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Questions tagged [lsa]

LSA stands for Latent Semantic Analysis, a natural language processing technique which involves analysing the relationships between documents and terms they contain by producing a set of related concepts.

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12 views

Does LSA call security provider in order?

I'm trying to implemented my own Security Provider, and let user login even if msv1_0 fails. I've updated the following registry key: HKEY_LOCAL_MACHINE\SYSTEM\CurrentControlSet\Control\Lsa\Security ...
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18 views

hklm\Security Vs Security\Policy

I am researching the way an attacker would get a machine credentials. I figured the most common methods are to dump hklm\sam hklm\security hklm\system I was able to figure what information is ...
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20 views

verify the performance of the TFIDF, LSA and LDA methods

hello I want to make a grouping of the textual content of the web pages into themes, for that I transformed them into a matrix tfidf crossing the terms to the pages then reduce the dimension of the ...
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2answers
730 views

ValueError: shapes (4,4) and (3,) not aligned: 4 (dim 1) != 3 (dim 0)

import numpy as np A = np.matrix([[1, 2, 3], [4, 5, 6], [7, 8, 9], [10, 11, 12]]) u, s, vt = np.linalg.svd(A) print (np.dot(u, np.dot(np.diag(s), vt))) I ...
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2answers
109 views

Why is LSA in text2vec producing different results every time?

I was using latent semantic analysis in the text2vec package to generate word vectors and using transform to fit new data when I noticed something odd, the spaces not being lined up when trained on ...
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43 views

Taking a latent semantic analysis (lsa) object and scoring on new data in R

I am running latent semantic analysis (LSA) using textmineR in R. What I'm hoping to get is the document by topic matrix with topics scores by document, which I can do by calling theta from my lsa ...
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37 views

Can the character set allowed by the 'alnumx' function in the R package 'lsa' be extended to include other characters or symbols?

I am trying to use the R package lsa (for doing Latent Semantic Analysis) to process some text data set that includes many terms that aren't literally 'words' in the English language. There are a lot ...
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1answer
37 views

Best tool for text representation to deep learning

so I wanna ask you which is the best tool used to prepare my text to deep learning? What is the difference between Word2Vec, Glove, Keras, LSA...
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17 views

Forming a query vector in LSA

After performing the SVD of a term-document matrix, and getting a reduced rank matrix, various sources have stated the following reduced query vector formula. It seems easy to see how its derived. ...
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1answer
303 views

Latent Semantic Analysis results

I'm following a tutorial for LSA and having switched the example to a different list of strings, I'm not sure the code is working as expected. When I use the example-input as given in the tutorial, ...
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0answers
338 views

Explained variance in TruncatedSVD

as I tried to get my head around LSA, I discovered that I am not able to reproduce the result from TruncatedSVD using SVD. Why does this not work. Thank you for your help. import pandas as pd import ...
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185 views

Latent Semantic Analysis: How to choose component number to perform TruncatedSVD

I am practicing to use LSA to classify Enron dataset (all emails). My understanding is to successfully perform any further classification or clustering, I need to perform a lower rank approximation ...
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175 views

LSA and K means in document clustering, results are not printing correctly

I have recently done some document clustering using LSA then Kmeans. However when I try to print the most important words in each cluster im getting very strange results, it printing words that dont ...
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1answer
177 views

How to get the vector representation of a word using a trained SVD model

I have trained (fit and transform) a SVD model using 400 documents as part of my effort to build a LSA model. Here is my code: tfidf_vectorizer = sklearn.feature_extraction.text.TfidfVectorizer(...
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42 views

Calculate conceptual and relation similarity of two words in Java

I am implementing a readability formula in Java based on this paper. I reached the point where I have to compute the conceptual and the relational similarity of two or more words. They say: We ...
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116 views

How to retrieve only nouns from a file and pass them as an array to LSA?

I need to extract only those words whose tags match with pos-tags variable of program and pass those words to LSI model but when i print nouns i get an empty list. Here is my sample input of noun ...
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1answer
425 views

gensim document similarity: how to get document titles from most similar results?

I am using gensim to analyze document similarity in a large corpus. Each document has a "title", or more specifically, a unique ID string, along with the content text. After looking through several ...
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1answer
37 views

How to retrieve only those elements of list which matches user input? [closed]

i need to take input from user and only that group of words should return to me where the input string occurs. For example if i search for people then only those group of words where people appears ...
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1answer
230 views

R LSA LSAFUN enconding problems

I would like to use the genericSummary function from package LSAfun. Here´s a german sample text. library("LSAfun") text = " Gegen die Firma wurde während der letzten Woche ein ...
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57 views

How to find reduce similar words from column of list in python using nltk?

I have a column in pandas as below 0 ['business', 'ceremony', 'festival', 'group'] 1 ['mountain', 'outdoors', 'travel', 'tree', 'forest'] 2 ['people', 'city', 'politics', 'architecture'] ...
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1answer
422 views

Adding documents to gensim model

I have a class wrapping the various objects required for calculating LSI similarity: class SimilarityFiles: def __init__(self, file_name, tokenized_corpus, stoplist=None): if stoplist is ...
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2answers
289 views

Optimal Document Size for LSI Similarity Model

I'm using Gensim's excellent library to compute similarity queries on a corpus using LSI. However, I have a distinct feeling that the results could be better, and I'm trying to figure out whether I ...
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1answer
123 views

Scala Convert [Seq[string] to [String]? (TF-IDF after lemmatization)

I try to learn scala and specificaly text minning (lemmatization ,TF-IDF matrix and LSA). I have some texts i want to lemmatize and make a classification (LSA). I use spark on cloudera. So i used ...
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74 views

how i calculate cosine similarity by using jama

could anyone help me with detecting the problem? I need to calculate the similarity between the query and a collection of documents, and I've been used the program : https://github.com/aliabbasrizvi/...
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1answer
332 views

Implementing LSA for elasticsearch index

I've just spent the last couple days wrapping my head around implementing Latent Semantic Analysis for documents which are indexed in elasticsearch. the first step is to build the term-document matrix....
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750 views

java.lang.NoClassDefFoundError: org/apache/lucene/index/CorruptIndexException

i try to implement LSA semantic search using TML library.here is my code where rep1 is a folder that i create and dossier is a folder where i put my txt documents. public static void main(String[] ...
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3k views

Inspect TermDocumentMatrix to get full list of words / terms in R

I am trying to use inspect(TermDocumentMatrix()) to get a list of word/term frequencies between text documents (in R) Using the example code from ?TermDocumentMatrix: data("crude") tdm <- ...
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1answer
121 views

How to access individual documents in textmatrix in R

I have a textmatrix in R that looks like the following: I am trying to create one textmatrix from training and testing data. How can I access the different document columns to put into another ...
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459 views

How do I run LSA/SVD on a Spark DataFrame in a Pipeline?

I would like to be able to use the Pipeline functionality of Spark 2.0+ for building my models, but I cannot figure out how to incorporate LSA/SVD in my Pipeline. I am aware of the functionality on ...
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496 views

Performing SVD Feature Decompostion on a Large Sparse Matrix

I saved my features from text data with pickle in sparse matrix format with a shape of (323549, 4119259). I am trying to perform Singular Value Decomposition on them using the sklearn library, however,...
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1answer
158 views

Latent Semantic Analysis and Stemming

Assume a very large corpus of any inflective language. Does the following make sense? By applying LSA on such corpus, words with similar concepts converge together in vector space, thus inflected word ...
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2answers
2k views

Why use LSA before K-Means when doing text clustering

I'm following this tutorial from Scikit learn on text clustering using K-Means: http://scikit-learn.org/stable/auto_examples/text/document_clustering.html In the example, optionally LSA (using SVD) ...
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835 views

Latent text analysis (lsa package) using whole documents in R

I have a code that successfully performs Latent Text Analysis on short citations using the lsa package in R (see below). However, I would rather like to use this method on text from larger documents. ...
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193 views

How to print out the documents in each clusters generated by LDA?

The print_top_words method from the code below only prints the distribution of the words for each topic: Cluster 1: word1 , word2 , .... Cluster 2: word3 , word2 , .... So, instead of printing out ...
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1answer
756 views

Transforming words into Latent Semantic Analysis (LSA) Vectors

Does anyone have any suggestions for how to turn words from a document into LSA vectors using Python and scikit-learn? I found these site here and here that decscribe how to turn a whole document into ...
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1answer
961 views

different approach for document similarity(LDA, LSA, cosine)

I have set of short documents(1 or 2 paragraph each). I have used three different approaches for document similarity: - simple cosine similarity on tfidf matrix - applying LDA on the whole corpus and ...
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1answer
1k views

Document similarity using LSA in R

I am working on LSA (using R) for Document Similarity Analysis. Here are my steps Imported the text data & created Corpus. Did basis Corpus operations like stemming, white space removal etc ...
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838 views

Semantic search in ElasticSearch

What is the best way to add semantics in ES? I have read this: Semantic search with NLP and elasticsearch ,but there are lot of manual things here and on top of that this is quite old. For eg: Knowing ...
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1answer
266 views

HashingTF not giving unique indices

i am implementing Latent Semantic Analysis LSA, using eclipse Mars, java 8, and spark spark-assembly-1.6.1-hadoop2.4.0.jar I passed the documents as tokens , then got SVD and so on HashingTF hf =...
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197 views

override similarity with Lucene and use LSA+SVD instead

I'm working on an existed project using Lucene for searching and returning matches. It's not using any custom analyzer or any external algorithm. The documents are tiny with rows of no more than 50 ...
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1answer
1k views

How to cluster documents under topics using latent semantic analysis (lsa)

I've been working on latent semantic analysis (lsa) and applied this example: https://radimrehurek.com/gensim/tut2.html It includes the terms clustering under topics but couldn't find anything how we ...
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1answer
349 views

How to get similarity from LSA

I am working on latent semantic analysis, i am trying to get similarity from 2 documents. I run my code of latent semantic analysis on Python and when i run it i get : Here are the singular values [ ...
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2answers
966 views

Python 2 : AttributeError: 'list' object has no attribute 'split'

this is my program of LSA, in this fonction i want to tokenize all my text and then transform it to stem. i'm trying to integrate them program of stemming and then i get this: for word in titles.split(...
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2answers
6k views

Continue not properly in loop

I have python 2.7, this is my code and when I run it, I get this error: 'continue' not properly in loop. I know that 'continue' should be inside the loop for, but I use it inside if, then what i ...
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1answer
6k views

How to handle negative values of cosine similarities

I computed tf-idf of my documents based of terms. Then, I applied LSA to reduce the dimensionality of the terms. 'similarity_dist' contains values which are negative (see table below). How can I ...
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0answers
136 views

R: How to perform lsa() with parallel processing format

I am trying to do some text analytic on tweets, and trying to use LSA() for DR. However, seems like calculating lsa space is EXTREMELY memory intensive. I can only process up to 2.3k tweets or my ...
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1answer
475 views

R: how to map test data into lsa space created by training data

I am trying to do text analysis using LSA. I've read many other posts regarding LSA on StackOverflow, but I have not found one similar to mine yet. IF you know there's one similar to mine, please ...
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1answer
982 views

Scikit-learn TruncatedSVD documentation

I plan to use sklearn.decomposition.TruncatedSVD to perform LSA for a Kaggle competition, I know the math behind SVD and LSA but I'm confused by scikit-learn's user guide, hence I'm not sure how to ...
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529 views

how to use LSA for dimension reduction in text analytics with R

I am a beginner at data science, and I am working on a text analytics/sentiment analysis project with tweets. what i have been trying to do is to perform some dimension reduction on my tweets training ...
3
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1answer
717 views

How to compute word similarity using TF-IDF or LSA with gensim?

I know that word2vec in gensim can compute similarity between words. But now I want to compute word similarity using TF-IDF or LSA with gensim. How to do it? note: Computing document similarity ...