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    An efficient hybrid approach based on K-means and generalized fashion algorithms for cluster analysis

    , Article 2015 AI and Robotics, IRANOPEN 2015 - 5th Conference on Artificial Intelligence and Robotics, Qazvin, Iran, 12 April 2015 ; April , 2015 , Page(s): 1 - 7 ; 9781479987337 (ISBN) Aghamohseni, A ; Ramezanian, R ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2015
    Abstract
    Clustering is the process of grouping data objects into set of disjoint classes called clusters so that objects within a class are highly similar with one another and dissimilar with the objects in other classes. The k-means algorithm is a simple and efficient algorithm that is widely used for data clustering. However, its performance depends on the initial state of centroids and may trap in local optima. In order to overcome local optima obstacles, a lot of studies have been done in clustering. The Fashion Algorithm is one effective method for searching problem space to find a near optimal solution. This paper presents a hybrid optimization algorithm based on Generalized Fashion Algorithm... 

    A particle swarm-BFGS algorithm for nonlinear programming problems

    , Article Computers and Operations Research ; Volume 40, Issue 4 , April , 2013 , Pages 963-972 ; 03050548 (ISSN) Mohammad Nezhad, A ; Aliakbari Shandiz, R ; Eshraghniaye Jahromi, A ; Sharif University of Technology
    2013
    Abstract
    This article proposes a hybrid optimization algorithm based on a modified BFGS and particle swarm optimization to solve medium scale nonlinear programs. The hybrid algorithm integrates the modified BFGS into particle swarm optimization to solve augmented Lagrangian penalty function. In doing so, the algorithm launches into a global search over the solution space while keeping a detailed exploration into the neighborhoods. To shed light on the merit of the algorithm, we provide a test bed consisting of 30 test problems to compare our algorithm against two of its variations along with two state-of-the-art nonlinear optimization algorithms. The numerical experiments illustrate that the proposed... 

    Neural network prediction model of three-phase fluids flow in heterogeneous porous media using scaling analysis

    , Article Journal of Petroleum Science and Engineering ; Volume 138 , 2016 , Pages 122-137 ; 09204105 (ISSN) Zarringhalam, A ; Alizadeh, M ; Rafiee, J ; Moshirfarahi, M. M ; Sharif University of Technology
    Elsevier 
    Abstract
    Scaling analysis of fluid displacement in porous media is a reliable, fast method to evaluate the displacement performance of different oil production processes under various conditions. This paper presents the scaling studies of multiphase fluid flow through permeable media with a special attention to the three-phase immiscible water alternating gas (WAG) flooding under conditions prevailing in many oil reservoirs. The investigations are performed on a heterogeneous reservoir to study in detail the sensitivity of the displacement process to the scaling groups using various combinations of the process controlling parameters. The procedure of Inspectional analysis (IA) was utilized to... 

    A bi-objective hybrid optimization algorithm to reduce noise and data dimension in diabetes diagnosis using support vector machines

    , Article Expert Systems with Applications ; Volume 127 , 2019 , Pages 47-57 ; 09574174 (ISSN) Alirezaei, M ; Akhavan Niaki, S. T ; Akhavan Niaki, S. A ; Sharif University of Technology
    Elsevier Ltd  2019
    Abstract
    Diabetes mellitus is a medical condition examined by data miners for reasons such as significant health complications in affected people, the economic impact on healthcare networks, and so on. In order to find the main causes of this disease, researchers look into the patient's lifestyle, hereditary information, etc. The goal of data mining in this context is to find patterns that make early detection of the disease and proper treatment easier. Due to the high volume of data involved in therapeutic contexts and disease diagnosis, provision of the intended treatment method become almost impossible over a short period of time. This justifies the use of pre-processing techniques and data...