (IJCNN), vol. 6, 16-19, July, Como, Italy, 2000.

261. Ben-Dor, A., and Yakhini, Z. .Clustering gene expression patterns.. In

RECOMB99:Proceeding of the third annual international conference on

computational molecular biology,Lyon, France, 33-52, 1999

262. Briggs, D. (2002). A Critical Review of Literature on Data Warehouse

Systems Success/Failure. Journal f Data Warehousing, 49(3), pp. 1 – 20.

263. Information Superiority through Data Warehousing by Neil Warner (ADI

Limited) [email protected]

264. Laurn gibbons paul,(November 15,1997) anatomy of a failure, CIO

enterprise Magazine.

268

265. David J. DeWitt and Jim Gray. “Parallel Database Systems: The Future of

High Performance Database Processing.” Communication of the ACM, Vol

35(6), pp. 85-98, June 1992.

266. Data Warehousing and OLAP: Improving Query Performance Using

Distributed Computing by Jorge Bernardino

267. S. Chauduri and U. Dayal, “An overview of data warehousing and OLAP

technology”, SIGMOD Record, 26(1):65-74, March 1997.

268. Gerth Stølting Brodal, Rolf Fagerberg, and Riko Jacob. Cache Oblivious

Search Trees via Binary Trees of Small Height. October 2001. 20 pp.

269. M. Ortega-Binderberger, K. Chakrabarti, and S. Mehrotra. An Approach to

Integrating Query Refinement in SQL. In EDBT, pages 15–33, 2002.

270. E. Demidova, X. Zhou, I. Oelze, and W. Nejdl. Evaluating Evidences for

Keyword Query Disambiguation in Entity Centric Database Search. In

DEXA (2), pages 240–247, 2010.

271. L. Blunschi, C. Jossen, D. Kossmann, M. Mori, and K. Stockinger. Data-

Thirsty Business Analysts need SODA - Search Over DAta Warehouse. In

CIKM (demo), pages 2525–2528, 2011.

272. El-Sonbaty, Y., Ismail, M.A.: On-line hierarchical clustering. Pattern

Recognition Letters 19, 1285–1291 (1998)

273. Farran, B., Saunders, C.: Voted Spheres: An online Fast Approach to Large

Scale Learning. In: IEEE International Symposium on Mining and Web

(2009)

274. Dr.N.Rajalingam, K.Ranjini : Performance Analysis of Hierarchical

Clustering Algorithm: International Journal of Advanced Networking and

Applications Volume: 03, Issue: 01, Pages: 1006-1011 (2011)

275. D. Barbara, "Requirements for clustering data streams," ACM SIGKDD

Explorations Newsletter, vol. 3, pp. 23-27, 2002.

269

276. V. Ganti, J. Gehrke, R. Ramakrishnan, andW. Loh. “Mining data streams

under block evolution”. In ACM SIGKDD, Explorations 3(2):1-10, 2002.

277. Hussain Tasawar, Asghar Sohail and Fong Simon, "A hierarchical cluster

based preprocessing methodology for Web Usage Mining", 6th

International Conference on Advanced Information Management and

Service (IMS), Pp. 472-477, 2010.

278. Yaxiu Yu and Xin-Wei Wang, "Web Usage Mining Based on Fuzzy

Clustering", International Forum on Information Technology and

Applications, Pp. 268-271, 2009.

279. Jianxi Zhang, Peiying Zhao, Lin Shang and Lunsheng Wang, "Web usage

mining based on fuzzy clustering in identifying target group", ISECS

International Colloquium on Computing, Communication, Control, and

Management, Vol. 4, Pp. 209-212, 2009

280. Houqun Yang, Jingsheng Lei and Fa Fu, "An Approach of Multi-path

Segmentation Clustering Based on Web Usage Mining", Fourth

International Conference on Fuzzy Systems and Knowledge Discovery,

Vol. 4, Pp. 644-648, 2007.

281. Reddy, Seelam Sai Satyanarayana IN research entitled "Hybrid

methodology for effective maintenance of data warehouse" in 2010,

http://shodhganga.inflibnet.ac.in/handle/10603/49

282. Journals, international conferences proceedings.

270

1.Books:

1. J. Han and M. Kamber, Data mining. Concepts and techniques, Academic

Press, San

Diego, 2001.

2. N. Hashmi, Business Information Warehouse for SAP, 2000, Prima Tech.

3. W.H. Inmon, Building the data warehouse, Wiley, New York, 1996.

4. R. Kimball, The data warehouse Toolkit, Wiley, New York, 1996.

5. D. O’Leary, Enterprise resource planning systems, Cambridge Press, New

York,

2000.

6. C. Todman, Designing a data warehouse, Prentice Hall PTR, New Jersey,

2001

271

2. Websites:

1. http://www.mnhs.org/preserve/records/dwintro.html

2. http://www.databasejournal.com/sqletc/article.php/1457041

3. http://www.tdwi.org/

4. http://www.infogoal.com/dmc/dmcdwh.htm

5. http://www.tdan.com

6. http://www.bitpipe.com/data/search?site=bp&qp=site_abbrev%3Abp&qg

=VENDOR&cr=bpres&cp=bpres&st=1&rp=1&oq=datawarehouse&sw=0

&qt=data+warehousing&Search.x=22&Search.y=9

7. http://www.dwinfocenter.org/

8. http://www.datawarehouse.com/index.cfm

9. http://www.ciol.com/content/e_ent/data_ware/

10. http://www. en.wikipedia.org/wiki/Wikipedia

11. http://www.govtjobs.co.in/bharat-sanchar-nigam-limited-bsnl

12.http://www.mendeley.com/research/investigation-factors-affecting-data-

warehousing-success

13. http://shodhganga.inflibnet.ac.in/handle/10603/49