The cosine-similarity tag has no wiki summary.

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### calculating cosine similarity using MapReduce

I am trying making a item-based recommendation using cosine similarity with MapReduce.
Here's the input set.
itemIdx_1, userIdx_1
itemIdx_1, userIdx_2
itemIdx_2, userIdx_1
itemIdx_3, userIdx_3
...
...

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343 views

### Predict interesting articles with scikit-learn

I'm trying to build an algorithm capable of predicting if I will like an article, based on the previous articles I liked.
Example:
I read 50 articles, I liked 10. I tell my program I liked them.
...

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### Using Latent Semantic Analysis to measure passage similarity

Im currently developing a program to compare two pieces of text based on its semantics (meaning). I understand there are libraries such as lingpipe which provide useful methods to compare string ...

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### Computing Document Similarity Matrices in Sphinx?

Does Sphinx provide a way to precompute document similarity matrices? I have looked at Sphinx/Solr/Lucene; it seems Lucene is able to do this indirectly using Term Vectors Computing Document ...

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### Document as Vectors

Could you please explain how to implement a document as a vector and how to find similarities among them using cosine similarity? As shown here, they only compute cosine angle and distance of vectors ...

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61 views

### Recommendation Engine: Cosine Similarity vs Measuring %difference between each vector component

Lets say I have a database of users who rate different products on a scale of 1-5. Our recommendation engine recommends products to users based on the preferences of other users who are highly ...

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### Cosine Similarity - Drawbacks as Recommendation Engine?

I have seen Cosine Similarity used in K-Nearest Neighbor algorithms to generate recommendations based on user preferences. In these models, user ratings for a given product are treated as vectors, and ...

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### how do i use Cosine similarity for this use case

If I have a query vector A and an item vector B, it would be great if someone can guide me how to weigh/normalize the vectors (strategies for the same).
Vector A would have the following components ( ...

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### Cosine similarity python issue

hi i'm trying to calculate the cosine similarity between my query and the documents i return with my information retrieval program in python.
for the cosine similarity i use this implementation:
...

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### Cosine Similarity of Eigen Vectors of two different matrices

Is it a valid measure, to find the cosine similarity of the Eigen vectors of two very large matrices, to compare how similar they are?
I have two very large matrices A and B. I found:
-> Co-Variance ...

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### Solving Data with Pearson's Correlation

I have data that content of 2 users who have their own rating about 3 movies. I can describe like this :
Spiderman Batman Superman
User 1 3 2 4
User 2 ...

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### Python pandas: Finding cosine similarity of two columns

Suppose I have two columns in a python pandas.DataFrame:
col1 col2
item_1 158 173
item_2 25 191
item_3 180 33
item_4 152 165
item_5 96 108
What's the best way to ...

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68 views

### Information retrieval, inverted index issue

Hi i'm trying to write a little program that indexes some documents from an xml collection. I use the tf-idf method. Now when my program reads the query it returns a list of tuples ('tf-idf','docid') ...

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### Need a similarity measure for these vectors

I have a Python function that takes in a block of text and returns a special 2D vector/dictionary representation of it, depending on a chosen length n. An example output might look like this:
1: [6, ...

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61 views

### Better understanding of cosine similarity

I am doing a little research on text mining and data mining. I need more help in understanding cosine similarity. I have read about it and notice that all of the given examples on the internet is ...

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### some questions on cosine similarity

Yesterday I learnt that the cosine similarity, defined as
can effectively measure how similar two vectors are.
I find that the definition here uses the L2-norm to normalize the dot product of A ...

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### Is this an approach to user-item recommendations that could work

I am designing an application that incorporates a recommendation system base on user interactions (collaborative filtering). The user on his homepage is presented a set of 6 items to interact with. ...

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### Finding cosine similarity between 2 numbered datasets using Python

I have numbered datasets of length 22 where each number can lie between 0 to 1 where it represents the percentage of that attribute.
[0.03, 0.15, 0.58, 0.1, 0, 0, 0.05, 0, 0, 0.07, 0, 0, 0, 0, 0, 0, ...

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### Using relative frequency for euclidean distance

how to calculate the euclidean distance(similarity) between two documents eg D1 and D2 using relative frequency?.
Here is an example of both cosine and euclidean distance between two documents using ...

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### Cosine distance as vector distance function for k-means

I have a graph of N vertices where each vertex represents a place. Also I have vectors, one per user, each one of N coefficients where the coefficient's value is the duration in seconds spent at the ...

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### Elasticsearch scoring

I'm using elasticsearch to find similar documents to a given document using the "more like this" query.
Is there an easy way to get the elasticsearch scoring between 0 and 1 (using cosine similarity) ...

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### USING TFIDF FOR RELATIVE FREQUENCY, COSINE SIMILARITY

I'm trying to use TFIDF for relative frequency to calculate cosine distance. I've selected 10 words from one document say: File 1 and selected another 10 files from my folder, using the 10 words and ...

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### Python TF-IDF Matrix row comparison

I am currently working on a text classification problem, where now I would like to look at a cosine similarity approach. I currently have this set up; Some lines are my 'training', where the already ...

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### Find k Similar Users Between Two different 2D Arrays

I'm trying to perform a Pearson Correlation for class but can't figure out how to traverse both 2d arrays so that I can find where there are users who have rated both movies. Effectively k similar ...

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### Using kNN with cosine similarity in R

Just a quick question - I searched a lot, but couldn't find any existing implementation of kNN that uses cosine similarity instead of Euclidean distance in R.
Do you know if there is any package with ...

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### Best way to correlation coefficient foe nominal data similarity

I hope someone can help me on this one (PLEASE) :
I want to do similarity between some article features ( author, category, year, impact factor , citation)
And I dont have a clue how to do it for ...

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### How to optimize finding similarities?

I have a set of 30 000 documents represented by vectors of floats. All vectors have 100 elements. I can find similarity of two documents by comparing them using cosine measure between their vectors. ...

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### Why does scikit-learn's Nearest Neighbor doesn't seem to return proper cosine similarity distances?

I am trying to use scikit's Nearest Neighbor implementation to find the closest column vectors to a given column vector, out of a matrix of random values.
This code is supposed to find the nearest ...

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### how to do cosine similarity for google page rank results?

I have a mini project to do and i have to find the cosine similarity between 'N' google page rank results and reorder them. Is there a way to do it?

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### How do I measure the goodness of cosine similarity scores across different vector spaces?

I am a computer scientist working on a problem that requires some statistical measures, though (not being very well versed in statistics) I am not quite sure what statistics to use.
Overview:
I ...

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### Cosine Similarity [Python]

With the following code of my function which compute the cosine similarity of a query with a data:
def rank_retrieve(self, query):
"""
Given a query (a list of words), return a ...

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### Unable to Implement cosine similarity for simple k-means in JAVA for WEKA

I am pretty new to Java's WEKA API of ML.
Since there is no cosine similarity algorithm in weka , I thought of adding this algorithm to WEKA by modifying the simpleKmeans algorithm of WEKA.
The ...

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### Counting similarity of large texts set

I have a dataset of almost 30 000 texts. I want to find 10-20 the most similar texts for example using tf-idf and cosine similarity. Comparing each one with each one takes a lot of time. Is there a ...

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### cosine similarity lucene 4.6 and clustering

I have a collection of 3204 txt documents. I chose 57 of them as cluster leaders and now i want to find the followers of each leader. In order to get the followers I need to calculate cosine ...

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### Cosine similarity of two strings in the context of a larger document

I read this answer on cosine similarity of two strings. However, the vectors computed are the word frequencies just relative to each string. What if I have two strings, string1 and string2, and I want ...

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### Calculate cosine similarity of two matrices - Python

I have defined two matrices like following:
from scipy import linalg, mat, dot
a = mat([-0.711,0.730])
b = mat([-1.099,0.124])
Now, I want to calculate the cosine similarity of these two matrices. ...

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### Python - Cosine Similarity with Nested Dictionary Structure

I'm trying to perform a cosine similarity of the vector of food amounts between various students. I have a CSV file that contains:
Student food amount
John apple 15
John banana ...

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### Which algorithm/implementation for weighted similarity between users by their selected, distanced attributes?

Data Structure:
User has many Profiles
(Limit - no more than one of each profile type per user, no duplicates)
Profiles has many Attribute Values
(A user can have as many or few attribute ...

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### tm.package: findAssocs vs Cosine

I'm new here and my questions is of mathematical rather than programming nature where I would like to get a second opinion on whether my approach makes sense.
I was trying to find associations ...

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654 views

### K-means with cosine distance

I have to write program that cluster using k-means. I have TF-IDF and also cosine similarity that looks like that
1.00 0.17 0.46 0.40 0.89
0.17 1.00 0.83 0.60 0.58
0.46 ...

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### Document Similarity with Apache Mahout

I have two big csv files namely TRAIN.CSV and TEST.CSV. Each of them consists of 1 + 1000 say columns, where the first one is the doc id and the rest 1000 represent certain features as part of some ...

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346 views

### mapreduce way to calculate user similarity matrix

I have a list of many users (over 10 million) each of which is represented by a userid followed by 10 floating-point numbers indicating their preference. I would like to efficiently calculate the user ...

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### Neural networks - insignificant inputs

I'm working on a project, that involves machine learning, specifically classification.
The task is to identify a particular class or similar group of classes, that are most similar to the input.
In ...

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### Best way to find document similarity

I'm new to NLP, i want to find the similarity between the two documents
I googled and found that there are some ways to do it e.g.
Shingling, and find text resemblance
Cosine similarity or lucene
...

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### Clustering, but with conditions (in R)

I am doing some clustering of documents using cosine similarity between each document. This is fine. However my problem is a little strange in that I only want to cluster certain documents with ...

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279 views

### Categorical Features in Distance Matrix

I'm calculating the cosine similarity between two feature vectors and wondering if someone might have a neat solution to the below problem around categorical features.
Currently i have (example):
# ...

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### Add stop_words while performing TF-IFcosine similarity

I'm using sklearn to perform cosine similarity.
Is there a way to consider all the words starting with a capital letter as stop words?

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### Pairwise cosine similarity

I'm a little confused when I read this paper:Pairwise Document Similarity in Large Collections with MapReduce
http://www.umiacs.umd.edu/~jimmylin/publications/Elsayed_etal_ACL2008_short.pdf
In this ...

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### Measuring distance between vectors

I have a set of 300.000 or so vectors which I would like to compare in some way, and given one vector I want to be able to find the closest vector I have thought of three methods.
Simple Euclidian ...

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656 views

### How to efficiently retreive top K-similar vectors by cosine similarity using R?

I'm working on a high-dimensional problem (~4k terms) and would like to retrieve top k-similar (by cosine similarity) and can't afford to do a pair-wise calculation.
My training set is 6million x 4k ...