Some Ideas on Making Research Data: "It's the Metadata, stupid!"
-
Upload
anita-de-waard -
Category
Technology
-
view
688 -
download
1
description
Transcript of Some Ideas on Making Research Data: "It's the Metadata, stupid!"
The Metadata [R]evolution: Transformative OpportunitiesSeptember 18, 2013
Some Ideas on Making Research Data Discoverable and Usable:
“It’s the Metadata, Stupid!”
Anita de Waard, VP Research Data Collaborations, Elsevier Research Data Services (VT)
Everybody’s talking about research data:
Share research outputs Demonstrate impact to public Data availability drives growth
Demonstrate impact Guarantee permanence, discoverability Avoid fraud
Generate, track outputs Comply with mandates Ensure availability
Archive, track, curate Support researcher/institution
Archive Add curation Allow reuse
Todd Vision, DataDryad, OAI8, 6/23/13: “We need to find a way to keep Dryad funded, and would love to hear your ideas about doing that.”
Phil Bourne, Associate Vice Chancellor, UCSD, 4/13: “We are thinking about the university as a digital enterprise.”
Mike Huerta, Ass. Director NLM O of Health Info at NIH, 6/13: “Today, the major public product of science are concepts, written down in papers. But tomorrow, data will be the main product of science…. We will require scientists to track and share their data as least as well, if not better, than they are sharing their ideas today.”
Mara Saule, Dean University Libraries/CIO, UVM, 5/13: “We need to do something about data.”
Derive credit Comply with mandates Discover and use Cite/acknowledge
Gov
Funding bodies
University management
Researchers
Librarians
Data Repositories
Nathan Urban, PI Urban Lab, CMU, 3/13: “If we can share our data, we can write a paper that will knock everybody’s socks off!”
Roles and needs wrt Research Data:
Barbara Ransom, NSF Program Director Earth Sciences, 2/13: “We’re not going to spend any more money for you to go out and get more data! We want you first to show us how you’re going to use all the data we paid y’all to collect in the past!”
Where research data goes now:
> 50 My Papers2 M scientists
2 My papers/year
Majority of data(90%?) is stored
on local hard drives
Dryad: 7,631 files
Dataverse:0.6 My
Institutional Repositories
Some data (8%?) stored in large,
generic data repositories
MiRB: 25k
PetDB: 1,5 k
TAIR: 72,1 k
PDB: 88,3 k
SedDB: 0.6 k
A small portion of data (1-2%?) stored in small,
topic-focuseddata repositories
Where research data goes now:
> 50 My Papers2 M scientists
2 My papers/year
Majority of data(90%?) is stored
on local hard drives
Dryad: 7,631 files
Dataverse:0.6 My
Institutional Repositories
Some data (8%?) stored in large,
generic data repositories
MiRB: 25k
PetDB: 1,5 k
TAIR: 72,1 k
PDB: 88,3 k
SedDB: 0.6 k
A small portion of data (1-2%?) stored in small,
topic-focuseddata repositories
How do we get researchers to curate, store and share their
data?
Where research data goes now:
> 50 My Papers2 M scientists
2 My papers/year
Majority of data(90%?) is stored
on local hard drives
Dryad: 7,631 files
Dataverse:0.6 My
Institutional Repositories
Some data (8%?) stored in large,
generic data repositories
MiRB: 25k
PetDB: 1,5 k
TAIR: 72,1 k
PDB: 88,3 k
SedDB: 0.6 k
A small portion of data (1-2%?) stored in small,
topic-focuseddata repositories
How do we get researchers to curate, store and share their
data?
How do we ensure long-term
sustainability for high-end repositories?
Where research data goes now:
> 50 My Papers2 M scientists
2 My papers/year
Majority of data(90%?) is stored
on local hard drives
Dryad: 7,631 files
Dataverse:0.6 My
Institutional Repositories
Some data (8%?) stored in large,
generic data repositories
MiRB: 25k
PetDB: 1,5 k
TAIR: 72,1 k
PDB: 88,3 k
SedDB: 0.6 k
A small portion of data (1-2%?) stored in small,
topic-focuseddata repositories
How do we get researchers to curate, store and share their
data?
How do we ensure long-term
sustainability for high-end repositories?
What role do libraries/institution
s play?
Research data management in action:
Using antibodies
Research data management in action:
Using antibodiesand squishy bits
Research data management in action:
Using antibodiesand squishy bits Grad Students experiment
Research data management in action:
Using antibodiesand squishy bits Grad Students experimentand enter details into theirlab notebook.
Research data management in action:
Using antibodiesand squishy bits Grad Students experimentand enter details into theirlab notebook. The PI then tries to make sense of their slides,
Research data management in action:
Using antibodiesand squishy bits Grad Students experimentand enter details into theirlab notebook. The PI then tries to make sense of their slides,and writes a paper.
Research data management in action:
Using antibodiesand squishy bits Grad Students experimentand enter details into theirlab notebook. The PI then tries to make sense of their slides,and writes a paper. End of story.
de Waard, A., Burton, S. et al., 2013
An attempt to get researchers to curate (but only partially share!) their data:
de Waard, A., Burton, S. et al., 2013
An attempt to get researchers to curate (but only partially share!) their data:
What to do in the meantime:
49 publications193 publications 76 publications 214 publications 210 publications
• In 220 publications only 40% of antibodies, 40% of cell lines and 25% of constructs can be manually identified (Vasilevsky et al, submitted)
• Proposal (with NIH/NIF and Force11 Group): – Adding minimal data standards– Tool extracts likely reagents / resources– User interface asks author to confirm or select
How can research databases become sustainable in the long term?
1. With IEDA: – Building a database for lunar
geochemistry– Write joint report on building repository, curation
costs and challenges
2. With WDS/RDA WG: – Planning survey of cost recovery models– Input/inspiration: ICPSR Sloane-funded project
‘Sustaining Domain Repositories for Digital Data’– Developing overarching funding model with Todd
Vision/DataDryad
Making lunar sample data usable:
Making lunar sample data usable:
Making lunar sample data usable:
Making lunar sample data usable:
Private store
Data produceror sponsor
Access
Closed
Flow of funds
Data publicatio
n
Public
Service
Collaboration Conclave
Limited
Subscription
content
Commercial overlay
Limited
Academic Use/Limited
Data user
Flow of funds
Examples ICSPR,CERN-LHC
KEGG GeoFacetsReaxys
DRAFT - CC-BY-NC 2013, Todd Vision & Anita de Waard
Many small operations, e.g. try-db.org,plhdb.org
Dryad,arXiv,PDB
Commercial and institutional storage
&
or
A research database funding model:
Comparing data repository types:Repository Advantages Disadvantages
Local data repository
Easy! No one steals your data.
No one sees it. Not compliant with requirements
Generic data repository
Not very hard to do. Have complied!
Data can’t be easily reused. Credit?
Institutional Repository
Can use existing IR? Tracking and compliance checks.
Data can’t easily be reused. Credit?
Domain-specific data repository
Data can be reused. Credit!
Lot of work for curators. Long-term sustainable? Eff
ort,
Reus
e, C
redi
t, Co
mpl
ianc
e
Hab
it, E
ase,
Priv
acy,
Con
trol
Hig
her q
ualit
y m
etad
ata
Funding Agency: University:
Collaborators:Domain of study:Domain-Specific Data Repository
Local Data Repository
Institutional Data Repository
Generic Data Repository
AND
THEYALL
WANT
DIFFERENT
METADATA!!!!
Metadata madness…
Where do IRs/libraries fit in?• Planning series of interviews at key institutions: – What role do libraries/institutions play wrt research
data management? – What tools/metadata standards are used?– What aspects of data deposition is the Research
Office/IR/Institution interested in? – How does this compare with what scientists want and
do in their labs? • Goal: share knowledge; establish plan of action
Principles of Elsevier RDS: • Main goal: make research data optimally available, discoverable
and reusable.• Collaboration is tailored to partner’s unique needs: – Working with a few domain-specific and institutional repositories and
institutions– Aspects where collaboration is needed are discussed– Collaboration plan is drawn up using SLA: agree on time, conditions,
etc. • 2013: series of pilots, studies and reports to enable feasibility
study: – What are key needs? – Can Elsevier play a role: skillsets, partnerships? – Is there a (transparent) business model for this?
In summary: If researchers start to curate and share their data…And research databases become long-term sustainable…… we enable enrichment with high-quality metadata that makes research data truly discoverable and reusable.
Many questions remain:? What role would the institution/library play? ? How do we ensure interoperable metadata? ? What are sustainable models, moving forward? ? Is there a place for publishers, in all this?
Thank you!Collaborations and discussions gratefully acknowledged: • CMU: Nathan Urban, Shreejoy Tripathy, Shawn Burton, Ed Hovy• UCSD: Phil Bourne, Brian Shoettlander, David Minor, Declan Fleming,
Ilya Zaslavsky• NIF: Maryann Martone, Anita Bandrowski• MSU: Brian Bothner• OHSU: Melissa Haendel, Nicole Vasilevsky• California Digital Library: Carly Strasser, John Kunze, Stephen Abrams• Columbia/IEDA: Kerstin Lehnert, Leslie Hsu• CNI: Clifford Lynch• Harvard: Michael Kurtz, Chris Erdmann• MIT: Micah Altman• UVM: Mara Saurle
Your questions?
Anita de WaardVP Research Data Collaborations,
Elsevier Research Data Services (VT) [email protected]
http://researchdata.elsevier.com/