Michał Bojanowski (Kozminski Univeristy), Dominika Czerniawska (University of Manchester and University of Warsaw), Wojciech Fenrich (University of Warsaw)
Authors thank (Polish) National Science Centre for support through SONATA grant 2012/07/D/HS6/01971 for the project Dynamics of Competition and Collaboration in Science: Individual Strategies, Collaboration Networks, and Organizational Hierarchies (http://recon.icm.edu.pl).
This is a dataset built from a qualitative study of 40 Individual in-Depth Interviews (IDI) conducted in the period April-August of 2016 as a part of the RECON project on collaboration in Polish science. This repository is an R package, but the data is also stored in portable CSV format so that it can be used with any other analytical software.
Data consists of 40 individual in-depth interviews conducted between April and August 2016 by two interviewers. The interviewees mentioned 333 collaborators in total. The sample consists of 20 female and 20 male scientists from six Polish cities. Respondents represented a broad range of disciplines: natural sciences, social sciences, life sciences, the humanities, engineering, and technology on different levels of career from PhD candidates to professors.
Each interview consisted of several parts two of which are of relevance here:
- Respondents were asked to name up to 10 important collaborators
during last 5 years. Each collaborator was discussed separately
resulting with information about gender, scientific degree,
nationality, and university department (if possible). Collected data
is available in the
nodes
table described below. - During the interview a network of collaboration among collaborators
mentioned in (1) was reconstructed using corkboard, pins, and rubber
bands. The corkboards were photographed and later digitized into the
collaboration
table described below. - For each collaborator the respondents were asked about
academically-relevant resources he/she contributed to the
collaboration and what resources were contributed by the
collaborator. Interviews were audio-recorded and later transcribed.
The text of the transcripts was analyzed using QDA Miner Lite[1]
in order to code resources engaged by respondents (the egos) and
their collaborators (the alters) to every collaboration. The coding
was performed by two persons. Random sample of the interviews was
double-checked by different researchers to ensure reliability. The
data is available in table
resources
and described in detail below.
While collaboration networks assembled from part (2) include alter-alter ties, the data on resources is available only for ego-alter dyads.
The data is contained in three tables as shown in the diagram below:
In all tables the NA
symbol (Not Available) is used to encode missing
information.
The nodes
table has 374 rows and the following 7 columns:
id_interview
– Unique interview identification numberid_node
– Node number unique within each interview. Value0
corresponds to the respondent (the ego)is_ego
– A binary variable which is equal to1
for the respondents (the egos) and0
otherwise.is_polish
– A binary variable which is equal to1
if the researcher is affiliated with a Polish academic institution and0
otherwise.department
– A numeric variable providing information whether two persons are affiliated with the same department at the same academic institution. Two researchers (i) and (j) mentioned in the same interview are affiliated with the same department if the have valid values on variabledepartment
and these values are equal.scidegree
– Character variable encoding scientific degree. Values are"mgr"
=MA,"dr"
=PhD,"drhab"
=habilitated PhD, and"prof"
=full professor.female
– Binary variable which is equal to1
if the researcher is female and0
for males.
The collaboration
table has 1732 rows and the following 3 columns:
id_interview
– Unique interview identification numberfrom
andto
– Node numbers referencingid_node
column from thenodes
table. Asid_node
in tablenodes
the values are unique within each interview. Pair of researchers declared as collaborators. For example a row withid_interview=2
,from=1
, andto=2
indicates that in the interview 2 nodes 1 and 2 where mentioned by the respondent as collaborators.
The resources
table has 1761 rows and the following 4 columns:
id_interview
– Unique interview identification number.from
andtwo
– Node numbers referencingid_node
column from thenodes
table. Asid_node
in tablenodes
the values are unique within each interview.code
– Character variable indicating what type of resource was declared to flow from researcherfrom
to researcherto
from interviewid_interview
.
Possible values for variable code
are:
code |
---|
career_development |
conceptualization |
contacts_in_academia |
data_analysis |
data_curation |
data_or_other_sources |
drafting |
equipment |
formal_administration |
funding_acqusition |
investigation |
knowledge_other |
methodology |
motivation |
non_academic_contacts |
other_charactersitics |
other_input |
prestige |
professional_achievements_formal |
project_administration |
proofreading |
prototype_construction |
software_creation |
supervision_in |
traits_of_character |
Below are example data and plots from interview 2.
Node data:
nodes %>%
filter(id_interview == 2) %>%
knitr::kable()
id_interview | id_node | is_ego | is_polish | department | scidegree | female |
---|---|---|---|---|---|---|
2 | 0 | 1 | 1 | 1 | dr | 0 |
2 | 1 | 0 | 1 | 2 | dr | 0 |
2 | 2 | 0 | 1 | 3 | dr | 1 |
2 | 3 | 0 | 1 | 3 | dr | 1 |
2 | 4 | 0 | 1 | 2 | dr | 1 |
2 | 5 | 0 | 1 | NA | dr | 1 |
2 | 6 | 0 | 0 | NA | prof | 0 |
2 | 7 | 0 | 1 | NA | NA | NA |
Collaboration network:
g <- collaboration %>%
filter(id_interview == 3) %>%
select(-id_interview) %>%
igraph::graph_from_data_frame(directed=FALSE) %>%
simplify()
xy <- graphlayouts::layout_with_stress(g)
plot(
g,
layout=xy,
vertex.color = "white",
edge.color = "black",
vertex.label.color = "black"
)
Resource flows:
edb <- resources %>%
filter(id_interview==3) %>%
select(-id_interview) %>%
arrange(from, to)
rg <- graph_from_data_frame(edb)
rnames <- sort(unique(E(rg)$code))
layout(matrix(1:16, 4, 4))
for(r in rnames) {
rgs <- delete.edges(rg, E(rg)[code != r])
opar <- par(mar=c(0,0,1,0))
plot(
simplify(rgs),
layout=xy,
vertex.color = "white",
edge.color = "black",
vertex.label.color = "black",
main = r
)
par(opar)
}
layout(1)
This is an R package, but you can download the files in CSV format using links below:
- Nodes and their attributes (CSV)
- Collaboration ego-networks edgelist (CSV)
- Resource contributions in ego-networks (CSV)
This is an R package so you can install it directly from GitHub using:
remotes::install_github("recon-icm/reconqdata")
MIT license, see file LICENSE.md
.
TBA. Please contact the authors for now.
- A product of Provalis Research, see https://provalisresearch.com/products/qualitative-data-analysis-software/ .