I am learning Linear Algebra(started recently) and was curious to know its applications in Machine Learning, where can I read about this
Thank you
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I am learning Linear Algebra(started recently) and was curious to know its applications in Machine Learning, where can I read about this Thank you 


Linear Algebra provides the computational engine for the majority of Machine Learning algorithms. For instance, probably the most conspicuous and most frequent application of ML is the recommendation engine. Aside from data retrieval, the real crux of these algorithms is often 'reconstruction' of the ridiculously sparse data used as input for these engines. The raw data supplied to Amazon.com's userbased R/E is (probably) a massive data matrix in which the users are the rows and its products are represented in the columns. Therefore, to organically populate this matrix, every customer would have to purchase every product Amazon.com sells. Linear Algebrabased techniques are used here. All of the techniques in current use involve some type of matrix decomposition, a fundamental class of linear algebra techniques (e.g., nonnegative matrix approximation, and positivemaximummarginmatrix approximation (warning link to pdf!) are perhaps the two most common) Second, many if not most ML techniques rely on a numerical optimization technique. E.g., most supervised ML algorithms involve creation of a trained classifier/regressor by minimizing the delta between the value calculated by the nascent classifier and the actual value from the training data. This can be done either iteratively or using linear algebra techniques. If the latter, then the technique is usually SVD or some variant. Third, the spectralbased decompositionsPCA (principal component analysis) and kernel PCAare perhaps the most commonly used dimensionreduction techniques, often applied in a preprocessing step just ahead of the ML algorithm in the data flow, for instance, PCA is often used instance in a Kohonen Map to initialize the lattice. The principal insight underneath these techniques is that the eigenvectors of the covariance matrix (a square, symmetric matrix with zeros down the main diagonal, prepared from the original data matrix) are unit length and are orthogonal to each other. 


Singular value decomposition (SVD), is a classic method widely used in Machine Learning. I find this article is fairly easy, explaining a SVD based recommendation system, see http://www.igvita.com/2007/01/15/svdrecommendationsysteminruby/ . And Strang's linear algebra book, contains a section on the application of SVD to rank web pages (HITS algorithm) see Google Books. 


In machine learning, we generally deal with data in form of vectors/matrices. Any statistical method used involves linear algebra as its integral part. Also, it is useful in data mining. 

