Search results for "sparse data"

showing 3 items of 3 documents

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
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Automatic knowledge discovery from sparse and large-scale educational data : case Finland

2017

The Finnish educational system has received a lot of attention during the 21st century. Especially, the outstanding results in the first three cycles of the Programme for International Student Assessment (PISA) have made Finland’s education system internationally famous, and its unique characteristics have been under active research by various, predominantly educational, scholars since then. However, despite the availability of real but often sparse big data sets that would allow more evidence-based decision making, existing research to date has mostly concentrated on using classical qualitative and (univariate) quantitative methods. This thesis discusses, in general terms, knowledge discove…

learning analyticsmallintaminensparse dataeducational data scienceeducational data miningPISA-tutkimustietämystekniikkakoulutusjärjestelmätknowledge discoveryaineistotPISApäätöksentukijärjestelmätkehittäminenoppimistuloksettietämyksenhallintakoulutusbig dataSuomitiedonlouhintatietämysFinland
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Estimating aggregated nutrient fluxes in four Finnish rivers via Gaussian state space models

2013

Reliable estimates of the nutrient fluxes carried by rivers from land-based sources to the sea are needed for efficient abatement of marine eutrophication. Although nutrient concentrations in rivers generally display large temporal variation, sampling and analysis for nutrients, unlike flow measurements, are rarely performed on a daily basis. The infrequent data calls for ways to reliably estimate the nutrient concentrations of the missing days. Here, we use the Gaussian state space models with daily water flow as a predictor variable to predict missing nutrient concentrations for four agriculturally impacted Finnish rivers. Via simulation of Gaussian state space models, we are able to esti…

sparse dataharva aineistoPHOSPHORUS LOADOceanografi hydrologi och vattenresurserFINLANDKalmanin tasoitinsimulationSERIESinterpolationOceanography Hydrology and Water ResourcesKalmanin suodinKalman smootherSTREAMSsimulointiKalman filterinterpolointi
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