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diff --git a/mllib/index.md b/mllib/index.md index da0288db1..7eebb8173 100644 --- a/mllib/index.md +++ b/mllib/index.md @@ -14,7 +14,7 @@ subproject: MLlib <div class="col-md-7 col-sm-7"> <h2>Ease of Use</h2> <p class="lead"> - Usable in Java, Scala and Python. + Usable in Java, Scala, Python, and SparkR. </p> <p> MLlib fits into <a href="{{site.url}}">Spark</a>'s @@ -83,22 +83,25 @@ subproject: MLlib <div class="col-md-4 col-padded"> <h3>Algorithms</h3> <p> - MLlib 1.3 contains the following algorithms: + MLlib contains the following algorithms and utilities: </p> <ul class="list-narrow"> - <li>linear SVM and logistic regression</li> + <li>logistic regression and linear support vector machine (SVM)</li> <li>classification and regression tree</li> <li>random forest and gradient-boosted trees</li> - <li>recommendation via alternating least squares</li> - <li>clustering via k-means, Gaussian mixtures, and power iteration clustering</li> - <li>topic modeling via latent Dirichlet allocation</li> - <li>singular value decomposition</li> - <li>linear regression with L<sub>1</sub>- and L<sub>2</sub>-regularization</li> + <li>recommendation via alternating least squares (ALS)</li> + <li>clustering via k-means, Gaussian mixtures (GMM), and power iteration clustering</li> + <li>topic modeling via latent Dirichlet allocation (LDA)</li> + <li>singular value decomposition (SVD) and QR decomposition</li> + <li>principal component analysis (PCA)</li> + <li>linear regression with L<sub>1</sub>, L<sub>2</sub>, and elastic-net regularization</li> <li>isotonic regression</li> - <li>multinomial naive Bayes</li> - <li>frequent itemset mining via FP-growth</li> - <li>basic statistics</li> + <li>multinomial/binomial naive Bayes</li> + <li>frequent itemset mining via FP-growth and association rules</li> + <li>sequential pattern mining via PrefixSpan</li> + <li>summary statistics and hypothesis testing</li> <li>feature transformations</li> + <li>model evaluation and hyper-parameter tuning</li> </ul> <p>Refer to the <a href="{{site.url}}docs/latest/mllib-guide.html">MLlib guide</a> for usage examples.</p> </div> diff --git a/site/mllib/index.html b/site/mllib/index.html index 02b6065c0..de3916aad 100644 --- a/site/mllib/index.html +++ b/site/mllib/index.html @@ -178,7 +178,7 @@ <div class="col-md-7 col-sm-7"> <h2>Ease of Use</h2> <p class="lead"> - Usable in Java, Scala and Python. + Usable in Java, Scala, Python, and SparkR. </p> <p> MLlib fits into <a href="/">Spark</a>'s @@ -250,22 +250,25 @@ <div class="col-md-4 col-padded"> <h3>Algorithms</h3> <p> - MLlib 1.3 contains the following algorithms: + MLlib contains the following algorithms and utilities: </p> <ul class="list-narrow"> - <li>linear SVM and logistic regression</li> + <li>logistic regression and linear support vector machine (SVM)</li> <li>classification and regression tree</li> <li>random forest and gradient-boosted trees</li> - <li>recommendation via alternating least squares</li> - <li>clustering via k-means, Gaussian mixtures, and power iteration clustering</li> - <li>topic modeling via latent Dirichlet allocation</li> - <li>singular value decomposition</li> - <li>linear regression with L<sub>1</sub>- and L<sub>2</sub>-regularization</li> + <li>recommendation via alternating least squares (ALS)</li> + <li>clustering via k-means, Gaussian mixtures (GMM), and power iteration clustering</li> + <li>topic modeling via latent Dirichlet allocation (LDA)</li> + <li>singular value decomposition (SVD) and QR decomposition</li> + <li>principal component analysis (PCA)</li> + <li>linear regression with L<sub>1</sub>, L<sub>2</sub>, and elastic-net regularization</li> <li>isotonic regression</li> - <li>multinomial naive Bayes</li> - <li>frequent itemset mining via FP-growth</li> - <li>basic statistics</li> + <li>multinomial/binomial naive Bayes</li> + <li>frequent itemset mining via FP-growth and association rules</li> + <li>sequential pattern mining via PrefixSpan</li> + <li>summary statistics and hypothesis testing</li> <li>feature transformations</li> + <li>model evaluation and hyper-parameter tuning</li> </ul> <p>Refer to the <a href="/docs/latest/mllib-guide.html">MLlib guide</a> for usage examples.</p> </div> |