East Flanders
- North America > United States > California > Los Angeles County > Los Angeles (0.14)
- North America > United States > Wisconsin (0.04)
- North America > United States > Texas (0.04)
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Distribution Matching for Graph Quantification Under Structural Covariate Shift
Damke, Clemens, Hüllermeier, Eyke
Graphs are commonly used in machine learning to model relationships between instances. Consider the task of predicting the political preferences of users in a social network; to solve this task one should consider, both, the features of each individual user and the relationships between them. However, oftentimes one is not interested in the label of a single instance but rather in the distribution of labels over a set of instances; e.g., when predicting the political preferences of users, the overall prevalence of a given opinion might be of higher interest than the opinion of a specific person. This label prevalence estimation task is commonly referred to as quantification learning (QL). Current QL methods for tabular data are typically based on the so-called prior probability shift (PPS) assumption which states that the label-conditional instance distributions should remain equal across the training and test data. In the graph setting, PPS generally does not hold if the shift between training and test data is structural, i.e., if the training data comes from a different region of the graph than the test data. To address such structural shifts, an importance sampling variant of the popular adjusted count quantification approach has previously been proposed. In this work, we extend the idea of structural importance sampling to the state-of-the-art KDEy quantification approach. We show that our proposed method adapts to structural shifts and outperforms standard quantification approaches.
- North America > United States > New York > New York County > New York City (0.05)
- Europe > Germany > Bavaria > Upper Bavaria > Munich (0.04)
- Europe > United Kingdom > Scotland > City of Edinburgh > Edinburgh (0.04)
- Europe > Belgium > Flanders > East Flanders > Ghent (0.04)
- Information Technology > Data Science > Data Mining (1.00)
- Information Technology > Artificial Intelligence > Representation & Reasoning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks (0.93)
- Information Technology > Artificial Intelligence > Machine Learning > Performance Analysis > Accuracy (0.46)
Privacy-Preserving Computer Vision for Industry: Three Case Studies in Human-Centric Manufacturing
De Coninck, Sander, Gamba, Emilio, Van Doninck, Bart, Bey-Temsamani, Abdellatif, Leroux, Sam, Simoens, Pieter
The adoption of AI-powered computer vision in industry is often constrained by the need to balance operational utility with worker privacy. Building on our previously proposed privacy-preserving framework, this paper presents its first comprehensive validation on real-world data collected directly by industrial partners in active production environments. We evaluate the framework across three representative use cases: woodworking production monitoring, human-aware AGV navigation, and multi-camera ergonomic risk assessment. The approach employs learned visual transformations that obscure sensitive or task-irrelevant information while retaining features essential for task performance. Through both quantitative evaluation of the privacy-utility trade-off and qualitative feedback from industrial partners, we assess the framework's effectiveness, deployment feasibility, and trust implications. Results demonstrate that task-specific obfuscation enables effective monitoring with reduced privacy risks, establishing the framework's readiness for real-world adoption and providing cross-domain recommendations for responsible, human-centric AI deployment in industry.
- North America > United States (0.04)
- North America > Canada > Ontario (0.04)
- Europe > Belgium > Flanders > East Flanders > Ghent (0.04)
- Law (1.00)
- Information Technology > Security & Privacy (1.00)
- Information Technology > Artificial Intelligence > Vision (1.00)
- Information Technology > Data Science > Data Mining > Big Data (0.73)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks (0.46)
Unifying Entropy Regularization in Optimal Control: From and Back to Classical Objectives via Iterated Soft Policies and Path Integral Solutions
Bhole, Ajinkya, Filabadi, Mohammad Mahmoudi, Crevecoeur, Guillaume, Lefebvre, Tom
This paper develops a unified perspective on several stochastic optimal control formulations through the lens of Kullback-Leibler regularization. We propose a central problem that separates the KL penalties on policies and transitions, assigning them independent weights, thereby generalizing the standard trajectory-level KL-regularization commonly used in probabilistic and KL-regularized control. This generalized formulation acts as a generative structure allowing to recover various control problems. These include the classical Stochastic Optimal Control (SOC), Risk-Sensitive Optimal Control (RSOC), and their policy-based KL-regularized counterparts. The latter we refer to as soft-policy SOC and RSOC, facilitating alternative problems with tractable solutions. Beyond serving as regularized variants, we show that these soft-policy formulations majorize the original SOC and RSOC problem. This means that the regularized solution can be iterated to retrieve the original solution. Furthermore, we identify a structurally synchronized case of the risk-seeking soft-policy RSOC formulation, wherein the policy and transition KL-regularization weights coincide. Remarkably, this specific setting gives rise to several powerful properties such as a linear Bellman equation, path integral solution, and, compositionality, thereby extending these computationally favourable properties to a broad class of control problems.
hls4ml: A Flexible, Open-Source Platform for Deep Learning Acceleration on Reconfigurable Hardware
Schulte, Jan-Frederik, Ramhorst, Benjamin, Sun, Chang, Mitrevski, Jovan, Ghielmetti, Nicolò, Lupi, Enrico, Danopoulos, Dimitrios, Loncar, Vladimir, Duarte, Javier, Burnette, David, Laatu, Lauri, Tzelepis, Stylianos, Axiotis, Konstantinos, Berthet, Quentin, Wang, Haoyan, White, Paul, Demirsoy, Suleyman, Colombo, Marco, Aarrestad, Thea, Summers, Sioni, Pierini, Maurizio, Di Guglielmo, Giuseppe, Ngadiuba, Jennifer, Campos, Javier, Hawks, Ben, Gandrakota, Abhijith, Fahim, Farah, Tran, Nhan, Constantinides, George, Que, Zhiqiang, Luk, Wayne, Tapper, Alexander, Hoang, Duc, Paladino, Noah, Harris, Philip, Lai, Bo-Cheng, Valentin, Manuel, Forelli, Ryan, Ogrenci, Seda, Gerlach, Lino, Flynn, Rian, Liu, Mia, Diaz, Daniel, Khoda, Elham, Quinnan, Melissa, Solares, Russell, Parajuli, Santosh, Neubauer, Mark, Herwig, Christian, Tsoi, Ho Fung, Rankin, Dylan, Hsu, Shih-Chieh, Hauck, Scott
We present hls4ml, a free and open-source platform that translates machine learning (ML) models from modern deep learning frameworks into high-level synthesis (HLS) code that can be integrated into full designs for field-programmable gate arrays (FPGAs) or application-specific integrated circuits (ASICs). With its flexible and modular design, hls4ml supports a large number of deep learning frameworks and can target HLS compilers from several vendors, including Vitis HLS, Intel oneAPI and Catapult HLS. Together with a wider eco-system for software-hardware co-design, hls4ml has enabled the acceleration of ML inference in a wide range of commercial and scientific applications where low latency, resource usage, and power consumption are critical. In this paper, we describe the structure and functionality of the hls4ml platform. The overarching design considerations for the generated HLS code are discussed, together with selected performance results.
- Europe > Switzerland > Zürich > Zürich (0.14)
- North America > United States > New York > New York County > New York City (0.04)
- North America > United States > California > San Diego County > San Diego (0.04)
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- Information Technology (1.00)
- Government > Regional Government > North America Government > United States Government (0.93)
- Health & Medicine > Therapeutic Area (0.92)
- Energy (0.67)
Delta Sum Learning: an approach for fast and global convergence in Gossip Learning
Goethals, Tom, Sebrechts, Merlijn, De Schrijver, Stijn, De Turck, Filip, Volckaert, Bruno
Abstract--Federated Learning is a popular approach for distributed learning due to its security and computational benefits. With the advent of powerful devices in the network edge, Gossip Learning further decentralizes Federated Learning by removing centralized integration and relying fully on peer to peer updates. However, the averaging methods generally used in both Federated and Gossip Learning are not ideal for model accuracy and global convergence. Additionally, there are few options to deploy Learning workloads in the edge as part of a larger application using a declarative approach such as Kubernetes manifests. This paper proposes Delta Sum Learning as a method to improve the basic aggregation operation in Gossip Learning, and implements it in a decentralized orchestration framework based on Open Application Model, which allows for dynamic node discovery and intent-driven deployment of multi-workload applications. Evaluation results show that Delta Sum performance is on par with alternative integration methods for 10 node topologies, but results in a 58% lower global accuracy drop when scaling to 50 nodes. Overall, it shows strong global convergence and a logarithmic loss of accuracy with increasing topology size compared to a linear loss for alternatives under limited connectivity.
- North America > United States (0.04)
- Europe > Belgium > Flanders > East Flanders > Ghent (0.04)
- Education (0.68)
- Information Technology > Security & Privacy (0.46)
A Customer Journey in the Land of Oz: Leveraging the Wizard of Oz Technique to Model Emotions in Customer Service Interactions
Labat, Sofie, Demeester, Thomas, Hoste, Véronique
Emotion-aware customer service needs in-domain conversational data, rich annotations, and predictive capabilities, but existing resources for emotion recognition are often out-of-domain, narrowly labeled, and focused on post-hoc detection. To address this, we conducted a controlled Wizard of Oz (WOZ) experiment to elicit interactions with targeted affective trajectories. The resulting corpus, EmoWOZ-CS, contains 2,148 bilingual (Dutch-English) written dialogues from 179 participants across commercial aviation, e-commerce, online travel agencies, and telecommunication scenarios. Our contributions are threefold: (1) Evaluate WOZ-based operator-steered valence trajectories as a design for emotion research; (2) Quantify human annotation performance and variation, including divergences between self-reports and third-party judgments; (3) Benchmark detection and forward-looking emotion inference in real-time support. Findings show neutral dominates participant messages; desire and gratitude are the most frequent non-neutral emotions. Agreement is moderate for multilabel emotions and valence, lower for arousal and dominance; self-reports diverge notably from third-party labels, aligning most for neutral, gratitude, and anger. Objective strategies often elicit neutrality or gratitude, while suboptimal strategies increase anger, annoyance, disappointment, desire, and confusion. Some affective strategies (cheerfulness, gratitude) foster positive reciprocity, whereas others (apology, empathy) can also leave desire, anger, or annoyance. Temporal analysis confirms successful conversation-level steering toward prescribed trajectories, most distinctly for negative targets; positive and neutral targets yield similar final valence distributions. Benchmarks highlight the difficulty of forward-looking emotion inference from prior turns, underscoring the complexity of proactive emotion-aware support.
- North America > Canada (0.14)
- North America > United States (0.14)
- Europe > Austria > Vienna (0.14)
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- Research Report > New Finding (1.00)
- Research Report > Experimental Study (0.92)
- Information Technology > Security & Privacy (0.92)
- Health & Medicine > Therapeutic Area > Psychiatry/Psychology (0.92)
- Information Technology > Services (0.87)
- Transportation > Air (0.68)
Generative Anchored Fields: Controlled Data Generation via Emergent Velocity Fields and Transport Algebra
Deressa, Deressa Wodajo, Mareen, Hannes, Lambert, Peter, Van Wallendael, Glenn
We present Generative Anchored Fields (GAF), a generative model that learns independent endpoint predictors $J$ (noise) and $K$ (data) rather than a trajectory predictor. The velocity field $v=K-J$ emerges from their time-conditioned disagreement. This factorization enables \textit{Transport Algebra}: algebraic operation on learned $\{(J_n,K_n)\}_{n=1}^N$ heads for compositional control. With class-specific $K_n$ heads, GAF supports a rich family of directed transport maps between a shared base distribution and multiple modalities, enabling controllable interpolation, hybrid generation, and semantic morphing through vector arithmetic. We achieve strong sample quality (FID 7.5 on CelebA-HQ $64\times 64$) while uniquely providing compositional generation as an architectural primitive. We further demonstrate, GAF has lossless cyclic transport between its initial and final state with LPIPS=$0.0$. Code available at https://github.com/IDLabMedia/GAF
- Europe > United Kingdom > North Sea > Southern North Sea (0.05)
- North America > United States > Montana > Roosevelt County (0.04)
- North America > United States > Louisiana > Orleans Parish > New Orleans (0.04)
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- Information Technology > Artificial Intelligence > Vision (1.00)
- Information Technology > Sensing and Signal Processing > Image Processing (0.94)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (0.93)
- Information Technology > Artificial Intelligence > Natural Language (0.67)
OpenCML: End-to-End Framework of Open-world Machine Learning to Learn Unknown Classes Incrementally
Parmar, Jitendra, Thakur, Praveen Singh
Open-world machine learning is an emerging technique in artificial intelligence, where conventional machine learning models often follow closed-world assumptions, which can hinder their ability to retain previously learned knowledge for future tasks. However, automated intelligence systems must learn about novel classes and previously known tasks. The proposed model offers novel learning classes in an open and continuous learning environment. It consists of two different but connected tasks. First, it discovers unknown classes in the data and creates novel classes; next, it learns how to perform class incrementally for each new class. Together, they enable continual learning, allowing the system to expand its understanding of the data and improve over time. The proposed model also outperformed existing approaches in open-world learning. Furthermore, it demonstrated strong performance in continuous learning, achieving a highest average accuracy of 82.54% over four iterations and a minimum accuracy of 65.87%.
- Asia > India > Madhya Pradesh (0.04)
- Europe > Belgium > Flanders > East Flanders > Ghent (0.04)
- Asia > Middle East > Israel > Tel Aviv District > Tel Aviv (0.04)
- Asia > India > Maharashtra > Mumbai (0.04)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning > Clustering (0.93)
- Information Technology > Artificial Intelligence > Machine Learning > Transfer Learning (0.70)
- Information Technology > Artificial Intelligence > Natural Language > Text Classification (0.69)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (0.68)
FedRef: Communication-Efficient Bayesian Fine-Tuning using a Reference Model
Yoon, Taehwan, Choi, Bongjun, De Neve, Wesley
Federated learning (FL) collaboratively trains artificial intelligence (AI) models to ensure user data privacy. Sharing only model updates generated from local training on client data with the server enhances user data privacy. However, model performance may suffer due to data and system heterogeneity among clients in FL scenarios. Previous studies have proposed model optimization, fine-tuning, and personalization to achieve improved model performance. Despite these efforts, models resulting from FL scenarios often exhibit catastrophic forgetting, which increases the communication and computational costs of clients for model optimization and raises energy consumption. To address these challenges, we propose a reference model-based fine-tuning method for federated learning that overcomes catastrophic forgetting in each round. Our method is derived from Bayesian parameter-efficient transfer learning and includes an proximal term. It employs a reference model that incorporates previous model parameters and reviews previous global features in the model optimization step to mitigate catastrophic forgetting. As a result, our method achieves higher model performance and lower communication and computational costs for clients than existing methods.
- Information Technology > Security & Privacy (1.00)
- Health & Medicine > Diagnostic Medicine > Imaging (0.47)
- Information Technology > Security & Privacy (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks (0.68)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning (0.46)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Optimization (0.46)