2022
T. Barbariol, F. Dalla Chiara, D. Marcato, G.A. Susto.
A review of Tree-based approaches for Anomaly Detection. Control Charts and Machine Learning for Anomaly Detection in Manufacturing, 2022
Abstract:
Data-driven Anomaly Detection approaches have received increasing attention in many other application areas in the past fewyears as a tool for monitoring of complex systems in addition to classical univariatecontrol charts. Tree-based approaches have proven to be particularly effective when dealing with high-dimensional Anomaly Detection problems and with underlying non-gaussian data distributions. The most popular approach in this family is the Isolation Forest, which is currently one of the mostpopular choices for scientists and practitioners when dealing with Anomaly Detection tasks. The Isolation Forest represents a seminal algorithm upon which many extended approaches have been presented in the past years aiming at improving the original method or at dealing with peculiar applicationscenarios. In this work, we revise some of the most popular and powerful Tree-based approaches to Anomaly Detection (extensions of the Isolation Forest and other approaches), considering both batch and streaming datascenarios. This work will review several relevant aspects of the methods, like computational costs and interpretability traits. To help practitioners, we also report available relevant libraries and open implementations and we review real-world industrial applications of the considered approaches.
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2020
A. Razman, A. Majeed, R.M. Musa, Z. Taha, G.A. Susto, Y. Mukai.
Hyperparameter Tuning of the Model for Hunger State Classification. SpringerBriefs in Applied Sciences and Technology, pp. 49-57, 2020
Abstract:
To increase the classification, the rate of prediction based on existing models requires additional technique or in this case optimizing the model. Hyperparameter tuning is an optimization technique that evaluates and adjusts the free parameters that define the behaviour of classifiers. Data sets were classified practical with classifiers like SVM, k-NN, ANN and DA. To further improve the design efficiency, the secondary optimization level called hyperparameter tuning will be further investigated. DA, SVM, k-NN, decision tree (Tree), logistic regression (LR), random forest tree (RF) and neural network (NN) are evaluated. The k-NN provided 96.47% of the test sets with the best reliability in classifications. Bayesian optimization has been used to refine the hyperparameter; hence, standardize Euclidean distance metric with a k value of one is the ideal hyperparameters which could achieve classification performance of 97.16%.
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A. Razman, A. Majeed, R.M. Musa, Z. Taha, G.A. Susto, Y. Mukai.
Image Processing Features Extraction on Fish Behaviour. SpringerBriefs in Applied Sciences and Technology, pp. 25-36, 2020
Abstract:
This chapter demonstrates the pipeline from data collection until classifier models that achieve the best possible model in identifying the disparity between hunger states. The pre-processing segment describes the features of the data sets obtained by means of image processing. The method includes the simple moving average (SMA), downsizing factors, dynamic time warping (DTW) and clustering by the k-means method. This is to rationally assign the necessary significant information from the data collected and processed the images captured for demand feeder and fish motion as a synthesis for anticipating the state of fish starvation. The selection of features in this study takes place via the boxplot analysis and the principal component analysis (PCA) on dimensionality reduction. Finally, the validation of the hunger state will be addressed by comparing machine learning (ML) classifiers, namely the discriminant analysis (DA), support vector machine (SVM) and k-nearest neighbour (k-NN). The outcome in this chapter will validate the features from image processing as a tool for identifying the behavioural changes of the fish in school size.
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A. Razman, A. Majeed, R.M. Musa, Z. Taha, G.A. Susto, Y. Mukai.
Monitoring and Feeding Integration of Demand Feeder Systems. SpringerBriefs in Applied Sciences and Technology, pp. 11-24, 2020
Abstract:
This chapter highlights the findings of the developmental monitoring systems for swimming pattern or motion analysis with regard to feeding behaviour. A benchmark for examining the framework on how scientists control fish in animal variable function factors was gathered and referred to gauge the adequate design in constructing a viable device. The validation of image processing and automated demand feeder to determine the results will also be considered, as a validation aspect between the system of tracking and the behaviour of the Lates calcarifer where the pixel intensity will be extracted as the features. The results of this chapter will enable the reader on the development of an integrated feeder scheme that consolidates surveillance scheme to identify the feeding behaviour and relation towards the specific growth rate (SGR).
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A. Razman, A. Majeed, R.M. Musa, Z. Taha, G.A. Susto, Y. Mukai.
Time-Series Identification on Fish Feeding Behaviour. SpringerBriefs in Applied Sciences and Technology, pp. 37-47, 2020
Abstract:
The identification of relevant parameters that could describe the state of fish hunger is vital for ensuring the appropriate allocation of food to the fish. The establishment of these relevant parameters is non-trivial, particularly when developing an automated demand feeder system. The present inquiry is being undertaken to determine the hunger state of Lates calcarifer. For data collection, a video analysis system is used, and the video was taken all day, where the fish was fed by an automatic feeding system. Sixteen characteristics of the raw data set have been extracted through feature engineering for 0.5 min, 1.0 min, 1.5 min and 2.0 min, respectively, in accordance with the mean, peak, minimum and variability of each of the different time window scales. Furthermore, the features extracted have been evaluated through principal component analysis (PCA) both for dimension reduction and PCA with varimax rotation. The details were then categorized using support vector machine (SVM), K-NN and random forest tree (RF) classifiers. The best identification accuracy was shown with eight described features in the varimax-based PCA. The forecast results based on the K-NN model built on selected data characteristics showed a level of 96.5% indicating that the characteristics analysed were crucial to classifying the actions of hunger among fisheries.
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2018
A. Purpura, C. Masiero, G.A. Susto.
WS4ABSA: an NMF-based Weakly-Supervised Approach for Aspect-Based Sentiment Analysis with Application to Online Reviews. Lecture Notes in Computer Science, pp. 386--401, 2018
Abstract:
The goal of Aspect-Based Sentiment Analysis is to identify opinions regarding specific targets and the corresponding sentiment polarity in a document. The proposed approach is designed for real-world scenarios, where the amount of available information and annotated data is often too limited to train supervised models. We focus on the two core tasks of Aspect-Based Sentiment Analysis: aspect and sentiment polarity classification. The first task – which consists in the identification of the opinion targets in a document – is tackled by means of a weakly-supervised technique based on Non-negative Matrix Factorization. This strategy allows users to easily embed some a priori domain knowledge by means of short seed terms lists. Experimental results on publicly available data sets related to online reviews suggest that the proposed approach is very flexible and can be easily adapted to different languages and domains.
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2014
A. Saccon, J. Hauser, A. Beghi.
Virtual rider design: Optimal manoeuvre definition and tracking. Modelling, Simulation and Control of Two-Wheeled Vehicles, pp. 83--115, 2014 [
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2012
M. Zorzi, F. Ticozzi, A. Ferrante.
Estimation of Quantum Channels: Identifiability and ML Methods. 51st IEEE Conference on Decision and Control (CDC 2012), 2012 [
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G. Picci, G. Bottegal.
Generalized Factor Analysis Models. Control Theory: Mathematical Perspectives on Complex Networked Systems, 2012 [
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A. Ferrante, M. Pavon, M. Zorzi.
Structured covariance estimation in high resolution spectral analysis. Proc. of Int. Symp. Mathematical Theory of Network and Systems, MTNS 2012, 2012 [
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2011
Aavv, M. Zorzi, A. Ferrante, F. Ticozzi.
Engineering a Long Distance Free-Space Quantum Channel. Isabel, 2011 [
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2010
A. Ferrante, M. Pavon, M. Zorzi.
Application of a global inverse function theorem of Byrnes and Lindquist to a multivariable moment problem with complexity constraint. Three Decades of Progress in Control Sciences, pp. 153-167, 2010 [
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2006
A. Masiero, A. Chiuso.
Non Linear Temporal Textures Synthesis: A Monte Carlo Approach. Computer Vision - ECCV 2006, vol. II, pp. 283--294, 2006 [
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2004
Saisan, A. Bissacco, A. Chiuso, S. Soatto.
Modeling and synthesis of facial motion driven by speech. ECCV 2004, pp. 453--467, 2004 [
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2003
R. Vidal, A. Chiuso, S. Soatto, S. Sastry.
Observability Linear Hybrid Systems. Hybrid Systems: Computation and Control 6th International Workshop HSCC 2003, vol. -, pp. 526--539, 2003 [
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2000
A. Chiuso, H. Jin, P. Favaro, S. Soatto.
3-D Motion and Structure from 2-D Motion Causally Integrated Over Time: Implementation. Computer Vision - ECCV 2000, pp. 734--750, 2000 [
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