ICCK Transactions on Intelligent Systematics

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Online ISSN: 3068-5079 | Print ISSN: 3069-003X
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ICCK Transactions on Intelligent Systematics is a peer-reviewed academic journal dedicated to advancing the theory, methodology, and innovative applications of intelligent systems.
DOI Prefix: 10.62762/TIS

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Recent Articles

Free Access | Research Article | 27 July 2025 | Cited: Crossref logo  2 , Scopus 2
Capturing Poetic Essence: Text Summarization and Visual Generation via Multimodal
ICCK Transactions on Intelligent Systematics | Volume 2, Issue 3: 160-168, 2025 | DOI: 10.62762/TIS.2025.405393
Abstract
Multimodal intelligent systems that integrate natural language processing with generative visual synthesis represent a frontier in intelligent information processing. This work addresses the design and evaluation of such a pipeline, using poetic content as a stress-test domain due to its high density of figurative language and abstract semantics. Building upon the PoemSum dataset, we construct a two-stage multimodal pipeline: first employing transformer-based models (BART and T5) for abstractive summarization, then leveraging Stable Diffusion for visual synthesis from the generated summaries. The summarization stage focuses on figurative interpretation that captures metaphorical and symbolic... More >

Graphical Abstract
Capturing Poetic Essence: Text Summarization and Visual Generation via Multimodal
Free Access | Research Article | 11 July 2025 | Cited: Crossref logo  6 , Scopus 7
Multi-UAV Cooperative Task Allocation Based on Multi-strategy Clustering Ant Colony Optimization Algorithm
ICCK Transactions on Intelligent Systematics | Volume 2, Issue 3: 149-159, 2025 | DOI: 10.62762/TIS.2025.409447
Abstract
To address the issues of low solving efficiency and susceptibility to local optima in multi-unmanned aerial vehicle (multi-UAV) task allocation algorithms within urban areas, this study constructs a task allocation model aiming to minimize economic costs for material delivery and reduce the urgency of rescue task demands. A multi-strategy clustering ant colony optimization algorithm (KMACO) is proposed for solution. Specifically, the K-means clustering method is utilized to partition the number of rescue tasks assigned to each UAV. In the ant colony optimization algorithm, a pheromone update strategy and a random evolution strategy are introduced to guide population search directions, thereb... More >

Graphical Abstract
Multi-UAV Cooperative Task Allocation Based on Multi-strategy Clustering Ant Colony Optimization Algorithm
Free Access | Research Article | 09 July 2025 | Cited: Crossref logo  2 , Scopus 2
Topic Mining and Sentiment Analysis for Consumer Reviews of Automotive Spare Parts on E-commerce Platforms
ICCK Transactions on Intelligent Systematics | Volume 2, Issue 3: 137-148, 2025 | DOI: 10.62762/TIS.2025.106283
Abstract
Consumer satisfaction in automotive spare parts e-commerce is shaped by multidimensional factors that are difficult to quantify through conventional survey methods. This paper presents an intelligent text mining framework that integrates multiple machine learning and natural language processing techniques to systematically extract and analyze consumer sentiment from 1,236 validated Taobao reviews. Specifically, TF-IDF (Term Frequency-Inverse Document Frequency) is employed for discriminative keyword extraction, semantic network analysis is applied to model inter-word relational structures, and LDA (Latent Dirichlet Allocation) topic modeling is used to discover latent thematic patterns, ide... More >

Graphical Abstract
Topic Mining and Sentiment Analysis for Consumer Reviews of Automotive Spare Parts on E-commerce Platforms
Free Access | Research Article | 25 June 2025 | Cited: Crossref logo  3 , Scopus 3
ColoSegNet: Visual Intelligence Driven Triple Attention Feature Fusion Network for Endoscopic Colorectal Cancer Segmentation
ICCK Transactions on Intelligent Systematics | Volume 2, Issue 2: 125-136, 2025 | DOI: 10.62762/TIS.2025.385365
Abstract
Accurate segmentation of colorectal cancer (CRC) from endoscopic images is crucial for computer-aided diagnosis. Visual intelligence enhances detection precision, supporting clinical decision-making. However, current segmentation methods often struggle with accurately delineating fine-grained lesion boundaries due to limited context comprehension and inadequate attention to optimal features. Additionally, the poor fusion of multi-scale semantic cues hinders performance, especially in complex endoscopic scenarios. To address these issues, we introduce ColoSegNet, a Visual Intelligence-Driven Triple Attention Feature Fusion Network designed for high-precision CRC segmentation. Our approach beg... More >

Graphical Abstract
ColoSegNet: Visual Intelligence Driven Triple Attention Feature Fusion Network for Endoscopic Colorectal Cancer Segmentation
Free Access | Research Article | 19 June 2025 | Cited: Crossref logo  13 , Scopus 10
MamNet: A Novel Hybrid Model for Time-Series Forecasting and Frequency Pattern Analysis in Network Traffic
ICCK Transactions on Intelligent Systematics | Volume 2, Issue 2: 109-124, 2025 | DOI: 10.62762/TIS.2025.347925
Abstract
The abnormal fluctuations in network traffic may indicate potential security threats or system failures. Therefore, efficient network traffic prediction and anomaly detection methods are crucial for network security and traffic management. This paper proposes a novel network traffic prediction and anomaly detection model, MamNet, which integrates time-domain modeling and frequency-domain feature extraction. The model first captures the long-term dependencies of network traffic through the Mamba module (time-domain modeling), and then identifies periodic fluctuations in the traffic using Fourier Transform (frequency-domain feature extraction). In the feature fusion layer, multi-scale infor... More >

Graphical Abstract
MamNet: A Novel Hybrid Model for Time-Series Forecasting and Frequency Pattern Analysis in Network Traffic
Free Access | Research Article | 05 June 2025 | Cited: Crossref logo  3 , Scopus 4
Efficient Polyp Segmentation via Attention-Guided Lightweight Network with Progressive Multi-Scale Fusion
ICCK Transactions on Intelligent Systematics | Volume 2, Issue 2: 95-108, 2025 | DOI: 10.62762/TIS.2025.389995
Abstract
Accurate and real-time polyp segmentation plays a vital role in the early detection of colorectal cancer. However, existing methods often rely on computationally expensive backbones, single attention mechanisms, and suboptimal feature fusion strategies, limiting their practicality in real-world scenarios. In this work, we propose a lightweight yet effective deep learning framework that strikes a balance between precision and efficiency through a carefully designed architecture. Specifically, we adopt a MobileNetV4-based hybrid backbone to extract rich multi-scale features with significantly fewer parameters than conventional backbones, making the model well-suited for resource-constrained cl... More >

Graphical Abstract
Efficient Polyp Segmentation via Attention-Guided Lightweight Network with Progressive Multi-Scale Fusion
Free Access | Research Article | 21 May 2025 | Cited: Crossref logo  4 , Scopus 5
MFE-YOLO: A Multi-feature Fusion Algorithm for Airport Bird Detection
ICCK Transactions on Intelligent Systematics | Volume 2, Issue 2: 85-94, 2025 | DOI: 10.62762/TIS.2025.323887
Abstract
To address the issues of low accuracy in manual observation and slow detection by radar in airport bird detection, this paper designs a lightweight bird detection network named MFE-YOLO. This network is based on the YOLOv8 framework, with the main body part featuring an MF module replacing the original C2f module to enhance the network's feature extraction capability. An EMA mechanism is added to increase the focus on bird targets, and the Focal-Modulation module is introduced to reduce background interference. Additionally, a DCSlideLoss is designed during the supervised network training process to alleviate the imbalance of samples. Finally, the real-time detection performance is verified... More >

Graphical Abstract
MFE-YOLO: A Multi-feature Fusion Algorithm for Airport Bird Detection
Free Access | Research Article | 14 April 2025 | Cited: Crossref logo  15 , Scopus 13
Iterative Estimation Algorithm for Bilinear Stochastic Systems by Using the Newton Search
ICCK Transactions on Intelligent Systematics | Volume 2, Issue 2: 76-84, 2025 | DOI: 10.62762/TIS.2024.155941
Abstract
This study addresses the challenge of estimating parameters iteratively in bilinear state-space systems affected by stochastic noise. A Newton iterative (NI) algorithm is introduced by utilizing the Newton search and iterative identification theory for identifying the system parameters. Following the estimation of the unknown parameters, we create a bilinear state observer (BSO) using the Kalman filtering principle for state estimation. Subsequently, we propose the BSO-NI algorithm for simultaneous parameter and state estimation. An iterative algorithm based on gradients is given for comparisons to illustrate the effectiveness of the proposed algorithms. More >

Graphical Abstract
Iterative Estimation Algorithm for Bilinear Stochastic Systems by Using the Newton Search

Journal Statistics

181
Authors
21
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49
Articles
Scopus: 302
Citations
2024
Published Since
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ICCK Transactions on Intelligent Systematics
ICCK Transactions on Intelligent Systematics
eISSN: 3068-5079 | pISSN: 3069-003X
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