Fa
  • Ph.D. (2015)

    Industrial & Systems Engineering- Information Technology Engineering

    School of Industrial and Systems Engineering, Tarbiat Modares University, Tehran, Iran

  • Data Science with a focus on Data Mining and Big Data Analytics and the applications in Business, Healthcare and Supply Chain Management
  • Advanced methods in Data Science such as Big Data Analytics, Dynamic Data Mining, Deep Learning and Hybrid Methods
  • Hybrid approaches of Data Mining and Complex Networks
  • Data Analytics & Business Intelligence

    Elham Akhondzadeh Noughabi has Ph.D. in Industrial and Systems Engineering with a focus on Information Technology Engineering at Tarbiat Modares University, Iran and two Post-Doctoral trainings in Computer Engineering and Health Data Science at University of Calgary, Canada. She is a data scientist with more than 10 years of academic and professional experience in the field. Her research interests include Data Science with applications in Business and Healthcare with a focus on Data Mining and Big Data Analytics. Her work has appeared in more than 50 peer-reviewed journals, conferences, books and book chapters.

    Contact

    Curriculum Vitae (CV)

    Real-Time Heart Arrhythmia Detection Using Apache Spark Structured Streaming

    Sadegh Ilbeigipour, Amir Albadvi, Elham Akhondzadeh Noughabi
    Journal PaperJournal of Healthcare Engineering , Volume 2021 , 2021 April 22, {Pages }

    Abstract

    One of the major causes of death in the world is cardiac arrhythmias. In the field of healthcare, physicians use the patient’s electrocardiogram (ECG) records to detect arrhythmias, which indicate the electrical activity of the patient’s heart. The problem is that the symptoms do not always appear and the physician may be mistaken in the diagnosis. Therefore, patients need continuous monitoring through real-time ECG analysis to detect arrhythmias in a timely manner and prevent an eventual incident that threatens the patient’s life. In this research, we used the Structured Streaming module built top on the open-source Apache Spark platform for the first time to implement a machine learning pipeline for real-time cardiac arrhythmias det

    A new application of community detection for identifying the real specialty of physicians

    Saeed Shirazi, Amir Albadvi, Elham Akhondzadeh, Farshad Farzadfar, Babak Teimourpour
    Journal PaperInternational Journal of Medical Informatics , 2020 May 4, {Pages 104161 }

    Abstract

    BackgroundThere is an increasing trend in using network science methods and algorithms, including community detection methods, in different areas of healthcare. These areas include protein networks, drug prescriptions, healthcare fraud detection, and drug abuse. Counterfeit drugs, off-label marketing issues, and finding the healthcare community structures in a network of hospitals, are examples of using community detection in healthcare.ObjectiveThis paper attempts to find physicians’ real medical specialties based on their prescription history. As a novel application of community detection in the healthcare field, this knowledge can be used as an alternative for missing values of the healthcare databases. Therefore, it could help scienti

    Finding Influential Factors for Different Types of Cancer: A Data Mining Approach

    Munima Jahan, Elham Akhond Zadeh Noughabi, Behrouz H Far, Reda Alhajj
    Journal Paper , 2018 January , {Pages 147-168 }

    Abstract

    Cancer is one of the leading causes of death around the world. Finding the risk factors related to different types of cancer can help researchers understand the process of cancer development and find new ways of preventing the disease. Most of the researches done on cancer datasets focus only one type of cancer. This research aims to provide a new methodology for extracting significant influential factors affecting multiple cancer types by employing frequent pattern mining, association rule mining, and contrast set mining techniques. The datasets used are US general population collected from the National Health Interview Survey (NHIS) and the Surveillance, Epidemiology, and End Results (SEER) Program. The rules discovered have

    A Fuzzy Dynamic Model for Customer Churn Prediction in Retail Banking Industry

    Fatemeh Safinejad, Elham Akhond Zadeh Noughabi, Behrouz H Far
    Journal Paper , 2018 January , {Pages 85-101 }

    Abstract

    Nowadays, the consistency of customer relationship is not guaranteed. Since organizations are faced with many costs with losing their customers and to generate stable profits, the main focus of the organizations is based on customer retention. This research aims to develop a three-phase framework for fuzzy dynamic churn prediction of high-value customers. Three steps include identification of high-value customers, determination of the degree of churn with the help of fuzzy inference system, and prediction of their future churn. Proposed method was implemented on the database of a finance and credit institution successfully and provided us the ability to define churn rate in the banking industry, consider

    Handbook of Research on Data Science for Effective Healthcare Practice and Administration

    Elham Akhond Zadeh Noughabi, Bijan Raahemi, Amir Albadvi, Behrouz H Far
    Journal Paper , 2017 July 20, {Pages }

    Abstract

    Data science has always been an effective way of extracting knowledge and insights from information in various forms. One industry that can utilize the benefits from the advances in data science is the healthcare field. The Handbook of Research on Data Science for Effective Healthcare Practice and Administration is a critical reference source that overviews the state of data analysis as it relates to current practices in the health sciences field. Covering innovative topics such as linear programming, simulation modeling, network theory, and predictive analytics, this publication is recommended for all healthcare professionals, graduate students, engineers, and researchers that are seeking to expand their knowledge of efficient techniques f

    Application of Data Mining Techniques in Clinical Decision Making: A Literature Review and Classification

    Hakimeh Ameri, Somayeh Alizadeh, Elham Akhond Zadeh Noughabi
    Journal Paper , 2017 January , {Pages 257-295 }

    Abstract

    Data mining techniques are increasingly used in clinical decision making and help the physicians to make more accurate and effective decisions. In this chapter, a classification of data mining applications in clinical decision making is presented through a systematic review. The applications of data mining techniques in clinical decision making are divided into two main categories: diagnosis and treatment. Early prediction of medical conditions, detecting multi-morbidity and complications of diseases, identifying and predicting the chronic diseases and medical imaging are the subcategories which are defined in the diagnosis part. The Treatment category is composed of treatment effectiveness and predicting the average length of stay in hospi

    Predicting Students' Behavioral Patterns in University Networks for Efficient Bandwidth Allocation: A Hybrid Data Mining Method (Application Paper)

    Elham Akhond Zadeh Noughabi, Behrouz H Far, Bijan Raahemi
    Conference Paper2016 IEEE 17th International Conference on Information Reuse and Integration (IRI) , 2016 July 28, {Pages 102-109 }

    Abstract

    The effective bandwidth management in multi-service computer networks such as university networks has become a challenge in recent years. The growth of internet traffic and limitation of bandwidth resources persuade the information technology (IT) managers to focus on effective bandwidth allocation policies. One of the important issues discussed in this domain is how to assign the bandwidth fairly based on the priority levels. In this paper, focusing on the "priority-based bandwidth allocation", a hybrid data mining method is developed to manage the limited bandwidth in a university network more effectively. This method is composed of two main steps and uses the clustering and classification techniques. The main purpose is to detect, analyz

    Human resource performance evaluation from CRM perspective: a two-step association rule analysis

    Elham Akhondzadeh-Noughabi, Mohammad Reza Amin-Naseri, Amir Albadvi, Mohammad Saeedi
    Journal PaperInternational Journal of Business Performance Management , Volume 17 , Issue 1, 2016 January , {Pages 89-102 }

    Abstract

    Human resource performance evaluation is one of the main activities in human resource management that is critical for organisational development. In this paper, a new approach of using data mining techniques is proposed for HR evaluation from CRM perspective. In fact, a two-step association rule analysis is presented and implemented on the data of a public transportation organisation in Iran. The data relates to a call centre of this organisation, which is established to hear the citizens’ voice about the performance of the human resource. At the first step of the proposed technique, the results indicate the sectors with a dominant pattern of negative human resource performance and the ones with a positive performance. At the second step,

    A NEW APPROACH OF USING DATA MINING TOOLS FOR REDUCING COSTS OF QUALITY IN MEASURING CHEMICAL PARAMETERS

    Bidgoli E. Akhondzade Noghabi, M. Daneshmandi *, B. Minaei
    Journal PaperIndustrial Engineering & Management Sharif , Volume 32 , Issue 1.2, 2016 September 21, {Pages 13-21 }

    Abstract

    Exploring the hidden relations among the indices of multiple deprivation using a hybrid approach of data mining and complex networks

    Ehsan Momeni, Elham Akhondzadeh, Behrouz Minaei-Bidgoli
    Journal PaperManagement and Industrial Engineering , 2016 March 19, {Pages }

    Abstract

    A New Framework to Improve the Recruiting Process: Using Data Mining and Multi Criteria-Decision Making Techniques

    A. Akhondzadeh-Noughabi, E., Far, B. H. & Albadvi
    Conference Paper21th IAMB Conference, Montreal, Canada. , 2016 January , {Pages }

    Abstract

    Intelligent Decision Making for Customer Dynamics Management Based on Rule Mining and Contrast Set Mining

    Elham Akhond Zadeh Noughabi, Behrouz H Far, Amir Albadvi
    Journal Paper , 2016 January , {Pages 135-155 }

    Abstract

    In real world situations, customer needs and preferences are changing over time and induce segment instability. The aim of this paper is to explore the patterns of customer segments’ structural changes. This study examines how businesses can gain better insight and knowledge through using data mining techniques to support intelligent decision making in customer dynamics management. Up to now, no attempt was done to describe and explain segments’ structural changes or to investigate the impact of customer dynamics on these changes. In this paper, a general method is presented based on rule mining and contrast set mining to describe and explain this issue. This method provides explanatory and predictive analytics to enlarge t

    Mining the dominant patterns of customer shifts between segments by using top-k and distinguishing sequential rules

    Elham Akhondzadeh-Noughabi, Amir Albadvi
    Journal PaperManagement Decision , Volume 53 , Issue 9, 2015 October 19, {Pages 1976-2003 }

    Abstract

    Purpose – The purpose of this paper is to detect different behavioral groups and the dominant patterns of customer shifts between segments of different values over time. Design/methodology/approach – A new hybrid methodology is presented based on clustering techniques and mining top-k and distinguishing sequential rules. This methodology is implemented on the data of 14,772 subscribers of a mobile phone operator in Tehran, the capital of Iran. The main data include the call detail records and event detail records data that was acquired from the IT department of this operator. Findings – Se

    How Can We Explore Patterns of Customer Segments' Structural Changes? A Sequential Rule Mining Approach

    Elham Akhond Zadeh Noughabi, Amir Albadvi, Behrouz Homayoun Far
    Conference Paper2015 IEEE International Conference on Information Reuse and Integration , 2015 August 13, {Pages 273-280 }

    Abstract

    In real world situations, customer behavior is changing and evolving over time. It is necessary to consider this dynamism in customer segmentation analysis and other business-related activities to develop effective marketing strategies. The main aim of this study is to explore the patterns of customer segments' structural changes. Up to now, there has been no research on this particular topic. This is the first study that investigates the impact of customer dynamics on segments' structural changes. This paper tries to develop a method to describe and explain this issue. A new method is proposed based on the clustering and sequential rule mining techniques. Furthermore, a new definition and framework for finding distinguishing sequential rul

    The analysis of structural changes of customer segments by a hybrid method of clustering and association rule

    Elham Akhondzade Noghabi, amir albadvi, Mohammad Mahdi Sepehri
    Journal PaperJOURNAL OF BUSIENESS MANAGEMENT , Volume 7 , Issue 3, 2015 September 23, {Pages 515-542 }

    Abstract

    A new approach on using data mining techniques in identifying effective factors on customers’ satisfaction

    Mohammad Nasiri, Elham Akhondzade Noghabi, Behrouz Minaie Bidgoli
    Journal PaperJOURNAL OF BUSINESS MANAGEMENT , Volume 7 , Issue 1, 2015 March 21, {Pages 231-251 }

    Abstract

    One of the most important issues in the domain of customer relationship management is identifying the factors that affect customer‘s satisfaction. Accordingly, we focus on this subject and try to propose a new approach on using association rule technique in this domain. This technique provides us with identifying the relationship between different effective factors and the CSI index thorough if-then rules and also detecting the most effective factors which influence customer’s satisfaction. The results of implementing the proposed approach in “Bahman Diesel” company imply that customer’s satisfaction of mobile services is the most effective factor. The behavior of the company’s employees and the waiting time of reception have al

    A new application of rfm clustering for guild segmentation to mine the pattern of using banks’e-payment services

    Hamid Khobzi, Elham Akhondzadeh-Noughabi, Behrouz Minaei-Bidgoli
    Journal PaperJournal of Global Marketing , Volume 27 , Issue 3, 2014 May 27, {Pages 178-190 }

    Abstract

    With increasing use of point of sale terminals at stores, banks are seeking to achieve a bigger portion in such financial exchanges. An important problem for banks is to identify the most profitable professions. For this purpose, a new application using recency, frequency, and monetary (RFM)-based clustering and customer lifetime value analysis containing two extensions of RFM is proposed for guild segmentation. The methodology is applied on a real data from an Iranian state bank. The findings reveal that this methodology is applicable in practice and could be very effective for bank managers of any other banks.

    Mining customer dynamics in designing customer segmentation using data mining techniques

    lham Akhondzadeh-Noughabi, Amir Albadvi, Mohammad Aghdasi
    Journal PaperJournal of Information Technology Management , Volume 6 , Issue 1, 2014 March 21, {Pages 30-Jan }

    Abstract

    One of the main problems in dynamic customer segmentation is finding the dominant patterns of customer movements between different segments via time. Accordingly, we concentrate on the customer dynamics in this paper and try to find different groups of customers in transmissions between segments via time. The dominant characteristics of these groups are also investigated. To obtain this objective, a new hybrid technique based on the K-means algorithm, hierarchical clustering and association rule mining is presented and implemented on the data of one of the main telecommunication corporations in Iran. The results show that there are seven different groups of customers. Furthermore, the impact of customer dynamics on segments’ changes via t

    A new Dynamic Model for Knowledge Management : A case study of a Transportation Company

    Zahra Alighadr, Elham Akhoondzadeh Noghabi
    Journal PaperJOURNAL OF INDUSTRIAL MANAGEENT , Volume 6 , Issue 2, 2014 June 22, {Pages 327-350 }

    Abstract

    Nowadays knowledge of organizations is their most important assets. The importance of this intellectual property is very mush since the organizations' executive success without the management and proper use of this valuable resource, is difficult and sometimes impossible. So the only way to survive in the current competitive situations, is to implement appropriate knowledge management system and institutionalize it. In this research, a knowledge management model using system dynamics approach is presented and implied in a transportation as a case study. The reasons for the distance between the desired state of knowledge management in the company and its current state, has been extracted and analyzed by the presented model. In fact, it has b

    A new approach of using association rule mining for ranking the units of Naja based on performance

    B. Ahmadvand, A. M., Akhondzadeh-Noughabi, E., Mohammadiyani, Z., & Minaei-Bidgoli
    Journal PaperOrganizational Development of Police Journal , Issue 49, 2014 October 1, {Pages 41-61 }

    Abstract

    Current Teaching

    • MS.c.

      Data Science in Supply Chain Management

    • MS.c.

      Business Process Management Systems

    • Ph.D.

      Prediction methods

    Teaching History

    • Ph.D.

      Advanced Analytical Methods in Data Science

    • MS.c.

      Big Data Analytics

    • MS.c.

      Customer Relationship Management

    • MS.c.

      Data Mining

    • MS.c.

      Data Science in Supply Chain Management

    • MS.c.

      Research Methodology

    • 2020
      Dabiran, Kiana
      Mining patients opinions to evaluate the service quality in online medical service providers by using machine learning techniques
    • 2020
      Mansouri Gavari, Hadiseh
    • 2020
      Bakhtiari, Fateme
    • 2020
      Zandi, Mehrnoush
    • 2021
      Ghasemzade, Mohamad Mehdi
    • 2021
      Maddah Safaie Torogh, Javad
    • 2022
      Anbari moghadam, Saeed
    • 2021
      Moradi, Mahsa
      Designing a dynamic pricing model for services based on deep learning for passenger transportation
      Data not found
    • Awarded as first top faculty in research, department of Industrial Engineering, University of Eyvanakey, Semnan, Iran, 2013
    • Awarded distinguished faculty, department of Industrial Engineering, University of Eyvanakey, Semnan, Iran, 2012
    • Best paper in the first national conference of Quality Management and Business Excellence, Tehran, Iran, 2014
    • Canadian Institute of Health Research (CIHR) Fellowship for one year ($70,000), 2017-2018 & Eyes High Fellowship for two years ($100,000), 2015-2017
    • Ranked second among MSc students on graduation
    • Selected paper in IEEE 15th International Conference on Information Reuse and Integration (IRI), San Francisco, CA, USA, 2015
    • Ranked first among PhD students on graduation
      Data not found

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