RBM
E26392
RBM is a global partnership initiative dedicated to coordinating and scaling up efforts to prevent, control, and ultimately eliminate malaria worldwide.
All labels observed (2)
| Label | Occurrences |
|---|---|
| RBM canonical | 1 |
| RBM Partnership Secretariat | 1 |
How this entity was disambiguated
This entity first appeared as the object of triple T205211 — resolving that mention is where its identity was fixed. The disambiguator weighed these candidate entities and picked the highlighted one (or “None”, minting a new entity). This is how homonymy is resolved: the same surface form can point to different entities.
Target entity: RBM Context triple: [Roll Back Malaria, abbreviation, RBM]
-
A.
Boltzmann machines
Boltzmann machines are stochastic recurrent neural networks used for learning complex probability distributions, foundational in unsupervised learning and energy-based models.
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B.
“A fast learning algorithm for deep belief nets”
“A fast learning algorithm for deep belief nets” is a seminal 2006 paper by Geoffrey Hinton that introduced an efficient unsupervised pretraining method for deep neural networks using stacked restricted Boltzmann machines.
-
C.
“Learning representations by back-propagating errors”
“Learning representations by back-propagating errors” is a landmark 1986 research paper that popularized the backpropagation algorithm for training multi-layer neural networks, helping to launch the modern field of deep learning.
-
D.
LeNet
LeNet is one of the earliest convolutional neural network architectures, pioneering modern deep learning approaches to image recognition and handwritten digit classification.
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E.
DRL
DRL is the U.S. State Department bureau responsible for promoting democracy, protecting human rights, and advancing labor rights worldwide.
- F. None of above. chosen
- G. Unsure - the case is ambiguous/there is not enough information to decide.
Target entity: RBM Target entity description: RBM is a global partnership initiative dedicated to coordinating and scaling up efforts to prevent, control, and ultimately eliminate malaria worldwide.
-
A.
Boltzmann machines
Boltzmann machines are stochastic recurrent neural networks used for learning complex probability distributions, foundational in unsupervised learning and energy-based models.
-
B.
“A fast learning algorithm for deep belief nets”
“A fast learning algorithm for deep belief nets” is a seminal 2006 paper by Geoffrey Hinton that introduced an efficient unsupervised pretraining method for deep neural networks using stacked restricted Boltzmann machines.
-
C.
“Learning representations by back-propagating errors”
“Learning representations by back-propagating errors” is a landmark 1986 research paper that popularized the backpropagation algorithm for training multi-layer neural networks, helping to launch the modern field of deep learning.
-
D.
LeNet
LeNet is one of the earliest convolutional neural network architectures, pioneering modern deep learning approaches to image recognition and handwritten digit classification.
-
E.
DRL
DRL is the U.S. State Department bureau responsible for promoting democracy, protecting human rights, and advancing labor rights worldwide.
- F. None of above. chosen
Statements (46)
| Predicate | Object |
|---|---|
| instanceOf |
global health partnership
ⓘ
malaria control initiative ⓘ public–private partnership ⓘ |
| advocatesFor |
increased malaria funding
ⓘ
universal access to malaria prevention and treatment ⓘ |
| aimsTo |
achieve malaria elimination in endemic countries
ⓘ
reduce malaria morbidity ⓘ reduce malaria mortality ⓘ |
| alsoKnownAs |
RBM Partnership
ⓘ
Roll Back Malaria ⓘ |
| collaboratesWith |
United Nations Development Programme
ⓘ
surface form:
UNDP
UNICEF ⓘ World Bank ⓘ World Health Organization ⓘ |
| coordinates | global malaria control strategies ⓘ |
| focusArea |
global health
ⓘ
malaria ⓘ |
| foundedBy |
UNICEF
ⓘ
surface form:
United Nations Children’s Fund
United Nations Development Programme ⓘ World Bank ⓘ World Health Organization ⓘ |
| foundingYear | 1998 ⓘ |
| fullName |
Roll Back Malaria
ⓘ
surface form:
Roll Back Malaria Partnership
|
| hasGoverningBody |
RBM Partnership
ⓘ
surface form:
RBM Partnership Board
|
| hasSecretariat |
RBM
self-linksurface differs
ⓘ
surface form:
RBM Partnership Secretariat
|
| headquartersLocation |
Geneva
ⓘ
surface form:
Geneva, Switzerland
|
| promotes |
indoor residual spraying
ⓘ
insecticide-treated mosquito nets ⓘ prompt diagnosis and effective treatment of malaria ⓘ |
| purpose |
to control malaria
ⓘ
to coordinate global efforts against malaria ⓘ to eliminate malaria ⓘ to prevent malaria ⓘ |
| scope | worldwide ⓘ |
| sector | global public health ⓘ |
| strategy |
Action and Investment to defeat Malaria (AIM)
ⓘ
surface form:
Global Malaria Action Plan
|
| supports |
malaria research and innovation
ⓘ
monitoring and evaluation of malaria programs ⓘ national malaria control programs ⓘ |
| targetPopulation | populations at risk of malaria ⓘ |
| typeOfOrganization | multi-stakeholder partnership ⓘ |
| worksWith |
donor agencies
ⓘ
endemic country governments ⓘ non-governmental organizations ⓘ private sector partners ⓘ research institutions ⓘ |
How these facts were elicited
The pipeline generated the facts above by prompting gpt-5.1 with this entity's name + description and the instruction below.
You are a knowledge base construction expert. Given a subject entity and a description of it, return factual statements that you know for the subject as a JSON list of dictionaries(triples), where keys must be "subject", "predicate" and "object". The number of facts may be very high, between 25 to 50 or more, for very popular subjects. For less popular subjects, the number of facts can be very low, like 5 or 10. # Requirements - If you don't know the subject at all, return an empty list. - If the subject is not a named entity, return an empty list. - Include at least one triple where predicate is "instanceOf". - Do not get too wordy. - Separate several objects into multiple triples with one object.
Subject: RBM Description of subject: RBM is a global partnership initiative dedicated to coordinating and scaling up efforts to prevent, control, and ultimately eliminate malaria worldwide.
Referenced by (2)
Full triples — surface form annotated when it differs from this entity's canonical label.