38 datasets found
  1. SAS code used to analyze data and a datafile with metadata glossary

    • catalog.data.gov
    • data.amerigeoss.org
    Updated Nov 12, 2020
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    U.S. EPA Office of Research and Development (ORD) (2020). SAS code used to analyze data and a datafile with metadata glossary [Dataset]. https://catalog.data.gov/dataset/sas-code-used-to-analyze-data-and-a-datafile-with-metadata-glossary
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    Dataset updated
    Nov 12, 2020
    Dataset provided by
    United States Environmental Protection Agencyhttp://www.epa.gov/
    Description

    We compiled macroinvertebrate assemblage data collected from 1995 to 2014 from the St. Louis River Area of Concern (AOC) of western Lake Superior. Our objective was to define depth-adjusted cutoff values for benthos condition classes (poor, fair, reference) to provide tool useful for assessing progress toward achieving removal targets for the degraded benthos beneficial use impairment in the AOC. The relationship between depth and benthos metrics was wedge-shaped. We therefore used quantile regression to model the limiting effect of depth on selected benthos metrics, including taxa richness, percent non-oligochaete individuals, combined percent Ephemeroptera, Trichoptera, and Odonata individuals, and density of ephemerid mayfly nymphs (Hexagenia). We created a scaled trimetric index from the first three metrics. Metric values at or above the 90th percentile quantile regression model prediction were defined as reference condition for that depth. We set the cutoff between poor and fair condition as the 50th percentile model prediction. We examined sampler type, exposure, geographic zone of the AOC, and substrate type for confounding effects. Based on these analyses we combined data across sampler type and exposure classes and created separate models for each geographic zone. We used the resulting condition class cutoff values to assess the relative benthic condition for three habitat restoration project areas. The depth-limited pattern of ephemerid abundance we observed in the St. Louis River AOC also occurred elsewhere in the Great Lakes. We provide tabulated model predictions for application of our depth-adjusted condition class cutoff values to new sample data. This dataset is associated with the following publication: Angradi, T., W. Bartsch, A. Trebitz, V. Brady, and J. Launspach. A depth-adjusted ambient distribution approach for setting numeric removal targets for a Great Lakes Area of Concern beneficial use impairment: Degraded benthos. JOURNAL OF GREAT LAKES RESEARCH. International Association for Great Lakes Research, Ann Arbor, MI, USA, 43(1): 108-120, (2017).

  2. f

    Supplement 1. MATLAB and SAS code necessary to replicate the simulation...

    • datasetcatalog.nlm.nih.gov
    • wiley.figshare.com
    Updated Aug 4, 2016
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    Davis, Adam S.; Landis, Douglas A.; Schemske, Douglas W.; Raghu, S.; Evans, Jeffrey A.; Ragavendran, Ashok (2016). Supplement 1. MATLAB and SAS code necessary to replicate the simulation models and other demographic analyses presented in the paper. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001528932
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    Dataset updated
    Aug 4, 2016
    Authors
    Davis, Adam S.; Landis, Douglas A.; Schemske, Douglas W.; Raghu, S.; Evans, Jeffrey A.; Ragavendran, Ashok
    Description

    File List Code_and_Data_Supplement.zip (md5: dea8636b921f39c9d3fd269e44b6228c) Description The supplementary material provided includes all code and data files necessary to replicate the simulation models other demographic analyses presented in the paper. MATLAB code is provided for the simulations, and SAS code is provided to show how model parameters (vital rates) were estimated. The principal programs are Figure_3_4_5_Elasticity_Contours.m and Figure_6_Contours_Stochastic_Lambda.m which perform the elasticity analyses and run the stochastic simulation, respectively. The files are presented in a zipped folder called Code_and_Data_Supplement. When uncompressed, users may run the MATLAB programs by opening them from within this directory. Subdirectories contain the data files and supporting MATLAB functions necessary to complete execution. The programs are written to find the necessary supporting functions in the Code_and_Data_Supplement directory. If users copy these MATLAB files to a different directory, they must add the Code_and_Data_Supplement directory and its subdirectories to their search path to make the supporting files available. More details are provided in the README.txt file included in the supplement. The file and directory structure of entire zipped supplement is shown below. Folder PATH listing Code_and_Data_Supplement | Figure_3_4_5_Elasticity_Contours.m | Figure_6_Contours_Stochastic_Lambda.m | Figure_A1_RefitG2.m | Figure_A2_PlotFecundityRegression.m | README.txt | +---FinalDataFiles +---Make Tables | README.txt | Table_lamANNUAL.csv | Table_mgtProbPredicted.csv | +---ParameterEstimation | | Categorical Model output.xls | | | +---Fecundity | | Appendix_A3_Fecundity_Breakpoint.sas | | fec_Cat_Indiv.sas | | Mean_Fec_Previous_Study.m | | | +---G1 | | G1_Cat.sas | | | +---G2 | | G2_Cat.sas | | | +---Model Ranking | | Categorical Model Ranking.xls | | | +---Seedlings | | sdl_Cat.sas | | | +---SS | | SS_Cat.sas | | | +---SumSrv | | sum_Cat.sas | | | ---WinSrv | modavg.m | winCatModAvgfitted.m | winCatModAvgLinP.m | winCatModAvgMu.m | win_Cat.sas | +---ProcessedDatafiles | fecdat_gm_param_est_paper.mat | hierarchical_parameters.mat | refitG2_param_estimation.mat | ---Required_Functions | hline.m | hmstoc.m | Jeffs_Figure_Settings.m | Jeffs_startup.m | newbootci.m | sem.m | senstuff.m | vline.m | +---export_fig | change_value.m | eps2pdf.m | export_fig.m | fix_lines.m | ghostscript.m | license.txt | pdf2eps.m | pdftops.m | print2array.m | print2eps.m | +---lowess | license.txt | lowess.m | +---Multiprod_2009 | | Appendix A - Algorithm.pdf | | Appendix B - Testing speed and memory usage.pdf | | Appendix C - Syntaxes.pdf | | license.txt | | loc2loc.m | | MULTIPROD Toolbox Manual.pdf | | multiprod.m | | multitransp.m | | | ---Testing | | arraylab13.m | | arraylab131.m | | arraylab132.m | | arraylab133.m | | genop.m | | multiprod13.m | | readme.txt | | sysrequirements_for_testing.m | | testing_memory_usage.m | | testMULTIPROD.m | | timing_arraylab_engines.m | | timing_matlab_commands.m | | timing_MX.m | | | ---Data | Memory used by MATLAB statements.xls | Timing results.xlsx | timing_MX.txt | +---province | PROVINCE.DBF | province.prj | PROVINCE.SHP | PROVINCE.SHX | README.txt | +---SubAxis | parseArgs.m | subaxis.m | +---suplabel | license.txt | suplabel.m | suplabel_test.m | ---tight_subplot license.txt tight_subplot.m

  3. e

    Condition Ingenieros Sas Export Import Data | Eximpedia

    • eximpedia.app
    Updated Sep 8, 2025
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    (2025). Condition Ingenieros Sas Export Import Data | Eximpedia [Dataset]. https://www.eximpedia.app/companies/condition-ingenieros-sas/18036372
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    Dataset updated
    Sep 8, 2025
    Description

    Condition Ingenieros Sas Export Import Data. Follow the Eximpedia platform for HS code, importer-exporter records, and customs shipment details.

  4. d

    Data from: Sensitivity and specificity of point-of-care rapid combination...

    • datadryad.org
    • data.niaid.nih.gov
    zip
    Updated Oct 9, 2015
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    Kristen L. Hess; Dennis G. Fisher; Grace L. Reynolds (2015). Sensitivity and specificity of point-of-care rapid combination syphilis-HIV-HCV tests [Dataset]. http://doi.org/10.5061/dryad.nh7f4
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    zipAvailable download formats
    Dataset updated
    Oct 9, 2015
    Dataset provided by
    Dryad
    Authors
    Kristen L. Hess; Dennis G. Fisher; Grace L. Reynolds
    Time period covered
    Oct 8, 2014
    Area covered
    California USA
    Description

    PLOSsyphThis is an ASCII file that is space delimited that was created in SAS. It has the variables that were used in the published paper. The readme.sas file is a .sas file that reads the data. You will need to change the infile statement to reflect the path to where you put the data.

  5. m

    Believe SAS - Net-Income

    • macro-rankings.com
    csv, excel
    Updated Aug 24, 2025
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    macro-rankings (2025). Believe SAS - Net-Income [Dataset]. https://www.macro-rankings.com/markets/stocks/blv-pa/income-statement/net-income
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    csv, excelAvailable download formats
    Dataset updated
    Aug 24, 2025
    Dataset authored and provided by
    macro-rankings
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    france
    Description

    Net-Income Time Series for Believe SAS. Believe S.A. provides digital music services for independent labels and local artists in France, Germany, rest of Europe, the Americas, Asia, Oceania, and Pacific. It operates through two segments, Premium Solutions and Automated Solutions. The company engages in the sale, promotion, and delivery of digital content provided by artists and labels by developing their catalog on digital platforms and social media; administration of copyrights; provision of synchronization services comprising the use of recorded music in advertising, films and series, video games and television; and organization of musical events. It also offers TuneCore digital platform for artists to distribute their audio content in an automated manner to streaming and social media platforms. Believe S.A. was incorporated in 2005 and is headquartered in Paris, France.

  6. f

    SAS programming package.

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated Apr 24, 2023
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    Huang, Ya-lin A.; Kourtis, Athena P.; Lampe, Margaret A.; Zhu, Weiming; Clark, Elizabeth A.; Hoover, Karen W.; Ailes, Elizabeth C.; Reefhuis, Jennita (2023). SAS programming package. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001008959
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    Dataset updated
    Apr 24, 2023
    Authors
    Huang, Ya-lin A.; Kourtis, Athena P.; Lampe, Margaret A.; Zhu, Weiming; Clark, Elizabeth A.; Hoover, Karen W.; Ailes, Elizabeth C.; Reefhuis, Jennita
    Description

    Pregnancy is a condition of broad interest across many medical and health services research domains, but one not easily identified in healthcare claims data. Our objective was to establish an algorithm to identify pregnant women and their pregnancies in claims data. We identified pregnancy-related diagnosis, procedure, and diagnosis-related group codes, accounting for the transition to International Statistical Classification of Diseases, 10th Revision, Clinical Modification (ICD-10-CM) diagnosis and procedure codes, in health encounter reporting on 10/1/2015. We selected women in Merative MarketScan commercial databases aged 15–49 years with pregnancy-related claims, and their infants, during 2008–2019. Pregnancies, pregnancy outcomes, and gestational ages were assigned using the constellation of service dates, code types, pregnancy outcomes, and linkage to infant records. We describe pregnancy outcomes and gestational ages, as well as maternal age, census region, and health plan type. In a sensitivity analysis, we compared our algorithm-assigned date of last menstrual period (LMP) to fertility procedure-based LMP (date of procedure + 14 days) among women with embryo transfer or insemination procedures. Among 5,812,699 identified pregnancies, most (77.9%) were livebirths, followed by spontaneous abortions (16.2%); 3,274,353 (72.2%) livebirths could be linked to infants. Most pregnancies were among women 25–34 years (59.1%), living in the South (39.1%) and Midwest (22.4%), with large employer-sponsored insurance (52.0%). Outcome distributions were similar across ICD-9 and ICD-10 eras, with some variation in gestational age distribution observed. Sensitivity analyses supported our algorithm’s framework; algorithm- and fertility procedure-derived LMP estimates were within a week of each other (mean difference: -4 days [IQR: -13 to 6 days]; n = 107,870). We have developed an algorithm to identify pregnancies, their gestational age, and outcomes, across ICD-9 and ICD-10 eras using administrative data. This algorithm may be useful to reproductive health researchers investigating a broad range of pregnancy and infant outcomes.

  7. e

    Hm Clause Sas Export Import Data | Eximpedia

    • eximpedia.app
    Updated Oct 5, 2025
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    (2025). Hm Clause Sas Export Import Data | Eximpedia [Dataset]. https://www.eximpedia.app/companies/hm-clause-sas/20708877
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    Dataset updated
    Oct 5, 2025
    Description

    Hm Clause Sas Export Import Data. Follow the Eximpedia platform for HS code, importer-exporter records, and customs shipment details.

  8. e

    Hm Clause Sas Arthaud Valerie Vale Export Import Data | Eximpedia

    • eximpedia.app
    Updated Sep 19, 2025
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    (2025). Hm Clause Sas Arthaud Valerie Vale Export Import Data | Eximpedia [Dataset]. https://www.eximpedia.app/companies/hm-clause-sas-arthaud-valerie-vale/03649858
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    Dataset updated
    Sep 19, 2025
    Description

    Hm Clause Sas Arthaud Valerie Vale Export Import Data. Follow the Eximpedia platform for HS code, importer-exporter records, and customs shipment details.

  9. State Court Statistics, 1985-2001: [United States] - Version 1

    • search.gesis.org
    Updated May 7, 2021
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    National Center for State Courts (2021). State Court Statistics, 1985-2001: [United States] - Version 1 [Dataset]. http://doi.org/10.3886/ICPSR09266.v1
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    Dataset updated
    May 7, 2021
    Dataset provided by
    Inter-university Consortium for Political and Social Researchhttps://www.icpsr.umich.edu/web/pages/
    GESIS search
    Authors
    National Center for State Courts
    License

    https://search.gesis.org/research_data/datasearch-httpwww-da-ra-deoaip--oaioai-da-ra-de444718https://search.gesis.org/research_data/datasearch-httpwww-da-ra-deoaip--oaioai-da-ra-de444718

    Area covered
    United States
    Description

    Abstract (en): This data collection provides comparable measures of state appellate and trial court caseloads by type of case for the 50 states, the District of Columbia, and Puerto Rico. Court caseloads are tabulated according to generic reporting categories developed by the Court Statistics Project Committee of the Conference of State Court Administrators. These categories describe differences in the unit of count and the point of count when compiling each court's caseload. Major areas of investigation include (1) case filings in state appellate and trial courts, (2) case processing and dispositions in state appellate and trial courts, and (3) appellate opinions. Within each of these areas of state government investigation, cases are separated by main case type, including civil cases, capital punishment cases, other criminal cases, juvenile cases, and administrative agency appeals. ICPSR data undergo a confidentiality review and are altered when necessary to limit the risk of disclosure. ICPSR also routinely creates ready-to-go data files along with setups in the major statistical software formats as well as standard codebooks to accompany the data. In addition to these procedures, ICPSR performed the following processing steps for this data collection: Performed consistency checks.; Checked for undocumented or out-of-range codes.. State appellate and trial court cases in the United States. 2005-11-04 On 2005-03-14 new files were added to one or more datasets. These files included additional setup files as well as one or more of the following: SAS program, SAS transport, SPSS portable, and Stata system files. The metadata record was revised 2005-11-04 to reflect these additions.2003-08-27 Part 45, Appellate Court Data, 2001, and Part 46, Trial Court Data, 2001, have been added to the data collection, along with corresponding SAS and SPSS data definition statements and PDF codebooks.2002-08-13 Part 43, Appellate Court Data, 2000, and Part 44, Trial Court Data, 2000, have been added to the data collection, along with corresponding SAS and SPSS data definition statements and PDF codebooks.2001-10-31 Part 41, Appellate Court Data, 1999, and Part 42, Trial Court Data, 1999, have been added to the data collection, along with corresponding SAS and SPSS data definition statements and PDF codebooks.2000-03-23 Part 39, Appellate Court Data, 1998, and Part 40, Trial Court Data, 1998, have been added to the data collection, along with corresponding SAS and SPSS data definition statements and PDF codebooks.1999-07-16 Part 37, Appellate Court Data, 1997, and Part 38, Trial Court Data, 1997, have been added to the data collection, along with corresponding SAS and SPSS data definition statements and PDF codebooks. Funding insitution(s): State Justice Institute (SJI-91-N-007-001-1). United States Department of Justice. Office of Justice Programs. Bureau of Justice Statistics. The Court Statistics Project Web page is: http://www.ncsconline.org/D_Research/csp/CSP_Main_Page.html.A user guide containing court codes and variable descriptions for the 1987 data and the codebooks for the 1995-2001 data are provided as Portable Document Format (PDF) files, and the codebooks for the 1988-1992 data are available in both ASCII text and PDF versions.

  10. c

    Economic Indicators for Counties, 1960-1980

    • archive.ciser.cornell.edu
    Updated Feb 12, 2020
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    Mark Lancelle (2020). Economic Indicators for Counties, 1960-1980 [Dataset]. http://doi.org/10.6077/j5/sn1oku
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    Dataset updated
    Feb 12, 2020
    Authors
    Mark Lancelle
    Variables measured
    GeographicUnit
    Description

    This is a special file prepared by the Economic Research Service of the U.S. Department of Agriculture. This file was donated to CISER by Mark Lancelle, Department of Rural Sociology, Cornell, in 1984. The file was received as an SPSS file. It was converted to an SAS system file. The only documentation for this file is the SAS Contents Listing. According to that listing, this file contains county level data for various time periods between 1960 and 1980. The Source Statements indicate that the file contains data from the Bureau of Economic Analysis (BEA) Personal Income and Employment series. No such variables can be found in the SAS dataset.

  11. g

    United States Congressional Roll Call Voting Records, 1789-1998 - Archival...

    • search.gesis.org
    Updated May 6, 2021
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    ICPSR - Interuniversity Consortium for Political and Social Research (2021). United States Congressional Roll Call Voting Records, 1789-1998 - Archival Version [Dataset]. http://doi.org/10.3886/ICPSR00004
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    Dataset updated
    May 6, 2021
    Dataset provided by
    GESIS search
    ICPSR - Interuniversity Consortium for Political and Social Research
    License

    https://search.gesis.org/research_data/datasearch-httpwww-da-ra-deoaip--oaioai-da-ra-de433276https://search.gesis.org/research_data/datasearch-httpwww-da-ra-deoaip--oaioai-da-ra-de433276

    Area covered
    United States
    Description

    Abstract (en): Roll call voting records for both chambers of the United States Congress through the second session of the 105th Congress are presented in this data collection. Each data file in the collection contains information for one chamber of a single Congress. The units of analysis in each part are the individual members of Congress. Each record contains a member's voting action on every roll call vote taken during that Congress, along with variables that identify the member (e.g., name, party, state, district, uniform ICPSR member number, and most recent means of attaining office). In addition, the codebook provides descriptive information for each roll call, including the date of the vote, outcome in terms of nays and yeas, name of initiator, the relevant bill or resolution number, and a synopsis of the issue. ICPSR data undergo a confidentiality review and are altered when necessary to limit the risk of disclosure. ICPSR also routinely creates ready-to-go data files along with setups in the major statistical software formats as well as standard codebooks to accompany the data. In addition to these procedures, ICPSR performed the following processing steps for this data collection: Checked for undocumented or out-of-range codes.. All roll call votes in the United States Congress. 2010-05-06 Data for the 105th Congress, House, and Senate (Parts 209-210), have been added to this collection, along with the standard ICPSR full product suite of files.2004-06-17 Variables were added to Part 110, Senate (55th Congress), and data within certain variables were corrected. SAS and SPSS data definition statements and the codebook have been modified to reflect these changes.2001-08-24 Logical record length data for the 8th session of the Senate, Part 16, is being made available along with SAS and SPSS data definition statements. The codebook has been modified to reflect these changes.1998-12-17 Data for the 104th Congress, House and Senate (Parts 207-208), have been added to this collection, along with corresponding machine-readable documentation and SAS and SPSS data definition statements.1997-02-24 Data for the 102nd and 103rd Congresses, House, and Senate (Parts 203-206) have been added to this collection, along with corresponding machine-readable documentation and SAS and SPSS data definition statements. The technical format has been standardized for all Congresses. Each file contains data for one chamber of a single Congress.

  12. Supplement 1. Source code for variable importance situations.

    • wiley.figshare.com
    html
    Updated Jun 2, 2023
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    Kim Murray; Mary M. Conner (2023). Supplement 1. Source code for variable importance situations. [Dataset]. http://doi.org/10.6084/m9.figshare.3530546.v1
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    htmlAvailable download formats
    Dataset updated
    Jun 2, 2023
    Dataset provided by
    Wileyhttps://www.wiley.com/
    Authors
    Kim Murray; Mary M. Conner
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    File List Variable Importance Simulation.txt Variable Importance Simulation.sas hierpart.txt hierpart.sas Description "Variable Importance Simulation.sas" is a simulation to evaluate the relative importance of random variables using Akaike weights, standardized regression coefficients, partial and semi-partial correlation coefficients, and hierarchical partitioning. Remember to change the subdirectory where hierpart.sas is called from the include statement. The file "hierpart.sas" is a macro that executes hierarchical partitioning analysis as described by Chevan and Sutherland in American Statistician, 1991, Vol. 45, no. 2, pp. 90–96. This macro was written by Kim Murray Berger and Mary M. Conner based on a Dominance Analysis macro written by Razia Azen and Robert Ceurvorst (http://www.uwm.edu/~azen/damacro.html). Hierarchical Partitioning analysis quantifies the importance of each predictor as its average contribution to the model r-square, across all possible models. Note: This program is limited to at most 10 predictors!

  13. ANES 1964 Time Series Study - Archival Version

    • search.gesis.org
    Updated Nov 10, 2015
    + more versions
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    University of Michigan. Survey Research Center. Political Behavior Program (2015). ANES 1964 Time Series Study - Archival Version [Dataset]. http://doi.org/10.3886/ICPSR07235
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    Dataset updated
    Nov 10, 2015
    Dataset provided by
    Inter-university Consortium for Political and Social Researchhttps://www.icpsr.umich.edu/web/pages/
    GESIS search
    Authors
    University of Michigan. Survey Research Center. Political Behavior Program
    License

    https://search.gesis.org/research_data/datasearch-httpwww-da-ra-deoaip--oaioai-da-ra-de441277https://search.gesis.org/research_data/datasearch-httpwww-da-ra-deoaip--oaioai-da-ra-de441277

    Description

    Abstract (en): This study is part of a time-series collection of national surveys fielded continuously since 1952. The election studies are designed to present data on Americans' social backgrounds, enduring political predispositions, social and political values, perceptions and evaluations of groups and candidates, opinions on questions of public policy, and participation in political life. A Black supplement of 263 respondents, who were asked the same questions that were administered to the national cross-section sample, is included with the national cross-section of 1,571 respondents. In addition to the usual content, the study contains data on opinions about the Supreme Court, political knowledge, and further information concerning racial issues. Voter validation data have been included as an integral part of the election study, providing objective information from registration and voting records or from respondents' past voting behavior. ICPSR data undergo a confidentiality review and are altered when necessary to limit the risk of disclosure. ICPSR also routinely creates ready-to-go data files along with setups in the major statistical software formats as well as standard codebooks to accompany the data. In addition to these procedures, ICPSR performed the following processing steps for this data collection: Performed consistency checks.; Standardized missing values.; Performed recodes and/or calculated derived variables.; Checked for undocumented or out-of-range codes.. United States citizens of voting age living in private households in the continental United States. A representative cross-section sample, consisting of 1,571 respondents, plus a Black supplement sample of 263 respondents. 2015-11-10 The study metadata was updated.1999-12-14 The data for this study are now available in SAS transport and SPSS export formats, in addition to the ASCII data file. Variables in the dataset have been renumbered to the following format: 2-digit (or 2-character) year prefix + 4 digits + [optional] 1-character suffix. Dataset ID and version variables have also been added. In addition, SAS and SPSS data definition statements have been created for this collection, and the data collection instruments are now available as a PDF file. face-to-face interview, telephone interviewThe SAS transport file was created using the SAS CPORT procedure.

  14. Guaranteed analysis and ingredients of the weight loss diet of the present...

    • plos.figshare.com
    • figshare.com
    xls
    Updated Jun 1, 2023
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    Thiago Henrique Annibale Vendramini; Henrique Tobaro Macedo; Andressa Rodrigues Amaral; Mariana Fragoso Rentas; Matheus Vinícius Macegoza; Rafael Vessecchi Amorim Zafalon; Vivian Pedrinelli; Lígia Garcia Mesquita; Júlio César de Carvalho Balieiro; Karina Pfrimer; Raquel Silveira Pedreira; Victor Nowosh; Cristiana Fonseca Ferreira Pontieri; Cristina de Oliveira Massoco; Marcio Antonio Brunetto (2023). Guaranteed analysis and ingredients of the weight loss diet of the present study. [Dataset]. http://doi.org/10.1371/journal.pone.0238638.t003
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    xlsAvailable download formats
    Dataset updated
    Jun 1, 2023
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Thiago Henrique Annibale Vendramini; Henrique Tobaro Macedo; Andressa Rodrigues Amaral; Mariana Fragoso Rentas; Matheus Vinícius Macegoza; Rafael Vessecchi Amorim Zafalon; Vivian Pedrinelli; Lígia Garcia Mesquita; Júlio César de Carvalho Balieiro; Karina Pfrimer; Raquel Silveira Pedreira; Victor Nowosh; Cristiana Fonseca Ferreira Pontieri; Cristina de Oliveira Massoco; Marcio Antonio Brunetto
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Guaranteed analysis and ingredients of the weight loss diet of the present study.

  15. Composition of the control diet and its ingredients1.

    • plos.figshare.com
    • datasetcatalog.nlm.nih.gov
    xls
    Updated Jun 4, 2023
    + more versions
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    Thiago Henrique Annibale Vendramini; Henrique Tobaro Macedo; Andressa Rodrigues Amaral; Mariana Fragoso Rentas; Matheus Vinícius Macegoza; Rafael Vessecchi Amorim Zafalon; Vivian Pedrinelli; Lígia Garcia Mesquita; Júlio César de Carvalho Balieiro; Karina Pfrimer; Raquel Silveira Pedreira; Victor Nowosh; Cristiana Fonseca Ferreira Pontieri; Cristina de Oliveira Massoco; Marcio Antonio Brunetto (2023). Composition of the control diet and its ingredients1. [Dataset]. http://doi.org/10.1371/journal.pone.0238638.t001
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    xlsAvailable download formats
    Dataset updated
    Jun 4, 2023
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Thiago Henrique Annibale Vendramini; Henrique Tobaro Macedo; Andressa Rodrigues Amaral; Mariana Fragoso Rentas; Matheus Vinícius Macegoza; Rafael Vessecchi Amorim Zafalon; Vivian Pedrinelli; Lígia Garcia Mesquita; Júlio César de Carvalho Balieiro; Karina Pfrimer; Raquel Silveira Pedreira; Victor Nowosh; Cristiana Fonseca Ferreira Pontieri; Cristina de Oliveira Massoco; Marcio Antonio Brunetto
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Composition of the control diet and its ingredients1.

  16. e

    Eximpedia Export Import Trade

    • eximpedia.app
    Updated Sep 18, 2025
    + more versions
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    Seair Exim (2025). Eximpedia Export Import Trade [Dataset]. https://www.eximpedia.app/
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    .bin, .xml, .csv, .xlsAvailable download formats
    Dataset updated
    Sep 18, 2025
    Dataset provided by
    Eximpedia PTE LTD
    Eximpedia Export Import Trade Data
    Authors
    Seair Exim
    Area covered
    Tokelau, Norfolk Island, Western Sahara, Wallis and Futuna, Madagascar, Saint Helena, Algeria, Comoros, Poland, Sint Maarten (Dutch part)
    Description

    Hm Clause Sas Export Import Data. Follow the Eximpedia platform for HS code, importer-exporter records, and customs shipment details.

  17. m

    Believe SAS - Diluted-EPS

    • macro-rankings.com
    csv, excel
    Updated Aug 23, 2025
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    macro-rankings (2025). Believe SAS - Diluted-EPS [Dataset]. https://www.macro-rankings.com/markets/stocks/blv-pa/income-statement/diluted-eps
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    csv, excelAvailable download formats
    Dataset updated
    Aug 23, 2025
    Dataset authored and provided by
    macro-rankings
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    france
    Description

    Diluted-EPS Time Series for Believe SAS. Believe S.A. provides digital music services for independent labels and local artists in France, Germany, rest of Europe, the Americas, Asia, Oceania, and Pacific. It operates through two segments, Premium Solutions and Automated Solutions. The company engages in the sale, promotion, and delivery of digital content provided by artists and labels by developing their catalog on digital platforms and social media; administration of copyrights; provision of synchronization services comprising the use of recorded music in advertising, films and series, video games and television; and organization of musical events. It also offers TuneCore digital platform for artists to distribute their audio content in an automated manner to streaming and social media platforms. Believe S.A. was incorporated in 2005 and is headquartered in Paris, France.

  18. J

    Data associated with: Study to Understand Fall Reduction and Vitamin D in...

    • archive.data.jhu.edu
    Updated May 28, 2025
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    Lawrence J. Appel; Erin D. Michos; Edgar R. Miller III (2025). Data associated with: Study to Understand Fall Reduction and Vitamin D in You (STURDY) randomized clinical trial [Dataset]. http://doi.org/10.7281/T1/PXEROL
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    May 28, 2025
    Dataset provided by
    Johns Hopkins Research Data Repository
    Authors
    Lawrence J. Appel; Erin D. Michos; Edgar R. Miller III
    License

    https://archive.data.jhu.edu/api/datasets/:persistentId/versions/1.1/customlicense?persistentId=doi:10.7281/T1/PXEROLhttps://archive.data.jhu.edu/api/datasets/:persistentId/versions/1.1/customlicense?persistentId=doi:10.7281/T1/PXEROL

    Dataset funded by
    Johns Hopkins Institute for Clinical and Translation Research
    National Institutes of Health
    Mid-Atlantic Nutrition Obesity Research Center
    Description

    This is the limited access database for the Study to Understand Fall Reduction and Vitamin D in You (STURDY) randomized response-adaptive clinical trial. The database includes baseline, treatment and post randomization data. This Database includes a set of files pertaining to the full study population (688 randomized participants plus screenees who were not randomized) and a set of files pertaining to the burn-in cohort (the 406 participants randomized prior to the first adjustment of the randomization probabilities). The Database also includes files that support the analyses included in the primary outcome paper published by the Annals of Internal Medicine (2021;174:(2):145-156). Each data file in the Database corresponds to a specific data collection form or type of data. This documentation notebook includes a SAS PROC CONTENTS listing for each SAS file and a copy of the relevant form if applicable. Each variable on each SAS data file has an associated SAS label. Several STURDY documents, including the final versions of the screening and trial consent statements, the Protocol, and the Manual of Procedures, are included with this documentation notebook to assist with understanding and navigation of STURDY data. Notes on analysis questions and issues are also included, as is a list of STURDY publications.

  19. d

    Data from: A flexible program for performing analytic differentiation and...

    • elsevier.digitalcommonsdata.com
    Updated Jan 1, 1981
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    Daniel W. Merdes (1981). A flexible program for performing analytic differentiation and substitutions on a system of equations [Dataset]. http://doi.org/10.17632/3xhdfn87t9.1
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    Dataset updated
    Jan 1, 1981
    Authors
    Daniel W. Merdes
    License

    https://www.elsevier.com/about/policies/open-access-licenses/elsevier-user-license/cpc-license/https://www.elsevier.com/about/policies/open-access-licenses/elsevier-user-license/cpc-license/

    Description

    Title of program: EQSYSTM Catalogue Id: AAQX_v1_0

    Nature of problem This program is designed to operate on a system of equations, making user-specified substitutions and returning for each expression its partial derivatives with respect to a list of specified variables. The output expressions for the derivatives of each input expression, in the form of statements directly usable in other programs, are organized into an array with subscripts corresponding to the variables by which it was differentiated. Output in either PL/1, Fortran, or SAS syntax is available a ...

    Versions of this program held in the CPC repository in Mendeley Data AAQX_v1_0; EQSYSTM; 10.1016/0010-4655(81)90085-0

    This program has been imported from the CPC Program Library held at Queen's University Belfast (1969-2019)

  20. m

    Believe SAS - Net-Income-Applicable-To-Common-Shares

    • macro-rankings.com
    csv, excel
    Updated Sep 28, 2025
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    macro-rankings (2025). Believe SAS - Net-Income-Applicable-To-Common-Shares [Dataset]. https://www.macro-rankings.com/markets/stocks/blv-pa/income-statement/net-income-applicable-to-common-shares
    Explore at:
    excel, csvAvailable download formats
    Dataset updated
    Sep 28, 2025
    Dataset authored and provided by
    macro-rankings
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    france
    Description

    Net-Income-Applicable-To-Common-Shares Time Series for Believe SAS. Believe S.A. provides digital music services for independent labels and local artists in France, Germany, rest of Europe, the Americas, Asia, Oceania, and Pacific. It operates through two segments, Premium Solutions and Automated Solutions. The company engages in the sale, promotion, and delivery of digital content provided by artists and labels by developing their catalog on digital platforms and social media; administration of copyrights; provision of synchronization services comprising the use of recorded music in advertising, films and series, video games and television; and organization of musical events. It also offers TuneCore digital platform for artists to distribute their audio content in an automated manner to streaming and social media platforms. Believe S.A. was incorporated in 2005 and is headquartered in Paris, France.

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U.S. EPA Office of Research and Development (ORD) (2020). SAS code used to analyze data and a datafile with metadata glossary [Dataset]. https://catalog.data.gov/dataset/sas-code-used-to-analyze-data-and-a-datafile-with-metadata-glossary
Organization logo

SAS code used to analyze data and a datafile with metadata glossary

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Dataset updated
Nov 12, 2020
Dataset provided by
United States Environmental Protection Agencyhttp://www.epa.gov/
Description

We compiled macroinvertebrate assemblage data collected from 1995 to 2014 from the St. Louis River Area of Concern (AOC) of western Lake Superior. Our objective was to define depth-adjusted cutoff values for benthos condition classes (poor, fair, reference) to provide tool useful for assessing progress toward achieving removal targets for the degraded benthos beneficial use impairment in the AOC. The relationship between depth and benthos metrics was wedge-shaped. We therefore used quantile regression to model the limiting effect of depth on selected benthos metrics, including taxa richness, percent non-oligochaete individuals, combined percent Ephemeroptera, Trichoptera, and Odonata individuals, and density of ephemerid mayfly nymphs (Hexagenia). We created a scaled trimetric index from the first three metrics. Metric values at or above the 90th percentile quantile regression model prediction were defined as reference condition for that depth. We set the cutoff between poor and fair condition as the 50th percentile model prediction. We examined sampler type, exposure, geographic zone of the AOC, and substrate type for confounding effects. Based on these analyses we combined data across sampler type and exposure classes and created separate models for each geographic zone. We used the resulting condition class cutoff values to assess the relative benthic condition for three habitat restoration project areas. The depth-limited pattern of ephemerid abundance we observed in the St. Louis River AOC also occurred elsewhere in the Great Lakes. We provide tabulated model predictions for application of our depth-adjusted condition class cutoff values to new sample data. This dataset is associated with the following publication: Angradi, T., W. Bartsch, A. Trebitz, V. Brady, and J. Launspach. A depth-adjusted ambient distribution approach for setting numeric removal targets for a Great Lakes Area of Concern beneficial use impairment: Degraded benthos. JOURNAL OF GREAT LAKES RESEARCH. International Association for Great Lakes Research, Ann Arbor, MI, USA, 43(1): 108-120, (2017).

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