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    <identifier identifierType="DOI">10.34691/FK2/9SGXZG</identifier>
    <creators><creator><creatorName>Martínez Palomera, Jorge</creatorName><nameIdentifier schemeURI="https://orcid.org/" nameIdentifierScheme="ORCID">https://orcid.org/0000-0002-7395-4935</nameIdentifier><affiliation>(Universidad de Chile)</affiliation></creator><creator><creatorName>Förster, Francisco</creatorName><nameIdentifier schemeURI="https://orcid.org/" nameIdentifierScheme="ORCID">https://orcid.org/0000-0003-3459-2270</nameIdentifier><affiliation>(Universidad de Chile)</affiliation></creator></creators>
    <titles>
        <title>Replicar los datos para: The high cadence transient survey (Hits): Source, light-curve and classification catalogs</title>
    </titles>
    <publisher>Repositorio de datos de investigación de la Universidad de Chile</publisher>
    <publicationYear>2019</publicationYear>
    <resourceType resourceTypeGeneral="Dataset"/>
    <relatedIdentifiers><relatedIdentifier relatedIdentifierType="DOI" relationType="HasPart">doi:10.34691/FK2/9SGXZG/CMX2FI</relatedIdentifier></relatedIdentifiers>
    <descriptions>
        <description descriptionType="Abstract">The High Cadence Transient Survey (HiTS) aims to discover and study transient objects with characteristic timescales between hours and days, such as pulsating, eclipsing and exploding stars. This survey represents a unique laboratory to explore large etendue observations from cadences of about 0.1 days and to test new computational tools for the analysis of large data. This work follows a fully Data Science approach: from the raw data to the analysis and classification of variable sources. We compile a catalog of ~15 million object detections and a catalog of ~2.5 million light-curves classified by variability. The typical depth of the survey is 24.2, 24.3, 24.1 and 23.8 in u, g, r, and i bands, respectively. We classified all point-like non-moving sources by first extracting features from their light--curves and then applying a Random Forest classifier. For the classification, we used a training set constructed using a combination of cross-matched catalogs, visual inspection, transfer/active learning, and data augmentation. The classification model consists of several Random Forest classifiers organized in a hierarchical scheme. The classifier accuracy estimated on a test set is approximately 97%. In the unlabeled data, 3,485 sources were classified as variables, of which 1,321 were classified as periodic. Among the periodic classes we discovered with high confidence, 1 δ scuti, 39 eclipsing binaries, 48 rotational variables, and 90 RR-Lyrae. For the non-periodic classes we discovered 1 cataclysmic variables, 630 QSO, and 1 supernova candidate.</description>
    </descriptions>
    <contributors><contributor contributorType="ContactPerson"><contributorName>Martínez Palomera, Jorge</contributorName><affiliation>(Universidad de Chile)</affiliation></contributor></contributors>
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