What is Community-Generated Data (CGD)?
Community-Generated Data (CGD) refers to the data that is actively produced, collected, and managed by individuals or groups within a community. It empowers community members to directly contribute to the data collection process, enabling them to influence decision-making, improve local services, and address community-specific challenges. CGD can come from a variety of sources, such as surveys, community mapping, social media interactions, or environmental monitoring, and is often used to solve issues that matter most to the community.
Key Characteristics of CGD:
Traditional Data Collection Methods:
Traditional data collection methods are typically designed and conducted by institutions, such as governments, NGOs, or research organizations. These methods rely on structured approaches like censuses, national surveys, and administrative data collection, where the community may be participants but are rarely involved in the design, data collection, or data analysis process. This top-down approach often aims to collect data that fits into a larger regional or national framework.
Key Differences:
Aspect | Community-Generated Data (CGD) | Traditional Data Collection |
---|---|---|
Initiation | Data is initiated by the community to address specific local needs. | Data is initiated by external bodies such as governments or researchers. |
Participation | Community members actively participate in designing, collecting, and analyzing the data. | Community members are passive subjects or respondents in the process. |
Ownership | The community retains ownership and control of the data. | The institution collecting the data typically owns and controls it. |
Scope | Focused on local or community-specific issues. | Typically broader in scope (regional, national, or global). |
Flexibility | Flexible, evolving as community needs change. | Usually rigid, following pre-determined structures or frameworks. |
Use of Technology | Often leverages accessible technologies like mobile phones or social media. | May rely on centralized systems and infrastructure for data collection. |
Example Comparison:
Community-Generated Data (CGD) can be produced from various sources, each playing a unique role in capturing different aspects of community life. The following are common types of data that fall under the umbrella of CGD:
Overview:
Surveys are one of the most widely used methods for CGD. These surveys are usually designed by community members themselves to gather input on specific local issues, such as housing conditions, public health, or local infrastructure.
Example:
Residents of a neighborhood design and distribute a survey asking community members about their biggest concerns regarding safety and crime. The collected data is used to advocate for increased police presence or community safety initiatives.
Overview:
Community mapping involves using local knowledge to create maps that detail specific elements of a community, such as roads, schools, health centers, or hazards. These maps are often created with the help of digital tools like GPS-enabled devices or mapping software (e.g., Google Maps, OpenStreetMap).
Example:
In informal settlements like Kibera in Nairobi, residents mapped infrastructure such as clean water access points and healthcare centers. These maps were crucial in advocating for municipal investment in infrastructure.
Overview:
Social media platforms such as Twitter, Facebook, and Instagram provide a wealth of CGD, as users share information about their experiences, opinions, and needs in real-time. Social media data can be analyzed for trends, sentiments, or urgent community issues.
Example:
During a natural disaster, residents in a city use Twitter to report flooded areas, damaged roads, and emergency needs. The real-time data is aggregated and used by local government for disaster response.
Overview:
Crowdsourcing refers to data collected from a large group of people, usually via online platforms or apps. These platforms invite users to contribute specific types of data, such as environmental observations or public health information.
Example:
In New York City, the SeeClickFix app allows residents to report non-emergency issues such as potholes, broken streetlights, and graffiti. The data is used by the local government to prioritize repairs and maintenance.
Overview:
Communities can use sensors and Internet of Things (IoT) devices to gather data on environmental conditions, such as air quality, noise levels, and water pollution. This real-time, automated data collection is often integrated into larger CGD efforts.
Example:
In New Delhi, India, communities have placed air quality sensors in local neighborhoods to monitor pollution levels. The data helps raise awareness about air pollution and influences public policy to reduce emissions.
Overview:
In participatory action research (PAR), community members work with researchers to collect data about local issues. The focus is on collaborative learning and problem-solving, with data collected through interviews, focus groups, or workshops.
Example:
In a participatory project in Brazil, residents of low-income neighborhoods helped researchers conduct interviews on food insecurity. The findings informed local food distribution programs.
Technology plays a pivotal role in the success and scalability of Community-Generated Data (CGD). It allows communities to easily collect, process, analyze, and share data in real time, often with limited resources. Below are some of the most prominent technologies used to facilitate CGD:
Overview:
Mobile applications designed for CGD can allow individuals to collect and report data on specific local issues. Apps can integrate features such as GPS for geolocation, cameras for photo evidence, and easy-to-use forms for data entry. Mobile apps are particularly useful in remote or underserved communities where desktop access may be limited.
Example:
Overview:
Online surveys and forms (e.g., Google Forms, SurveyMonkey) are widely accessible and can be easily distributed via email, social media, or community websites. Online platforms that allow crowdsourcing of data, such as Maptionnaire or OpenStreetMap, also empower communities to engage in CGD initiatives.
Example:
Overview:
Social media analytics involves using platforms like Twitter, Facebook, and Instagram to collect data on public sentiment, community issues, or emerging trends. Analytical tools like Hootsuite or Sprout Social can gather data on specific hashtags, keywords, or geolocated posts, allowing real-time insights into community concerns.
Example:
Overview:
Internet of Things (IoT) devices are physical objects embedded with sensors and connected to the internet, allowing them to collect and transmit data autonomously. Communities can use sensors to monitor environmental factors such as air and water quality, temperature, humidity, and noise levels.
Example:
Overview:
Crowdsourcing platforms enable the collection of large amounts of data from a community over a short period. These platforms allow users to submit data related to various fields, such as environment, public health, or social justice, creating a collective data set that reflects community concerns.
Example: