Text-2014-08-21
来自cslt Wiki
GloVe:
1. 文中所包含的word vector:
a) Skip-gram
b) CBOW
==> Both can find in word2vec
c) vLBL
d) ivLBL
==> Both can find in the paper Learning word embeddings efficiently with noise-contrastive estimation.
e) HPCA
==> which can find in the paper Word Embeddings through Hellinger PCA.
2. 不同的task:
a) Word analogies.
b) Word similarity.
==> 评价集合:WordSim-353、MC、RG、SCWS、RW
c) Named entity recognition.
==> 评价集合:CoNLL-2003, ACE Phase 2,ACE-2003.
3. 需要做的工作:
a) 寻找不同的task
b) 比较各种word vector的性能
捷通反馈:
1. 在仅仅用 Lucene 做 extraction进行算法匹配的情况下,有足够多的模板能够达到85%以上的准确率。
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