7,651 research outputs found

    A cell outage management framework for dense heterogeneous networks

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    In this paper, we present a novel cell outage management (COM) framework for heterogeneous networks with split control and data planes-a candidate architecture for meeting future capacity, quality-of-service, and energy efficiency demands. In such an architecture, the control and data functionalities are not necessarily handled by the same node. The control base stations (BSs) manage the transmission of control information and user equipment (UE) mobility, whereas the data BSs handle UE data. An implication of this split architecture is that an outage to a BS in one plane has to be compensated by other BSs in the same plane. Our COM framework addresses this challenge by incorporating two distinct cell outage detection (COD) algorithms to cope with the idiosyncrasies of both data and control planes. The COD algorithm for control cells leverages the relatively larger number of UEs in the control cell to gather large-scale minimization-of-drive-test report data and detects an outage by applying machine learning and anomaly detection techniques. To improve outage detection accuracy, we also investigate and compare the performance of two anomaly-detecting algorithms, i.e., k-nearest-neighbor- and local-outlier-factor-based anomaly detectors, within the control COD. On the other hand, for data cell COD, we propose a heuristic Grey-prediction-based approach, which can work with the small number of UE in the data cell, by exploiting the fact that the control BS manages UE-data BS connectivity and by receiving a periodic update of the received signal reference power statistic between the UEs and data BSs in its coverage. The detection accuracy of the heuristic data COD algorithm is further improved by exploiting the Fourier series of the residual error that is inherent to a Grey prediction model. Our COM framework integrates these two COD algorithms with a cell outage compensation (COC) algorithm that can be applied to both planes. Our COC solution utilizes an actor-critic-based reinforcement learning algorithm, which optimizes the capacity and coverage of the identified outage zone in a plane, by adjusting the antenna gain and transmission power of the surrounding BSs in that plane. The simulation results show that the proposed framework can detect both data and control cell outage and compensate for the detected outage in a reliable manner

    Multimodal Classification of Urban Micro-Events

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    In this paper we seek methods to effectively detect urban micro-events. Urban micro-events are events which occur in cities, have limited geographical coverage and typically affect only a small group of citizens. Because of their scale these are difficult to identify in most data sources. However, by using citizen sensing to gather data, detecting them becomes feasible. The data gathered by citizen sensing is often multimodal and, as a consequence, the information required to detect urban micro-events is distributed over multiple modalities. This makes it essential to have a classifier capable of combining them. In this paper we explore several methods of creating such a classifier, including early, late, hybrid fusion and representation learning using multimodal graphs. We evaluate performance on a real world dataset obtained from a live citizen reporting system. We show that a multimodal approach yields higher performance than unimodal alternatives. Furthermore, we demonstrate that our hybrid combination of early and late fusion with multimodal embeddings performs best in classification of urban micro-events

    Learning Deep Representations of Appearance and Motion for Anomalous Event Detection

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    We present a novel unsupervised deep learning framework for anomalous event detection in complex video scenes. While most existing works merely use hand-crafted appearance and motion features, we propose Appearance and Motion DeepNet (AMDN) which utilizes deep neural networks to automatically learn feature representations. To exploit the complementary information of both appearance and motion patterns, we introduce a novel double fusion framework, combining both the benefits of traditional early fusion and late fusion strategies. Specifically, stacked denoising autoencoders are proposed to separately learn both appearance and motion features as well as a joint representation (early fusion). Based on the learned representations, multiple one-class SVM models are used to predict the anomaly scores of each input, which are then integrated with a late fusion strategy for final anomaly detection. We evaluate the proposed method on two publicly available video surveillance datasets, showing competitive performance with respect to state of the art approaches.Comment: Oral paper in BMVC 201

    Heterogeneous Anomaly Detection for Software Systems via Semi-supervised Cross-modal Attention

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    Prompt and accurate detection of system anomalies is essential to ensure the reliability of software systems. Unlike manual efforts that exploit all available run-time information, existing approaches usually leverage only a single type of monitoring data (often logs or metrics) or fail to make effective use of the joint information among different types of data. Consequently, many false predictions occur. To better understand the manifestations of system anomalies, we conduct a systematical study on a large amount of heterogeneous data, i.e., logs and metrics. Our study demonstrates that logs and metrics can manifest system anomalies collaboratively and complementarily, and neither of them only is sufficient. Thus, integrating heterogeneous data can help recover the complete picture of a system's health status. In this context, we propose Hades, the first end-to-end semi-supervised approach to effectively identify system anomalies based on heterogeneous data. Our approach employs a hierarchical architecture to learn a global representation of the system status by fusing log semantics and metric patterns. It captures discriminative features and meaningful interactions from heterogeneous data via a cross-modal attention module, trained in a semi-supervised manner. We evaluate Hades extensively on large-scale simulated data and datasets from Huawei Cloud. The experimental results present the effectiveness of our model in detecting system anomalies. We also release the code and the annotated dataset for replication and future research.Comment: In Proceedings of the 2023 IEEE/ACM 45th International Conference on Software Engineering (ICSE). arXiv admin note: substantial text overlap with arXiv:2207.0291

    λ”₯ λ‰΄λŸ΄ λ„€νŠΈμ›Œν¬λ₯Ό ν™œμš©ν•œ μ˜ν•™ κ°œλ… 및 ν™˜μž ν‘œν˜„ ν•™μŠ΅κ³Ό 의료 λ¬Έμ œμ—μ˜ μ‘μš©

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    ν•™μœ„λ…Όλ¬Έ(박사) -- μ„œμšΈλŒ€ν•™κ΅λŒ€ν•™μ› : κ³΅κ³ΌλŒ€ν•™ 전기·정보곡학뢀, 2022. 8. 정ꡐ민.λ³Έ ν•™μœ„ 논문은 μ „κ΅­λ―Ό 의료 λ³΄ν—˜λ°μ΄ν„°μΈ ν‘œλ³Έμ½”ν˜ΈνŠΈDBλ₯Ό ν™œμš©ν•˜μ—¬ λ”₯ λ‰΄λŸ΄ λ„€νŠΈμ›Œν¬ 기반의 μ˜ν•™ κ°œλ… 및 ν™˜μž ν‘œν˜„ ν•™μŠ΅ 방법과 의료 문제 ν•΄κ²° 방법을 μ œμ•ˆν•œλ‹€. λ¨Όμ € 순차적인 ν™˜μž 의료 기둝과 개인 ν”„λ‘œνŒŒμΌ 정보λ₯Ό 기반으둜 ν™˜μž ν‘œν˜„μ„ ν•™μŠ΅ν•˜κ³  ν–₯ν›„ μ§ˆλ³‘ 진단 κ°€λŠ₯성을 μ˜ˆμΈ‘ν•˜λŠ” μž¬κ·€μ‹ κ²½λ§ λͺ¨λΈμ„ μ œμ•ˆν•˜μ˜€λ‹€. μš°λ¦¬λŠ” λ‹€μ–‘ν•œ μ„±κ²©μ˜ ν™˜μž 정보λ₯Ό 효율적으둜 ν˜Όν•©ν•˜λŠ” ꡬ쑰λ₯Ό λ„μž…ν•˜μ—¬ 큰 μ„±λŠ₯ ν–₯상을 μ–»μ—ˆλ‹€. λ˜ν•œ ν™˜μžμ˜ 의료 기둝을 μ΄λ£¨λŠ” 의료 μ½”λ“œλ“€μ„ λΆ„μ‚° ν‘œν˜„μœΌλ‘œ λ‚˜νƒ€λ‚΄ μΆ”κ°€ μ„±λŠ₯ κ°œμ„ μ„ μ΄λ£¨μ—ˆλ‹€. 이λ₯Ό 톡해 의료 μ½”λ“œμ˜ λΆ„μ‚° ν‘œν˜„μ΄ μ€‘μš”ν•œ μ‹œκ°„μ  정보λ₯Ό λ‹΄κ³  μžˆμŒμ„ ν™•μΈν•˜μ˜€κ³ , μ΄μ–΄μ§€λŠ” μ—°κ΅¬μ—μ„œλŠ” μ΄λŸ¬ν•œ μ‹œκ°„μ  정보가 강화될 수 μžˆλ„λ‘ κ·Έλž˜ν”„ ꡬ쑰λ₯Ό λ„μž…ν•˜μ˜€λ‹€. μš°λ¦¬λŠ” 의료 μ½”λ“œμ˜ λΆ„μ‚° ν‘œν˜„ κ°„μ˜ μœ μ‚¬λ„μ™€ 톡계적 정보λ₯Ό 가지고 κ·Έλž˜ν”„λ₯Ό κ΅¬μΆ•ν•˜μ˜€κ³  κ·Έλž˜ν”„ λ‰΄λŸ΄ λ„€νŠΈμ›Œν¬λ₯Ό ν™œμš©, μ‹œκ°„/톡계적 정보가 κ°•ν™”λœ 의료 μ½”λ“œμ˜ ν‘œν˜„ 벑터λ₯Ό μ–»μ—ˆλ‹€. νšλ“ν•œ 의료 μ½”λ“œ 벑터λ₯Ό 톡해 μ‹œνŒ μ•½λ¬Όμ˜ 잠재적인 λΆ€μž‘μš© μ‹ ν˜Έλ₯Ό νƒμ§€ν•˜λŠ” λͺ¨λΈμ„ μ œμ•ˆν•œ κ²°κ³Ό, 기쑴의 λΆ€μž‘μš© λ°μ΄ν„°λ² μ΄μŠ€μ— μ‘΄μž¬ν•˜μ§€ μ•ŠλŠ” μ‚¬λ‘€κΉŒμ§€λ„ μ˜ˆμΈ‘ν•  수 μžˆμŒμ„ λ³΄μ˜€λ‹€. λ§ˆμ§€λ§‰μœΌλ‘œ λΆ„λŸ‰μ— λΉ„ν•΄ μ£Όμš” 정보가 ν¬μ†Œν•˜λ‹€λŠ” 의료 기둝의 ν•œκ³„λ₯Ό κ·Ήλ³΅ν•˜κΈ° μœ„ν•΄ μ§€μ‹κ·Έλž˜ν”„λ₯Ό ν™œμš©ν•˜μ—¬ 사전 μ˜ν•™ 지식을 λ³΄κ°•ν•˜μ˜€λ‹€. μ΄λ•Œ ν™˜μžμ˜ 의료 기둝을 κ΅¬μ„±ν•˜λŠ” μ§€μ‹κ·Έλž˜ν”„μ˜ λΆ€λΆ„λ§Œμ„ μΆ”μΆœν•˜μ—¬ κ°œμΈν™”λœ μ§€μ‹κ·Έλž˜ν”„λ₯Ό λ§Œλ“€κ³  κ·Έλž˜ν”„ λ‰΄λŸ΄ λ„€νŠΈμ›Œν¬λ₯Ό 톡해 κ·Έλž˜ν”„μ˜ ν‘œν˜„ 벑터λ₯Ό νšλ“ν•˜μ˜€λ‹€. μ΅œμ’…μ μœΌλ‘œ 순차적인 의료 기둝을 ν•¨μΆ•ν•œ ν™˜μž ν‘œν˜„κ³Ό λ”λΆˆμ–΄ κ°œμΈν™”λœ μ˜ν•™ 지식을 ν•¨μΆ•ν•œ ν‘œν˜„μ„ ν•¨κ»˜ μ‚¬μš©ν•˜μ—¬ ν–₯ν›„ μ§ˆλ³‘ 및 진단 예츑 λ¬Έμ œμ— ν™œμš©ν•˜μ˜€λ‹€.This dissertation proposes a deep neural network-based medical concept and patient representation learning methods using medical claims data to solve two healthcare tasks, i.e., clinical outcome prediction and post-marketing adverse drug reaction (ADR) signal detection. First, we propose SAF-RNN, a Recurrent Neural Network (RNN)-based model that learns a deep patient representation based on the clinical sequences and patient characteristics. Our proposed model fuses different types of patient records using feature-based gating and self-attention. We demonstrate that high-level associations between two heterogeneous records are effectively extracted by our model, thus achieving state-of-the-art performances for predicting the risk probability of cardiovascular disease. Secondly, based on the observation that the distributed medical code embeddings represent temporal proximity between the medical codes, we introduce a graph structure to enhance the code embeddings with such temporal information. We construct a graph using the distributed code embeddings and the statistical information from the claims data. We then propose the Graph Neural Network(GNN)-based representation learning for post-marketing ADR detection. Our model shows competitive performances and provides valid ADR candidates. Finally, rather than using patient records alone, we utilize a knowledge graph to augment the patient representation with prior medical knowledge. Using SAF-RNN and GNN, the deep patient representation is learned from the clinical sequences and the personalized medical knowledge. It is then used to predict clinical outcomes, i.e., next diagnosis prediction and CVD risk prediction, resulting in state-of-the-art performances.1 Introduction 1 2 Background 8 2.1 Medical Concept Embedding 8 2.2 Encoding Sequential Information in Clinical Records 11 3 Deep Patient Representation with Heterogeneous Information 14 3.1 Related Work 16 3.2 Problem Statement 19 3.3 Method 20 3.3.1 RNN-based Disease Prediction Model 20 3.3.2 Self-Attentive Fusion (SAF) Encoder 23 3.4 Dataset and Experimental Setup 24 3.4.1 Dataset 24 3.4.2 Experimental Design 26 ii 3.4.3 Implementation Details 27 3.5 Experimental Results 28 3.5.1 Evaluation of CVD Prediction 28 3.5.2 Sensitivity Analysis 28 3.5.3 Ablation Studies 31 3.6 Further Investigation 32 3.6.1 Case Study: Patient-Centered Analysis 32 3.6.2 Data-Driven CVD Risk Factors 32 3.7 Conclusion 33 4 Graph-Enhanced Medical Concept Embedding 40 4.1 Related Work 42 4.2 Problem Statement 43 4.3 Method 44 4.3.1 Code Embedding Learning with Skip-gram Model 44 4.3.2 Drug-disease Graph Construction 45 4.3.3 A GNN-based Method for Learning Graph Structure 47 4.4 Dataset and Experimental Setup 49 4.4.1 Dataset 49 4.4.2 Experimental Design 50 4.4.3 Implementation Details 52 4.5 Experimental Results 53 4.5.1 Evaluation of ADR Detection 53 4.5.2 Newly-Described ADR Candidates 54 4.6 Conclusion 55 5 Knowledge-Augmented Deep Patient Representation 57 5.1 Related Work 60 5.1.1 Incorporating Prior Medical Knowledge for Clinical Outcome Prediction 60 5.1.2 Inductive KGC based on Subgraph Learning 61 5.2 Method 61 5.2.1 Extracting Personalized KG 61 5.2.2 KA-SAF: Knowledge-Augmented Self-Attentive Fusion Encoder 64 5.2.3 KGC as a Pre-training Task 68 5.2.4 Subgraph Infomax: SGI 69 5.3 Dataset and Experimental Setup 72 5.3.1 Clinical Outcome Prediction 72 5.3.2 Next Diagnosis Prediction 72 5.4 Experimental Results 73 5.4.1 Cardiovascular Disease Prediction 73 5.4.2 Next Diagnosis Prediction 73 5.4.3 KGC on SemMed KG 73 5.5 Conclusion 74 6 Conclusion 77 Abstract (In Korean) 90 Acknowlegement 92λ°•
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