doi:10.3233/DS-170001

Full identifier: https://doi.org/10.3233/DS-170001

Assigned to 1 class:

References

Nanopublication Part Subject Predicate Object Published By Published On
links a nanopublication to its assertion http://www.nanopub.org/nschema#hasAssertion assertion
doi:10.3233/DS-170001
Tobias Kuhn
2025-04-24T06:15:44.650Z
links a nanopublication to its assertion http://www.nanopub.org/nschema#hasAssertion assertion
doi:10.3233/DS-170001
Tobias Kuhn
2025-04-24T06:15:44.650Z
links a nanopublication to its assertion http://www.nanopub.org/nschema#hasAssertion assertion
doi:10.3233/DS-170001
Knowledge-based biomedical Data Science
Tobias Kuhn
2025-04-24T06:15:44.650Z
links a nanopublication to its assertion http://www.nanopub.org/nschema#hasAssertion assertion
doi:10.3233/DS-170001
2017-10-17
Tobias Kuhn
2025-04-24T06:15:44.650Z
links a nanopublication to its assertion http://www.nanopub.org/nschema#hasAssertion assertion
doi:10.3233/DS-170001
Computational manipulation of knowledge is an important, and often under-appreciated, aspect of biomedical Data Science. The first Data Science initiative from the US National Institutes of Health was entitled “Big Data to Knowledge (BD2K).” The main emphasis of the more than $200M allocated to that program has been on “Big Data;” the “Knowledge” component has largely been the implicit assumption that the work will lead to new biomedical knowledge. However, there is long-standing and highly productive work in computational knowledge representation and reasoning, and computational processing of knowledge has a role in the world of Data Science. Knowledge-based biomedical Data Science involves the design and implementation of computer systems that act as if they knew about biomedicine. There are many ways in which a computational approach might act as if it knew something: for example, it might be able to answer a natural language question about a biomedical topic, or pass an exam; it might be able to use existing biomedical knowledge to rank or evaluate hypotheses; it might explain or interpret data in light of prior knowledge, either in a Bayesian or other sort of framework. These are all examples of automated reasoning that act on computational representations of knowledge. After a brief survey of existing approaches to knowledge-based data science, this position paper argues that such research is ripe for expansion, and expanded application.
Tobias Kuhn
2025-04-24T06:15:44.650Z
links a nanopublication to its assertion http://www.nanopub.org/nschema#hasAssertion assertion
doi:10.3233/DS-170001
1-2
Tobias Kuhn
2025-04-24T06:15:44.650Z
links a nanopublication to its assertion http://www.nanopub.org/nschema#hasAssertion assertion
doi:10.3233/DS-170001
1
Tobias Kuhn
2025-04-24T06:15:44.650Z
links a nanopublication to its pubinfo http://www.nanopub.org/nschema#hasPublicationInfo pubinfo
doi:10.3233/DS-170001
Tobias Kuhn
2025-04-24T06:15:44.650Z