Questions tagged [recommender-systems]

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Install PredictionIO on firebase

Is it possible to install predictionIO (https://predictionio.apache.org/) on firebase? Are there any other cloud providers where I can install it?
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1answer
44 views

Find and visualize best and worst items using boxplot

I am a dataset of jokes Dataset 2 (jester_dataset_2.zip) from the Jester project and I would like to divide the jokes into groups of jokes with similar rating and visualize the results appropriately. ...
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1answer
16 views

How can I generate users to user recommandation via LightFM python package?

I'm creating a dataset by following codes : from lightfm.data import Dataset from lightfm import LightFM dataset = Dataset() dataset.fit((row['id'] for row in user_queryset.values()), (...
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8 views

Trouble Applying LDA on dataset for recommendation

I am a beginer in python programming and facing issues while try to apply LDA(latent dirichlet allocation) on dataset in python. the dataset contains information about journal papers and i am applying ...
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9 views

Memory-based Collaborative Filtering - Performance Issue

I am new to recommender systems. I have been studying and implementing memory-based CF. I have 600 users. I calculate similarity of all users with the active user. The problem is, when I try to ...
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12 views

Collaborative Filtering, run time approach for large data

I have a large data set. Almost 300,000 users and 30 million rows. What would be the best approach to handle user-user filtering at run time? Iterating user by user, is very slow, during run time and ...
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21 views

How to create a dataset from database values for recommendation system

<?php $books = array( "akshay" => array("the noble wilds" => 2.5, "the god delusion" => 3.5, "tweak" => 3, "the shack" => 4, "the birds ...
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8 views

how to make time stamps for fake profiles in movie lens dataset?

i want to implement a paper about detecting shilling attacks.and for making this happen, i should inject some fake profile to the data set with this style : [user_id item_id rating timestamp] ...
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60 views

Recommenderlab: Receiving Duplicate Predictions for Multiple Users

I am using Recommenderlab in R to build a recommendation system to provide craft-beer suggestions to new users. However, upon running the model, I am receiving the same predictions per user for a ...
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20 views

LightFM: User/Item Feature Engineering for Collaborative Filtering (Incomplete Features/Multiple Entries)

I'm trying to build basic BPR and WARP baselines for an implicit feedback ranking model and I'm currently a little stuck on feature engineering and had a few questions about how LightFM processes the ...
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36 views

parallelising cosine similarity in python

I want to parallelize cosine similarity calculation in python, which is involving the same matrix. I want to run it in 4 threads. from sklearn.feature_extraction.text import CountVectorizer ...
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9 views

How to pass pre-train User/Item embedding in LightFM?

Is there any way to pass a pre-train Item Embedding into the lightFM?
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19 views

(MovieLens) - how to recommend new / less popular movies first?

So I'm learning recommender systems and I've built something using this guide. It works well but I'm using a different dataset similar to the movielens one. Problem is that my dataset is using real ...
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2answers
66 views

Matching people based on interests

following problem: matching users based on a compatibility score through data provided by filling out a profile indicating personality, lifestyle, interests etc. Each of the attributes are tags (e.g. ...
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0answers
54 views

Mean average precision (mAP) metric keras

I'm training a keras model that takes item embeddings as pairs and outputs a binary classification (close to word2vec). I need to find the mAP of the model for the recommender system after each epoch ...
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1answer
18 views

Any recommender engine, technique for a “Suggested Topics” block? [closed]

I am planning to do a "Suggested Topics" block behind topics on my web forum and now I am looking for advice on this. Which recommender engine or techniques do I need to use for this task? I ...
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21 views

Recommenderlab: How to create the matrix of estimated missing ratings along with existing ones?

I am fairly new to recommender systems so any help would be greatly appreciated. I have a matrix of users and product scores as follow: item i1 i2 i3 ... user u1 0.1 NA NA u2 2.6 ...
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90 views

Why netlib-java native blas/lapack libraries doesn't give performance improvement?

I am using this piece of code to calculate spark recommendations: SparkSession spark = SparkSession .builder() .appName("SomeAppName") .config("spark.master", "...
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1answer
25 views

How can I set start point for ALS recommender in spark mlib?

I am using this code to get ALS recommendations: SparkSession spark = SparkSession .builder() .appName("SomeAppName") .config("spark.master", "local") .getOrCreate(); ...
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22 views

Recommender system by history of interactions

I have read and tried a lot, but still stuck with solution to my problem (though I think it should be relatively not that difficult and something is sure to be implemented before). Basically, I want ...
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15 views

precision and recall in recommendation systems

I have designed a recommendation system and encountered a question in the evaluation process. In top 1 recommendation, both of precision and recall increase and in top 3 recommendation inversly ...
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1answer
24 views

Change structure of csv in python for turicreate recommender system

I want to ask about my problem. I want to create a recommender system in python. I already create a latent function matrix and stored it in csv that contain data like this: index 1 2 ...
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11 views

Avoiding automatic row/column deletion in SciPy sparse matrix representation

Basically I am trying k-folds cross validation in Python (even though the example I am currently developing is just validation). I have a sparse matrix urm_all (more than 99% sparsity) which I am ...
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1answer
26 views

How neural networks are used in collaborative filtering

I am just a begineer to neural network. Can some one suggest how neural networks are used in collaborative filtering, i mean by using userid and itemid how can neural network, put weights to the id ...
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11 views

Speed up funkSVD{recommenderlab} when matrix is large

I am using the function funkSVD from the recommenderlab package in R to decompose my matrix (dimension 310587 x 1032; 99.66255% NAs) to ultimately approximate the missing values of it (as comparison ...
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1answer
18 views

Is testing collaborative filtering technique on randomly generated user-item rating matrix meaningful?

I know that some data sets are available to run collaborative filtering algorithms such as user-based or item-based filtering. However I need to test an algorithm on many data sets to prove that my ...
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1answer
23 views

How does Google's Files Go give suggestions about data present on my phone

I use Google Files Go and it suggests me about clearing memes in my phone and also gives other suggestions on the basis of data present on my phone. How does Google do it? Are they constantly ...
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93 views

How can I use ndcg_score?

I need to use sklearn.metrics.ndcg_score(y_true, y_score, k=5), but I dont know what is y_true, y_score and k. I read the documentation and I dont understand how to use. The documentation: ...
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1answer
95 views

Training a neural network without historical data

I am building a highly personalised recommender system from scratch where I have no historical data for the interactions between users and items. Nevertheless, a user when added to the system must ...
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1answer
72 views

WALS Model Tensorflow - Get recommendations for new user

I wonder if there is any way I can get recommendations for a new user, using an already trained WALS model, and given the list of items the user liked. Currently, to get a recommendation you must ...
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2answers
194 views

How to convert string to double in C#

In the following code , rating in generating error string[] allLines = File.ReadAllLines(@"Ratings.csv"); var parsed = from line in allLines let row = line.Split(';') ...
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1answer
33 views

Python - Returning Product with most similar set of tags

There are 5000 products, each product has a set of tags like 'math', 'grade6', 'ipad', 'esl'... and in total there are about 200 unique tags. The data looks like : df = pd.DataFrame({'tool_id': [1,2,...
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0answers
18 views

Is it possible content-based recommender with composite item similarity object?

I want to use the Mahout as the recommender system. In my project, there are contents, tags,reactions. User share a content after tagged and other users can read the content and give reactions. I ...
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1answer
50 views

Basic filtering of data based on user & item in Python SciKit

I am trying to implement a recommender system to users based on their rating. I think the most common one. I was reading alot and shortlisted Surprise, a python-scikit based recommender systems. ...
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1answer
34 views

Vector coefficients based on similarity

I've been looking for a solution to create a recommendation system based on vectors similarity. Basically, i have a few vectors per user for example: User1: [0,3,7,8,5] , [3,5,8,2,4] , [1,5,3,9,4] ...
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121 views

How to create item-item and user-user matrix for collaborative filtering in Microsoft Excel?

I want to understand item-item and user-user matrixes for collaborative filtering and how it is different from Content-Based filtering. Item-User: User1 User2 ... UserN Movie1 0 1 ... ...
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68 views

libFM: can't load/save model

I've built libFM.exe on cygwin, but save_model/load_model doesn't seem to work: $ ./libFM.exe -task r -method als -train data.libfm1 -test test.libfm1 -iter 100 -dim ‘5,5,10’ -load_model mod -...
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Strange behavior of loss function in an implementation of TensorFlow matrix factorization model for recommendation system

Current implementation of recommendation system use TF 1.8 and WALS algorithm. The model was trained using self.fit(input_fn=input_fn) and ML Engine with run time version 1.8. Data set was formed ...
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1answer
26 views

Python dictionary reading error when using index operators

Initially, I tried reading my dataset into a dictionary with open("msong.csv") as f: reader = csv.DictReader(f) data = [r for r in reader] dictionary contains data something like this: [{'': '0', ...
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Why is not “evaluate() method of Recommender” be completed in Turi Create?

I'm trying to test a Turi Create Project. My jupyter notebook browser screen and Python code is as below. In [1]: import turicreate as tc In [2]: data = tc.SFrame("data.csv") In [3]: train, test = ...
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1answer
17 views

Location coordinates representation

What is the best way to represent longitude and latitude when calculating the similarities between items? Basically, I'm trying to do cosine similarity between multiple items. In addition to the ...
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23 views

How to find the distribution probability in user's chech-ins?

I read a paper that mentioned the user's check-in behavior follow a power-law distribution. I want to know how to I can calculate a user's check-in behavior? This is the figure of probability and ...
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20 views

speed optimization for top_n recommendation

I build a class to compute cosine similarity on an anime embeddings layer it works but i take a while, around 2min for 5 users, i had more than 10k users so i would like to speed up my code this is ...
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1answer
30 views

Handling Error for Continuous Features in a Content-Based Filtering Recommender System

I've got a content-based recommender that works... fine. I was fairly certain it was the right approach to take for this problem (matching established "users" with "items" that are virtually always ...
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29 views

Graph Entropy Calculation

I`m trying to do a recommender based on a graph. Each node represents an academic paper and each link A->B means paper A cited paper B. The parent node in the graph is the paper of interest (the input)...
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11 views

Determining if the difference between two RMSE values is significant

I'm evaluating two regressors in recommender systems in 4 very large datasets and their difference in terms of RMSE is very small as presented on the picture. RMSE values I've performed a 10 fold ...
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67 views

How to build a User Profile in Recommendation Systems?

I am building a recommendation system using tf-idf technique and cosine similarity. So far I am already recommending items given an item information. My concern is more about the learning part. I know ...
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1answer
307 views

Error in sample.int(length(x), size, replace, prob) : invalid 'size' argument ; when i using evaluationScheme

I would like to evaluate my model with the function of the package Recommenderlab scheme <- evaluationScheme(UserByProductRRM, method = "cross-validation", k = 10, given =-1 , goodRating = 4) ...
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Slope One algorithm Recommender systems

From my understanding Slope One uses a linear relation f(x) = x + b between users that rate same items. However I don't understand how does it works when there are multiple items and users involved in ...
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1answer
76 views

Sparsity reduction

I have to factorize a big sparse matrix ( 6.5mln rows representing users* 6.5mln columns representing items) to find users and items latent vectors. I chose the als algorithm in spark framework(...