Cosine similarity is a measure of similarity between two vectors of an inner product space that measures the cosine of the angle between them. It is a popular similarity measure between two vectors because it is calculated as a normalized dot product between the two vectors, which can be calculated ...

learn more… | top users | synonyms

-4
votes
0answers
17 views

How to get cosine similarity using Apache Spark

I am new Spark. I want to compute cosine similarity between a file file_a.doc and all of the files in a folder. I don't know the way to get them. Can you help me?
1
vote
1answer
23 views

is it possible in content based recommendation

I was exploring about content based algorithm,so i learnt about that content based algorithms works on to calculate similarity between item and user like "pandora" is going on. So my requirement is ...
1
vote
1answer
22 views

TF-IDF vector contents when computing cosine similarity for document search

Say you're trying to find the most similar document in a corpus to a given search query. I've seen some examples create TF-IDF vectors that are the length of the given query, and some create TF-IDF ...
0
votes
1answer
20 views

Quickly compare cosine similarity of query with documents in a corpus

I'm curious as to how companies generally compute the cosine similarity quickly among an entire corpus. As an example, if someone searched for the terms "funny cats", and there are 100,000 documents ...
-1
votes
0answers
34 views

Hadoop connection java code with cosine similarity

How can I make a connection with the following code Hadoop Java code public class CosineSimilarity { /** * Method to calculate cosine similarity between two documents. * @param ...
0
votes
1answer
18 views

Cosines similarity on large data sets

Currently i'm studying about data-mining, text comparison and have found this one: https://en.wikipedia.org/wiki/Cosine_similarity. Since i have successfully implemented this algorithm to compare two ...
0
votes
0answers
7 views

Average in Adjusted cosine Similarity

what is the denominator in average rating of a user in Adjusted cosine similarity? (Item Based Collaborative Filtering) Is it number all Items in system?? Or Just number of rated items by user?? and ...
3
votes
2answers
58 views

How do I calculate the shortest path (geodesic) distance between two adjectives in WordNet using Python NLTK?

Computing the semantic similarity between two synsets in WordNet can be easily done with several built-in similarity measures, such as: synset1.path_similarity(synset2) ...
0
votes
0answers
13 views

Using R for calculating Text Coherence for 4 documents based on Corpus

I'm trying to test the coherence for some messages I wrote for an experiment. I should have coherent and incoherent messages to show to subjects. I need to test that based on EN_100K corpus that has ...
0
votes
0answers
47 views

cosine similarity measure c#

I have to calculate cosine similarity measure between different documents and queries. private static double[,] getContent() { List<List<string>> documents = new ...
0
votes
0answers
39 views

how to measure cosine similarity in multiple docs and queries

Here is my code for cosine similarity calculation between query and documents. I want to measure the cosine similarity between multiple documents and multiple queries stored in a string array. Then ...
0
votes
0answers
26 views

How do we ignore the order of letters in calculating Levenshtein distance?

This question is not new and i have seen some form of explanation here and here. Both methods described performing N grams (bigrams mostly) calculations on the terms of query 1 and query 2 and then ...
0
votes
0answers
13 views

python: issuse while encoding ,decoding arabic language in terminal

in my script Cosine similarity need first, to convert arabic string into vector before perform Cosine simmilarity on terminal under linux --> problem while convert arabic string to vector producing ...
0
votes
0answers
33 views

Both people rated a product with 0 star

If we have: User 1, rated product A with 0 star. User 2, rated product A with 0 star. What is the Pearson's correlation coefficient or Cosine Similarity between them? According to the formula, it ...
0
votes
1answer
48 views

Finding similarity between two user profiles

I have user profiles with the following attributes. U={age,sex,country,race} What is the best way to find similarity between two users? for example I have following 2 users. u1={25,M,USA,White} ...
0
votes
1answer
40 views

Hierarchical Clustering with cosine similarity metric in fcluster package

I use scipy.cluster.hierarchy to do a hierarchical clustering on a set of points using "cosine" similarity metric. As an example, I have: import scipy.cluster.hierarchy as hac import ...
0
votes
0answers
52 views

Cosine Similarity in SQL

I have tried coding Cosine Similarity between two strings using Java and it worked. How to write PL/SQL script to calculate Cosine Similarity between two strings?
0
votes
1answer
90 views

Right way to compute cosine similarity between two arrays?

I am working on a project that detects some features of two input images(handwritten signatures) and compares those two features using cosine similarity. Here When I mean two input images, one is an ...
2
votes
5answers
100 views

Using k-means for document clustering, should clustering be on cosine similarity or on term vectors?

Apologies if the answer to this is obvious, please be kind, this is my first time on here :-) I would gratefully appreciate if someone could give me a steer on the appropriate input data structure ...
0
votes
1answer
71 views

Cosine similarity calculation between two matrices

I have a code to calculate cosine similarity between two matrices: def cos_cdist_1(matrix, vector): v = vector.reshape(1, -1) return sp.distance.cdist(matrix, v, 'cosine').reshape(-1) def ...
1
vote
1answer
187 views

word2vec, sum or average word embeddings?

I'm using word2vec to represent a small phrase (3 to 4 words) as a unique vector, either by adding each individual word embedding or by calculating the average of word embeddings. From the ...
0
votes
2answers
123 views

use values(features) in a vector to calculate cosine similarity for opencv

I am recently working on a project where in I have extracted some features regarding an image, and want to find if there are any similarities between two images using those features. Here are the ...
-1
votes
1answer
47 views

Memory issue sklearn pairwise_distances calculation

I have a large data frame where its index is movie_id and column headers represent tag_id. Each row is represent movie to tag relevance 639755209030196 691838465332800 \ ...
1
vote
1answer
228 views

Spark Cosine Similarity (DIMSUM algorithm ) sparse input file

I was wondering whether it would be possible for Spark Cosine Similarity to work with Sparse input data? I have seen examples wherein the input consists of lines of space-separated features of the ...
0
votes
0answers
38 views

Python: check cosine similarity between mongoDB database documents

I am using python. Now I have a mongoDB database collection, in which all documents have such a format: {"_id":ObjectId("53590a43dc17421e9db46a31"), "latlng": {"type" : "Polygon", ...
0
votes
1answer
37 views

Euclidean vs Cosine for text data

IF I use tf-idf feature representation (or just document length normalization), then is euclidean distance and (1 - cosine similarity) basically the same? All text books I have read and other forums, ...
0
votes
1answer
41 views

Vector Space Model Introduction

What are different types of VSM (vector space model)? One which I know (as per wiki) is tf-idf (cosine similarity is used in this method, but its not a separate method). Which are other ways? Also ...
0
votes
0answers
24 views

How check cosine similarity of 2 truncated SVD matrices?

2 word by document matrices are represented as A and B in the binary from where 1 represents the presence of particular word, 0 represents the absence. Using singular value decomposition (SVD) method, ...
1
vote
1answer
142 views

Mahout: adjusted cosine similarity for item based recommender

For an assignment I'm supposed to test different types of recommenders, which I have to implement first. I've been looking around for a good library to do that (I had thought about Weka at first) and ...
1
vote
2answers
106 views

cosine similarity document distance

I'm given two documents and I am asked to compute the frequency of the occurrence of each word in the documents. For example in doc1 and doc2 the word "CAT" appeared twice in each, then it appeared 4 ...
0
votes
1answer
55 views

Create concept vector from ontology

I have a set of documents pertaining to a domain. The data in those documents can be conceptually mapped to a domain ontology. I need to find similarity scores between those docs. In literature, many ...
1
vote
1answer
123 views

Calculating cosine similarity

I am trying to apply a Java class for measuring cosine similarity between two documents with different length. The code for the class that is responsible to calculate this code is as following: ...
0
votes
2answers
96 views

How to Parallelized scipy cosine similarity calculation

I have generate a large data frame by reading large number of files in a directory. I have managed to parallelize that section that read files in parse. I take that data and generate the data frame ...
0
votes
1answer
123 views

Calculating similarity between rows of pandas dataframe

Goal is to identify top 10 similar rows for each row in dataframe. I start with following dictionary: import pandas as pd import numpy as np from scipy.spatial.distance import cosine d = {'0001': ...
1
vote
1answer
184 views

python: How to calculate the cosine similarity of two lists?

I want to calculate the cosine similarity of two lists like following: A = [u'home (private)', u'bank', u'bank', u'building(condo/apartment)','factory'] B = [u'home (private)', u'school', u'bank', ...
-2
votes
1answer
74 views

Cosine Similarity in Java

I want to calculate the similarity in rows of a matrix such as D, but the results are not correct!! What is the problem of my codes? In calculating the similarity of rows in matrix U, i did as below.. ...
-2
votes
2answers
141 views

is this the right approach to calculate cosine similarity?

If you guys can please review if the following approach (pseudo-code) is good to go to calcualte cosine similarity between 2 vectors: var vectorA = [2,5,7,8]; var referenceVector= [1,1,1,1]; //Apply ...
0
votes
0answers
151 views

Python: Cosine Similarity between different size of NumPy arrays

I have a dictionary that has keys representing item_ids. Values of the dictionary is numpy array as follows: Prior to converting to dictionary data was in following format. item_id tag_id_1, ...
0
votes
2answers
164 views

Get indices of results from scipy.pdist(myArray,metric=“jaccard”) to map back to original array?

I am trying to calculate jaccard similarity y= 1 - scipy.spatial.distance.pdist(X,metric="jaccard") X is a m x n matrix and I get a 1-D array of size m choose 2 as a result of this function. How ...
2
votes
0answers
85 views

Sparse vector dot product with mongo aggregate

I am having documents with an attached sparse vector like this: { "_id" : ObjectId "vec" : [ { "dim" : 1, "weight" : 8 }, { "dim" : 3, "weight" : 3 ...
0
votes
0answers
153 views

Writing own distance function for weka

I want to write own distance function(similarity distance) for ibk classifier in weka api. I have serached about this and found that it can be done with NormalizableDistance class. So I have wrote my ...
1
vote
1answer
122 views

Extrapolate Sentence Similarity Given Word Similarities

Assuming that I have a word similarity score for each pair of words in two sentences, what is a decent approach to determining the overall sentence similarity from those scores? The word scores are ...
0
votes
1answer
37 views

Type Error when Comparing Two Dictionaries Using Cosine Similarity in Python

I have received a type error while comparing two dictionaries using the cosine similarity. I have tried to search around but still not able to solve it, and would really appreciate if anyone could ...
1
vote
1answer
81 views

Vectorizing LIst of Unique Words into 0 or 1 using Python

I am quite new into Python, and recently have to do on some text processing to do a cosine similarity between two text. I have currently be able to do on the basic pre-processing on the text such as ...
2
votes
0answers
122 views

Amplifying a locality sensitive hash

I'm trying to build a cosine locality sensitive hash so I can find candidate similar pairs of items without having to compare every possible pair. I have it basically working, but most of the pairs ...
0
votes
4answers
115 views

Cosine-similarity performance in Java 15 times slower than equivalent C?

I have two functions, each of which calculates the cosine similarity of two different vectors. One is written in Java, and one in C. In both cases I am declaring two 200 element arrays inline, and ...
0
votes
0answers
41 views

convert cosine similarity to their respective strings

I am doing a clustering based on cosine similarity of many string sentences. for example the cosine similarity of string a & string b is close to string c & string b. The clustering method ...
0
votes
1answer
594 views

Calculating tf-idf among documents using python 2.7

I have a scenario where i have retreived information/raw data from the internet and placed them into their respective json or .txt files. From there on i would like to calculate the frequecies of ...
0
votes
1answer
251 views

What's the difference between Pearson correlation similarity and adjust cosine similarity?

While they are very similar, I am sure there is some difference between Pearson correlation similarity and adjust cosine similarity, because all the papers and web pages divide them into two different ...
1
vote
1answer
31 views

How to create a dictionary of dictionary with these functions?

I have a dictionary like this: dict = {in : [0.01, -0.07, 0.09, -0.02], and : [0.2, 0.3, 0.5, 0.6], to : [0.87, 0.98, 0.54, 0.4]} I want to calculate the cosine similarity between each word for ...