Work place: Department of Management, Faculty of Administrative Sciences and economics, University of Isfahan, IRAN
E-mail: izady.bahram@gmail.com
Website:
Research Interests: Business
Biography
Bahram Izadi received his B.S in Applied Physics from University of Isfahan, Iran in 1986. He completed his Master in Business Administration at the same university in 2009 and passed entrance exams for PHD of Marketing Management at University of Isfahan in the same year. He is currently working on his dissertation in the area of E-market segmentation. His area of interest includes E-Business and E-Marketing.
By Bahram Izadi Bahram Ranjbarian Saeedeh Ketabi Faria Nassiri-Mofakham
DOI: https://doi.org/10.5815/ijitcs.2013.10.02, Pub. Date: 8 Sep. 2013
Among various statistical and data mining discriminant analysis proposed so far for group classification, linear programming discriminant analysis have recently attracted the researchers’ interest. This study evaluates multi-group discriminant linear programming (MDLP) for classification problems against well-known methods such as neural networks, support vector machine, and so on. MDLP is less complex compared to other methods and does not suffer from local optima. However, sometimes classification becomes infeasible due to insufficient data in databases such as in the case of an Internet Service Provider (ISP) small and medium-sized market considered in this research. This study proposes a fuzzy Delphi method to select and gather required data. The results show that the performance of MDLP is better than other methods with respect to correct classification, at least for small and medium-sized datasets.
[...] Read more.By Bahram Izadi Saeedeh Ketabi
DOI: https://doi.org/10.5815/ijitcs.2013.02.03, Pub. Date: 8 Jan. 2013
Organizational decisions involve with unusually vague and conflicting criteria. This controversy increases empirical uncertainties, disputes, and the resulting consequences of these decisions. One possible method in subduing this problem is to apply quantitative approaches to provide a transparent process for resolute conclusions which enables decision makers to formulate accurate and decisive on time decisions. Although numerous methods are presented in the literature, the majority of them aim to develop theoretical models. However, this article aims to develop and implement an integrated fuzzy virtual MCDM model based on fuzzy AHP and fuzzy TOPSIS as a decision support system (DDS). Preventing disadvantageous face-to-face decision-making by achieving positive benefit from virtual decision making causes the proposed DDS to be suitable for making crucial decisions such as supplier selection, employee selection, employee appraisal, R&D project selection, etc. The proposed DDS has been implemented in an optical company in Iran.
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