Number of Volumes 3
Number of Issues 5
Number of Articles 55
Number of Contributors 108
Article View 27,774
PDF Download 17,109
View Per Article 504.98
PDF Download Per Article 311.07
 
Acceptance Rate (2024) 52
Time to Accept (Days) 35
Number of Indexing Databases 13
Number of Reviewers 135
Journal Features
  • Year of publication: 2024
  • Specialized area: Interdisciplinary studies in the field of knowledge, technology and digital economy
  • Type of articles that can be published: Research Articles 
  • Publication status:  printed and electronic
  • Country of publication: Iran  
  • Publisher: Hazrat-e Masoumeh University
  • Frequency of publication: Semiannual
  • Number of articles in each issue: At least 12 articles
  • Publication language: English  
  • Type of reviewing:  Double blind peer review
  • Reviewing time: 1-2 months
  • Initial review period: 7 (Days)
  • Open Access: Yes
  • Indexed & Abstracted: Yes
  • Citation method:  APA 7th edition (2020)
  • Publication email:jkes@hmu.ac.ir
  • Backup email: journalknowledgeeconomystudies@gmail.com
  • ISSN: 3060-7329
  • Plagiarism Screening : iThenticate
  • The cost of sending and printing articles: Free

Knowledge Economy Studies is an open access double-blind peer reviewed publication which is published by Hazrat-e Masoumeh University.  This journal is a quarterly publication, which publishes original research papers on journal scope.  This journal follows Committee on Publication Ethics (COPE) and publishes research findings in fields related to the relationship between knowledge, technology and digital economy. All submitted manuscripts are checked for similarity through Samim Noor software to ensure their authenticity and then rigorously peer-reviewed by expert reviewers. (Read More about the journal...).


The Knowledge Economy Studies journal has signed a cooperation agreement with the Iranian Information Technology Audit Scientific Association.


The Knowledge Economy Studies journal has signed a cooperation agreement with the  Iran Association of Science Parks and Innovation Organizations (STPIA).


When submitting the article, please upload the decleration of originality  and authors' conflict of interest forms according to the description of the "Authors' Guide" section.


We are proud to announce that the Journal of Knowledge Economy Studies (JKES), published by Hazrat-e Masoumeh University, has been officially indexed in the Islamic World Science Citation Center (ISC). This milestone reflects the journal’s commitment to academic excellence, rigorous scientific peer review, and adherence to international publishing standards.


We are delighted to announce that the Journal of Knowledge Economy Studies (JKES), published by Hazrat-e Masoumeh University, has been awarded Grade “B” by the Ministry of Science, Research, and Technology of Iran (MSRT).

Individual Level

Developing a Deep Learning–Based Model for Predicting and Detecting Fraud in Financial Statements

Pages 1-10

https://doi.org/10.22034/kes.2026.2083828.1098

Narges Mehrabi Hashtchin, Gholamreza Soleymani Amiri

Abstract This study develops a data-driven framework for financial statement fraud detection by benchmarking machine learning, deep learning, and hybrid classifiers under a unified, leakage-resistant evaluation protocol. Fraud cases are identified from the U.S. Securities and Exchange Commission’s Accounting and Auditing Enforcement Releases (AAERs) and matched with Compustat data over 1991–2014, producing 122,526 firm-year observations, including 902 confirmed fraud cases. Four structured-input configurations are evaluated: 28 raw financial statement items, 14 financial ratios, their combined set (28+14), and a parsimonious seven-feature subset (six ratios plus Altman’s Z-score). Features are selected using minimum redundancy–maximum relevance (mRMR), class imbalance is addressed via cost-sensitive learning, and performance is assessed with a firm-level 80/20 split and stratified group-based five-fold cross-validation within training. Empirical results indicate that deep and hybrid models consistently outperform classical tabular baselines, reflecting non-linear and interaction-driven fraud signals. The Transformer achieves the most stable and highest overall performance, reaching 0.98898 accuracy and a 0.51087 F1-score under the seven-feature configuration. The combined raw-item and ratio inputs outperform ratios alone, implying incremental predictive value in raw accounting items, while the best overall outcomes are obtained with the parsimonious seven-feature subset. Collectively, the findings support the study’s hypotheses and demonstrate the effectiveness of attention-based modeling for financial statement fraud detection.

Macro Level

Intelligent Risk Processing and Opportunity Formation in Financial Markets: The Superior Performance of HERC Algorithm in Efficient Portfolio Construction

Pages 11-20

https://doi.org/10.22034/kes.2026.2077852.1088

Mahsa Safavi Iranji, Majid Zanjirdar

Abstract Hierarchical portfolio optimization methods, particularly the Hierarchical Equal Risk Contribution (HERC) approach, have become increasingly prominent in financial research due to their effectiveness in balancing risk and enhancing diversification. Unlike traditional methods such as Equal-Weight (EW) and Inverse Volatility (IV), which rely on oversimplified assumptions and often underperform in volatile markets, HERC allocates capital by distributing risk more efficiently across the assets. This study examined the performance of the HERC model relative to EW and IV to determine its ability to convert risk into investment opportunities under fluctuating market conditions. The methodology followed a structured process that includes deriving variables from multiple data sources, conducting thorough data cleaning and normalization, and implementing traditional allocation models as benchmarks. Advanced hierarchical clustering techniques were then applied to provide a more innovative allocation framework. Rigorous hypothesis testing was used to validate the results, and portfolio performance was evaluated using established statistical metrics. Findings revealed that HERC—especially its single linkage and average linkage versions—delivers substantially higher risk-adjusted returns, as measured by the Sharpe and Sortino ratios, compared to EW and IV. The proposed methodology not only improves overall investment outcomes but also enables more effective risk and return management, making it a strong alternative to conventional portfolio construction and risk evaluation approaches.

Organizational Level

When Sustainability Meets Machine Learning: Reinforcement and Neural Evidence from an Emerging Market

Pages 21-30

https://doi.org/10.22034/kes.2026.2077788.1087

Setareh Azadvar, Alireza Azarberahman

Abstract This study examines how firm-level environmental and social performance relates to stock price volatility in an emerging market characterized by limited transparency and weaker institutional frameworks. While prior research largely relies on linear models and focuses on developed economies, this study adopts a dynamic, data-driven perspective to capture potentially nonlinear and time-dependent sustainability–risk patterns. Using a panel of non-financial firms listed on the Tehran Stock Exchange (TSE) over the period 2011–2023, firm-level environmental and social indicators are constructed based on systematic analysis of sustainability disclosures. Empirical results from conventional linear regressions indicate weak and statistically insignificant average associations between sustainability performance and stock volatility. However, learning-based models, including reinforcement learning and LSTM neural networks, demonstrate superior ability to capture nonlinear and dynamic volatility patterns conditional on sustainability-related information. These findings suggest that sustainability disclosures contain predictive information for volatility dynamics, even when linear risk-reduction effects are not evident. The study highlights the importance of flexible modeling frameworks when assessing the financial implications of environmental and social performance in emerging markets.

Organizational Level

A Survey on a Conceptual Model of Enterprise

Pages 31-40

https://doi.org/10.22034/kes.2026.2071314.1080

Zeinab Rajabi, Seyed Mohsen Rahnamafard

Abstract Enterprise ontology serves as a foundational framework for semantically comprehending the nature of organizations and the essential components that uphold their integrity. The systematic and conceptual understanding of organizations has garnered significant attention from researchers due to its pivotal role in various domains, including business modelling, enterprise architecture, business process management, context-aware systems, application development, interoperability across diverse systems and platforms, knowledge management, organizational learning and innovation, and conflict resolution within organizations. Achieving a consensus on the concepts related to the fundamental elements that constitute an organization is therefore critical. 
This study aimed to conduct a comprehensive analysis and comparison of the existing conceptual models of enterprises as documented in scholarly articles published over the past decade.
The comparison revealed significant variations in coverage, adaptability, and maturity across models, with many lacking completeness or alignment with comprehensive frameworks like Zachman’s framework. The strengths and weaknesses of each model were discussed and a robust framework for their evaluation was introduced. To facilitate this evaluation, we proposed several pertinent criteria derived from established methodologies for assessing the ontologies. Furthermore, we identified contemporary challenges and issues that have been overlooked in prior studies, offering insights and suggestions for future research directions in enterprise modelling. Ultimately, a roadmap for enhancing the systematic understanding of organizations through refined enterprise ontology frameworks was presented.

Macro Level

Readiness Assessment for Big Data Analysis in Citizen Relationship Management (Case Study of Tehran Governorate)

Pages 41-50

https://doi.org/10.22034/kes.2026.2081637.1095

Roohallah Noori, Mojtaba Farrokh, Vahid Heydari

Abstract This research examines how external organizational factors influence the acceptance and readiness assessment for integrating big data analytics into citizen relationship management at Tehran Municipality. The study employs Davis's Technology Acceptance Model (TAM) in an applied, field-based design. Data were collected using a standardized questionnaire based on TAM, with a sample of 105 managers and experts from Tehran Municipality, and analyzed using structural equation modeling in SPSS and SmartPLS software. The questionnaire comprises five main dimensions, with validated reliability and validity. Results indicate that external factors (scalability, data storage and processing, data analysis capabilities, flexibility, and reliability), perceived ease of use, and perceived usefulness significantly impact the acceptance of big data analytics. Furthermore, organizational external components such as data storage and processing, flexibility, and reliability lead to satisfaction and intention to utilize big data analytics in managing citizen relations by creating perceived usefulness and confirming user expectations. These findings corroborate previous research and demonstrate that strategic attention to training, expert recruitment, hardware development, infrastructure enhancement, and information security can facilitate effective adoption of big data analytics, thereby creating opportunities for research development in legal, economic, and other fields.

Macro Level

Ranking the Challenges of Cryptocurrency Development in Iran

Pages 51-60

https://doi.org/10.22034/kes.2026.2073895.1086

mohammad ghaffary fard, Seyed Ali Akbar sadat, mohsen jafarian

Abstract The emergence of cryptocurrencies in recent years has been a novel phenomenon in the realm of digital economics, presenting opportunities and challenges for countries. The main aim of this study is to examine the challenges of developing cryptocurrencies with an emphasis on the Government Transformation. From the perspective of purpose, it is applied research, and in terms of subject matter, it falls within descriptive research. The data collection method used in this study was field-based through a questionnaire. In the first stage, challenges related to the development of cryptocurrencies were identified through library research using the Government Transformation document; subsequently, these challenges were formulated into a questionnaire and evaluated by experts using the Analytic Hierarchy Process (AHP). Finally, with the help of Expert Choice software, these challenges were ranked. The study results which is validated by a strong inconsistency rate of 0.06 indicate that, when prioritizing the main challenges, the weakness in macro-management of cryptocurrencies holds the first rank with a coefficient of 0.429, while the increasing share of hidden mining in the total cryptocurrency production market in the country sits at the last rank with a coefficient of 0.114Given the ranking of challenges and the identification of weakness in macro-management as the main problem, policymakers must immediately proceed to establish a unified and powerful command structure and prioritize full clarification of responsibilities. Simultaneously, to mitigate social risks and maintain stability, protecting small capital and safeguarding public trust in the financial system must be integrated as core strategies in planning.

Individual Level

Proposing A Model To Selecting Knowledge Management Technologies Based On Promethee II Algorithm: A Case Study of Eghtesad Novin bank in Iran

Articles in Press, Accepted Manuscript, Available Online from 01 February 2026

https://doi.org/10.22034/kes.2026.2077958.1089

Ameneh khadivar, samira masoudi, Zahra Ghorbani

Abstract Nowadays, in organizations, selecting the appropriate knowledge management (KM) technology has become one of the senior managers’ concerns in the KM area. The purpose of this study is to provide a model to help decision-makers with identifying and selecting the most appropriate KM technologies in‌ an ‌Iranian bank. In this research, KM technologies and criteria to select them are identified and are classified by doing librarian studies. Two questionnaire surveys were conducted to weigh technology selection criteria and determining the value of technologies based on criteria among KM experts of bank. The weight of each criterion was assigned by applying the analytical hierarchy process (AHP) and finally, all the technologies were ranked by using the PROMETHEE II method. The results indicate that in top rank is networking technology followed by organizational group communication/private social network technologies, social networking technologies, web/multimedia presenting technologies, web conferencing technologies, large audience webinars technologies, communications and collaborations technologies, virtual three-dimensional immersive collaboration technologies, and finally groupware.

Macro Level

The Role of Fintech in Shaping Modern Banking: A Bibliometric Analysis of Past, Present, and Future

Volume 1, Issue 2, October 2024, Pages 43-63

https://doi.org/10.22034/kes.2024.717151

Fatemeh Rasti, Mohammad Hosein Soleimani Sarvestani, Saeed Akhlaghpour

Abstract This systematic mapping study provides a comprehensive review of the existing literature on Fintech and its role in banking, exploring the current state, development, and future prospects of Fintech research. By analyzing 687 Fintech-related articles from academic databases covering the years 2015 to 2024, this article examines the evolution of Fintech. After describing the process of this phenomenon we identified a significant increase in research activity within this field during the past 5 years. This study offers a unique viewpoint, enabling both researchers and practitioners to reconsider the future direction and scope of Fintech research. This paper reviews the literature on Fintech and its interaction with banking, encompassing innovations in payment systems, credit markets, and insurance, with Blockchain-powered smart contracts also playing a role. It defines Fintech, presents relevant statistics and key insights, and reviews both theoretical and empirical studies. This review is centered around research questions, summarizing current knowledge, and concluding with recommendations for future research avenues.

Organizational Level

The Impact of Digital Marketing Competencies on Performance of Sales Force

Volume 1, Issue 2, October 2024, Pages 135-149

https://doi.org/10.22034/kes.2024.2041081.1012

Zohreh Mohammadyari

Abstract In the 21st century, the sales landscape has grown increasingly complex due to the shifts in behavioral, technological, and managerial practices. The performance of sales teams has been a long-standing topic of interest for both academics and marketing professionals. Understanding the factors that boost the performance of sales force is a key aspect of sales management and can greatly influence a company's success and survival. This study aims to explore the effect of digital marketing competencies on the sales performance of small and medium-sized enterprises (SMEs) in Ilam city. The research is applied in nature and utilizes a descriptive-correlational approach, with data gathered through surveys. The study's population consists of the sales forces of active SMEs in Ilam city. Given the small size of the population, a census sampling method was employed. After data collection, 132 valid questionnaires were used to be analyzed. The research instrument was a standardized questionnaire, with content validity confirmed by subject matter experts and reliability established through Cronbach’s alpha test. Data analysis was conducted using LISREL software. The findings indicated that digital marketing competencies have a significant and positive influence on the sales performance of SMEs in Ilam city. Moreover, technical-specialized, human-behavioral, and analytical competencies were also found to positively impact the performance of sales force. The results of this study suggest that digital marketing skills are critical for improving the performance of sales force. By providing sales teams with the necessary digital marketing tools and strategies, companies can enhance customer engagement and drive sales. Integrating digital marketing into sales operations can lead to better customer interaction, increased lead generation, and improved conversion rates. Sales professionals with digital marketing expertise are better equipped to navigate the evolving digital marketing landscape and meet the changing demands of modern consumers.

Organizational Level

Evaluation of the Performance of Deep Learning Models in Cryptocurrency Price Prediction: A Case Study of Bitcoin, Dogecoin, Ethereum, and Ripple

Volume 2, Issue 1, April 2025, Pages 7-19

https://doi.org/10.22034/kes.2025.2054189.1046

Reza Taleblou, Parisa Mohajeri

Abstract Cryptocurrencies, as one of the emerging asset classes, have gained significant popularity in recent years. Accurate forecasting of cryptocurrencies’ prices has become highly attractive for both researchers and investors due to their volatile and non-linear price behavior. However, predicting the cryptocurrencies’ prices accurately remains challenging due to their substantial fluctuations and complex dynamics. Research findings indicated that the methods of deep learning and neural networks outperform traditional econometric approaches in forecasting financial and economic time series. Among the techniques of neural network and deep learning, various types of Recurrent Neural Network (RNN) models have been proven to be effective. This study employed three Recurrent Neural Network architectures—RNN, Long Short-Term Memory (LSTM), and Gated Recurrent Unit (GRU)—to predict the logarithm of the prices of four major cryptocurrencies of Bitcoin (BTC), Dogecoin (DOGE), Ethereum (ETH), and Ripple (XRP). Daily time-series data from January 17, 2018, to December 18, 2024, were utilized for this purpose. The data were collected using the cryptocmd python package. The experimental results which were assessed using four metrics—Root Mean Square Error (RMSE), Mean Absolute Error (MAE), Mean Absolute Percentage Error (MAPE), and Symmetric Mean Absolute Percentage Error (SMAPE)—revealed two key findings: First, as the forecasting horizon increases, the required input size for achieving the best predictions increases for all models. Second, the LSTM model demonstrates a superior performance in predicting the prices of major cryptocurrencies for 1-day and 30-day horizons, whereas the GRU model exhibits the lowest prediction error for a 7-day horizon. These findings provided valuable insights for estimating the mean equation, which is instrumental in forecasting the expected returns of cryptocurrency assets for risk management purposes.

Organizational Level

Smart Treasury: Leveraging Artificial Intelligence and Robotic Process Automation for Financial Excellence

Volume 1, Issue 2, October 2024, Pages 65-86

https://doi.org/10.22034/kes.2024.717186

Ali Shirzad, Ali Rahmani

Abstract This research study aims to investigate the role of Artificial Intelligence (AI) in efficient management of public financial systems and treasury functions. AI involves a broad array of knowledge, including various concepts, methodologies, strategic tools, and diverse applications. It can be defined as the study of systems that gather inputs from the environment and respond through actions.  Using AI in financial management and treasury presents distinct challenges and opportunities, as many treasury tasks have transitioned from physical to virtual processes, with automation advancing quickly. Financial and treasury teams are largely made up of knowledge workers who make decisions and perform analyses within dynamic frameworks. These frameworks must take into account both external and internal factors, as well as the effects of any actions on treasury outcomes. AI in finance and treasury functions closely mirrors the complexity of human nervous system, as it extends well beyond the basic automation. Like the nervous system, AI in these fields must process data rapidly and accurately, handling tasks such as data collection, classification, and integration into broader datasets. Today, neural networks within AI have advanced significantly and are widely applied across various treasury management areas, including early fraud detection, risk assessment, liquidity management, debt management, financial data quality control, extraction of hidden financial insights, accounting, and financial reporting. This review article aims to introduce readers to the various areas where AI can be applied in treasury operations, while also highlighting opportunities for enhancing accounting practices and driving digital transformation in treasury management. Additionally, it explores some potential research areas within these two fields.

Organizational Level

The Impact of Customer Knowledge Management on Service Quality with the Mediating Role of Open Innovation

Volume 1, Issue 2, October 2024, Pages 117-133

https://doi.org/10.22034/kes.2024.717143

Sepideh Khodabakhsh, Mona Jami pour, Rasoul Abbasi, Mohammad Asarian

Abstract Service quality (SQ) is crucial for customer retention, making it essential for managers to understand the factors influencing it. In today’s competitive landscape, organizations are increasingly investing in customer knowledge management (CKM) to enhance their service delivery. Although substantial research has been conducted on SQ, significant gaps persist, highlighting the need for further investigation. This study addresses these gaps by exploring the impact of CKM on SQ, with a particular focus on the mediating role of open innovation (OI). Adopting a quantitative approach, the research employs a descriptive correlational design and utilizes structural equation modeling for data analysis. The study sample comprises 200 companies in the information technology (IT) sector in Tehran, of which 139 completed the questionnaires. The obtained data were analyzed using AMOS and SPSS software. The findings indicate a positive and significant relationship between CKM and SQ, confirming that OI serves as a mediator in this relationship. Organizations that effectively integrate CKM with OI are more likely to achieve higher service quality, underscoring the importance of these strategies for enhancing customer satisfaction.

Organizational Level

Exploring the Implementation of Codes of Ethics in the Iranian ICT Sector: A Grounded Theory Approach

Volume 1, Issue 1, April 2024, Pages 157-178

https://doi.org/10.22034/kes.2024.2045639.1028

Mohammad Reza Sadeghi, Mohammad Hosein Soleimani Sarvestani, Saeed Akhlaghpour, Hadi Aref

Abstract Without effective mechanisms for implementation, a code of ethics would not impact employees’ behavior. This study aims to inductively investigate implementing a code of ethics to improve the current understanding of this subject and make implementing a code of ethics in organizations more effective. To this end, the Grounded Theory (GT) approach is used. The research sample comprises managers and employees from 12 ICT companies in the Tehran Stock Exchange. Data were collected by conducting interviews and using the theoretical sampling method. On this basis, 23 HR managers/experts were interviewed. The collected data were analyzed using the approach proposed by Strauss and Corbin (1998). The findings indicate that organizations are driven to implement a code of ethics due to two main reasons: external pressure and internal needs. In implementing a code of ethics, they face challenges such as low top management support, improper financial situation, and unsupportive employee perceptions and attitudes. To implement a code of ethics, surveyed organizations take initiatives such as code of ethics definition and redefinition, communication, code of ethics training, punishing violations, and awarding obligations and social methods. Such initiatives can improve an organization’s ethical climate and create a distinguished identity, whereas they can yield undesired consequences if proven unsuccessful.

Organizational Level

Identification of Information Technology Tools in Strategy Implementation: A QFD Approach

Volume 1, Issue 2, October 2024, Pages 221-239

https://doi.org/10.22034/kes.2024.2043816.1020

Samira Loghman, Hamidreza Yazdani, Amin Hakim, Asadollah Kordnaeij

Abstract One of the important challenges for organizations is that many strategic plans are not successfully implemented. Information technology (IT) tools can enable organizations to effectively implement their strategies by providing the necessary information infrastructure at various levels of the organization and among top and strategic managers. The main objective of this research is to identify the IT tools required to implement the strategies of Mellat Bank using the quality function deployment (QFD) approach. The research method in terms of outcome is categorized as developmental research, in terms of objective as applied research, and in terms of method as descriptive qualitative research. The statistical community in this study consists of experts and specialists from Mellat Bank Tehran. This research was conducted over one year, from 2019 to 2020. This research uses the method of extending the quality performance to translate strategies from high to low levels. In this study, the QFD method was used to translate strategies from high-level to low-level. To this end, QFD matrices were designed for each design subject, and the necessary IT tools for the expected functions were identified and scored using expert opinions. The findings show that for each strategy in an organization, we require specific information technology tools to execute the strategy within the organization properly. This study introduced the necessary tools for five strategic subjects, including integration and acceleration of design, production, and delivery of banking products and services, design and implementation of market penetration strategies, asset generation, improvement of credit processes, and financial and managerial independence of branches. Utilizing the identified IT tools will remove and reduce the barriers to implementing strategies and the strategic superiority of top-level and executive managers of organizations.

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