Course Glossaries

1. Introduction to DH

  • Digital Humanities (DH): An interdisciplinary field that combines the use of digital tools, technology, and humanities scholarship to explore, analyze, and preserve human culture, history, and society.

  • Text Analysis: The use of computational tools and techniques to examine large corpora of text to identify patterns, trends, and themes that may not be immediately apparent through traditional analysis.

  • Data Visualization: The representation of data in a visual format, such as graphs or maps, to help uncover patterns, relationships, and trends in the data, making complex information more accessible and understandable.

  • Digital Archives: Repositories of digital copies of cultural artifacts, manuscripts, and other historical documents that have been digitized for preservation and public access.

  • Geospatial Analysis: The study of spatial relationships and patterns using geographic information systems (GIS) to map and analyze data related to geography and human activities.

  • Cultural Heritage Preservation: The use of digital technologies to digitize, catalog, and conserve cultural artifacts and historical sites, ensuring their long-term accessibility and conservation.

  • Interdisciplinary Research: Research that integrates methods, theories, and tools from multiple academic disciplines to address complex questions that cannot be fully understood within a single field.

  • Crowdsourcing: The practice of engaging the public in data collection, analysis, or enhancement, often used in DH projects to gather and improve information about cultural objects.

  • Machine Learning: A branch of artificial intelligence that enables computers to learn from and make predictions or decisions based on data, increasingly used in DH for text analysis and data processing.

  • Natural Language Processing (NLP): A field of computer science that focuses on the interaction between computers and human language, often used in DH for tasks such as text analysis, translation, and sentiment analysis.

  • 3D Scanning: The process of capturing the shape and appearance of real-world objects in three dimensions using specialized equipment, often used in DH to create digital replicas of cultural artifacts.

  • Virtual Reality (VR): An immersive digital environment that simulates real or imagined worlds, used in DH to allow users to interact with and explore digital representations of historical sites or artifacts.

  • Open Access: The principle of providing free and unrestricted access to research outputs, including digital cultural heritage materials, to promote knowledge sharing and democratization.

  • Metadata: Descriptive information about a digital object, such as title, author, and date, used to facilitate discovery, retrieval, and management of digital resources.

  • Digital Literacy: The ability to effectively use digital tools and technologies for research, communication, and problem-solving, an essential skill in DH.

  • Artificial Intelligence (AI): The simulation of human intelligence by machines, particularly computer systems, which is increasingly being integrated into DH for tasks such as automated analysis and pattern recognition.

  • Interoperability: The ability of different systems, devices, or software to work together and share data, crucial for DH projects that involve collaboration across institutions and platforms.

  • Data Curation: The process of organizing, managing, and preserving data throughout its lifecycle to ensure its long-term accessibility and usability, important in DH for maintaining digital collections.

  • Ethical Considerations in DH: The examination of moral issues related to data privacy, consent, representation, and bias in digital projects, ensuring that DH practices are fair and respectful.

  • Digital Divide: The gap between those who have access to modern information and communication technology and those who do not, an important consideration in DH efforts to make knowledge accessible to all.

  • Multimodal Research: An approach that combines different forms of data (text, image, audio, video) to provide a more comprehensive analysis of cultural artifacts and historical events.

  • Algorithmic Bias: The presence of systematic errors in computer algorithms that lead to unfair outcomes, a critical issue in DH where data-driven decisions must be scrutinized for fairness.

  • Data-Driven Research: A research approach that relies heavily on the analysis of large datasets to identify trends, patterns, and relationships, increasingly common in DH.

  • Sentiment Analysis: The use of computational tools to identify and extract subjective information, such as opinions or emotions, from text, often used in DH to analyze public discourse.

  • Digital Storytelling: The practice of using digital tools to tell stories, often incorporating multimedia elements, to engage audiences with historical and cultural content.

  • TEI (Text Encoding Initiative): A standard for the representation of texts in digital form, providing guidelines for encoding textual features such as structure, formatting, and annotations.

  • Digital Mapping: The creation of interactive maps that combine geographic data with other forms of information to explore spatial relationships, commonly used in DH for historical analysis.

  • Semantic Web: A concept in web development that allows data to be shared and reused across applications, enterprises, and communities, often utilized in DH to improve data integration and retrieval.

  • Corpus Linguistics: The study of language as expressed in corpora (bodies of text) and the analysis of linguistic patterns within these texts, a key method in DH.

  • Digital Pedagogy: The use of digital tools and technologies to enhance teaching and learning, particularly in the context of humanities education.

  • Text Encoding: The process of converting text into a digital format that preserves its structure and meaning, often using standards like TEI in DH projects.

  • Digital Exhibitions: Online presentations of cultural artifacts, artworks, or historical documents that allow for interactive exploration and engagement by the public.

  • Archival Digitization: The process of converting physical archives into digital formats to preserve them and make them accessible for research and public access.

  • Ontology in DH: The study of how concepts and categories in a subject area are related, often used in DH to organize and structure knowledge in digital databases.

  • Linguistic Annotation: The process of adding metadata to text to mark linguistic features such as parts of speech, syntax, and semantics, used in DH for detailed text analysis.

  • Historical GIS (Geographic Information Systems): The application of GIS technology to historical research, allowing scholars to visualize and analyze past events in spatial context.

  • Computational Stylistics: The use of computational methods to analyze literary style, such as authorial voice or genre characteristics, a growing field within DH.

  • Digital Philology: The study of texts and languages using digital tools to analyze, edit, and preserve literary works, often involving the digitization of manuscripts.

  • Network Analysis in DH: The use of network theory to analyze relationships and interactions within datasets, such as social networks or connections between historical figures.

  • Crowdsourced Transcription: The process of enlisting the public to transcribe digitized documents, often used in DH projects to enhance accessibility and data quality.

  • Interactive Timelines: Digital tools that allow users to explore historical events in a chronological format, often used in DH to provide context and connections between events.

  • Digital Manuscripts: Digitally scanned versions of historical manuscripts that have been preserved and made accessible through digital archives and libraries.

  • Cultural Analytics: The use of computational tools to analyze cultural data, such as visual art, music, or literature, to uncover patterns and trends in cultural production.

  • Public Humanities: Efforts to engage the public in humanities research and education, often facilitated by digital tools and platforms in the DH context.

  • Data Mining in DH: The process of discovering patterns, correlations, and trends in large datasets, used in DH to analyze vast amounts of cultural and historical data.

  • Visual Analytics: The combination of data analysis and visual representation techniques to explore complex datasets, commonly used in DH for exploratory analysis.

  • Digital Repositories: Online databases that store and provide access to digital objects such as texts, images, and multimedia, essential for the preservation and dissemination of DH research.

  • Machine Translation in DH: The use of automated tools to translate text from one language to another, increasingly important in multilingual DH projects.

  • Digital Annotation: The practice of adding notes, comments, or metadata to digital texts or images, often used in DH to enhance understanding and analysis.

  • Big Data in DH: The use of large and complex datasets in DH research, which require advanced computational tools for storage, analysis, and visualization.