Search results for "Machine learning"

showing 10 items of 1464 documents

The Bayesian Learning Automaton — Empirical Evaluation with Two-Armed Bernoulli Bandit Problems

2009

The two-armed Bernoulli bandit (TABB) problem is a classical optimization problem where an agent sequentially pulls one of two arms attached to a gambling machine, with each pull resulting either in a reward or a penalty. The reward probabilities of each arm are unknown, and thus one must balance between exploiting existing knowledge about the arms, and obtaining new information.

Balance (metaphysics)Optimization problemWake-sleep algorithmbusiness.industryBayesian inferenceMachine learningcomputer.software_genreAutomatonBernoulli's principleArtificial intelligencebusinessBeta distributioncomputerMathematics
researchProduct

Forecasting basketball players' performance using sparse functional data*

2019

Statistics and analytic methods are becoming increasingly important in basketball. In particular, predicting players’ performance using past observations is a considerable challenge. The purpose of this study is to forecast the future behavior of basketball players. The available data are sparse functional data, which are very common in sports. So far, however, no forecasting method designed for sparse functional data has been used in sports. A methodology based on two methods to handle sparse and irregular data, together with the analogous method and functional archetypoid analysis is proposed. Results in comparison with traditional methods show that our approach is competitive and additio…

Basketballbusiness.industryComputer sciencefunctional sparse dataFunctional data analysisforecastingMachine learningcomputer.software_genreComputer Science ApplicationsArchetypal analysisArtificial intelligencearchetypal analysisbasketballbusinesscomputerAnalysisfunctional data analysisInformation SystemsStatistical Analysis and Data Mining: The ASA Data Science Journal
researchProduct

A Collaborative Filtering Approach for Drug Repurposing

2022

A recommendation system is proposed based on the construction of Knowledge Graphs, where physical interaction between proteins and associations between drugs and targets are taken into account. The system suggests new targets for a given drug depending on how proteins are linked each other in the graph. The framework adopted for the implementation of the proposed approach is Apache Spark, useful for loading, managing and manipulating data by means of appropriate Resilient Distributed Datasets (RDD). Moreover, the Alternating Least Square (ALS) machine learning algorithm, a Matrix Factorization algorithm for distributed and parallel computing, is applied. Preliminary obtained results seem to…

Big Data technologiesLatent factorsSettore INF/01 - InformaticaDrugsMachine learning algorithms
researchProduct

The Datafication of Hate: Expectations and Challenges in Automated Hate Speech Monitoring.

2020

Laaksonen, S-M.; Haapoja, J.; Kinnunen, T., Nelimarkka, M. & Pöyhtäri, R. (2020, accepted). . Frontiers in Big Data: Data Mining and Management / Critical Data and Algorithm Studies. doi:10.3389/fdata.2020.00003 Hate speech has been identified as a pressing problem in society and several automated approaches have been designed to detect and prevent it. This paper reports and reflects upon an action research setting consisting of multi-organizational collaboration conducted during Finnish municipal elections in 2017, wherein a technical infrastructure was designed to automatically monitor candidates' social media updates for hate speech. The setting allowed us to engage in a 2-fold investiga…

Big DataComputer sciencehate speechsocial media518 Media and communicationssosiaalinen mediamonitorointi050801 communication & media studiesSocial issues0508 media and communicationspolitiikkadatatiedeArtificial Intelligencealgoritmit050602 political science & public administrationComputer Science (miscellaneous)Social mediaalgorithmic systemvihapuheAction researchObjectivity (science)Original Researchlcsh:T58.5-58.64DataficationSocial phenomenonlcsh:Information technologytekstinlouhinta05 social sciencesCitizen journalism16. Peace & justice113 Computer and information sciencesData science0506 political sciencekoneoppiminenmachine learningNeutralitydata sciencepoliticsInformation Systems
researchProduct

Deep learning and process understanding for data-driven Earth system science

2017

Machine learning approaches are increasingly used to extract patterns and insights from the ever-increasing stream of geospatial data, but current approaches may not be optimal when system behaviour is dominated by spatial or temporal context. Here, rather than amending classical machine learning, we argue that these contextual cues should be used as part of deep learning (an approach that is able to extract spatio-temporal features automatically) to gain further process understanding of Earth system science problems, improving the predictive ability of seasonal forecasting and modelling of long-range spatial connections across multiple timescales, for example. The next step will be a hybri…

Big DataTime FactorsProcess modelingGeospatial analysis010504 meteorology & atmospheric sciencesProcess (engineering)0208 environmental biotechnologyBig dataGeographic Mapping02 engineering and technologycomputer.software_genreMachine learning01 natural sciencesPattern Recognition AutomatedData-drivenDeep LearningSpatio-Temporal AnalysisHumansComputer SimulationWeather0105 earth and related environmental sciencesMultidisciplinarybusiness.industryDeep learningUncertaintyReproducibility of ResultsTranslatingRegression Psychology020801 environmental engineeringEarth system scienceKnowledgePattern recognition (psychology)Earth SciencesFemaleSeasonsArtificial intelligencebusinessPsychologyFacial RecognitioncomputerForecastingNature
researchProduct

Cluster-based active learning for compact image classification

2010

In this paper, we consider active sampling to label pixels grouped with hierarchical clustering. The objective of the method is to match the data relationships discovered by the clustering algorithm with the user's desired class semantics. The first is represented as a complete tree to be pruned and the second is iteratively provided by the user. The active learning algorithm proposed searches the pruning of the tree that best matches the labels of the sampled points. By choosing the part of the tree to sample from according to current pruning's uncertainty, sampling is focused on most uncertain clusters. This way, large clusters for which the class membership is already fixed are no longer…

Binary treeContextual image classificationbusiness.industryActive learning (machine learning)Sampling (statistics)Pattern recognitioncomputer.software_genreHierarchical clusteringMulticlass classificationTree (data structure)ComputingMethodologies_PATTERNRECOGNITIONLife ScienceArtificial intelligenceData miningbusinessCluster analysiscomputerMathematics
researchProduct

MicroRNA Interaction Networks

2021

La tesi di Giorgio Bertolazzi è incentrata sullo sviluppo di nuovi algoritmi per la predizione dei legami miRNA-mRNA. In particolare, un algoritmo di machine-learning viene proposto per l'upgrade del web tool ComiR; la versione originale di ComiR considerava soltanto i siti di legame dei miRNA collocati nella regione 3'UTR dell'RNA messaggero. La nuova versione di ComiR include nella ricerca dei legami la regione codificante dell'RNA messaggero. Bertolazzi’s thesis focuses on developing and applying computational methods to predict microRNA binding sites located on messenger RNA molecules. MicroRNAs (miRNAs) regulate gene expression by binding target messenger RNA molecules (mRNAs). Therefo…

BioinformaticSettore ING-INF/05 - Sistemi Di Elaborazione Delle Informazionimachine learningTranscriptomicSettore BIO/10 - Biochimicacomputational methodnetworkSettore ING-INF/06 - Bioingegneria Elettronica E Informaticasequence analysiSettore BIO/11 - Biologia Molecolare
researchProduct

Reproducing kernel hilbert spaces regression methods for genomic assisted prediction of quantitative traits.

2008

Abstract Reproducing kernel Hilbert spaces regression procedures for prediction of total genetic value for quantitative traits, which make use of phenotypic and genomic data simultaneously, are discussed from a theoretical perspective. It is argued that a nonparametric treatment may be needed for capturing the multiple and complex interactions potentially arising in whole-genome models, i.e., those based on thousands of single-nucleotide polymorphism (SNP) markers. After a review of reproducing kernel Hilbert spaces regression, it is shown that the statistical specification admits a standard mixed-effects linear model representation, with smoothing parameters treated as variance components.…

BiologyInvestigationsBayesian inferenceMachine learningcomputer.software_genreKernel principal component analysisChromosomessymbols.namesakeQuantitative Trait HeritableGeneticsAnimalsGeneticsGenomeModels GeneticRepresenter theorembusiness.industryHilbert spaceLinear modelBayes TheoremQuantitative Biology::GenomicsKernel embedding of distributionsKernel (statistics)symbolsPrincipal component regressionRegression AnalysisArtificial intelligencebusinesscomputerChickensGenetics
researchProduct

Advancing cyanobacteria biomass estimation from hyperspectral observations: Demonstrations with HICO and PRISMA imagery

2021

Retrieval of the phycocyanin concentration (PC), a characteristic pigment of, and proxy for, cyanobacteria biomass, from hyperspectral satellite remote sensing measurements is challenging due to uncertainties in the remote sensing reflectance (?R) resulting from atmospheric correction and instrument radiometric noise. Although several individual algorithms have been proven to capture local variations in cyanobacteria biomass in specific regions, their performance has not been assessed on hyperspectral images from satellite sensors. Our work leverages a machine-learning model, Mixture Density Networks (MDNs), trained on a large (N = 939) dataset of collocated in situ chlorophyll-a concentrat…

Biomass (ecology)Aquatic remote sensingcyanoHABsHICOMultispectral imageAtmospheric correctionPhycocyaninSoil ScienceHyperspectral imagingGeologyPRISMASpectral bandsCyanobacteriacyanobacteria ; phycocyanin ; machine learning ; mixture density network ; aquatic remote sensing ; cyanoHABs ; HICO ; PRISMAMachine learningMixture density networkEnvironmental scienceRadiometrySatelliteNoise (video)Computers in Earth SciencesRemote sensingRemote Sensing of Environment
researchProduct

The Application of Machine Learning Algorithms to the Analysis of Electromyographic Patterns From Arthritic Patients

2009

The main aim of our study was to investigate the possibility of applying machine learning techniques to the analysis of electromyographic patterns (EMG) collected from arthritic patients during gait. The EMG recordings were collected from the lower limbs of patients with arthritis and compared with those of healthy subjects (CO) with no musculoskeletal disorder. The study involved subjects suffering from two forms of arthritis, viz, rheumatoid arthritis (RA) and hip osteoarthritis (OA). The analysis of the data was plagued by two problems which frequently render the analysis of this type of data extremely difficult. One was the small number of human subjects that could be included in the in…

Biomedical EngineeringArthritisElectromyographyMachine learningcomputer.software_genreGait (human)Musculoskeletal disorderArtificial IntelligenceInternal MedicineHumansMedicineGaitArtificial neural networkmedicine.diagnostic_testElectromyographybusiness.industryArthritisData CollectionGeneral NeuroscienceRehabilitationReproducibility of ResultsSignal Processing Computer-AssistedLinear discriminant analysismedicine.diseaseBiomechanical PhenomenaKernel methodROC CurveMultilayer perceptronArtificial intelligencebusinesscomputerAlgorithmAlgorithmsIEEE Transactions on Neural Systems and Rehabilitation Engineering
researchProduct