For questions related to collaborative filtering and recommendation systems.

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2
votes
2answers
125 views

Bottleneck in item-based collaborative filter using pandas data frames and nested for loops in Python

I have an input data set (in csv format) that consists of 100246 rows and 7 columns. It is movie-rating data taken from http://grouplens.org/datasets/movielens/. The head of my dataframe is: In [5]: ...
4
votes
1answer
97 views

Transform input data for ALS in pyspark

The input data I have for recommendation looks like: [(u'97990079', u'18_34', 2), (u'585853655', u'11_8', 1), (u'1398696913', u'6_20', 1), (u'612168869', u'7_16', 1), (u'2272846159', u'11_17', 2)]...
-1
votes
2answers
2k views

how can I make recommendation model using python's scikit-learn

I'm learning statistical learning these days using python's pandas and scikit-learn library and they're fantastic tools for me. I could have learned the way of classification, regression and also ...
0
votes
1answer
247 views

Mahout spark-itemsimilarity saveAsTextFile final stage is very slow

I'm using Mahout 0.11.0 on Spark 1.5.1 in YARN client mode on an HDP 2.2 cluster from the cli. My input is about 325Mb, partitioned into 1000 part files. Here's the exact command I invoke: $...
0
votes
0answers
15 views

Mahout slope one support

Im doing some research into mahout to see if it fits into my project. It came to my attention that slope one has been deprecated some time ago. And i cant really understand why. The changelog states ...
0
votes
0answers
72 views

How to integrate a recommendation system into an Android app?

I want to add a recommendation system (collaborative filtering in particular) into my Android application. I have already created the backend using django rest API. Now i'm not sure as to where ...
1
vote
0answers
62 views

User based Collaborative filtering in R for recommendation of items

I am dealing with a user-item matrix which has item data in it. The data is not numerical and not ordinal. Its purely categorical with no specific order. The items comprise of a vast list of > 8000 ...
0
votes
0answers
56 views

Is it possible to train ALS online(streaming)?

Thanks for your attention Is it possible to train ALS online(streaming)? For example, with batch mode, we have computed all user vectors and item vectors; when in online mode, when a user-item event ...
2
votes
1answer
260 views

Recommender System: Is it content-based filtering?

Can someone please help me clarify. I am currently using collaborative filtering (ALS) which returns a recommendation list with scores corresponding to the recommended items. In addition to this, I ...
0
votes
1answer
60 views

How to access MatrixFactorizationModel inside JavaRDD

I am trying to run a batch process to calculate the recommendations for all users. Right now running it on movielens dataset. I am trying to get the Rating[] of the recommendedProducts for user ...
3
votes
1answer
429 views

MLlib MatrixFactorizationModel recommendProducts(user, num) failing on some users

I trained a MatrixFactorizationModel model using ALS.train() and now using model.recommendProducts(user, num) to get the top recommended products, but the code fails on some users with the following ...
2
votes
0answers
69 views

How to predict users' preferences using item similarity?

I am thinking if I can predict if a user will like an item or not, given the similarities between items and the user's rating on items. I know the equation in collaborative filtering item-based ...
5
votes
1answer
154 views

Spark MLlib - Training collaborative filtering with implicit feedback - strange warnings

I am trying to build Collaborative filtering model on the user orders and getting some useful results with ALS.train() but I would like to try ALS.trianImplicit() but trianImplicit() is predicting ...
0
votes
1answer
74 views

Item recommendation service

I'm supposed to make book recommendation service using MyMediaLite. So far I have collected books from website using Nutch crawler and storing info into hbase. The problems is that I actually not ...
14
votes
0answers
517 views

Simple Python implementation of collaborative topic modeling?

I came across these 2 papers which combined collaborative filtering (Matrix factorization) and Topic modelling (LDA) to recommend users similar articles/posts based on topic terms of post/articles ...
0
votes
1answer
101 views

How to serialize apache spark's MatrixFactorizationModel in Java

I am building a recommendation system using Apache Spark MLlib and Java. Once the MatrixFactorizationModel is built, I have serialized it as a java object and when retrieving the model, I am getting ...
1
vote
0answers
54 views

Using Dense Training Data for Prediction on Sparse Testing Data for SVD yields poor performance

I am implementing collaborative filtering(like netflix) using SVD and I am encountering an issue where my training data is very dense relative to the testing set. The algorithm returns no ...
0
votes
0answers
70 views

Missing data Model - CPT

I would like to make a «deep» overview of Recommandation system dealing with missing data. During my research I found some papers talking about the «MM/CPT-v» and the «MM/logit-v» models (just two, i ...
0
votes
0answers
14 views

Map-reduce implementation for alternating lease square?

Seached Mahout document. There are examples for how to use the map-reduce version. However, no implmentation details on map-reduce version of ALS. Can anyone share some light on that? http://www....
1
vote
0answers
214 views

Spark ALS with Sparse Implicit Dataset

I am trying to run the MovieALS example from Spark with an implicit dataset and am receiving this error: Got 3856988 ratings from 144250 users on 378937 movies. Training: 3085522, test: 771466. 15/07/...
-1
votes
1answer
74 views

Evaluation of user-based collaborative filtering K-Nearest Neighbor Algorithm

I was trying to find evaluation mechanisms of collaborative K-Nearest neighbor algorithm, but i am confused how can I evaluate this algorithm. How can I be sure that the recommendation done by this ...
2
votes
1answer
319 views

Truncated SVD Collaborative Filtering

I'm trying to implement collaborative Filtering by using sklearn truncatedSVD method. However, I receive very high rmse and it is because I receive very low ratings for every recommendation. I ...
1
vote
1answer
92 views

Why is the evaluation of Mahout Recommender Systems with Movielens dataset so slow?

I have written a simple User-User recommender and evaluation code in mahout. The recommender works fine but as soon as I add the evaluation part it takes forever to get a result from "Movielens1m" ...
1
vote
1answer
126 views

Is it Item based or content based Collaborative filtering?

I am currently working on an existing system that recommends items that are similar to previous items that the user has liked. It uses Alternating least squares Collaborative Filtering to find ...
0
votes
1answer
448 views

How to train Matrix Factorization Model in Apache Spark MLlib's ALS Using Training, Test and Validation datasets

I want to implement Apache Spark's ALS machine learning algorithm. I found that best model should be chosen to get best results. I have split the training data into three sets Training, Validation and ...
2
votes
1answer
517 views

Which should I use to implement a collaborative filtering on top of Neo4j?

I'm working on a project (a social network) which use Neo4j (v1.9) as the underlying datastore and Spring Data Neo4j. I'm trying to add a tag system to the project and I'm searching for ways to ...
1
vote
1answer
218 views

collaborative filtering with implicit feedback , How to set preferences?

I have a dataset with only two fields itemId, productid, i would like to try mahout ALS or mllib for implicit feedback, is the best approach to create the preference column in the dataset with all 1's?...
11
votes
2answers
537 views

How to update Spark MatrixFactorizationModel for ALS

I build a simple recommendation system for the MovieLens DB inspired by https://databricks-training.s3.amazonaws.com/movie-recommendation-with-mllib.html. I also have problems with explicit training ...
3
votes
1answer
258 views

What is prediction function applied for Recommendations used Tanimoto Coefficient for Item-based CF

I'm constructing a recommender system which use Item-based collaborative filtering. But I have a problem with the predict function I don't know which function can be used when calculating similarities ...
1
vote
1answer
88 views

Can I Get Individual Session Data from Google Universal Analytics?

I'm trying to add recommender systems to an existing website. In particular, I'd like to implement item-item collaborative filtering, to figure out what pages users tend to visit in the same session--...
1
vote
1answer
160 views

RBM for collaborative filtering

My algorithm RBM for collaborative filtering will not converge... The idea of what I think RBM for collaborative filtering is initial w , b , c and random at [0,1] For By User clamp data -> visible ...
-1
votes
1answer
37 views

How is frequent itemsets compared with item-based collaborative filtering in recommender systems?

What is the difference between data mining approaches: frequent itemsets and item-based collaborative filtering in the area of recommender systems?
1
vote
1answer
167 views

Tanimoto Coefficient in mhout return only 1.0 as prediction value

I have tried to run mahout framework and use Tanimoto coefficient on set of items. Fortunately, it works with me, however, it returns value 1.0 for all predicted items, the code was as follow: ...
2
votes
1answer
281 views

Item-to-item Amazon collaborative filtering

I am trying to fully understand the item-to-item Amazon's algorithm to apply it to my system to recommend items the user might like, matching the previous items the user liked. So far I have read ...
0
votes
1answer
52 views

Recommendation based on Item History

I have a csv file/ table data in following format, UserId Item1 Item2 1 url1 url3 1 ...
1
vote
0answers
144 views

Should I implement Content-based Recommender from scratch or use Machine learning library like mahout?

I am new to apache mahout but i read one article which said Apache Mahout 1.0 gives content based recommendion (http://mahout.apache.org/users/algorithms/intro-cooccurrence-spark.html) but now it ...
4
votes
1answer
421 views

Spark MLLib Collaborative Filtering with new user

I'm trying out the Collaborative Filtering algorithm implemented in Spark and am running into the following issue: Suppose I train a model with the following data: u1|p1|3 u1|p2|3 u2|p1|2 u2|p2|3 ...
4
votes
1answer
678 views

Apache Spark ALS Recommendation

I've ran a little ALS recommender system program as found on the Apache Spark website which utilises Mllib. When using a dataset with ratings of 1-5 (I've used the MovieLens dataset) it gives ...
0
votes
1answer
159 views

use Lenskit to predicate the book rating

I have a "csv " file which contains the user id, the book he/she has read, the rating for each book. I want to use Lenskit to predict a book rating for a user. For example, the user A has read 3 ...
1
vote
2answers
272 views

evaluating the performance of item-based collaborative filtering for binary (yes/no) product recommendations

I'm attempting to write some code for item based collaborative filtering for product recommendations. The input has buyers as rows and products as columns, with a simple 0/1 flag to indicate whether ...
0
votes
1answer
68 views

Design Pattern for a recommendation engine

The requirement is to design a solution for a product where we parameterize objects based on relevance on different factors. For Example, let us say we have a list of activities. Each activity ...
0
votes
1answer
132 views

Matrix factorization based recommendation for like/dislike/unknown data

Most literature focus on either explicit rating data or implicit (like/unknown) data. Are there any good publications to handle like/dislike/unknown data? That is, in the data matrix there are three ...
1
vote
0answers
85 views

Can item-based collaborative filtering in mahout be evaluated at different neighborhoods?

In user-based collaborative filtering with mahout, we can use such code to evaluate the results at different neighborhoods size GenericUserBasedRecommender recommender = new ...
0
votes
1answer
506 views

How to use Apache Spark ALS (alternating-least-squares) algorithm with limited Rating values

I am trying to use ALS, but currently my data is limited to information about what user bought. So I was trying to fill ALS from Apache Spark with Ratings equal 1 (one) when user X bought item Y (and ...
1
vote
1answer
112 views

Not a single recommendation available with Apache Mahout

I have tested the user based recommendations with apache mahout and it is working well with the sample data provided. However, I have my own data but I am not able to get a single recommendation. I ...
0
votes
1answer
112 views

Recomending things to do with Neo4j

I am developing a simple social network with Java and Neo4j. Users are able to submit the things they have already done and tag them with some tags. Also users can add some interests (which are tags,...
1
vote
3answers
459 views

MLlib collaborative filtering to generate Top N recommendations

I was looking to find out a way to generate top n recommendations for all users using MLlib's ALS matrix factorization, but remained unsuccessful. Can anybody tell me does any such method exist?
0
votes
0answers
358 views

Implementation of Collaborative Filtering in python

I am student of Post graduation. I am doing research on Collaborative Recommendation System. My main focus is to implement item-based and user-based algorithms in python for product dataset. I had ...
9
votes
3answers
2k views

How to set preferences for ALS implicit feedback in Collaborative Filtering?

I am trying to use Spark MLib ALS with implicit feedback for collaborative filtering. Input data has only two fields userId and productId. I have no product ratings, just info on what products users ...
0
votes
1answer
304 views

How to split train/test of extreme sparse dataset of recommender system?

I'm using CF algorithm(SVD) on a real world data set. Now I meet a problem about the data sparse problem. That means the sparsity of the user/item rating matrix is around 0.01%. I split the data into ...