Metrics
75,594 Downloads

Share, discover, and cite research data from Arizona State University.

The ASU Research Data Repository is a platform for ASU-affiliated researchers to share, preserve, and publish research data in a way that ensures long-term accessibility, usability, and citation. Our team supports researchers in preparing high-quality, well-documented datasets that comply with funder and publisher data sharing requirements.

Curated by ASU Library data professionals, the repository enables global discovery of research data through permanent digital identifiers (DOIs). It is powered by the open-source Dataverse application developed by Harvard University and complements the KEEP Institutional Repository to support the full range of ASU research outputs.

Ready to share your data? Visit the ASU Research Data Repository home to learn more and request a consultation.

Featured Dataverses

In order to use this feature you must have at least one published or linked dataverse.

Publish Dataverse

Are you sure you want to publish your dataverse? Once you do so it must remain published.

Publish Dataverse

This dataverse cannot be published because the dataverse it is in has not been published.

Delete Dataverse

Are you sure you want to delete your dataverse? You cannot undelete this dataverse.

Advanced Search

101 to 110 of 125 Results
Mar 19, 2021 - James Strickland Dataverse
Strickland, James; Stauffer, Katelyn, 2021, "Replication Data for: Legislative Diversity and the Rise of Women Lobbyists", https://doi.org/10.48349/ASU/MBVW12, ASU Library Research Data Repository, V1, UNF:6:2qGcNjG1h40fMKh3XDTbkw== [fileUNF]
Despite a growing body of literature examining the consequences of women’s inclusion among lobbyists, our understanding of the factors that lead to women’s initial emergence in the profession is limited. In this study, we propose that gender diversity among legislative targets incentivizes organized interests to hire women lobbyists, and thus helps...
Feb 18, 2021 - ASU Canine Science Collaboratory
Gunter, Lisa M.; Gilchrist, Rachel J.; Blade, Emily M.; Barber, Rebecca T.; Feuerbacher, Erica N.; Platzer, JoAnna M.; Wynne, Clive D. L., 2021, "Replication Data for: Investigating the Impact of Brief Outings on the Welfare of Dogs Living in US Shelters", https://doi.org/10.48349/ASU/XPISIW, ASU Library Research Data Repository, V1, UNF:6:cDYKuwRAsO9cktfJrBs8nA== [fileUNF]
Social isolation likely contributes to reduced welfare for shelter-living dogs. Several studies have established that time out of the kennel with a person can improve dogs’ behavior and reduce physiological measures of stress. This study assessed the effects of two-and-a-half-hour outings on the urinary cortisol levels and activity of dogs as they...
Feb 15, 2021 - March Mammal Madness
Hinde, Katherine, 2021, "MMM Aggregate Figure Source Data", https://doi.org/10.48349/ASU/XTOIAD, ASU Library Research Data Repository, V2
Source data for figures in 2021 manuscript "March Mammal Madness and the Power of Narrative in Science Outreach."
Feb 15, 2021 - March Mammal Madness
Hinde, Katherine, 2021, "MMM Aggregate Educator 2018 and 2019 Survey Data", https://doi.org/10.48349/ASU/KKXMSF, ASU Library Research Data Repository, V2, UNF:6:vxBC8NET+LAk+5JGJG3h9A== [fileUNF]
Raw and imputed data from the 2018 and 2019 surveys of educators who use March Mammal Madness with their learners.
Jan 27, 2021 - Sara Meerow Dataverse
Woodruff, Sierra; Meerow, Sara; Hannibal, Bryce; Matos, Melina; Roy, Malini, 2021, "Resilience Planning Networks: Plan Analysis Methodology", https://doi.org/10.48349/ASU/MLH3ON, ASU Library Research Data Repository, V1
This document outlines the methodology used in the Resilience Planning Networks project to analyze how the network of plans in four coastal cities are impacting resilience to flooding. This included an assessment of plan quality, plan integration scorecard, and plan cross-referencing.
Jan 27, 2021 - Sara Meerow Dataverse
Meerow, Sara; Woodruff, Sierra; Hannibal, Bryce; Matos, Melina; Roy, Malini; Gilbertson, Philip, 2021, "Building Resilience in Seattle: An Analysis of City Plans", https://doi.org/10.48349/ASU/YXUSKY, ASU Library Research Data Repository, V2
This report highlights findings from a joint research project between Arizona State University and Texas A&M University funded by the National Science Foundation. The central goal of the Resilience Planning Networks project is to assess the degree of coordination of government agencies and stakeholders engaged in resilience planning and to examine...
Jan 26, 2021 - Sara Meerow Dataverse
Woodruff, Sierra C.; Meerow, Sara; Hannibal, Bryce; Roy, Malini; Matos, Melina; Gilbertson, Philip, 2021, "Building Resilience in Boston: An Analysis of City Plans", https://doi.org/10.48349/ASU/VPO9LD, ASU Library Research Data Repository, V1
This report highlights findings from a joint research project between Arizona State University and Texas A&M University funded by the National Science Foundation. The central goal of the Resilience Planning Networks project is to assess the degree of coordination of government agencies and stakeholders engaged in resilience planning and to examine...
March Mammal Madness(School of Human Evolution and Social Change, College of Liberal Arts and Science, Arizona State University)
Jan 15, 2021
Datasets associated with the annual March Mammal Madness tournament for science education and outreach. Associated publications will also be added to the March Mammal Madness Collection in the ASU Library KEEP Repository. More information about March Mammal Madness can be found at the ASU March Mammal Madness Library Guide.
Dec 16, 2020
Xiaohui Guo, 2020, "Replication Data for: Alarm Propagation in Social Insects", https://doi.org/10.48349/ASU/OYZWEK, ASU Library Research Data Repository, V1, UNF:6:4hfqJk/udkEhwzCyamQIJg== [fileUNF]
This project studied alarm signal propagation in social insect colonies. The data includes individual ants' x,y coordinates, speed and orientation, which were used to train a machine learning regression model in order to identify each individual ant's alarm state. By applying estimates of alarm state on each individual, we could track the alarm sig...
Dec 1, 2020
Thomson, Henry, 2020, "Replication Data for: Henry Thomson. 2018. "Grievances, Mobilization, and Mass Opposition to Authoritarian Regimes: A Subnational Analysis of East Germany's 1953 Abbreviated Revolution"", https://doi.org/10.48349/ASU/VXNSFX, ASU Library Research Data Repository, V1, UNF:6:mT23AUb4iT1HQdH5nUjvoA== [fileUNF]
Stata dataset and do-file.
Add Data

Log in to create a dataverse or add a dataset.

Share Dataverse

Share this dataverse on your favorite social media networks.

Link Dataverse
Reset Modifications

Are you sure you want to reset the selected metadata fields? If you do this, any customizations (hidden, required, optional) you have done will no longer appear.