套件： timbl (6.4.2-1)
- 主頁 [ilk.uvt.nl]
Tilburg Memory Based Learner
Memory-Based Learning (MBL) is a machine-learning method applicable to a wide range of tasks in Natural Language Processing (NLP).
The Tilburg Memory Based Learner, TiMBL, is a tool for NLP research, and for many other domains where classification tasks are learned from examples. It is an efficient implementation of k-nearest neighbor classifier.
TiMBL's features are:
* Fast, decision-tree-based implementation of k-nearest neighborclassification;
* Implementations of IB1 and IB2, IGTree, TRIBL, and TRIBL2 algorithms; * Similarity metrics: Overlap, MVDM, Jeffrey Divergence, Dot product, Cosine; * Feature weighting metrics: information gain, gain ratio, chi squared,shared variance;
* Distance weighting metrics: inverse, inverse linear, exponential decay; * Extensive verbosity options to inspect nearest neighbor sets; * Server functionality and extensive API; * Fast leave-one-out testing and internal cross-validation; * and Handles user-defined example weighting.
TiMBL is a product of the ILK Research Group (Tilburg University, The Netherlands) and the CLiPS Research Centre (University of Antwerp, Belgium).
If you do scientific research in NLP, timbl will likely be of use to you.
其他與 timbl 有關的套件
- dep: libgcc1 (>= 1:4.4.0)
- GCC 支援函式庫
- dep: libgomp1 (>= 4.2.1)
- GCC OpenMP (GOMP) support library
- dep: libstdc++6 (>= 4.6)
- GNU Standard C++ Library v3
- dep: libtimbl3
- Tilburg Memory Based Learner - runtime
- dep: libxml2 (>= 2.6.27)
- GNOME XML library