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Questions tagged [recommendation-engine]

For questions relating to recommendation engines, collaborative filtering, and personalization. Questions tend to be algorithmic or statistical in nature.

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22 views

Comparing LSTM structure

I'm trying to build an LSTM model according to that picture. I'm a beginner in deep learning particulary WITH RNN structure, so i require your advice to lead me so, for that i'm dealing with a ...
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0answers
14 views

Is suggesting a choice from a set of choices a machine learning issue

I am researching on a problem statement wherein I have a help a person make a choice from a list of options based on his past selections from similar set of items. One important thing to note is that ...
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41 views

Interactive prediction system

Lets say I have unlabeled documents, each document describing an object. I want to build an interactive question based prediction system where at the beginning the user will write his preferences then ...
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42 views

Making machine learning predictions for individual users

Currently a student, I am fairly new to machine learning. I am developing a classification model in python which has ratings history of a 100 users for a specific movie, I have a total of 20,000 rows. ...
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0answers
29 views

Recommender systems based on user demographics

I am trying to build a recommendation system in Python based on user info: age and gender. To do so I collected users' ratings on items. Now I try to recommend those items for both new and old users, ...
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0answers
9 views

Recommendation system using association rules mining [closed]

Is there any source which explains how can I build a (music) recommendation system using association rules mining ? I am not even sure if it is possible to do that, or if it is required to combine ...
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1answer
13 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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0answers
20 views

Difference between Content based and item-item collaborative filtering

I am finding it difficult to understand the difference between the above mentioned algorithms for recommendation engine. The logic behind them looks all the same. I searched around over the internet ...
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0answers
9 views

User's video watch history Dataset to build video Recommendation system

How can I get the dataset of user's watch history and list of users? I want to build a video recommendation system like youtube. So for that purpose, I need the list of users and their watch history. ...
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27 views

Use pre trained word embedding for ranking documents

I have used text2vec to create word embedding from a set of documents. I am looking for a mechanism, where based on any input string given by a user, I can rank a set of documents based on their ...
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2answers
41 views

dataframe overridden within for-loop in r

I have dataset containing million observations from dataset i'm taking 10000 observations. Here is link to dataset file: dataset file link itemRatingData = itemRatingData[1:10000,] #V2 is user ID, V1 ...
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0answers
16 views

Recommended System, error --> 'index 131012 is out of bounds for axis 1 with size 9066'?

I am building a recommended system in python, but when I try to build a user-item matrix, I am getting the index out of bound error. I saw a couple of tutorials and also searched for questions ...
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16 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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23 views

Recommender Systems Features Engineering

I've already done a model Item-Item Based Collaborative Filtering. I want to include some User Features. Since I only have interactions between items and users, and no information about items. ...
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1answer
29 views

Collaborative Filtering adding new users and items

I'm working on building a recommendation engine for movies and have read a lot of good information that's out there. One thing I never see mentioned is how to make recommendations for new users and ...
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0answers
12 views

What is the difference between decision support system and recommendation system?

What exactly is the difference between decision support system and recommendation system?
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0answers
9 views

how to put sequence of ids to DNNLinearCombinedClassifier?

Youtube released a paper about recommendation in 2016, in which they convert watched video ids to embedding vectors and then feed into the DNN model. I'm now working on the ranking in my ...
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0answers
18 views

How to build a movie recommendation system using Azure ML based on many features?

The Train Matchbox Recommendation model on Azure ML Studio requires the triples user-item-rating, the rating of a customer for a movie, for example. But in fact, I need use many features from user or ...
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0answers
19 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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0answers
15 views

pio train : Failing with an Exceoption

I'm trying to build a simple recommendation engine using PredictionIo's similar product template from the following article. After importing sample data and building the app as described in the ...
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0answers
12 views

Recommending users to other users using PredictionIo

I'm getting started with PredictionIo. Most of the examples listed over the web is generally about recommending an item to an user. In my case the item is user itself. I was looking into the Engine ...
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0answers
17 views

Interpreting Output from sess.run in tensorflow

I have two chunks of code below that come from the repo https://github.com/kang205/DVBPR. This is a python implementation of the paper:  Visually-Aware Fashion Recommendation and Design with ...
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1answer
41 views

Recommendation system to recommend similar companies

I am trying to build a recommendation system based on which industries they belong and what kind of work they do. eg. Microsoft, Apple and Google should show similar results, Tesla, General Motors, ...
2
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1answer
236 views

Converting Pandas DataFrame to sparse matrix

Here is my code: data=pd.get_dummies(data['movie_id']).groupby(data['user_id']).apply(max) df=pd.DataFrame(data) replace=df.replace(0,np.NaN) t=replace.fillna(-1) sparse=sp.csr_matrix(t.values) ...
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32 views

Collaborative Filtering: How to find correlation using multiple variable

I am working in anaconda/python and I have a datase which contains userId ,itemId and 2 more attribute and timestamp for purchase. UserId ItemId attr1 attr2 timestamp u1 i2 1....
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1answer
44 views

Predict Multiple Output using Apriori Algorithm in R

Currently I am working on item-item based recommendation system using r. The package which I have used is arules. I have done my basic models but I want to modify my model with following criteria: In ...
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0answers
9 views

How to deduplicate document embeddings in TF based on cosine distance

I have a Machine Learning model in TensorFlow trained to produce personalized news recommendation to our users and I would like to deduplicate the candidate content based on the cosine distance ...
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2answers
74 views

Pycharm: cannot import lightfm

I tried to load the movie_lens dataset using the code below from lightfm.datasets import fetch_movielens running this i am getting: ImportError: No module named 'lightfm.datasets'; 'lightfm' is not ...
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0answers
20 views

comparing SVD and simple collaborative filtering in python

I tried building a collaborative filtering recommendation engine, but i have too much data for it to work. my data looks like this: user_id Game Score 754321 1 0.6 4564123 1 ...
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1answer
24 views

Beginner Recommendation System

I am a student working on a project in school which includes a recommendation engine module. We are working with ReactJS for now and using a MongoDB database. Our database contains of industries and ...
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0answers
29 views

Give boost score within Django query set that matches a given list of ids

Given a set of ids, class Article(model.Model): hotness = FloatField() content = TextField() created = DateField() @property def calculate_hotness(self): return (self....
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0answers
25 views

movielense popularity recommender code with R

I'm now studying R, and now doing project about movie recommend algorithm. I used movielense 100k data with recommenderlab library, and use these tutorials. https://mitxpro.mit.edu/asset-v1%...
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1answer
21 views

Multi crtieria alterative ranking based on mixed data types

I am building a recommender system which does Multi Criteria based ranking of car alternatives. I just need to do ranking of the alternatives in a meaningful way. I have ways of asking user questions ...
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2answers
37 views

Training data and get the weight for each feature

We are developing a recommendation system, and I get the problem of the attrs may be vectors themselves. So, for now, the company already have a function to list the recommendation list to users, but ...
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0answers
25 views

Spark MLlib Tuning Recommender System

I am working on recommender system with apache spark ALS and I have this code below and want to get the best(lowest) RMSE value for my model val Array(training, test) = review.randomSplit(Array(0.8, ...
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29 views

Recommender system with json data

I have data for recommender system in JSON format. What would be the right approach to handle this data? Should I convert it to a matrix (it would be huge: 10 000 x much larger number) and apply some ...
0
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1answer
29 views

similarity between vectors of vectors

We are in the context of recommendations, where we want to recommend users to other users. Each user is represented as a vector with various attributes u=[a1, a2, a3]. Some of these attrs may be ...
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22 views

How to calculate overall implicit feedback for collaborative filtering

There is information about 'time spending', 'count of watched series', and courselike(when course likes to the user he click like button there is not dislike ) in my elearning dataset. I read ...
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0answers
47 views

Cope with coordination deprecation from Elasticsearch 6.0

I have a recommendation system built on top of Elasticsearch. All documents are stored on a single index with the following structure {"client":"string", "id": "string", "tags":["string"]} and my ...
9
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2answers
206 views

Appending pandas DataFrame with MultiIndex with data containing new labels, but preserving the integer positions of the old MultiIndex

Base scenario For a recommendation service I am training a matrix factorization model (LightFM) on a set of user-item interactions. For the matrix factorization model to yield the best results, I ...
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0answers
25 views

Re-train Spark MLlib Recommendation Model [duplicate]

I want to make a recommendation system that works real-time or every 30 seconds for our users based on user's rating data, product view counts and etc the problem is, I don't want to query all data ...
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1answer
78 views

Spark ALS gives the same output

There is a need to create a little bit ensemble of Pyspark ALS Recommender Systems when I found that The factor matrices in ALS are initialized randomly firstly, so different runs will give slightly ...
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1answer
43 views

Recommandations with SVD

I'm actually in an intern ship at LIRIS (Computer Science Research Laboratory) and I work on recommender systems. My intern ship supervisor asks me to make a presentation about recommending movies ...
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1answer
26 views

How to design a recommendation system for shift swapping?

I need to design an algorithm such that it handles the request for shift swapping and recommends a list of people who are more likely to swap that shift with the person by analyzing previous data. Can ...
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0answers
67 views

LightFM recommendation: Inconsistent error with interaction data

I have the following basic code with the LightFM recommendation module: # Interactions A=[0,1,2,3,4,4] # users B=[0,0,1,2,2,3] # items C=[1,1,1,1,1,1] # weights matrix = sparse.coo_matrix((C,(A,B)),...
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0answers
21 views

incremental training predictionio universal recommender

I need to delete old events from the eventserver because the I am running out of disk space but I don't want to lose the history in the model. Is there a way of doing incremental training using the ...
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0answers
45 views

Why ALS.trainImplicit gives different RMSE on same data with same seed

I split RDD with Ratings by 80/20 and then pass train part to trainImplicit, and validation part to calculate RMSE. Here is params of training: model = ALS.trainImplicit(training, rank=25, ...
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0answers
12 views

Error in joining the row in dataset on python. data.write(','.join(row))

Creating a file data.csv before reading it then reading all the files(4 .txt files) in the netflix dataset and store them in one big file ('data.csv'). I'm reading from each of the four files ...
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1answer
54 views

What is a trait in Azure ML matchbox recommender?

Azure Machine Learning has an item called Train Matchbox Recommender. It can be configured with a Number of traits. Unfortunately, the documentation does not describe what such a trait is. What are ...
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1answer
76 views

Collaborative Filtering using categorical features

I am trying to build a recommender system using collaborative filtering. The issues I am facing are : The User-Item dataset has mostly categorical variables, so cant find the best way to calculate ...