diff options
author | Alok Singh <singhal@Aloks-MacBook-Pro.local> | 2015-07-06 21:53:55 -0700 |
---|---|---|
committer | Joseph K. Bradley <joseph@databricks.com> | 2015-07-06 21:53:55 -0700 |
commit | 6718c1eb671faaf5c1d865ad5d01dbf78dae9cd2 (patch) | |
tree | 2ef634b209ddb16a89bcc0a93bd103a14f662522 /docs/mllib-clustering.md | |
parent | 1821fc165808143e98b3d9626141b1a55bde90ac (diff) | |
download | spark-6718c1eb671faaf5c1d865ad5d01dbf78dae9cd2.tar.gz spark-6718c1eb671faaf5c1d865ad5d01dbf78dae9cd2.tar.bz2 spark-6718c1eb671faaf5c1d865ad5d01dbf78dae9cd2.zip |
[SPARK-5562] [MLLIB] LDA should handle empty document.
See the jira https://issues.apache.org/jira/browse/SPARK-5562
Author: Alok Singh <singhal@Aloks-MacBook-Pro.local>
Author: Alok Singh <singhal@aloks-mbp.usca.ibm.com>
Author: Alok Singh <“singhal@us.ibm.com”>
Closes #7064 from aloknsingh/aloknsingh_SPARK-5562 and squashes the following commits:
259a0a7 [Alok Singh] change as per the comments by @jkbradley
be48491 [Alok Singh] [SPARK-5562][MLlib] re-order import in alphabhetical order
c01311b [Alok Singh] [SPARK-5562][MLlib] fix the newline typo
b271c8a [Alok Singh] [SPARK-5562][Mllib] As per github discussion with jkbradley. We would like to simply things.
7c06251 [Alok Singh] [SPARK-5562][MLlib] modified the JavaLDASuite for test passing
c710cb6 [Alok Singh] fix the scala code style to have space after :
2572a08 [Alok Singh] [SPARK-5562][MLlib] change the import xyz._ to the import xyz.{c1, c2} ..
ab55fbf [Alok Singh] [SPARK-5562][MLlib] Change as per Sean Owen's comments https://github.com/apache/spark/pull/7064/files#diff-9236d23975e6f5a5608ffc81dfd79146
9f4f9ea [Alok Singh] [SPARK-5562][MLlib] LDA should handle empty document.
Diffstat (limited to 'docs/mllib-clustering.md')
-rw-r--r-- | docs/mllib-clustering.md | 2 |
1 files changed, 1 insertions, 1 deletions
diff --git a/docs/mllib-clustering.md b/docs/mllib-clustering.md index 3aad4149f9..d72dc20a5a 100644 --- a/docs/mllib-clustering.md +++ b/docs/mllib-clustering.md @@ -447,7 +447,7 @@ It supports different inference algorithms via `setOptimizer` function. EMLDAOpt on the likelihood function and yields comprehensive results, while OnlineLDAOptimizer uses iterative mini-batch sampling for [online variational inference](https://www.cs.princeton.edu/~blei/papers/HoffmanBleiBach2010b.pdf) and is generally memory friendly. After fitting on the documents, LDA provides: * Topics: Inferred topics, each of which is a probability distribution over terms (words). -* Topic distributions for documents: For each document in the training set, LDA gives a probability distribution over topics. (EM only) +* Topic distributions for documents: For each non empty document in the training set, LDA gives a probability distribution over topics. (EM only). Note that for empty documents, we don't create the topic distributions. (EM only) LDA takes the following parameters: |