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database The European Regional Innovation Scoreboard (2012) provides a comparative assessment of innovation performance across 190 NUTS 1 and NUTS 2 regions of the
Given the fact that the data available at regional level remains considerably scarce, the 2012 RIS does not provide an absolute
The data have been normalized using the min-max procedure, the maximum normalised score being thus
Data represent SMES compared to Large firms. In the present analysis we consider sectors defined as âoeall Core NACE rev 2
The data suggest that SMES innovate less than large firms across a range of categories including product innovation, process innovation, non-technological
In a study employing Community Innovation Survey data over 16 countries, Holzl (2009 found that high-growth SMES are more innovative
Although increasing institutional efforts to harmonize data for the understanding of the relationship between innovation and SMES performance, comparative exercises at the EU
Despite our analysis was bounded by data availability, it is relevant to remember that to increase SMES competitiveness other elements should be considered.
A systemâ s review of UK and international innovation data, NESTA Report, London (UK Baumol William J. 2002), The free-market innovation machine:
CIS III data for 16 countries, Small Business Economics, Vol. 33 pp 59â 75 Kakati M. 2003), Success criteria in high-tech new ventures, Technovation, Vol. 23
and interpreting technological innovation data. Oslo Manual. European commission, Eurostat. Retrieved from http://www. oecd. org/dataoecd/35/61/2367580. pdf
information access and data usage; social choices; service models; financing and much more. In this context, Work Package 8 examines the impact of ICT on,
and analyse data of what social needs are being experienced by which people in different places at different times.
/2 â Big dataâ refers to the vast amount of data that can be collected from the internet,
by the public sector as open government data and as contributed by ordinary people through â crowdsourcingâ
x be logistically amenable to data and information collection and analysis, including suitable material accessible in the public domain,
Given that this database of 30 cases, together with the accompanying desk research, constitutes a
Making the corporate world transparent via open data to citizens civil groups, journalists to create new content & knowledge & hold
which manipulate, match and mine data, and which require access to information and systematised intelligence, will become codified
zum job operates a database of 8, 000 institutions providing ICT facilities and support which is
databases and tools), and for matching assets (the job seekers and their skills and competences) with the needs of prospective employers
Eslife also provides a database of the task providerâ s skills and requirements which are evaluated,
cases, Skillandar provides a database of the task providerâ s skills and conditions, which if
This example uses databases, terminals RFID23 tags with barcodes or transponders on items of laundry,
internship (255 in private sector), with very low dropout (2011-2013 data 26 x Eslife: promotes initiative and autonomy amongst unemployed, underemployed and
internship (255 in private sector), with very low dropout (2011-2013 data x Eslife: provides benefits of legal and insured work compared to informal work
data entry and stewarding with flexible labour supply x Eslife: Over 1, 000 unemployed, underemployed and volunteers looking for work, in 7
cities and growing to over 25 in 2014 (latest two months of data show 600-700 tasks
The main barrier for the Mission Leben case is that the bespoke ICT needs backup systems and
needs ICT backup -Even simple interface can be difficult for low ability group -Lack of space for
data and data analysis, speed, connectivity, information, global reach and the long tail, virtually zero cost of forming online communities, dramatically reduced
x How to guard against decisions being taken about peoplesâ lives based purely on big data, data
benefits of big data People live their private and public lives in physical localities, although most are today more or less
digital information will have a growing influence on how they see the physical realm and how they act within it and move
physical interactions with people, things and places. 33 For example, the so-called â geowebâ of data
linked to geogrpahic places provides â digital overlaysâ of different types of data related to physical
which locate the data to specific points in space or specific geographic areas. This characterises much of the so-called â open dataâ made available by
either as open or protected data to solve specific problems and/or analyse specific issues or situations.
data and data analytics to improve the efficiency and effectiveness of local systems (like transport, utilities, etc.
and make sense of their own and each otherâ s data and through this their interconnected lives. The
is concerned especially with using data and coordinating resources to improve the lives of the neighbourhoodâ s inhabitants in terms of improved physical environments and mobility.
social media to collect data and organise, increasing civic engagement on issues, community voice and agency
over the medium-term to capture data on where, when and what type of problems occur
them over the medium-term to capture data on where, when and what type of problems
generating and analysing data and campaigning through citizen advocacy. The main purpose of gathering impact data stories was to increase the voice of local people,
campaign against the changes by providing reasoned evidence of negative impact, and hopefully influence decision
in the process of decision making, providing data and knowledge about local problems and areas of concern. Collecting such data and knowledge over the medium-term on where, when and what
type of problems occur also makes it possible to plan and use their maintenance, repair and other
facilitates gathering information and data, assists in analysing the data, and increases the efficiency of managing and organising campaigns and advocacy.
It also supports many of the traditional and physical activities associated with such campaigning. By sharing data, stories and research findings
online and via social media, ICT makes it easier for research findings to be found and accessed by
It also allows linking to other databases and other groups, as well as data and information sharing across all partners
and volunteers in real-time. ICT enables the experiences of those who are heard rarely or listened to be shared widely beyond the immediate
By sharing experiences and data on the issue, it also has the potential to help others generate social innovation related to housing.
The two cases show how relevant data, information, finance and volunteers are needed and can be identified
in some cases also matching local financial assets to needs (as in the IOBY case), as well as data
fine-grained data and information which can be used to improve policy overall. In some of the
collecting data matching local assets & finance to local needs -Enabling: instant accurate matching & data map
-ping/analysis, & widespread sharing Mainly civil financed & operated. Local campaigning action & advocacy rely on
Bottom-up data & information collection analysis, campaigning, advocacy and action can fill the gap in evidence on policy
by Gansky (2010) is that data, information and possibilities are widespread, whilst trust is relatively
open data to citizens civil groups, journal -ists to create new content & knowledge & hold corporates to
-Global database of companies, web scraping, reconciliation function, analysis and visualisation tools, also spinning off physical
events like hackathons where data are created and shared sometimes leading to new product and services
incubated in Open Data Institute, some foundation funding, other civil partners and civil operated -from 3 to 75 jurisdictions by 2014,60 million companies in
database, small fees given to people providing data 58 www. time-exchange. gr 59 www. cookisto. gr;
data database of over 60 million companies in 75 jurisdictions, together with web scraping reconciliation functions, analysis and visualisation tools, all in open format for anyone to use to
support an open data community. The main activity is to collaborate with Scraperwiki, a platform for doing data science on the web,
to help get corporate data by scraping it from the web. The site also has a Google Refine reconciliation function that matches legal entities to
The core business of Opencorporates is to collect data on companies through web scraping tools and then to visualise the data which is mainly from company registers, but
also from a wide range of other published datasets, both national and global. For example every night data is imported from the London Gazette, the Belfast Gazette and the
Edinburgh Gazette, which is where official insolvency notices are published. Every day 63 Interview with Kate Groves, Director of Marketing and Communications, Streetbank. com, 2014
The case also sources data from the UKÂ s Financial services Authority, the USÂ s Central Contracting Registration system, and a wide
This data is used often by Opencorporates, as well as independently by third parties, in physical hackathon-type events where data are created and shared, sometimes
leading to new products and services x Online platforms, communities and networks: In the Repair Cafã s case, all online platforms
open data to the tools they themselves wish to deploy In both cases, this means that complementary online and offline knowledge communities are
online open data and open data communities create new content and knowledge for developing new products and services in for example hackathons and other
online open data and open data communities, also supporting offline communities, create new content and knowledge for making the corporate world more
data community has been developed and this is spinning off many groups in many countries, as well as physical and other events like hackathons.
Opencorporates provides sophisticated data and tools which are then applied in many other contexts by a wide variety of disparate groups,
The Opencorporates case has, alongside many open data portals, barriers like technology scale problems when handling huge amounts of data.
There are also significant challenges in establishing and nurturing a demand-side ecosystem of users which,
There are some related challenges for Opencorporates around issues like data quality, ownership, data updating, provenance, who is responsible for mistakes
if something goes wrong (e g. if data errors lead to wrong conclusions) and the potential misuse of data
In terms of drivers, the Repair Cafã s case was started and is sustained by its active members and
For Opencorporates, the main driving trend is seeing corporate data as well as government and other data as a source of income.
There is also increasing interest in corporates and their activities because of their importance and their role in the economic and financial crisis
hackathons and other events use the open data and tools provided, so in both cases new shared assets are created both physically and virtually.
people who use its data, which is made openly available under the share-alike attribution of the
Open Database License. In return, any product of that data must also be open for others to use.
For users who do not give back data, they pay Opencorporates a fee. Data from Opencorporates is also
used in physical events such as hackathons to create new shared assets in the form of new
products and services or other content Strategic and operational considerations The Repair Cafã s case operates in a relatively small, informal and very democratic, transparent and
Opencorporatesâ data. This links the creation of intangible and virtual shared knowledge assets to the creation of tangible and physical shared assets, mutually supportive of each other, and
In the Opencorporates case, the strategic output is capturing data in searchable maps and visualisations of complex corporate structures with multiple layers of control below the
data from public filings and company registrations in the U s.,New zealand, the Cayman islands Luxembourg and the UK.
The promotion of new types of open data and the shared knowledge creation this enables, exemplified by the Opencorporates and the Repair Cafã s cases,
Opencorporates case collates huge amounts of data on global corporates for open interrogation and use.
for example, hackathons and other events enabled by Opencorporates data 2. Strategic and operational considerations related to ICT in social innovation
Opencorporates data. This extends the creation of intangible and virtual shared knowledge assets to the creation of tangible and physical shared assets,
The promotion of new types of open data and the shared knowledge creation this enables, exemplified by the Repair Cafã s and the Opencorporates cases, shows that this
-Potential data knowledge & IPR challenges when co -created, data quality & responsibility -Demand side eco
-system often weak -Vision of enthusiasts -Open data as income source -Social trends to DIY, partic
-ipation, scrut -iny of large organisations -Crisis as catalyst -Supporting: creation of traditional & physical
-Data and knowledge creation and manipula -tion vary hugely from small to big data depending on case
-Civil, voluntary finance & operation -Flat, informal, open bottom-up, self-regulate -Creation of both virtual
x There is a lot of health related data created in different settings â in hospitals, outpatient clinics, social care
However, there is no agreed procedure for analysing the data for scientific and policy related issues
x How to address the big data challenges, knowledge generation and use x How to ensure access to relevant data for the use of social enterprises and the potential for Social
enterprises to feed back into the loop of formal health and social care x Is there a digital divide issue?
data These key trends can be summarised as follows x The rise of integrated, patient-centred health care models â In broad terms, future models of health and
x Big data and healthcare-Health communication and health information technology (IT) are central to health care, public health,
conditions, telemedicine and remote monitoring, patient data capture, electronic records, e-prescribing and the parallel industries of fitness and wellness. mhealth holds promise for improvement along the value chain
data aggregation, medical situation awareness and analysis (risk classification, root cause analysis and risk triggers
agencies to turn data into information insights, so they can deliver higher quality care to more patients and citizens
x Tools which enable patients to share data regarding their experiences with particular health providers e g
data collection, organisation, or analysis. Moreover Penda sends SMS messages once a week on Mondays to
providers and patients outside of traditional doctor visits and to improve data collection, organisation, or
outside of traditional doctor visits and to improve data collection, organisation, or analysis. Theclinipak automates and standardises primary health care workflows and data collection, health assessment forms
and patient records in a suitcase. It contains a solar powered touch screen laptop and other health
The team modified an Open Data Kit (ODK) Collect, an open-source tool for mobile data collection and loaded it onto an Android Smartphone that the Community Health Workers
CHWS) carry when visiting patients. The completed surveys are uploaded then to a Vecna-hosted server
where the data is available for download and reporting. This has been a vast improvement over the paper
clinics with new features for improved patient outreach, data capture and reporting capabilities Most of the described examples are already in the post pilot phase
process, they generate data about the real-world nature of disease that help researchers, pharmaceutical companies, regulators, providers and nonprofits develop more effective products, services and care.
the apps only indirectly create network effects by providing big data of interest across all users
allows for data derived from proprietary devices carried by the patients to be transmitted to an online platform
the art data aggregation system and the end-users'device. This is a âoematching assets to needsâ platform.
addresses the lack of reliable patient data, timely monitoring of patients condition and availability to the
since opinions can be made based on concrete, long term data, and not patient observations, often affected by personal embellishments, the patientsâ emotional condition or inability or unwillingness to share
platform hosted by DIABETIVA can motivate patients to share data and knowledge on how to better understand
A as DIABETIVA users become better able to use their DIABETIVA generated data and use it as leverage to
practitioners able to apply the data to some uses, but unable to promote a cohesive and intelligent analysis and
Eventually, more tech-savvy patients will find new methods of using their data, thus leveraging the benefit
As these initiatives are set up currently and in the context of the sensitivity of health data, knowledge generation
â¢The problems associated with the release of commercially sensitive information and data which potential
generate data about the real-world nature of disease that help researchers, pharmaceutical companies, regulators providers and nonprofits develop more effective products, services and care.
now has access to Patientslikemeâ s full database for five years. Patientslikeme is an online network of some 250,000 people with chronic diseases who share
relevant when it comes to the use of data that users inevitably leave when using such portals or apps.
as the data displayed is potentially highly sensitive and personal, yet can potentially support transformative medical
rather than just querying data collected from online systems. The relation of learning design to learning analytics is also being considered,
data storage, appropriate levels of access, and providing the necessary infrastructure for storing and querying large data sets
c) Crowd learning-Crowd learning describes the process of learning from the expertise and opinions of
carry out a controlled intervention if appropriate, collect data using desktop and mobile technologies as research tools,
collecting and sharing local data e) Gamification-There is increasing interest in the connections between games and education.
interactive online database 112 www. q2l. org 113 http://izonenyc. org/in New york 114 www. professor-why. pl
It creates and produces data by collecting data on the children monitored. Giving information on
hierarchical, the data collection follows a bottom-up approach. MONDEY combines codified knowledge and tacit knowledge existing among researchers worldwide (who can be seen as acting within a network of practice) into
by providing new data. They are doing so by sharing their tacit knowledge filling in the data on the MONDEY
platform or making the filled in short scales available for the MONDEY team or giving feedback during training
Data from the Department for Education shows that, in 2013, Q2lâ s average score on The english Language Arts
Also, in the future data generated by MONDEY allows for an evidence-based approach in the development of early childhood education
In the future data generated by MONDEY allows for an evidence-based approach in the development of early childhood education
conversely, researchers gain new knowledge by getting new and representative data for future research. Awareness on important steps in childhood development is increased.
but also to gain new data for future research. One of the basic ideas of MONDEY is to create a winâ winâ situation
future research it is paramount to get good data in the first hand. This means,
data parents generally hesitate to submit. It is important to have representative data and samples to give realistic
feedback to the parents and to advance research. The long term objective is a large data base for research projects
which makes creating different subsamples as well as control samples possible. To reach this goal it is also important
and thus data needs to be highly secure. Further all of the systems require a high degree of ICT support particularly as such initiatives often operate with less tech-savy user groups such as
higher educated as demographic data for Courserians shows that 75%have a Bachelorâ s degree or higher.
At the same time it collects data on real developments of young children to establish a database that can be used by researchers.
MONDEY is an example of an ICT-enabled and supported social innovation. It uses the internet to disseminate knowledge on early childhood development.
when MONDEY receives data on the monitoring of babies and toddlers. This is definitely innovative. MONDEY is dynamic and interactive.
and other questions it takes data gathering decentralised and bottom up. This is only thinkable and possible by the use of ICT
particularly if data is used further for research about learnintg processes. But without getting this sensitive date no reliable data will be won for research
Conclusions and reflections Drawing directly on the above analysis, conclusions regarding the three generic research issues, introduced in the
policies regarding data security 131 References Bertot, J. C.,Jaeger, P. T, . & Hansen, D. 2012).
which ICT is used (e g. communicate with beneficiaries/partners, collect data, etc. etc.),), and how is this
data usage; social choices; service models; financing and much more. Although this report has no
networks collect and share peer produced and crowdsourced data from communities in order to uncover
and establishing an open data system 6. 7. 1. Preventing legislation from having a negative effect on competitiveness
6. 7. 5. Introduction of open data In the evolution towards a network society, a new, relational model of innovation is
public data to enable businesses and citizens to create products and generate wealth and value
7. 5. Introduction of open data 7. 6. Modernising and making it more flexible the Administration of Justice
network people, ideas and data across boundaries of any nature: geographical, cultural disciplinary, linguistic, social, economic
social media, distributed knowledge creation and data from real environments "Internet of things")in order to create awareness of problems and possible solutions
collaboration of human and nonhuman actors we can think of data being gathered by engaging both citizens and sensors,
Safecast, whichâ after the March 2011 earthquake in Japanâ provided data about radiation by using a sensor network;
Another important area of analysis is related to data security, protection and data sharing in the use of online social networks and the value proposition and business models that
surround personal and sensitive data With reference to more action-oriented research questions we have, first of all, questions
Moving from citizen engagement to the data that these citizens produce on the web intentionally or unintentionally, a main research question is how to make that data
reliable, trustworthy and meaningful? To this end CAPS projects study manners of visualising behavioural patterns and information diffusion, of supporting and
official and unofficial statistical data In addition, CAPS projects support existing communities by intensifying the analysis
knowledge, visualisation of digital (open) data, and copyright All such topics involve the understanding of collective forms of behaviour and of self
â Users of online communities interested in knowing more about their data and in defending their online rights
could be used as a useful data source to identify the type of organisations, technologies and movements with which CAPS projects are already engaging
overview consists of a clustering of the funded CAPS projects under 14 emerging categories. The clustering is based on available public documents of CAPS projects and on
the knowledge available among the authors, who are also part of the CAPS community. It has to be noted that CAPS projects are still in the early stage of development, therefore a
This clustering considers the main 'innovations'produced by the projects. More comprehensive outputs of each project
statistical data collections (WEB-COSI), and reputation and rating systems (WIKIRATE e-Democracy, e-Participation, Direct Democracy
Open) Data Integration Each social network has a different affordance for users. Twitter, Facebook and other widely-adopted social systems format the content in different ways,
Integrating user-generated data from different media, analysing the content as well as user participation, and providing
insightful visualisations are some of the complex tasks related to data integration addressed by CAPS projects
and WEB-COSI are focused on open data integration by providing different standards, tools and methods for data federation.
DECARBONET and D-CENT work on the modelling of social media data for mining and presenting it in an aggregated
way. CATALYST, DECARBONET, and WIKIRATE are also together in that they aggregate data from different social media sources (such as Facebook, Twitter and emailing systems
Online Deliberationâ From Group-Based to Large-scale Recent events have given evidence to the fact that communities can be created and
provide unstructured conversations where data is not presented in a way that makes it easy for other people
results, from statistical data (SCICAFE2. 0) to scientific themes (SCICAFE2. 0), and passing through knowledge on corporate social responsibility (WIKIRATE
and data quality discrimination WIKIRATE and WEB-COSI 38 Privacy-Aware Tools and Applications Privacy-aware systems have evolved over the last decade from privacy-enhancing
full control of their data, maintaining privacy and trust in the technology they use FOCAL is motivated by privacy concerns about the data and location of the end users that
contribute to CAPS. It is concerned thus with the analysis of privacy, reputation and trust in
provide a secure environment for effective control over relevant data Social networking & Social media Enhancement The confluence of network-centric systems, mobile telecommunications, semantic web
with tools to enable the use of their data by entities outside of the OSN, for example, in
7. CKAN http://ckan. org CKAN is a powerful data management system that makes data accessibleâ by providing tools to streamline publishing, sharing, finding and
using data. CKAN is aimed at data publishers (national and regional governments companies and organisations) wanting to make their data open and available
8. Climate Quiz https://apps. facebook. com/climate-quiz A Facebook application in the tradition of âoegames with a Purposeâ for Measuring Environmental Knowledge
9. Cohere http://cohere. open. ac. uk Cohere is a visual tool to create, connect and
share ideas, and back them up with websites. By using Cohere people can support or challenge each other's ideas
and maintain data about roads, trails, cafã s railway stations, and much more, all over the world
to perform semantic fusion of data that can make sense of the underlying causal processes of a problem situation (i e. the
Integrating quantitative data with content analysis of self-reports is a possible way to evaluate,
The results of the data and evidence collected in such a way can be used to
Systems Methodology to Analyse Qualitative Data'.'Proceedings of the 2nd International Conference on Systems Thinking in Management, Salford, UK, April 2002
Data De Paoli, S. & Teli, M. eds. 2011)' New Groups and New Methods? The Ethnography and
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