1. bookVolume 8 (2013): Issue 1 (June 2013)
Journal Details
License
Format
Journal
eISSN
1338-7278
ISSN
1338-7278
First Published
29 Mar 2013
Publication timeframe
2 times per year
Languages
English
Open Access

Evaluation of Facility Management by Multivariate Statistics – Factor Analysis

Published Online: 21 May 2013
Volume & Issue: Volume 8 (2013) - Issue 1 (June 2013)
Page range: 79 - 86
Journal Details
License
Format
Journal
eISSN
1338-7278
ISSN
1338-7278
First Published
29 Mar 2013
Publication timeframe
2 times per year
Languages
English
Abstract

Facility management is evolving, there is no exact than other sciences, although its development is fast forward. The knowledge and practical skills in facility management is not replaced, on the contrary, they complement each other. The existing low utilization of science in the field of facility management is mainly caused by the management of support activities are many variables and prevailing immediate reaction to the extraordinary situation arising from motives of those who have substantial experience and years of proven experience. Facility management is looking for a system that uses organized knowledge and will form the basis, which grows from a wide range of disciplines. Significant influence on its formation as a scientific discipline is the "structure, which follows strategy". The paper deals evaluate technology building as part of an facility management by multivariate statistic - factor analysis.

Keywords

[1] Somorová, V. (2007). Facility management - efektívna forma spravovania budov. ASB, 1.Search in Google Scholar

[2] Vyskočil, V.K. (2006). Podstata řízení podpurnych procesu. Acta Evida, 46, 351-363.Search in Google Scholar

[3] StatSoft Electronic Statistics Textbook. http://www.statsoft.com/textbook/principalcomponents- factor-analysis/.Search in Google Scholar

[4] Documents provided by the municipality of Kosice.Search in Google Scholar

[5] Anazawa, K., Ohmori, H. (2006). The hydrochemistry of surface waters in Andesitic Volcanic area, Norikura volcano, central Japan. Chemosphere, 59, 605-610.10.1016/j.chemosphere.2004.10.01815792658Search in Google Scholar

[6] Brown, C.E. (1998). Applied Multivariate Statistics in Geohydrology and Relate Sciences. New York: Springer.10.1007/978-3-642-80328-4Search in Google Scholar

[7] Yidana, S.M.; Duke Ophori, D.; Banoeng-Yakubo, B. (2007) A multivariate statistical analysis of surface water chemistry data˜NThe Ankobra Basin, Ghana. Journal of Management, 86, 80-87.Search in Google Scholar

[8] Sharma, S. (1996). Applied Multivariate Techniques. USA: John Wiley and Sons.Search in Google Scholar

[9] Johnson, R., A.; Wichern, D., W. (1998). Applied multivariate statistical analysis (5th ed.). USA: Prentice Hall.Search in Google Scholar

[10] Millard, S., P.; Neerchal, N., K. (2001). Environmental statistics with S-PLUS. CRC Press, USA.Search in Google Scholar

[11] Eyduran, E., Topal, M. and Sonmez, A.Y. (2010). Use of factor scores in multiple regression analysis for estimation of body weight by several body measurements in brown trouts (Salmo trutta fario). Int. J. Agric. Biol., 12, 611-615.Search in Google Scholar

[12] Suhr, D. (2005). Principal Component Analysis vs. Exploratory Factor Analysis. In SUGI 30 Proceedings, 10-13 April 2005 . Philadelphia, Pennsylvania. Web: http://www2.sas.com/proceedings/sugi30/203-30.pdf.Search in Google Scholar

[13] Singovszka, E., Balintova, M. (2012). Application Factor Analysis for the Evaluation Surface Water and Sediment Quality. Chemical Engineering Transactions. 26, 183-188.Search in Google Scholar

Recommended articles from Trend MD

Plan your remote conference with Sciendo