Occurrence Relation
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An Occurrence Relation is a semantic relation that establishes a connection between entitys or events based on their existence, co-presence, or manifestation within a temporal context.
- AKA: Existence Relation, Manifestation Connection, Presence Association, Actualization Relation.
- Context:
- It can typically establish Temporal Connection through occurrence timeframe alignment.
- It can typically indicate Instance Manifestation through occurrence verification.
- It can typically connect Related Entity through shared occurrence context.
- It can typically demonstrate Event Actualization through occurrence documentation.
- It can typically validate Predefined Condition through occurrence confirmation.
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- It can often identify Occurrence Pattern through repeated occurrence analysis.
- It can often reveal Causal Link through sequential occurrence examination.
- It can often support Prediction Model through historical occurrence data.
- It can often facilitate Event Monitoring through occurrence detection.
- It can often enable Anomaly Identification through unexpected occurrence recognition.
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- It can range from being a Simple Occurrence Relation to being a Complex Occurrence Relation, depending on its occurrence relation component quantity.
- It can range from being a Deterministic Occurrence Relation to being a Probabilistic Occurrence Relation, depending on its occurrence relation certainty level.
- It can range from being a Direct Occurrence Relation to being an Indirect Occurrence Relation, depending on its occurrence relation connection immediacy.
- It can range from being a Temporal Occurrence Relation to being a Spatial Occurrence Relation, depending on its occurrence relation primary dimension.
- It can range from being a Singular Occurrence Relation to being a Multiple Occurrence Relation, depending on its occurrence relation instance count.
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- It can connect event instances through temporal coincidence, causal connection, or logical association.
- It can describe entity states that exist simultaneously, sequentially, or conditionally.
- It can express independence when the occurrence or non-occurrence of one event has no effect on whether another event occurs.
- It can document actual instances where a predefined situation arises in observable reality.
- It can track occurrence frequency as a statistical measure of event manifestation.
- It can support compliance monitoring through expected occurrence verification.
- It can enable pattern recognition through occurrence sequence analysis.
- It can inform prediction systems through historical occurrence data.
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- Examples:
- Occurrence Relation Types, such as:
- Temporal Occurrence Relations, such as:
- Conditional Occurrence Relations, such as:
- Anomalous Occurrence Relations, such as:
- Domain-Specific Occurrence Relations, such as:
- Occurrence Relation Measurements, such as:
- Frequency-Based Occurrence Relations, such as:
- Probability-Based Occurrence Relations, such as:
- Occurrence Relation Applications, such as:
- Analytical Occurrence Relations, such as:
- Practical Occurrence Relations, such as:
- ...
- Occurrence Relation Types, such as:
- Counter-Examples:
- Non-Occurrence, which represents the absence of an expected event rather than a relation between occurrences.
- Hypothetical Relation, which connects potential events rather than actual occurrences.
- Definitional Relation, which establishes conceptual connections rather than existence-based connections.
- Similarity Relation, which connects entitys based on shared attributes rather than shared existence.
- Causal Relation, which specifically focuses on cause-effect connections rather than mere co-existence.
- Hierarchical Relation, which establishes taxonomic structures rather than occurrence connections.
- Functional Relation, which defines operational interactions rather than existence verification.
- Possessive Relation, which indicates ownership or containment rather than manifestation.
- See: Event, Phenomenon, Event Occurrence, Occurrence Statistic, Occurrence Likelihood, Co-occurrence Matrix, Event Sequence, Temporal Relation, Causal Relation, Statistical Correlation, Actualization, Manifestation, Event Detection, Pattern Recognition, Anomaly Detection, Compliance Monitoring, Frequency Analysis, Probability Theory, Independence (Statistics), Conditional Probability, Event Instance, Relation Type.
References
2014
2006
- Suzanne R. Dubnicka. (2006). “STAT 510: Handout 2 - Counting Techniques and More Probabililty. Kansas State University
- TERMINOLOGY : When the occurrence or non-occurrence of A has no effect on whether or not B occurs, and vice-versa, we say that the events A and B are independent.