Annotation
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An annotation is extra information associated with a particular point in a document or other piece of information. It can be a note that includes a comment or explanation.[1] Annotations are sometimes presented in the margin of book pages. For annotations of different digital media, see web annotation and text annotation.
Literature, grammar and educational purposes
Practising Visually
Annotation Practices are highlighting a phrase or sentence and including a comment, circling a word that needs defining, posing a question when something is not fully understood and writing a short summary of a key section.[2] It also invites students to "(re)construct a history through material engagement and exciting DIY (Do-It-Yourself) annotation practices."[3] Annotation practices that are available today offer a remarkable set of tools for students to begin to work, and in a more collaborative, connected way than has been previously possible.[4]
Text and Film Annotation
Text and Film Annotation is a technique that involves using comments, text within a film. Analyzing videos is an undertaking that is never entirely free of preconceived notions, and the first step for researchers is to find their bearings within the field of possible research approaches and thus reflect on their own basic assumptions.[5] Annotations can take part within the video, and can be used when the data video is recorded. It is being used as a tool in text and film to write one's thoughts and emotion into the markings.[2] In any number of steps of analysis, it can also be supplemented with more annotations. Anthropologists Clifford Geertz calls it a "thick description." This can give a sense of how useful annotation is, especially by adding a description of how it can be implemented in film.[5]
Medieval Marginalia
Marginalia refers to writing or decoration in the margins of a manuscript. Medieval marginalia is so well known that amusing or disconcerting instances of it are fodder for viral aggregators such as Buzzfeed and Brainpickings, and the fascination with other readers’ reading is manifest in sites such as Melville's Marginalia Online or Harvard's online exhibit of marginalia from six personal libraries.[4] It can also be a part of other websites such as Pinterest, or even meme generators and GIF tools.
Textual scholarship
Textual scholarship is a discipline that often uses the technique of annotation to describe or add additional historical context to texts and physical documents to make it easier to understand.[6]
Student uses
Students often highlight passages in books in order to actively engage with the text. Students can use annotations to refer back to key phrases easily, or add marginalia to aid studying and finding connections between the text and prior knowledge or running themes.[7]
Annotated bibliographies add commentary on the relevance or quality of each source, in addition to the usual bibliographic information that merely identifies the source.
Students use Annotation not only for academic purposes, but interpreting their own thoughts, feelings, and emotions.[2] Sites such as Scalar and Omeka are sites that students use. There are multiple genres with Annotation such as math, film, linguists, and literary theory which students find it most helpful to use. Most students reported the annotation process as helpful for improving overall writing ability, grammar, and academic vocabulary knowledge.
Mathematical expression annotation
Learning and instruction
From a cognitive perspective, annotation has an important role in learning and instruction. As part of guided noticing it involves highlighting, naming or labelling and commenting aspects of visual representations to help focus learners' attention on specific visual aspects. In other words, it means the assignment of typological representations (culturally meaningful categories), to topological representations (e.g. images).[13] This is especially important when experts, such as medical doctors, interpret visualizations in detail and explain their interpretations to others, for example by means of digital technology.[14] Here, annotation can be a way to establish common ground between interactants with different levels of knowledge.[15] The value of annotation has been empirically confirmed, for example, in a study which shows that in computer-based teleconsultations the integration of image annotation and speech leads to significantly improved knowledge exchange compared with the use of images and speech without annotation.[16]
On YouTube
Annotations were removed on January 15, 2019, from YouTube after around a decade of service.[17] They had allowed users to provide information that popped up during videos, but YouTube indicated they did not work well on small mobile screens, and were being abused.
Software and engineering
Text documents
Tabular data
This includes
Semantic Labelling Techniques
There are several semantic labelling types which utilises machine learning techniques. These techniques can be categorised following the work of Flach
Geometric Techniques
Pham et al.[29] use Jaccard index and TF-IDF similarity for textual data and Kolmogorov–Smirnov test for the numeric ones. Alobaid and Corcho[21] use fuzzy clustering (c-means[30][31]) to label numeric columns.
Probabilistic Techniques
Limaye et al.
Logical Techniques
Syed et al.[34] built Wikitology, which is "a hybrid knowledge base of structured and unstructured information extracted from Wikipedia augmented by RDF data from DBpedia and other Linked Data resources.".[34] For the Wikitology index, they use PageRank for Entity linking, which is one of the tasks often used in semantic labelling. Since they were not able to query Google for all Wikipedia articles to get the PageRank, they used Decision tree to approximate it.[34]
Non-ML techniques
Alobaid and Corcho[22] presented an approach to annotate entity columns. The technique starts by annotating the cells in the entity column with the entities from the reference knowledge graph (e.g., DBpedia). The classes are then gathered and each one of them is scored based on several formulas they presented taking into account the frequency of each class and their depth according to the subClass hierarchy.[35]
Semantic Labelling Common Tasks
There are some tasks are the common among the different semantic labelling approaches.
Entity Linking and Disambiguation
This is the most common task in semantic labelling. Given a text of a cell and a data source, the approach predicts the entity and link it to the one identified in the given data source. For example, if the input to the approach were the text "Richard Feynman" and a URL to the SPARQL endpoint of DBpedia, the approach would return "http://dbpedia.org/resource/Richard_Feynman", which is the entity from DBpedia. Some approaches use exact match.[22] while others use similarity metrics such as Cosine similarity[32]
Subject Column Identification
The subject column of a table is the column that contain the main subjects/entities in the table.[19][28][33][36][37] Some approaches expects the subject column as an input[22] while others predict the subject column such as TableMiner+.[37]
Column Data-Type Detection
Columns types are divided differently by different approaches.[28] Some divide them into strings/text and numbers[21][29][38][25] while others divide them further[28] (e.g., Number Typology,[19] Date,[34][33] coordinates[39]).
Relation Prediction
The relation between Madrid and Spain is "capitalOf".[40] Such relations can easily be found in ontologies, such as DBpedia. Venetis et al.[33] use TextRunner[41] to extract the relation between two columns. Syed et al.[34] use the relation between the entities of the two columns and the most frequent relation is selected.
Gold Standards
T2D[42] is the most common gold standard for semantic labelling. Two versions exists of T2D: T2Dv1 (sometimes are referred to T2D as well) and T2Dv2.[42] Another known benchmarks are published with the SemTab Challenge.[43]
Source control
The "annotate" function (also known as "blame" or "praise") used in
Java annotations
A special case is the
Image annotation
Automatic image annotation is used to classify images for image retrieval systems.[46]
Computational biology
Since the 1980s, molecular biology and bioinformatics have created the need for DNA annotation. DNA annotation or genome annotation is the process of identifying the locations of genes and all of the coding regions in a genome and determining what those genes do. An annotation (irrespective of the context) is a note added by way of explanation or commentary. Once a genome is sequenced, it needs to be annotated to make sense of it.[47]
Digital imaging
In the
In the medical imaging community, an annotation is often referred to as a region of interest and is encoded in DICOM format.
Other uses
Law
In the United States, legal publishers such as
Linguistics
One purpose of annotation is to transform the data into a form suitable for computer-aided analysis. Prior to annotation, an annotation scheme is defined that typically consists of tags. During tagging, transcriptionists manually add tags into transcripts where required linguistical features are identified in an annotation editor. The annotation scheme ensures that the tags are added consistently across the data set and allows for verification of previously tagged data.[50] Aside from tags, more complex forms of linguistic annotation include the annotation of phrases and relations, e.g., in treebanks. Many different forms of linguistic annotation have been developed, as well as different formats and tools for creating and managing linguistic annotations, as described, for example, in the Linguistic Annotation Wiki.[51]
See also
- Abstract (summary)
- Automatic image annotation
- Coding (social sciences)
- Drama annotation
- Comment (various)
- Footnote
- Hyperkino
- Index (publishing)
- Marginalia
- Metadata
- Nota Bene
- Obelus, a symbol used on ancient manuscripts to mark passages that were suspected of being corrupted or spurious; the practice of adding such marginal notes became known as obelism.
- PDF annotation
- Subject indexing
- Semantics
- Tag (metadata)
- Text annotation
- Web annotation
- XPS annotation
References
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- ^ a b c d e Syed, Zareen; Finin, Tim; Mulwad, Varish; Joshi, Anupam (2010-04-26). "Exploiting a Web of Semantic Data for Interpreting Tables". Proceedings of the Second Web Science Conference.
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