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The dataset contains data from 3,786 patients. It is not available for download here, but registered in the FAIR4Health Platform portal.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
SAS PROC used to evaluate SSMT data
This publication provides all the information required to understand the PISA 2003 educational performance database and perform analyses in accordance with the complex methodologies used to collect and process the data. It enables researchers to both reproduce the initial results and to undertake further analyses. The publication includes introductory chapters explaining the statistical theories and concepts required to analyse the PISA data, including full chapters on how to apply replicate weights and undertake analyses using plausible values; worked examples providing full syntax in SAS®; and a comprehensive description of the OECD PISA 2003 international database. The PISA 2003 database includes micro-level data on student educational performance for 41 countries collected in 2003, together with students’ responses to the PISA 2003 questionnaires and the test questions. A similar manual is available for SPSS users.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
These SAS files are sample code used for the Monte Carlo studies in a manuscript on statistical properties of four effect size measures for the mediated effect.Citation:Miočević, M., O’Rourke, H. P., MacKinnon, D. P., & Brown, H. C. (2016). The bias and efficiency of five effect size measures for mediation models. Under review at Behavior Research Methods.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
The Semantic Artist Similarity dataset consists of two datasets of artists entities with their corresponding biography texts, and the list of top-10 most similar artists within the datasets used as ground truth. The dataset is composed by a corpus of 268 artists and a slightly larger one of 2,336 artists, both gathered from Last.fm in March 2015. The former is mapped to the MIREX Audio and Music Similarity evaluation dataset, so that its similarity judgments can be used as ground truth. For the latter corpus we use the similarity between artists as provided by the Last.fm API. For every artist there is a list with the top-10 most related artists. In the MIREX dataset there are 188 artists with at least 10 similar artists, the other 80 artists have less than 10 similar artists. In the Last.fm API dataset all artists have a list of 10 similar artists. There are 4 files in the dataset.mirex_gold_top10.txt and lastfmapi_gold_top10.txt have the top-10 lists of artists for every artist of both datasets. Artists are identified by MusicBrainz ID. The format of the file is one line per artist, with the artist mbid separated by a tab with the list of top-10 related artists identified by their mbid separated by spaces.artist_mbid \t artist_mbid_top10_list_separated_by_spaces mb2uri_mirex and mb2uri_lastfmapi.txt have the list of artists. In each line there are three fields separated by tabs. First field is the MusicBrainz ID, second field is the last.fm name of the artist, and third field is the DBpedia uri.artist_mbid \t lastfm_name \t dbpedia_uri There are also 2 folders in the dataset with the biography texts of each dataset. Each .txt file in the biography folders is named with the MusicBrainz ID of the biographied artist. Biographies were gathered from the Last.fm wiki page of every artist.Using this datasetWe would highly appreciate if scientific publications of works partly based on the Semantic Artist Similarity dataset quote the following publication:Oramas, S., Sordo M., Espinosa-Anke L., & Serra X. (In Press). A Semantic-based Approach for Artist Similarity. 16th International Society for Music Information Retrieval Conference.We are interested in knowing if you find our datasets useful! If you use our dataset please email us at mtg-info@upf.edu and tell us about your research. https://www.upf.edu/web/mtg/semantic-similarity
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
SAS script and input files for calculations of sensitivity and specificity based on different model settings and weather data in the weather data file supplied here.
The Fiscal Intermediary maintains the Provider Specific File (PSF). The file contains information about the facts specific to the provider that affects computations for the Prospective Payment System. The Provider Specific files in SAS format are located in the Download section below for the following provider-types, Inpatient, Skilled Nursing Facility, Home Health Agency, Hospice, Inpatient Rehab, Long Term Care, Inpatient Psychiatric Facility
SAS-Bench represents the first specialized benchmark for evaluating Large Language Models (LLMs) on Short Answer Scoring (SAS) tasks. Utilizing authentic questions from China's National College Entrance Examination (Gaokao), our benchmark offers:
1,030 questions spanning 9 academic disciplines 4,109 expert-annotated student responses Step-wise scoring with Step-wise error analysis Multi-dimensional evaluation (holistic scoring, step-wise scoring, and error diagnosis consistency)
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
## Overview
SAS Project is a dataset for object detection tasks - it contains Person Gun Knife Fire Bat annotations for 7,868 images.
## Getting Started
You can download this dataset for use within your own projects, or fork it into a workspace on Roboflow to create your own model.
## License
This dataset is available under the [CC BY 4.0 license](https://creativecommons.org/licenses/CC BY 4.0).
Apache License, v2.0https://www.apache.org/licenses/LICENSE-2.0
License information was derived automatically
Charlie839242/SAS dataset hosted on Hugging Face and contributed by the HF Datasets community
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Matching is frequently used in observational studies, especially in medical research. However, only a small number of articles with matching programs for the SAS software (SAS Institute Inc., Cary, NC, USA) are available, even less are usable for inexperienced users of SAS software. This article presents a matching program for the SAS software and links to an online repository for examples and test data. The program enables matching on several variables and includes in-depth explanation of the expressions used and how to customize the program. The selection of controls is randomized and automated, minimizing the risk of selection bias. Also, the program provides means for the researcher to test for incomplete matching.
CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
License information was derived automatically
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
This database is the Third Small Astronomy Satellite (SAS-3) Y-Axis Pointed Observation Log. It identifies possible pointed observations of celestial X-ray sources which were performed with the y-axis detectors of the SAS-3 X-Ray Observatory. This log was compiled (by R. Kelley, P. Goetz and L. Petro) from notes made at the time of the observations and it is expected that it is neither complete nor fully accurate. Possible errors in the log are (i) the misclassification of an observation as a pointed observation when it was either a spinning or dither observation and (ii) inaccuracy of the dates and times of the start and end of an observation. In addition, as described in the HEASARC_Updates section, the HEASARC added some additional information when creating this database. Further information about the SAS-3 detectors and their fields of view can be found at: http://heasarc.gsfc.nasa.gov/docs/sas3/sas3_about.html Disclaimer: The HEASARC is aware of certain inconsistencies between the Start_date, End_date, and Duration fields for a number of rows in this database table. They appear to be errors present in the original table. Except for one entry where the HEASARC corrected an error where there was a near-certainty which parameter was incorrect (as noted in the 'HEASARC_Updates' section of this documentation), these inconsistencies have been left as they were in the original table. This database table was released by the HEASARC in June 2000, based on the SAS-3 Y-Axis pointed Observation Log (available from the NSSDC as dataset ID 75-037A-02B), together with some additional information provided by the HEASARC itself. This is a service provided by NASA HEASARC .
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
7005 Global import shipment records of Sas Hard Disk Drives with prices, volume & current Buyer's suppliers relationships based on actual Global export trade database.
In the period of November 2023 to October 2024, the SAS Group employed 6,421 men and 3,936 women. The largest group of employees, 3,900 people, was recorded in Denmark, although these numbers also include international employees outside Denmark, Sweden or Norway.
CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
License information was derived automatically
One of three dataset to replicate numbers for tables and figures in the article "Using a Deliberative Poll on breast cancer screening to assess and improve the decision quality of laypeople" by Manja D. Jensen, Kasper M. Hansen, Volkert Siersma, and John Brodersen
After the number of flights decreased by 48 percent in 2020 due to the impact of the coronavirus pandemic and fell further in 2021, flight numbers began to recover in 2022. In 2022, SAS operated 183,500 scheduled flights. The positive trend persisted in the subsequent year, 2023, with a total of 217,000 flights.
This dataset comprises the data collected for the Sub-state Autonomy Scale (SAS). The SAS is an indicator measuring the autonomy demands and statutes of sub-state communities in kind (whether competences are administrative or legislative), in degree (how much each dimension is present) and by competences (as a function of the extent of comprised policy domains).
Definitions:
-By 'sub-state community', I refer to sub-state entities within countries for which autonomous institutions have been demanded by a significant regionalist or traditional (centrist, liberal or socialist main-stream) political party (>5%) or to which autonomous institutions have been conferred.
-By 'autonomy statutes', I refer to the legal autonomy prerogatives obtained by sub-state communities.
-For 'autonomy demands', I distinguish between the legal autonomy prerogatives demanded by the regionalist party with the highest vote share and those demanded by the traditional party with the largest autonomy demand.
Detailed conceptual presentation: see the Regional Studies article cited below (the open access author version can be found in the files section).
Specifications:
-Unit of analysis: sub-state communities by yearly intervals.
-Country coverage: Belgium, Spain, United Kingdom (31 sub-state communities).
-Time coverage: 1707-2020 (starting dates vary across sub-state communities).
*For the full list of sub-state communities and their respective time coverage, see the codebook.
Citation and acknowledgement: when using the data, please cite the Regional Studies article listed below.
Latest version: 1.0 [01.02.2022].
Sas Msi Company Export Import Records. Follow the Eximpedia platform for HS code, importer-exporter records, and customs shipment details.
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The dataset contains data from 3,786 patients. It is not available for download here, but registered in the FAIR4Health Platform portal.