=Paper=
{{Paper
|id=None
|storemode=property
|title=Team Formation for Research Innovation: The BRAIN Approach
|pdfUrl=https://ceur-ws.org/Vol-743/ASTC2011_Paper5.pdf
|volume=Vol-743
}}
==Team Formation for Research Innovation: The BRAIN Approach==
Team Formation for Research Innovation: The BRAIN
Approach
Styliani Kleanthous Loizou1, Vania Dimitrova1, Dimoklis Despotakis1, Jim
Hensman2, and Ajdin Brandic2
1
School of Computing University of Leeds, UK
Styliani.kleanthous@googlemail.com
{scdd, v.g.dimitrova}@leeds.ac.uk
2
Coventry University, UK
{ccx003, aa6345}@coventry.ac.uk
Abstract. Recently trends show that innovative research requires
multidisciplinary teams. This brings forth the importance of team formation for
innovation. In order to successfully identify who has to be in a specific team
and what constitutes potentially successful multidisciplinary team collaboration,
social processes important for team formation for innovation have to be
understood. Based on this, technological approaches that can support these
processes can be defined. This paper outlines key processes regarding team
formation for innovation, following psychology and social sciences literature.
We then present the BRAIN approach on forming multidisciplinary teams for
innovation, which addresses some of the aspects identified in the literature. The
paper revisits the current state of the BRAIN application, and recommends
future work where user modelling, adaptation and personalisation approaches
can be used to address the limitations identified
Keywords: Team formation, Expertise browsing, Intelligent support
1 Introduction
Recent trends in science and engineering require collaborative research by
multidisciplinary teams. Funding organisations have acknowledged that innovation
coming from addressing complex problems requires teams from multiple disciplines
working together and approaching a problem from different perspectives. Thus,
universities and research institutes set as strategic objectives to foster the development
of multi- and cross- disciplinary collaboration teams. Institutional repositories which
store researcher publications, projects, interests, form a valuable source for fostering
multi-disciplinary team formation. However, such repositories are mainly used in a
‘traditional’ way as separate databases that provide information on demand. We
consider here support to help establishing multi-disciplinary teams within an
institution which function in virtual settings.
Multidisciplinary teams of people who collaborate with the purpose to create
innovation have been defined by Peter Gloor [1] as “a cyberteam of self-motivated
people with a collective vision, enabled by the Web to collaborate in achieving a
38 S. Kleanthous Loizou, et al.
common goal by sharing ideas, information, and work”. There is an agreement in the
literature that people in innovation teams have diverse knowledge and work towards a
common goal. However, very little is done to support the formation of multi-
disciplinary entities, which includes identifying who to be in a specific team and what
constitutes a potentially successful multidisciplinary team. Hence, social processes
important for team formation for innovation have to be identified.
A broad literature exists on processes and theories for supporting team formation in
general. However, there is little work focusing on what processes are important when
supporting team formation with respect to innovation. In this paper, we are reviewing
the relevant literature of psychology and social sciences to identify what are the
important processes that need to be supported at the early stages of team formation for
innovation, and what tools can be used in facilitating these processes in a system.
Based on the relevant work presented in section 2, section 3 will define
requirements for supporting team formation for innovation. Section 4 will present a
tool developed within a UK project which aimed at Building Research and Innovation
Networks (BRAIN). The BRAIN tool supports multidisciplinary team formation for
innovation. Section 5 will discuss how user modelling, adaptation, and personalisation
(UMAP) techniques can be incorporated in future work following BRAIN to better
facilitate team formation. Section 6 will then conclude this paper.
2 Relevant Work
2.1 Social Processes Important for Team Formation for Innovation
The requirements and processes that need to be supported when forming a team
depend strongly on the purpose of the prospective team. In this section we discuss
social processes important for the formation of multidisciplinary teams for research
innovation (i.e. creating new ideas or finding new solutions to challenging problems).
Mohammed and Dumville (2001) developed a framework pointing at the
importance of the development of shared mental models, the facilitation of
information sharing, and the support of transactive memory between team members
[2]. This stressed the need for pulling information from multiple disciplines, and
identified several crucial processes for successful teams. Team mental models
provide members with a shared, organised understanding and mental representation of
knowledge about key elements of the team’s environment or topic of interest.
Information sharing helps team members to shape and organise their ideas around a
topic of common interest. Without information sharing the team cannot function and
reach the required level of team (shared) mental models needed. Shared information
can also help in reshaping the team when new ideas not previously known to the team
come in for discussion. Transactive memory [3] concerns the members’ awareness
of what knowledge is possessed by whom in the team; and refers to members’ ability
to use peers’ memory (expertise) as an extension of their own memory (expertise).
More recently, Paletz and Schunn (2010) have reviewed literature from psychology
and social sciences with respect to multidisciplinary team formation for innovation
and creativity purposes [4]. They propose a social-cognitive framework describing the
Team Formation for Research Innovation: The BRAIN Approach 39
social and cognitive processes important when a multidisciplinary team is formed for
x Stage 1: Divergent thinking - which takes place at the formation of the team and
the purpose of innovation. The framework proposes two stages:
involves pulling information and knowledge from multiple directions and various
x Stage 2: Convergent thinking - where members share the information and
interpretations according to the members’ own understanding of the topic;
knowledge collected, discuss upon finding a common ground, and agree on what
will be followed by the team.
Different social and cognitive processes are involved in each stage of this
framework. At Stage 1, knowledge diversity is considered important and is
associated with team innovation. Through this divergent thinking in interdisciplinary
teams, discussions are generated which, in turn, increases the drive towards novelty
and complex thinking. For this to happen though, the group should have sufficient
participation in information sharing. At this stage peripheral members who hold
unshared information play a vital role in the success of the team. Without enough
participation and unique information to be shared within the group there will not be
innovation. Formal roles within the team may concern expertise and/or power
structures and enable transactive memory among members to be developed. Thus
formal roles created in the team are influencing team discussion via their associated
communication norms.
At Stage 2, the team narrows and selects options based on what has been brought
in and discussed among the members. In this way, the team identifies the most
promising ideas to be followed to achieve innovation. The development of shared
mental models among members is vital, as members crate a common understanding
of the ideas and processes involved and what has to be done to achieve the team’s
goal. Knowledge diversity also plays an important role here, in the sense that
information from different disciplines must continue to flow in the team but at this
point members should be able to interpret this information with a shared view.
Relevant reviews carried out in organisational psychology and team performance
[3], [5], [6] confirm that knowledge diversity has been positively associated with
team innovation at organisational level [7]. Similarly, information sharing among
team members has proven to be very important for creativity and for generating
discussions within the team [8]. Other important aspects identified include
establishment of formal roles and development of team transactive memory [3].
The next section will discuss techniques that can be used in computer systems for
supporting important processes for team formation for innovation.
2.2 Techniques to Support Team Formation for Innovation
Identifying, analysing and supporting collaborative innovation networks, is one of the
key research areas relevant to team formation for innovation. There is not much work
reported on this aspect, but the following approaches can be viewed as an initial
attempt to build technologies for the above purpose.
Danowski [9] combines semantic text mining, social network metrics and
visualisations in an attempt to identify collaborative innovation networks in an
organization. In his paper the web is used to extract relevant documents about
40 S. Kleanthous Loizou, et al.
employees in a college department. The method of proximity co-occurrence indexing
[10] is then used to extract connections between people based on department and
relevant interests that appeared in the network. Standard social network analysis
metrics (e.g. density, centrality) are used to obtain networks of similar actors, extract
centrality measures and other quantitative similarity metrics. Visualisations
combined with statistical analysis have been used in order for the networks to be
externalised and the results of the constructed network presented to the team.
A similar approach is followed by Gloor et al. [11] where email and other
computer logs are analysed in order for potential collaborative innovation networks to
be identified and supported. Once the relationships (networks) are extracted (based on
text mining), a social network visualisation tool is used to convey the network to the
team. Since the results are directed graphs, density, betweenness centrality and group
degree centrality metrics are used to analyse the extracted networks.
Concerning supporting innovation through team collaboration, Angehrn et al. have
developed a tool using Web 2.0 technologies to support knowledge exchange, taking
into account the social, emotional and psychological needs of individual team
members [12]. The development of InnoTube took into consideration the elements of
collaboration, knowledge sharing, reciprocal trust, recognised ownership, network
visualisations, reinforcing and enlarging innovation stakeholders’ networks. The
purpose of this tool is to foster the creation of connections among community
members, between members and content created, and stimulate participation. In order
to achieve these, InnoTube is using the SLATES (Search, Links, Authorship, Tags,
Extensions, Signals ) paradigm[13]. It considers effective search as vital in
supporting the creation of teams for innovation, as well as providing visualisations
and awareness techniques with respect to relationships between actors and artefacts
in the team/community. Collaborative authorship support tools are also important
when participants are drafting reports/proposals together, as well as providing the
option to use tags in associating the available content. Extensions, for example
recommendations for further reading or relevant videos, are also a good complement
when a member is looking at a specific artefact in the team’s virtual space. These
features were built and evaluated in a car manufacturing company. They were proved
to improve the communication of ideas and were appreciated by the participants.
3 Essential Requirements and Processes for Supporting Team
Formation for Innovation
The primary purpose of the above review was to inform the derivation of essential
requirements and the identification of processes to be supported when forming teams
for innovation. In this work, we focus on the formation of teams at their very early
stage. Thus, following [4], we extracted processes and structures that need to be
supported at this early stage of team formation 1 . The following processes and tools
1
We acknowledge the importance of processes that need to be supported at a later stage, when
the team has been formed and is functioning (shared mental models, trust etc.). However, our
research focuses primarily the early stage of the team formation.
Team Formation for Research Innovation: The BRAIN Approach 41
need to be kept in mind when new systems are developed aiming at providing support
for team formation for innovation.
Social Processes:
Disciplinary and knowledge diversity: In order for innovation to be achieved and
for members to creatively collaborate, different perspectives must come in place [4].
Consequently, members must have diverse backgrounds and bring in the team their
own knowledge and point of view [3]. In this way, the team has a holistic viewpoint
and with knowledge coming from different disciplines, problem solving becomes
easier and prospects for innovation to be achieved increase.
Formal Roles: Power, knowledge and tasks roles have to be clearly defined in the
team in order for members to have an understanding of what is expected of them as an
input, and also to be able to identify who can be of help in the team if a situation
arises [3], [4], [5], [6]. That is, if an expert is needed on a specific subject, members
should be able to know who is holding that expertise in the team. This relates to
transactive memory which is proven to be positively linked with the performance of a
team [3]. Power roles are also important and need to be identified and supported early
in the formation of the team [4]. For example, a team coordinator or facilitator
responsible for organising the activities, tasks, and setting deadlines, needs to be
clearly identifiable and known to team members.
Information Sharing: Sharing of information by all members is essential to ensure
that information flows in the team, and perspectives from every discipline involved,
are heard.
Enabling Technologies:
Search Tools (people and information): Searching for people who can compose a
team and work on a specific project is very important process, should be supported.
Similarly, searching for relevant reports, academic papers and other resources is
equally important in order for someone to get an understanding of what the others in
an organisation have been working on, and judge the relevance of their expertise to a
current open call for an interdisciplinary project.
Connections/Relationships Discovery Tools: Members should be provided with the
relevant tools to help with identifying connections and relationships that exist
between team members, as well as other people in the network. In this way,
composing a team of members who come from different disciplines but have common
interests will be easier and more efficient.
Social Network Analysis Tools: Social network analysis allows for meaningful
information to be extracted and similar groups of people to be identified within large
networks of people. Possible similarities between people in the network can be
identified to help with the team formation. Furthermore social network tools provide
potential members with facilities to discuss, share thoughts, and in to an extent to
collaborate by sharing resources and ideas in a common collaboration platform.
Visualisations: Visualisations can be used to provide static or dynamic images of
connections and relationships between people either because of a similarity in
interests, in research areas, or because they have previously collaborated or co-
authored a paper. If a team needs to be formed for a given project, relevant people
across the organisation will be discovered, and given the opportunity to join the team.
42 S. Kleanthous Loizou, et al.
The next section will provide a brief description of how the BRAIN application,
designed and built for supporting multidisciplinary team formation for innovation,
took into consideration some of the processes and techniques discussed above.
4 The BRAIN Project and Tool
This work is carried out as part of the Building Research and Innovation Networks
(BRAIN 2 ) project, funded under the UK JISC Virtual Research Environments
Programme. The BRAIN project aimed at facilitating the building of teams of
researchers to enable the accumulation of collective intelligence and innovative
outputs when participants from different areas engage in joint initiatives.
To illustrate the importance of BRAIN, we will consider two scenarios:
x Recently there was a research call funded jointly by the Science and Social Science
Research Councils in the UK on the theme of “Energy and Communities”. The call
involved subject areas ranging from environmental science, civil engineering and
computer simulation through to psychology, sociology, economics and politics. A
research institution wants to respond to the call by forming a multi-disciplinary
team who will generate an innovative idea to be put in a joint proposal. The key
challenge is to identify who should be involved, and what facilities would support
the development of a proposal.
x A similar, but less clearly defined requirement arises when trying to identify
groupings or clusters of researchers that may have the potential of working
together or where the objective is to identify sub-disciplines within a larger area,
but where the connecting themes are not known in advance. Examples concern
finding connections between specific research groups and wider groupings of
researchers for the purpose of the Research Evaluation Framework (a UK–based
research assessment exercise that reviews research across higher institutions, and
requires the institutions to present coherent research streams).
In order to meet the above scenarios and following the requirements outlined in
Section 3, the BRAIN project developed a tool. It allowed us to evaluate and identify
what more is needed by users who are involved in cases like those presented above.
We will briefly outline next the BRAIN tool 3 .
In the implementation phase of BRAIN, we wanted to include the basic
functionality that required from a system to facilitate team formation for innovation
(Fig 1). At first, the user is presented with the user input panel and is allowed to
search for a topic, using keyword search or perform a person search through the data
available. Data extracted from the university databases, describing researchers’
expertise, interests, publications and projects previously or currently working on.
2
http://project-brain.org/
3 A more detailed description of the system has been presented at [11].
Team Formation for Research Innovation: The BRAIN Approach 43
Fig. 1. The main components of the BRAIN tool and their interactions.
The keyword search facility implemented based on a simple string matching of
the search word provided by the user, within the available data. Synonyms were then
extracted using WordNet 4 and Disco 5 facilities and a checkbox facility provided for
the user to choose a synonym according to preference. Selected synonyms were used
for extracting commonalities between the keyword entered and the data at hand.
For the person matching facility, the Yahoo Term Extraction service 6 was used.
Filtering/weighting results is one of the components in determining commonality.
This approach was not a necessity for the keyword search. However, for the person
search this was an important consideration. Two techniques were used to tackle this
problem. The first was the use of a stop list which filtered out certain words or
phrases which were adjudged not to be useful in establishing connections, and was
used after the stage of keyword expansion. For example, words like "research" and
"university" are obviously too general to be used. The second technique used was to
provide a user with a selectable filter parameter which would exclude terms which
generated over a specified number of person matches. This allows searches to be run,
and then this parameter adjusted depending on the results.
In this way, a user can became aware of his similarities with researchers from other
disciplines with diverse knowledge. The system functionality allows the user to see
the items responsible for a displayed connection. The output is stored in other formats
that can be exported into other applications for analysis and visualisation (Fig 2).
The functionality of the system was evaluated continuously using personal
interviews and focus groups allowing users to comment and advise us on what more
was needed when forming teams. The next section will revisit the BRAIN tool using
the processes and tools identified as important (Section 3). We will discuss what more
can be done and how UMAP approaches can help in building systems, like the
BRAIN too that facilitate multidisciplinary team formation for innovation.
4 http://wordnet.princeton.edu/
5
http://www.linguatools.de/disco/disco_en.html
6 http://developer.yahoo.com/search/content/V1/termExtraction.html
44 S. Kleanthous Loizou, et al.
Fig. 2. Visualisation output of a typical person connection 7 search performed in BRAIN.
5 Future Extension of the BRAIN Tool
The process of forming a team of people who will collaborate and achieve innovation
is very complex and needs to be carefully engineered. BRAIN attempted to address
this problem by providing basic tools that allowed university academics to search and
find information about colleagues who worked, or who are interested in specific areas
and form teams. BRAIN provided support in the formation of team in terms of
knowledge diversity by providing a search tool available to the interested parties that
allowed searching based on key terms that represent specific research areas. This
information has been presented as graph visualisations showing to people their
connections with each other in terms of knowledge and interests. Although this can be
considered as a first step towards supporting multidisciplinary team formation for
innovation, more is needed for the support to be effective. An important lesson
learned from the BRAIN evaluation is that people tend to remain focused on their
everyday group interactions, failing to interact with, and bring, a different perspective
in their research which might provide them with the added advantage and drive them
closer to innovation.
Further extensions: User modelling, adaptation and personalisation techniques
can be exploited to improve the effectiveness of the BRAIN tool. User models can be
used to hold information about individuals that will be connected to, and
automatically updated according to, the university’s databases. Open user models
[14] can be used allowing in this way individuals to view and edit their user model
accordingly to ensure that up-to-date and accurate information is held by the system.
Algorithms can be developed to enhance the existing search tools and allow to
automatically extract semantic connections [15] based on the information stored in
7 The names of the researchers returned as output have been removed and anonymised
accordingly for data protection purposes.
Team Formation for Research Innovation: The BRAIN Approach 45
the user model, and relevant to the knowledge and interests of a member. This tool
will provide the backbone for personalised notifications [16, 17] to be generated,
which will include information on connections, similarities or relations a member has
with others in the network. These notifications can be sent to a given member if
requested and allowing him to view the output in a dynamic graph visualisation
[18]. Extended tools will allow a member to contact another member, if necessary, by
clicking on that member’s name in the graph.
According to the processes and tools discussed in section 3, once the relevant
people have been identified, a communication tool [12] should be in place,
synchronous and/or asynchronous, where people will be able to contact each other in
order for a team to start forming. This is especially important since the team is
interdisciplinary and members have diverse knowledge. Being able to discuss and
argue upon different ideas and opinions will allow them to make better selection of
the best ideas to take forward.
In order for collaboration to lead to the generation of innovative ideas, the team has
to set formal roles [5], [6]. Each member must have a role based on knowledge,
experience, or status and work on tasks relevant to this role. This can be done through
internal team communication that requires input from all potential members. Knowing
who knows what in the team and who can perform better in what task will allow the
development of transactive memory and allow better collaboration to take place [3].
In supporting initial collaboration among the interested members, tools for
information/knowledge sharing [2], [4] should be in place. Adaptation techniques
can be utilised to allow members to view relevant information according their role
and task in the team and allowing filtering out all the irrelevant activity, reducing in
this way information overload. Personalised awareness techniques can be used to
allow people to know what is happening in the team by choosing what activity they
want to be aware of. Personalised messages or visualisations can be featured to
provide this kind of awareness to team members.
The above techniques have already been implemented and their effectiveness has
been evaluated in user-adaptive systems with different purposes. We argue that these
techniques could be exploited for team collaboration for innovation, and
corresponding evaluation studies should be conducted to evaluate the suitability of the
tools in this application context.
6 Conclusions
The paper has identified what social sciences and psychology consider as important
ingredients that can be supported in team formation for innovation. An attempt has
been made by other systems, as well as the BRAIN project, to provide support to
prospective teams of members that collaborate towards innovation. The paper points
out that technologies have yet a lot more to offer. Using adaptation techniques for
supporting multidisciplinary team formation for innovation is a research area, yet to
be explored. There are opportunities for researchers to work and innovate by applying
existing techniques to a new area that needs the vision, as well as the maturity of a
technologically advanced domain like UMAP.
46 S. Kleanthous Loizou, et al.
References
1. Gloor, P.: Swarm Creativity: Competitive Advantage through Collaborative
Innovation Networks: Oxford University Press, USA (2006).
2. Mohammed, S. and Dumville, B.C.: Team mental models in a team knowledge
framework: expanding theory and measurement across disciplinary boundaries:
Journal of Organizational Behavior. 22(2): p. 89 - 106 (2001).
3. Ilgen, D.R., et al.: Teams in Organizations: From Input - Process - Output Models to
IMOI Models: Annual Review of Psychology February 2005(56): p. 517 - 543
(2005).
4. Paletz, S. and Schunn, C.: A Social-Cognitive Framework of Multidisciplinary Team
Innovation: Topics in Cognitive Science. 2(1): p. 73-95 (2010).
5. Guzzo, R.A. and Dickson, M.W.: TEAMS IN ORGANIZATIONS: Recent Research
on Performance and Effectiveness. p. 307-338 (1996).
6. Hage, J.T.: ORGANIZATIONAL INNOVATION AND ORGANIZATIONAL
CHANGE. p. 597-622 (1999).
7. Bantel, K.A. and Jackson, S.E.: Top management and innovations in banking: Does
composition of the top teams make a difference? p. 107 (1989).
8. Magjuka, R.J. and Baldwin, T.T.: Team-based employee involvement programs:
effects of design and administration. p. 793 (1991).
9. Danowski, J.: Identifying Collaborative Innovation NetworksAt the Inter-
Departmental Level: Social and Behavioral Sciences. 2(4): p. 6404-6417 (2010).
10. Danowski and J, A.: WORDiJ: a word-pair approach to information retrieval,
Gaithersburg, MD, ETATS-UNIS: National Institute of Standards and Technology
(1993).
11. Gloor, P.A., et al.: Visualization of Communication Patterns in Collaborative
Innovation Networks - Analysis of Some W3C Working Groups, in Proceedings of
the twelfth international conference on Information and knowledge management
ACM: New Orleans, LA, USA (2003).
12. Angehrn, A., et al.: InnoTube: a video-based connection tool supporting collaborative
innovation: Interactive Learning Environments. 17(3): p. 205-220 (2009).
13. McAfee, A.P.: Enterprise 2.0: the dawn of emergent collaboration: Engineering
Management Review, IEEE. 34(3): p. 38-38 (2006).
14. Kay, J.: Accretion Representation for Scrutable Student Modeling, in Proceedings of
the 5th International Conference on Intelligent Tutoring SystemsSpringer-Verlag
(2000).
15. Kleanthous, S. and Dimitrova, V.: Modelling Semantic Relationships and Centrality
to Facilitate Community Knowledge Sharing. in Proceedings of the 5th international
conference on Adaptive Hypermedia and Adaptive Web-Based Systems (AH'08)
Germany, LNCS Vol. 5149, 123-132 Springer Berlin / Heidelberg (2008).
16. Ardissono, L., et al.: Context-aware notification management in an integrated
collaborative environment, in In Proceedings of International Workshop on
Adaptation and Personalization for Web 2.0 (AP-Web 2.0 2009) at UMAP’09:
Trento, Italy. p. 21 - 30 (2009).
17. Kleanthous Loizou, S.: Intelligent Support for Knowledge Sharing in Virtual
Communities, in School of ComputingUniversity of Leeds: Leeds (2010).
18. Cheng, R. and Vassileva, J.: Design and evaluation of an adaptive incentive
mechanism for sustained educational online communities: Journal of User Modeling
and User Adaptive Interaction. V16(3): p. 321 - 348 (2006).