23 results
Search Results
2. Typical Benchmark Specifications for Designing Stable Variable Filters Using Novel Unity-Bounded Functions.
- Author
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Deng, Tian-Bo
- Subjects
DIGITAL filters (Mathematics) ,DIGITAL communications ,INFORMATION technology ,ARTIFICIAL intelligence ,SIGNAL processing - Abstract
This paper first presents six (6) types of benchmark amplitude design specifications, including variable low-pass specification, variable high-pass specification, variable bandpass specification, variable bandstop specification, variable notch-frequency specification, and variable notch-width specification. The design specifications can be taken as typical benchmark specifications targeted at testing as well as validating the effectiveness of various newly developed algorithms for designing various typical variable filters (VFs). Then, the paper provides a novel unity-bounded (UB) function developed for ensuring the stability of those VFs with recursive structures. Finally, a wide variety of simulation results are included for validating the design performance as well as the assured stability by using both the benchmark design specifications and the novel UB function. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
3. Multiclass Diagnosis of Alzheimer's Disease Analysis Using Machine Learning and Deep Learning Techniques.
- Author
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Begum, Afiya Parveen and Selvaraj, Prabha
- Subjects
DEEP learning ,ALZHEIMER'S disease ,MACHINE learning ,ARTIFICIAL intelligence ,FEATURE extraction ,IMAGE processing - Abstract
Alzheimer's disease (AD) is a popular neurological disorder affecting a critical part of the world's population. Its early diagnosis is extremely imperative for enhancing the quality of patients' lives. Recently, improved technologies like image processing, artificial intelligence involving machine learning, deep learning, and transfer learning have been introduced for detecting AD. This review describes the contribution of image processing, feature extraction, optimization, and classification approach in AD recognition. It deeply investigates different methods adopted for multiclass diagnosis of AD. The paper further presents a brief comparison of existing AD studies in terms of techniques adopted, performance measures, classification accuracy, publication year, and datasets. It then summarizes the important technical barriers in reviewed works. This paper allows the readers to gain profound knowledge regarding AD diagnosis for promoting extensive research in this field. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
4. Navigating the Digital Frontier: Emerging Trends in Digital Innovation Management for 2023 and Beyond.
- Author
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Smolinski, Jan
- Subjects
DIGITAL technology ,INNOVATION management ,KNOWLEDGE management ,SCHOLARLY periodicals ,ARTIFICIAL intelligence ,INTERNATIONAL economic assistance - Abstract
Purpose: After the pandemic digital technologies have increasingly become the focus of companies' innovation management processes. This trend has led to a rapid expansion of the field, with a growing number of research papers on various facets of this topic being published in academic journals. However, the proliferation of literature in the field has complicated the ease with which practitioners and academics can stay up to date with the latest developments and build on recent findings in their respective work. In order to succeed within the field of digital innovation management a strong grasp of the newest trends is required to not fall behind competitors, and to be able to develop cutting edge research. To address this challenge, this paper aims to answer the research question: What are the most common themes in post-pandemic digital innovation management literature? Design/methodology/approach: To answer this question, this study conducted a systematic literature review of 148 academic papers published between 2020 and 2023. The identified trends were subsequently organized into a framework that provides a comprehensive understanding of the field. Findings: The identified trends can be classified as either catalysts or new opportunities. Catalysts are trends that companies can implement to make their digital innovation management more efficient. The four identified catalysts are: the use of artificial intelligence as a vital part of innovating, educating leaders and employees, incorporating digital knowledge management practices, and collaborating with innovation networks. The articles also point to three trends classified as new opportunities that digital innovation management can enable, such as more sustainable initiatives, better foreign aid, and a transition to platformization. Originality: This study summarizes the research direction of digital innovation management and synthesizes important key developments leading up to the year 2023, which researchers and practitioners should be aware of. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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5. A Fine-Grained Image Classification Method Built on MobileViT.
- Author
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Lu, Zhengqiu and Wang, Haiying
- Subjects
- *
IMAGE recognition (Computer vision) , *ARTIFICIAL intelligence , *NETWORK performance - Abstract
With a rapid development of artificial intelligence technology, fine-grained image classification has gained widespread application. For mobile terminals, this paper introduces an image classification method built on MobileViT, and it can apply into fine-grained image classification. The original MobileViT model has been optimized in three ways. Initially, the h-swish activation function is used to enhance the network performance. Second, the cross-entropy loss function is used to further realize the parameter optimization and model accuracy improvement. Finally, a dropout layer is joined before the fully connected layer can effectively decrease the model recognition time and prevent over-fitting. Experimental data on public tomato disease datasets demonstrate that the improved fine-grained image classification method put forward in this paper exhibits higher classification accuracy, better stability and network generalization ability than other models. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
6. Semantic Segmentation of Images Based on Multi-Feature Fusion and Convolutional Neural Networks.
- Author
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Wang, Zhenyu, Xiao, Juan, Zhang, Shuai, and Qi, Baoqiang
- Subjects
- *
DEEP learning , *IMAGE segmentation , *CONVOLUTIONAL neural networks , *COMPUTER vision , *REMOTE sensing , *COMPUTER performance - Abstract
Image semantic segmentation technology is one of the core research contents in the field of computer vision. With the improvement of computer performance and the continuous development of deep learning technology, researchers have more and more enthusiasm to study the actual effect and performance of image semantic segmentation. The results of deep semantic segmentation allow computers to have a more detailed and accurate understanding of images, and have a wide range of application needs in the fields of autonomous driving, intelligent security, medical imaging, remote sensing images, etc. However, the existing image semantic segmentation algorithms have the disadvantages of easy discontinuous results and insufficient prediction accuracy. In this paper, we take deep learning-based image semantic segmentation technology as the research object to explore the improvement of the image semantic segmentation algorithm and its application in road scenarios. First, this paper proposes MCU-Net method based on residual fusion and multi-scale contextual information. MCU-Net uses residual fusion module to deepen the network structure and improve the ability of U-Net to acquire deeper features. Then a top-down and bottom-up path is constructed for feature information between different levels, and the spatial and semantic information contained in shallow and deep features in the network is fully utilized by fusing features from different levels. In addition, an enhanced void space pyramid pooling module is added for feature information between the same levels, which enables the output features to have a larger range of semantic information. Second, this paper proposes the DAMCU-Net method based on attention mechanism and edge detection based on MCU-Net. DAMCU-Net extracts global contextual information by the attention mechanism optimization module, while fusing features using dense jump connections to facilitate the network to recover more spatial detail information during upsampling, and uses the FReLU activation function to improve the segmentation capability of the network for complex targets. For the edge information lost in the feature extraction process, the edge detection branch is added to supplement the feature information of the main path by feature fusion to achieve the optimization of the edge information. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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7. Conscious Learning without Post-Selection Misconduct.
- Author
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Weng, Juyang
- Subjects
ARTIFICIAL intelligence ,HUMANOID robots ,CHATGPT ,DEEP learning ,STUDENT cheating ,PLYOMETRICS - Abstract
The most fundamental oversight in Artificial Intelligence (AI) is probably the avoidance of conscious learning. The most widespread misconduct in AI seems to be Post-Selection. Avoiding conscious learning, we program humanoid robots that do not have the intent to learn new skills, such as standing up, walking, jumping, speaking, and thinking. Because programmed-in skills are all brittle, we must imitate natural intelligence, from insects to humans, that all learn from consciousness. Worldwide AI researchers and the public have been misled by media hypes about false AI performances, from Deep Learning to ChatGPT, rooted in Post-Selection. However, the Post-Selection protocol behind such hypes is fatally flawed by alleged misconduct — Misconduct 1, Cheating in the absence of a test; Misconduct 2, hiding bad-looking data. In other words, the reported errors are only data-fitting errors, instead of testing errors. This paper discusses how Conscious Learning is enabled by Developmental Network 3 (DN-3) to learn from its own intents without Post-Selection misconduct. Among many new concepts presented here, this paper establishes a new theorem that the expected error of the luckiest system in a future test is the same as any other less lucky system, namely, average. In contrast, DN-3 develops a sole network that is optimal in the sense of maximum likelihood (ML), better than the luckiest system on a validation set. The ML optimality transfers the performance on a validation set in the prior lifetime to a test set in the future lifetime. Many other AI techniques, e.g., symbolic, connectionist, and evolutional, also use Post-Selection which lacks such a transfer. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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8. Anthology: Cognitive Developmental Humanoids Robotics.
- Author
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Asada, Minoru
- Subjects
LANGUAGE models ,ROBOTICS ,CHATGPT ,ARTIFICIAL intelligence ,SOCIAL interaction ,HUMANOID robots - Abstract
This paper explores the confluence of physical embodiment and social interaction in the context of Cognitive Developmental Humanoid Robotics (CDHR). By classifying varied interactions through developmental stages of the "self" and their interaction spheres, the discussion unearths profound insights into the composite nature of developmental processes. It presents a multi-dimensional exploration through different interaction scenarios, ranging from fetus-mother interactions to advanced large language models like ChatGPT, revealing the intrinsic connection between the physical and social realms of existence. In conclusion, this paper broadens the horizon of our understanding of the intricate interplays between physical embodiment and social interaction, setting the stage for more nuanced, ethically sound approaches and explorations in the realm of humanoid robotics and artificial intelligence. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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9. Top-Down Design of Human-Like Teachable Mind.
- Author
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Xie, Ming
- Subjects
DEEP learning ,INDUSTRIAL robots ,MACHINE learning ,HUMANOID robots ,ROBOTS ,ARTIFICIAL intelligence ,NATURAL languages - Abstract
Teachability has been extensively studied under the context of making industrial robots to be programmable and reprogrammable. However, it is only recently that the artificial intelligence (AI) research community is accelerating the research works with the objective of making humanoid robots and many other robots to be teachable under the context of using natural languages. We human beings spend many years learning knowledge and skills despite our extraordinary mental capabilities of being teachable with the use of natural languages. Therefore, if we would like to develop human-like robots such as humanoid robots, it is inevitable for us to face the issue of making future humanoid robots teachable with the use of natural languages as well. In this paper, we present the key details of a top-down design for achieving a teachable mind which consists of two major processes: the first one is the process that enables humanoid robots to gain innate mental capabilities of transforming incoming signals into meaningful crisp data, and the second one is the process which enables humanoid robots to gain innate mental capabilities of undertaking incremental and deep learning with the main focus of associating conceptual labels in a natural language to meaningful crisp data. These two processes consist of the two necessary and sufficient conditions for future humanoid robots to be teachable with the use of natural languages. In addition, this paper outlines a very likely new finding underlying the human brain's neural systems as well as the obvious mathematics underlying artificial deep neural networks. These outlines provide us with a strong reason to separate the study of the mind from the study of the brain. Hopefully, the content discussed in this paper will help the AI research community to venture into the right direction which is to make future humanoid robots, non-humanoid robots, and many other systems to achieve human-like self-intelligence at the cognitive level with the use of natural languages. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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10. The Automation of Management Decisions: A Systematic Review and Research Agenda of the Factors Influencing the Decision to Increase the Level of Automation.
- Author
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Rossmann, Lorenz and Wald, Andreas
- Subjects
AUTOMATION ,ARTIFICIAL intelligence ,DECISION support systems - Abstract
Driven by promises of better and quicker decision-making, research on applications of technologies such as artificial intelligence in automating management decisions is increasing. However, the factors influencing the decision to increase the level of automation of a given management decision have remained a sidenote in the literature. In this systematic literature review, we organize these factors from the fragmented and heterogeneous research landscape concerned with automating management decisions. Using a systematically derived sample of research, we categorize and distill a multitude of factors into four themes: goals, foundations, design considerations, and application. We propose positive influences of six factors and a negative influence of one, namely costs, on the decision to increase the level of automation of a management decision. Finally, based on these propositions, we derive an agenda to guide future research. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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11. A Modeling and Verification Method of Cyber-Physical Systems Based on AADL and Process Algebra.
- Author
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Li, Zhen, Cao, Zining, Wang, Fujun, and Xing, Chao
- Subjects
CYBER physical systems ,ARTIFICIAL intelligence ,ALGEBRA ,ARCHITECTURAL design ,TELECOMMUNICATION systems ,PROBABILISTIC number theory - Abstract
Cyber-Physical Systems (CPS) are the next generation of intelligent systems that integrate information control devices with physical resources. With increasingly close connections between CPS components and frequent interactions, potential defects grow exponentially, rendering the operating environment of CPS unreliable. Therefore, research on methods and theories to ensure the correctness, safety and reliability of CPS is not only an important research topic but also an inevitable challenge. In this paper, we propose a CPS modeling and verification method based on Architecture Analysis & Design Language (AADL) and process algebra to address this challenge. Due to the continuous, time-constrained, stochastic, uncertain and concurrent characteristics of CPS, this paper considers both flexibility and rigor in the modeling process. We first extend the ability of AADL to describe the multiple characteristics of CPS and propose Hybrid Probability-AADL (HP-AADL). Second, this paper introduces conditional execution, conditional interruption and probability operators into Temporal Calculus of Communication Systems (TCCS) and designs a new formal modeling language Hybrid Probability-Temporal Calculus of Communication Systems (HP-TCCS). However, HP-AADL is a semi-formal modeling language that cannot be directly used for formal verification, it cannot strictly guarantee the quality of the established CPS models, including its functional correctness and safety. Therefore, this paper proposes transformation rules from HP-AADL to HP-TCCS, which enables model checking of CPS models described in HP-AADL within HP-TCCS. Additionally, this paper designs a new formal specification language HPAT-Spatial Temporal Logic (HPAT-STL) based on Probabilistic Computation Tree Logic (PCTL) and Spatial Logic, which characterizes the temporal, probabilistic and spatial properties of CPS model. To achieve formal verification of HP-TCCS model and HPAT-STL formulas, this paper proposes a model checking algorithm HPAT-Model Checking Algorithm (HPAT-MCA). Finally, we discuss a typical CPS example to demonstrate the effectiveness of our proposed method in ensuring correct, safe and reliable CPS. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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12. Monitoring Rubbish on Roads in Real Time by Deep Neural Network.
- Author
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Fu, Yan, Xiao, Tiaozong, and Xu, Zichen
- Subjects
- *
ARTIFICIAL neural networks , *WASTE management , *DEEP learning , *ARTIFICIAL intelligence , *SANITATION , *HYGIENE , *CITIES & towns - Abstract
Monitoring and managing litter on the roadways is important not only for preserving the cleanliness and esthetic appeal of our cities but also for safeguarding the overall health and sanitary environment of citizens. With the development of artificial intelligence, it is now possible to design algorithms capable of autonomously assessing the sanitation status of roadways. In this paper, we propose a method for detecting garbage on roads as our solution to tackle the issue. The proposed model is a deep learning model with an attention mechanism introduced to detect garbage in real-time scenarios. Furthermore, the object recognition capability of the model is enhanced through transfer learning to mitigate the influence of irrelevant content during training. The refined network can detect rubbish on roads with higher efficiency than the existing models. Also, compared with other methods, it consumes less amount of data for training. The experimental results demonstrate the efficiency of our proposed model, with a performance boost of 7.62% over the state-of-the-art methods. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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13. Performance Evaluation of Deep, Shallow and Ensemble Machine Learning Methods for the Automated Classification of Alzheimer's Disease.
- Author
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Shaffi, Noushath, Subramanian, Karthikeyan, Vimbi, Viswan, Hajamohideen, Faizal, Abdesselam, Abdelhamid, and Mahmud, Mufti
- Subjects
- *
ALZHEIMER'S disease , *COMPUTER-aided diagnosis , *MAGNETIC resonance imaging , *ARTIFICIAL intelligence , *DEEP learning , *MACHINE learning - Abstract
Artificial intelligence (AI)-based approaches are crucial in computer-aided diagnosis (CAD) for various medical applications. Their ability to quickly and accurately learn from complex data is remarkable. Deep learning (DL) models have shown promising results in accurately classifying Alzheimer's disease (AD) and its related cognitive states, Early Mild Cognitive Impairment (EMCI) and Late Mild Cognitive Impairment (LMCI), along with the healthy conditions known as Cognitively Normal (CN). This offers valuable insights into disease progression and diagnosis. However, certain traditional machine learning (ML) classifiers perform equally well or even better than DL models, requiring less training data. This is particularly valuable in CAD in situations with limited labeled datasets. In this paper, we propose an ensemble classifier based on ML models for magnetic resonance imaging (MRI) data, which achieved an impressive accuracy of 96.52%. This represents a 3–5% improvement over the best individual classifier. We evaluated popular ML classifiers for AD classification under both data-scarce and data-rich conditions using the Alzheimer's Disease Neuroimaging Initiative and Open Access Series of Imaging Studies datasets. By comparing the results to state-of-the-art CNN-centric DL algorithms, we gain insights into the strengths and weaknesses of each approach. This work will help users to select the most suitable algorithm for AD classification based on data availability. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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14. Temporal and Semantic Fusion for Multi-Label Crime Classification via a TCN-BERT-Coupled Approach.
- Author
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Wang, Pei, Chen, Teng, and Wang, Yuewei
- Subjects
- *
ARTIFICIAL intelligence , *CRIME , *CLASSIFICATION , *TRANSFORMER models , *NATURAL language processing - Abstract
Artificial Intelligence (AI) techniques leverage the justice system in terms of effectiveness and efficiency. AI-empowered multi-label crime classification can facilitate the precise and expedient categorization of various legal documents. Multi-label classification within the justice system has an indispensable role in achieving accurate legal categorization that invigorates case analysis, optimizes resource distribution and refines the contours of legal processes. To support this critical function, this paper proposes a temporal convolutional network (TCN)-bidirectional encoder representations from transformers (BERT)-coupled model for multi-label crime classification. The proposed method fuses the temporal formation and semantic information in the model to obtain a high-quality result. The experimental results show that the proposed method achieved the best accuracy in comparison to existing methods on a public dataset. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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15. Artificial Intelligent Human–Computer Dialogue Support Platform for Hospitals.
- Author
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Xia, Xin, Ma, Yunlong, Luo, Ye, and Lu, Jianwei
- Subjects
- *
PATIENTS' attitudes , *ARTIFICIAL intelligence , *HOSPITALS , *HOSPITAL patients , *HUMAN resources departments - Abstract
To design a dialogue model and standard artificial programming interface (API), this paper designs an intelligent dialogue support for medical service systems and improving hospital intelligent serviceability, which combines patient pre-diagnosis, diagnosis, and post-diagnosis services with artificial intelligence depth. This is done via an intelligent man–machine dialogue support platform (MMDSP) suitable for medical services based on a multi-dimensional disease model and outpatient knowledge base with artificial intelligence. As a result of the intelligent service capability of the hospital service systems and platforms, patients' medical experiences have significantly improved. The platform standardizes the multi-channel service process, improves patient service efficiency, and reduces the cost of human resources and business knowledge learning. In addition, the integration of intelligent multi-system service information provides data support for hospitals to serve patients accurately and has good application and promotion value. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
16. Homogenous Ensembles of Neuro-Fuzzy Classifiers using Hyperparameter Tuning for Medical Data.
- Author
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Ouifak, Hafsaa, Afkhkhar, Zaineb, Manzi, Alain Thierry Iliho, and Idri, Ali
- Subjects
- *
ARTIFICIAL intelligence , *FUZZY logic , *INFORMATION filtering , *FUZZY systems , *RECOMMENDER systems , *SELF-tuning controllers - Abstract
Neuro-fuzzy techniques have been widely used in many applications due to their ability to generate interpretable fuzzy rules. Ensemble learning, on the other hand, is an emerging paradigm in artificial intelligence used to improve performance results by combining multiple single learners. This paper aims to develop and evaluate a set of homogeneous ensembles over four medical datasets using hyperparameter tuning of four neuro-fuzzy systems: adaptive neuro-fuzzy inference system (ANFIS), Dynamic evolving neuro-fuzzy system (DENFIS), Hybrid fuzzy inference system (HyFIS), and neuro-fuzzy classifier (NEFCLASS). To address the interpretability challenges and to reduce the complexity of high-dimensional data, the information gain filter was used to identify the most relevant features. After that, the performance of the neuro-fuzzy single learners and ensembles was evaluated using four performance metrics: accuracy, precision, recall, and f1 score. To decide which single learners/ensembles perform better, the Scott-Knott and Borda count techniques were used. The Scott-Knott first groups the models based on the accuracy to find the classifiers appearing in the best cluster, while the Borda count ranks the models based on all the four performance metrics without favoring any of the metrics. Results showed that: (1) The number of the combined single learners positively impacts the performance of the ensembles, (2) Single neuro-fuzzy classifiers demonstrate better or similar performance to the ensembles, but the ensembles still provide better stability of predictions, and (3) Among the ensembles of different models, ANFIS provided the best ensemble results. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
17. Reliable Estimation of Causal Effects Using Predictive Models.
- Author
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Ali, Mahdi Hadj, Biannic, Yann Le, and Wuillemin, Pierre-Henri
- Subjects
- *
PREDICTION models , *ESTIMATION theory , *CAUSAL inference , *ARTIFICIAL intelligence - Abstract
In recent years, machine learning algorithms have been widely adopted across many fields due to their efficiency and versatility. However, the complexity of predictive models has led to a lack of interpretability in automatic decision-making. Recent works have improved general interpretability by estimating the contributions of input features to the predictions of a pre-trained model. Drawing on these improvements, practitioners seek to gain causal insights into the underlying data-generating mechanisms. To this end, works have attempted to integrate causal knowledge into interpretability, as non-causal techniques can lead to paradoxical explanations. In this paper, we argue that each question about a causal effect requires its own reasoning and that relying on an initial predictive model trained on an arbitrary set of variables may result in quantification problems when estimating all possible effects. As an alternative, we advocate for a query-driven methodology that addresses each causal question separately. Assuming that the causal structure relating the variables is known, we propose to employ the tools of causal inference to quantify a particular effect as a formula involving observable probabilities. We then derive conditions on the selection of variables to train a predictive model that is tailored for the causal question of interest. Finally, we identify suitable eXplainable AI (XAI) techniques to estimate causal effects from the model predictions. Furthermore, we introduce a novel method for estimating direct effects through intervention on causal mechanisms. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
18. Intelligent Classification of Metallographic Based on Improved Deep Residual Efficiency Networks.
- Author
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Huang, Xiaohong, Liu, Yanping, Qi, Xueqian, and Song, Yue
- Subjects
- *
ARTIFICIAL neural networks , *ARTIFICIAL intelligence , *COMPUTER vision , *CONVOLUTIONAL neural networks , *IMAGE recognition (Computer vision) , *COMPUTER performance - Abstract
The recognition of steel microstructure images plays a crucial role in the metallographic analysis process. Although some progress has been made through the application of artificial intelligence algorithms, several challenges remain. First, existing algorithms exhibit weak nonlinear feature extraction capabilities and noticeable limitations. Second, they overlook the intrinsic noise and redundant interference present in microscopic images. To address these issues, this paper investigates the automatic recognition of metallographic tissues by leveraging residual structures in deep neural networks. An enhanced residual network model based on transfer learning is proposed, which utilizes the pre-trained weights from the ImageNet dataset to facilitate learning with small sample data. This network offers higher classification accuracy and higher F1 scores. In addition, a deep residual shrinkage network model based on an attention mechanism is proposed. This model incorporates an attention sub-network into the original residual module and employs a soft threshold function to eliminate redundant features, including noise. The proposed algorithms are evaluated against various convolutional neural networks using 20 types of metallographic test sets. The experimental results showed that both methods have high accuracy rates of 95% and 94.44%, respectively, and F1 scores of 0.9464 and 0.9419. While maintaining the complexity of the model, there has been a significant improvement in accuracy, and the models exhibit strong generalization capabilities. Our research contributes to enhancing production efficiency, strengthening quality control, and improving material performance through computer vision technology. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
19. Automated Quality Evaluation of Large-Scale Benchmark Datasets for Vision-Language Tasks.
- Author
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Zhao, Ruibin, Xie, Zhiwei, Zhuang, Yipeng, and L. H. Yu, Philip
- Subjects
- *
COMPUTER science , *ARTIFICIAL intelligence , *DEEP learning , *UNIVERSITY research , *BENCHMARK problems (Computer science) - Abstract
Large-scale benchmark datasets are crucial in advancing research within the computer science communities. They enable the development of more sophisticated AI models and serve as "golden" benchmarks for evaluating their performance. Thus, ensuring the quality of these datasets is of utmost importance for academic research and the progress of AI systems. For the emerging vision-language tasks, some datasets have been created and frequently used, such as Flickr30k, COCO, and NoCaps, which typically contain a large number of images paired with their ground-truth textual descriptions. In this paper, an automatic method is proposed to assess the quality of large-scale benchmark datasets designed for vision-language tasks. In particular, a new cross-modal matching model is developed, which is capable of automatically scoring the textual descriptions of visual images. Subsequently, this model is employed to evaluate the quality of vision-language datasets by automatically assigning a score to each 'ground-truth' description for every image picture. With a good agreement between manual and automated scoring results on the datasets, our findings reveal significant disparities in the quality of the ground-truth descriptions included in the benchmark datasets. Even more surprising, it is evident that a small portion of the descriptions are unsuitable for serving as reliable ground-truth references. These discoveries emphasize the need for careful utilization of these publicly accessible benchmark databases. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
20. Guided Intelligent Hyper-Heuristic Algorithm for Critical Software Application Testing Satisfying Multiple Coverage Criteria.
- Author
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Rani, S. Alagu, Akila, C., and Raja, S. P.
- Subjects
- *
COMPUTER software testing , *APPLICATION software , *DECISION support systems , *ALGORITHMS , *INTELLIGENT agents , *OPTIMIZATION algorithms - Abstract
This paper proposes a novel algorithm that combines symbolic execution and data flow testing to generate test cases satisfying multiple coverage criteria of critical software applications. The coverage criteria considered are data flow coverage as the primary criterion, software safety requirements, and equivalence partitioning as sub-criteria. black The characteristics of the subjects used for the study include high-precision floating-point computation and iterative programs. The work proposes an algorithm that aids the tester in automated test data generation, satisfying multiple coverage criteria for critical software. The algorithm adapts itself and selects different heuristics based on program characteristics. The algorithm has an intelligent agent as its decision support system to accomplish this adaptability. Intelligent agent uses the knowledge base to select different low-level heuristics based on the current state of the problem instance during each generation of genetic algorithm execution. The knowledge base mimics the expert's decision in choosing the appropriate heuristics. black The algorithm outperforms by accomplishing 100% data flow coverage for all subjects. In contrast, the simple genetic algorithm, random testing and a hyper-heuristic algorithm could accomplish a maximum of 83%, 67% and 76.7%, respectively, for the subject program with high complexity. black The proposed algorithm covers other criteria, namely equivalence partition coverage and software safety requirements, with fewer iterations. black The results reveal that test cases generated by the proposed algorithm are also effective in fault detection, with 87.2% of mutants killed when compared to a maximum of 76.4% of mutants killed for the complex subject with test cases of other methods. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
21. An Improved GPS/INS Integration Based on EKF and AI During GPS Outages.
- Author
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Ebrahimi, A., Nezhadshahbodaghi, M., Mosavi, M. R., and Ayatollahi, A.
- Subjects
- *
ARTIFICIAL intelligence , *INERTIAL navigation systems , *RADIAL basis functions , *MULTILAYER perceptrons , *ARTIFICIAL satellites in navigation , *KALMAN filtering , *ELECTROMECHANICAL devices - Abstract
Inertial navigation system (INS) is often integrated with satellite navigation systems to achieve the required precision at high-speed applications. In global navigation system (GPS)/INS integration systems, GPS outages are unavoidable and a severe challenge. Moreover, because of the usage of low-cost microelectromechanical sensors (MEMS) with noisy outputs, the INS will get diverged during GPS outages, and that is why navigation precision severely decreases in commercial applications. In this paper, we improve GPS/INS integration system during GPS outages using extended Kalman filter (EKF) and artificial intelligence (AI) together. In this integration algorithm, the AI receives the angular rates and specific forces from the inertial measurement unit (IMU) and velocity from the INS at t and t − 1. Therefore, the AI has positioning and timing data of the INS. While the GPS signals are available, the output of the AI is compared with the GPS increment; so that the AI is trained. During GPS outages, the AI will practically play the GPS role. Thus, it can prevent the divergence of the GPS/INS integration system in GPS-denied environments. Furthermore, we utilize neural networks (NNs) as an AI module in five different types: multi-layer perceptron (MLP) NN, radial basis function (RBF) NN, wavelet NN, support vector regression (SVR) and adaptive neuro-fuzzy inference system (ANFIS). To evaluate the proposed approach, we utilize a real dataset that has been gathered by a mini-airplane. The results demonstrate that the proposed approach outperforms the INS and GPS/INS integration systems with the EKF during GPS outages. Meanwhile, the ANFIS also reached more than 47.77% precision compared to the traditional method. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
22. Winners of Nikolaos Bourbakis Award for 2023.
- Subjects
- *
AWARDS , *ARTIFICIAL intelligence - Abstract
The International Journal on Artificial Intelligence Tools has announced the winners of the Nikolaos Bourbakis Award for 2023. The committee evaluated all regular papers published in the journal in 2023 based on reviewer comments and content. The winning paper is titled "Top-k Learned Clauses for Modern SAT Solvers" by Jerry Lonlac and Engelbert Mephu Nguifo. The authors will receive a prize of $250. Congratulations to both authors! [Extracted from the article]
- Published
- 2024
- Full Text
- View/download PDF
23. Introduction.
- Author
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Morabito, Francesco Carlo
- Subjects
- *
BIOMEDICAL engineering , *ARTIFICIAL intelligence - Abstract
The International Journal of Neural Systems has published a special issue featuring six papers selected from the 2nd International Conference on Artificial Intelligence & Informatics (AII2022). The conference focused on the reproducibility of research results and received 108 submissions from 20 countries, with 39 full papers accepted for presentation and publication. The selected papers in the special issue cover topics such as the application of artificial intelligence in biomedical engineering and clinical diagnosis, measuring the reputation of agents, and analyzing synthetic voices for cultural differences recognition. The authors of these papers come from Austria, Ireland, Italy, Spain, and the UK. [Extracted from the article]
- Published
- 2024
- Full Text
- View/download PDF
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