Welcome to IKU Institutional Repository


OpenAccess@IKU is Istanbul Kultur University's Institutional Repository , established in June 2014 to digitally store and provide open access to academic and artistic outputs in line with international standards and intellectual property rights. The system includes various outputs such as articles, presentations, theses, books, book chapters, reports, encyclopedias, and works of art produced by the university's faculty members and students.

Supported by @SelenSoft Yazılım



Recent Submissions

  • Item type:Publication, Access status: Open Access ,
    Combination Ensemble and Explainable Deep Learning Framework for High-Accuracy Classification of Wild Edible Macrofungi
    (MDPI, 2025) KORKMAZ, ARAS FAHRETTİN; Ekinci, Fatih; Kumru, Eda; Altas, Sehmus; Gunes, Seyit Kaan; Yalcin, Ahmet Tunahan; Guzel, Mehmet Serdar; Akata, Ilgaz
    Accurate identification of wild edible macrofungi is essential for biodiversity conservation, food safety, and ecological sustainability, yet remains challenging due to the morphological similarity between edible and toxic species. In this study, a curated dataset of 24 wild edible macrofungi species was analyzed using six state-of-the-art convolutional neural networks (CNNs) and four ensemble configurations, benchmarked across eight evaluation metrics. Among individual models, EfficientNetB0 achieved the highest performance (95.55% accuracy), whereas MobileNetV3-L underperformed (90.55%). Pairwise ensembles yielded inconsistent improvements, highlighting the importance of architectural complementarity. Notably, the proposed Combination Model, integrating EfficientNetB0, ResNet50, and RegNetY through a hierarchical voting strategy, achieved the best results with 97.36% accuracy, 0.9996 AUC, and 0.9725 MCC, surpassing all other models. To enhance interpretability, explainable AI (XAI) methods Grad-CAM, Eigen-CAM, and LIME were employed, consistently revealing biologically meaningful regions and transforming the framework into a transparent decision-support tool. These findings establish a robust and scalable paradigm for fine-grained fungal classification, demonstrating that carefully engineered ensemble learning combined with XAI not only advances mycological research but also paves the way for broader applications in plant recognition, spore analysis, and large-scale vegetation monitoring from satellite imagery.
  • Item type:Publication, Access status: Restricted ,
    A Hybrid Deep Reinforcement and Machine Learning-Based Intrusion Detection System for Dynamic XSS Attacks
    (John Wiley and Sons Ltd., 2025) Kara, Mustafa; Okur, Fatma Betul; DURMUŞKAYA, MUHAMMED ERSİN; Kabasakaloglu, Murat Utku; Okutan Kara, Ayse
    Web-based systems are vulnerable to continuously evolving or self-updating attacks such as Cross-Site Scripting (XSS). Traditional Intrusion Detection Systems (IDS) provide limited protection against this threat through signature-based and anomaly-based methods. In this study, Machine Learning (ML) methods are used in conjunction with Deep Reinforcement Learning (DRL) techniques. In the proposed approach, ML methods are utilized to rapidly detect known attacks, while DRL provides adaptive learning against more general and unknown threats. These two components are trained independently and then make decisions through a weighted combination during the prediction phase. The aim is to address the shortcomings of current IDS systems in defending against dynamic XSS attacks. Experimental results show that, in real-time IDS environments, combining Random Forest with Word2Vec ensures detection within 10 ms, maintains an F1 score of about 0.99, and keeps computational cost minimal. In contrast, for offline or SOC-based setups where longer training and adaptive learning are acceptable, the DDQN-Word2Vec combination proves most effective. Overall, the proposed hybrid system delivers scalable, real-time protection against dynamic and zero-day web threats.
  • Item type:Publication, Access status: Open Access ,
    Promoting Healthy Eating and Activity in School Children: A Quasi-Experimental Study
    (Oxford University Press, 2025) Peker, S.; Akbulut, M; Ceviker, R.; BALTACI, PELİN CİN; Tanriover, O.
  • Item type:Publication, Access status: Restricted ,
    Inequalities of the Turán-Type for the Le Roy Type's Mittag-Leffler Function
    (John Wiley and Sons Ltd, 2025) Mert Coskun, Oya; ÇETİNKAYA, ASENA; Altinkaya, Sahsene
    This paper presents the necessary and sufficient conditions for monotonicity of the Mittag-Leffler function of the Le Roy type (abbr. MLR-functions), taking into account its special place in the theory of analytic functions. Mehrez and Sitnik studied the monotonicity of the ratio of sections on the series of Mittag-Leffler function (MLF) and developed some Tur & aacute;n-type inequalities. These inequalities have a wide range of applications in understanding the analytical properties of functions. The proposed work is a study for MLR-functions. The primary objective of this study is the development of the Tur & aacute;n-type inequalities and subsequent validation of these inequalities on specific intervals. In addition, the log-convex property of this function is analyzed, and the theoretical significance of this property is elaborated.
  • Item type:Publication, Access status: Open Access ,
    Surrealist Dreams of Artificial Intelligence: Revisiting Frederick Kiesler's "Endless House"
    (Interaction Design and Architecture(s), 2025) KARABAĞ, ÇİĞDEM; Tekin, İlke
    The dream world of Surrealism bases itself on critical ways of thinking contrary to the status quo that envision new ways of life. Today, these imaginations are reflected in speculative fiction produced with artificial intelligence (AI) software. Generative AI creates visuals from text using existing digital datasets. AI-generated speculative fiction fosters critical thinking by expanding intellectual boundaries and is a remarkable innovation in human and robot collaboration. The aim in this paper is to examine AI's speculative creation processes and limits of imagination and conduct a comparative analysis through AI reproductions of surrealist spaces. This analysis involves surrealist architect Frederick Kiesler's "Endless House". This two-stage study was conducted with an exploratory case study model using generative AI applications and visual data analysis. The analysis compared the outputs of the Midjourney AI, OpenAI, Leonardo AI, and DALL-E 3 applications, and discussed the exploration process of Midjourney in detail. The findings show that AI's exploration process and limitations depend on how defined the subject is in the prompt text and the meanings and the weight in the databases of the keywords used.