Download JAR files tagged by likelihood with all dependencies
cheshire-likelihood_3 from group com.armanbilge (version 0.0-8887747)
cheshire-likelihood
Group: com.armanbilge Artifact: cheshire-likelihood_3
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Artifact cheshire-likelihood_3
Group com.armanbilge
Version 0.0-8887747
Last update 17. January 2022
Organization Arman Bilge
URL https://github.com/armanbilge/cheshire
License Apache-2.0
Dependencies amount 5
Dependencies cheshire_3, scala3-library_3, cats-core_3, scodec-bits_3, cats-effect-kernel_3,
There are maybe transitive dependencies!
Group com.armanbilge
Version 0.0-8887747
Last update 17. January 2022
Organization Arman Bilge
URL https://github.com/armanbilge/cheshire
License Apache-2.0
Dependencies amount 5
Dependencies cheshire_3, scala3-library_3, cats-core_3, scodec-bits_3, cats-effect-kernel_3,
There are maybe transitive dependencies!
cheshire-likelihood-laws_3 from group com.armanbilge (version 0.0-8887747)
cheshire-likelihood-laws
Group: com.armanbilge Artifact: cheshire-likelihood-laws_3
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Artifact cheshire-likelihood-laws_3
Group com.armanbilge
Version 0.0-8887747
Last update 17. January 2022
Organization Arman Bilge
URL https://github.com/armanbilge/cheshire
License Apache-2.0
Dependencies amount 7
Dependencies cheshire-likelihood_3, scala3-library_3, algebra_3, cats-kernel-laws_3, discipline-core_3, cats-effect-laws_3, refined-scalacheck_3,
There are maybe transitive dependencies!
Group com.armanbilge
Version 0.0-8887747
Last update 17. January 2022
Organization Arman Bilge
URL https://github.com/armanbilge/cheshire
License Apache-2.0
Dependencies amount 7
Dependencies cheshire-likelihood_3, scala3-library_3, algebra_3, cats-kernel-laws_3, discipline-core_3, cats-effect-laws_3, refined-scalacheck_3,
There are maybe transitive dependencies!
jcore-likelihood-detection-ae from group de.julielab (version 2.6.1)
Analysis Engine to detect epistemic modal expressions and assign the appropriate likelihood category.
Group: de.julielab Artifact: jcore-likelihood-detection-ae
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Artifact jcore-likelihood-detection-ae
Group de.julielab
Version 2.6.1
Last update 18. December 2022
Organization JULIE Lab Jena, Germany
URL https://github.com/JULIELab/jcore-base/tree/master/jcore-likelihood-detection-ae
License BSD-2-Clause
Dependencies amount 6
Dependencies slf4j-api, jcore-types, commons-lang3, jcore-descriptor-creator, julielab-java-utilities, junit-jupiter-engine,
There are maybe transitive dependencies!
Group de.julielab
Version 2.6.1
Last update 18. December 2022
Organization JULIE Lab Jena, Germany
URL https://github.com/JULIELab/jcore-base/tree/master/jcore-likelihood-detection-ae
License BSD-2-Clause
Dependencies amount 6
Dependencies slf4j-api, jcore-types, commons-lang3, jcore-descriptor-creator, julielab-java-utilities, junit-jupiter-engine,
There are maybe transitive dependencies!
jcore-likelihood-assignment-ae from group de.julielab (version 2.6.1)
Analysis Engine to assign likelihood indicators to their corresponding entities and events.
Group: de.julielab Artifact: jcore-likelihood-assignment-ae
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Artifact jcore-likelihood-assignment-ae
Group de.julielab
Version 2.6.1
Last update 18. December 2022
Organization JULIE Lab Jena, Germany
URL https://github.com/JULIELab/jcore-base/tree/master/jcore-likelihood-assignment-ae
License BSD-2-Clause
Dependencies amount 5
Dependencies slf4j-api, jcore-descriptor-creator, jcore-utilities, jcore-types, junit-jupiter-engine,
There are maybe transitive dependencies!
Group de.julielab
Version 2.6.1
Last update 18. December 2022
Organization JULIE Lab Jena, Germany
URL https://github.com/JULIELab/jcore-base/tree/master/jcore-likelihood-assignment-ae
License BSD-2-Clause
Dependencies amount 5
Dependencies slf4j-api, jcore-descriptor-creator, jcore-utilities, jcore-types, junit-jupiter-engine,
There are maybe transitive dependencies!
mlrules-weka-package from group com.github.fracpete (version 2023.7.26)
Maximum Likelihood Rule Ensembles (MLRules) is a new rule induction algorithm for solving classification problems via probability estimation. The ensemble is built using boosting, by greedily minimizing the negative loglikelihood which results in estimating the class conditional probability distribution. The main advantage of decision rules is their simplicity and comprehensibility: they are logical statements of the form "if condition then decision", which is probably the easiest form of model to interpret. On the other hand, by exploiting a powerful statistical technique to induce the rules, the final ensemble has very high prediction accuracy. Fork of the original code located at: http://www.cs.put.poznan.pl/wkotlowski/software-mlrules.html
Artifact mlrules-weka-package
Group com.github.fracpete
Version 2023.7.26
Last update 25. July 2023
Organization University of Waikato, Hamilton, NZ
URL https://github.com/fracpete/mlrules-weka-package
License GNU General Public License 3
Dependencies amount 1
Dependencies weka-dev,
There are maybe transitive dependencies!
Group com.github.fracpete
Version 2023.7.26
Last update 25. July 2023
Organization University of Waikato, Hamilton, NZ
URL https://github.com/fracpete/mlrules-weka-package
License GNU General Public License 3
Dependencies amount 1
Dependencies weka-dev,
There are maybe transitive dependencies!
kernelLogisticRegression from group nz.ac.waikato.cms.weka (version 1.0.0)
This package contains a classifier that can be used to train a two-class kernel logistic regression model with the kernel functions that are available in WEKA. It optimises the negative log-likelihood with a quadratic penalty. Both, BFGS and conjugate gradient descent, are available as optimisation methods, but the former is normally faster. It is possible to use multiple threads, but the speed-up is generally very marginal when used with BFGS optimisation. With conjugate gradient descent optimisation, greater speed-ups can be achieved when using multiple threads. With the default kernel, the dot product kernel, this method produces results that are close to identical to those obtained using standard logistic regression in WEKA, provided a sufficiently large value for the parameter determining the size of the quadratic penalty is used in both cases.
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Artifact kernelLogisticRegression
Group nz.ac.waikato.cms.weka
Version 1.0.0
Last update 26. June 2013
Organization University of Waikato, Hamilton, NZ
URL http://weka.sourceforge.net/doc.packages/kernelLogisticRegression
License GNU General Public License 3
Dependencies amount 1
Dependencies weka-dev,
There are maybe transitive dependencies!
Group nz.ac.waikato.cms.weka
Version 1.0.0
Last update 26. June 2013
Organization University of Waikato, Hamilton, NZ
URL http://weka.sourceforge.net/doc.packages/kernelLogisticRegression
License GNU General Public License 3
Dependencies amount 1
Dependencies weka-dev,
There are maybe transitive dependencies!
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