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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3 views

User/Item feature selection for LightFM Recommender model

I'm learning more about Recommender models and LightFM and I've a question. Is there a recommended way/guidelines around how to perform feature selection for User/ Item features for use in LightFM or ...
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14 views

Cross validation for Collaborative filter-based recommendation systems

I am trying to implement collaborative filter for furniture ecommerce (think wayfair). I need some guidance about cross-validation strategy. Situation: I am working on a fictitious dataset relating to ...
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Real Time Update Recommendation Systems

I am looking for papers related to how to build a real-time update recommendation system. For example, soon after I subscribed a new channel in Youtube, I can see one video from that channel being ...
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I need help for a recommendation engine on a webshop [closed]

Recommendation engine Can somebody help me with some software or modules for a recommendation engine on a webshop?
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Getting an error while using Surprise library that says my item is not part of the trainset

I'm following the Surprise library's documentation to build a recommendation engine using collaborative filtering. I created inner and outer ID's like so # create ID for each item # dfsurprise is the ...
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1answer
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Python doesn't recognize class in the same directory

I am relatively new to Python. I have cloned a class from a GitHub repository but it doesn't work for me. When I run main.py it doesn't recognize the class entity2rec which is in the same repository ...
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1answer
39 views

Cosine similarity between a combination of numerical and text values

I'm trying to do a simple content based filtering model on the Yelp dataset with data about the restaurants. I have a DataFrame in this format >>> business_df.dtypes address object ...
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Recall and Precision Evaluation for Recommendation System: Error on precision coding part

My problem is 'I want to transform the recall code to precision code'. (In recall part) This is all of the evaluation model code that I got from Kaggle. #Top-N accuracy metrics consts ...
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Obtaining feature importance/Sensitivity for model interpretability

I'm new to recommender models and I'm using LightFM for a project. I'm creating model for customer like/dislike recommendations (no ratings involved). Are there any options for model interpretability ...
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Predicting combination of values to maximize target variable

I have a dataset that consists of values [0,1] of ingredients of candies. 0 indicates ' doesn't contain' and 1 'contains'. In addition to those features, I have columns with price percentile and sugar ...
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convert a file into string in cosine similarity

I have two csv files which contains userId,MovieId,tags.tags column contains types of movie in the field of comedy.I need to similarity between comedy and relevant tags of comedy.I want to convert ...
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calculate cosine similarity between words using scala

I have a file which contain UserId,MovieId,and tags.I want to calculate cosine similarity between tags but tags are not only words but also phrases or sentences.so it is not accurate to calculate ...
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How to query Firestore based on item similarity

I am creating a simple recommendation system that uses Firebase. The system matches users based on biographical data (e.g. gender, age, height, etc), which is stored in Firestore. Given a query user, ...
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Create product bundle by matching user input to product features recursively

I am working on a Product Bundle creation and recommendation project. The bundling and recommendation have to happen in real-time based on user input. The conditions are that 1.The product bundle ...
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How to solve Multi_vendor problem in AWS personalize?

I am using AWS personalize for making a recommendation system, specifically SIMS model (item to item similarities model) so when I input ITEM_ID the output will be a list of the most similar items. ...
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using custom metric similarity in knn to find similar users

i have specify equation to find similarity between Users and i get the result in dataframe as shown in picture similarity matrix My question is how I use Knn to find similar users based on similarity ...
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Get Spotify video recommendations based on a playlist

I am looking for a way to get video recommendations as an output with a playlist as an input using their API. The goal behind is to be able to get recommendations over a list of videos, which seems ...
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1answer
19 views

Removing duplicates from a recommendation

I am building a recommendation System which recommends short videos like TikTok. how do I efficiently filter out the videos already viewed by the user? one thing I can think of is I can track the ...
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how to explain code in recommendation system

train_data_matrix = np.zeros((n_users, n_items)) for line in train_data.itertuples(): train_data_matrix[line[1]-1, line[2]-1] = line[3] the first line is to create user_matrix But i do not ...
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how to calculate the cosine similarity between two files?

I am using spark and scala to implement an issue. I am using MovieLens dataset which contains ratings.csv file,movie.csv, and tag.csv. I want to use domain based method to calculate the cosine ...
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System Design When Deploying a Recommendation Engine

I'm currently working on a project that utilizes a recommendation engine to recommend users certain content that is uploaded to the platform. I have identified an algorithm (cosine similarity) I'd ...
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Understanding precision@k for train and test in recommendation systems

I am currently building a recommender system and I am trying to evaluate it. However, many sources have differing methods of computing precision@k and recall@k. Let me give an example for easier ...
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1answer
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Python Surprise package gives different predictions for predict method vs manual compute using latent factors

I am using the surprise package for matrix factorization. Below is the code for the tutorial: from surprise import SVD from surprise import Dataset from surprise import accuracy from surprise....
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How to do inference on users that were not in trainset but have data (Recommender System, SVD)

I'm currently working on a recommender system that lets the user rate movies and then gives predictions. As of now I'm using the Surprise library SVD algorithm which seems to be pretty good and well ...
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2answers
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How to use sklearn's Matrix factorization to predict new users' recommendation scores

I'm trying to use sklearn.decomposition.NMF to a matrix R that contains data on how users rated items to predict user ratings for items that they have not yet seen. the matrix's rows being users, ...
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14 views

is there any method that how much time a user spent on every post he visit on my social media app

I want the time spent by the users on a particular post on my social media app, so I can get the data and implement it in the ML model so I can show similar post like that
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Pandas dataFrame cause crash because of memory limit

I'm a beginner in python and recommendation sytstems. I want to implement a recommendation system in python with this tutorial: https://towardsdatascience.com/solving-business-usecases-by-recommender-...
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1answer
32 views

I'm facing issues with Data Preparation while using Netflix Data

I'm facing issues with Data Preparation while using Netflix Data. I just cloned a repo from Github and I'm facing issues while trying to run the code in Jupyter Notebook. %%time %run ./...
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1answer
97 views

User data ingestion process from Google Tag Manager for Recommendation AI Google cloud platform

Hi I have set up Recommendation AI with catalog data and user data. User events are being fed from Google Tag Manager using 3 Recommendation AI tags. 1st Tag is for product page where I use ecommerce ...
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71 views

RuntimeError: nnz of the result is too large

I am making a content based recommendation engine. My code: import numpy as np import pandas as pd from sklearn.feature_extraction.text import CountVectorizer from sklearn.metrics.pairwise import ...
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17 views

Extracting machine learning features in elasticsearch

Is there a way to return text match raw signals from ElasticSearch? Let's say the documents have 3 text fields - title/body/author. I execute a Search request with a keyword query, and expect to have ...
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Multiclass Model or two Models

I have a telecom data with 50k records. In a month 1k customers take Postpaid (rest on prepaid) & within postpaid there are 2 plans - $10 & $15. I have to predict who are the customers that ...
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1answer
58 views

Python Matrix Factorization Evaluation

I know it is so simple question but I didn't get it. I executed the code in here and it works properly import numpy def matrix_factorization(R, P, Q, K, steps=5000, alpha=0.0002, beta=0.02): ''' ...
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1answer
60 views

Amazon Personalize different Event Types have different Importance

I'm developing a recommendation engine using Amazon Personalize, and found that in interaction dataset, we can input different EVENT_TYPE and corresponding EVENT_VALUE. If I build the model with two ...
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Scoring metric for recommendation system

I'm working on a project that involves building a news recommendation system. I've come as far as quantifying user interaction with different articles on the site into user's affinity towards atopic ...
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when I run the code below,I am getting an error as “index 0 is out of bounds for axis 0 with size 0”

This is my code below def recomend_book(book_name): b_id = np.where(books_rating_pivot.index == book_name)[0][0] _, recommendations = model.kneighbors(books_rating_pivot.iloc[b_id,:].values....
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Temporal set prediction

I am woking on this repository https://github.com/yule-BUAA/DNNTSP, in the data folder the data is in json format. I a unable to figure out how the data is stored in that format. I need to apply the ...
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How to get the recommendation for specific user using fastAI

I'm working to built a recommendation system that recommends top items for a user. I used the fastAI library to built the system using neural network. However, after fitting the model and getting the ...
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1answer
84 views

How to make predictions with scikit's Surprise?

I'm having some trouble understanding how the Surprise workflow. I have a file for training (which I seek to split into training and validation), and a file for testing data. I'm having trouble ...
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71 views

A recommender system on a Grocery dataset

Good morning, I'm currently working on the dataset Groceries from the library Arules, and unfortunatly, I can't seem to identify the unique items with "plyr". Here's a snippet of a few ...
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1answer
16 views

Show all the books in database except the ones this specific user has read neo4j

I have a simple database in Neo4j with information about users, their friends and the books they read. I need to write a query that shows all the books that were read by a specific user's friends (...
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How to calculate the Tanomoto similarity score in python

For recommendation based upon similarity score, I was learning some functions like euclidean, pearson coefficient and tanimoto score. Unfortunately, the tanimoto score function gives an error which I ...
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1answer
33 views

How to handle “Index out of bounds” while building the data-matrix?

I am trying to build a utility matrix with size (n_users, n_items), but I got an index is out of bounds error. From the error, it is clear that I am trying to reach an element out of the matrix range, ...
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1answer
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keras model.fit ValueError: The outer 2 dimensions of indices.shape=[1,11,1] must match the outer 2 dimensions of updates.shape=[2]

I am training a keras model with custom loss and evaluation metric. It trains without metric. But it gave following error when i try to train like: model.compile(optimizer= keras.optimizers.Adam(...
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2answers
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top n values of a tensor to 1 others to 0

I am trying to write a custom metric to a keras model for a recommendation model. I need to find a way to convert predictions vector to a vector which top 2 element in the predictions are 1 and others ...
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1answer
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How google scrape stackoverflow all questions while searching?

I am making search engine. But I want to know, How google scrapes all data of stackoverflow. As my intuition, Do they save all stackoverflow data in csv file? and when user types some coding question, ...
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27 views

How to use content based recommender in Vue project

I'm trying to use this content-based recommender in my Vue project: https://github.com/stanleyfok/content-based-recommender. I've tested it on a node server and it works fine. this is the exact code ...
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How to perform out of sample recommendations with pythons surprise module using SVD?

I'm trying to understand the surprise python module to make movie recommendations on the movielens 100k dataset. I trained the model using GridSearch, which gives nice in-sample results: from surprise ...
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1answer
61 views

What is n_components in NMF(Non-Negative Matrix Factorization) in sklearn?

What is n_components in sklearn.NMF? nmf = NMF(n_components=2, init='random', random_state=0) nmf.fit(V)
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How to create a training set for recommendation system of retail banking products

When we use recommender systems for retail banking products (life insurance, mutual fund, lockers etc) some of the products are one time purchases so if I need to create a recommender system that will ...

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