Online study finds recency embeddings optimal for similar job recs and frequency+recency for homepage personalization on job platform.
Neighborhood Troubles: On the Value of User Pre-Filtering To Speed Up and Enhance Recommendations
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
In this paper, we present work-in-progress on applying user pre-filtering to speed up and enhance recommendations based on Collaborative Filtering. We propose to pre-filter users in order to extract a smaller set of candidate neighbors, who exhibit a high number of overlapping entities and to compute the final user similarities based on this set. To realize this, we exploit features of the high-performance search engine Apache Solr and integrate them into a scalable recommender system. We have evaluated our approach on a dataset gathered from Foursquare and our evaluation results suggest that our proposed user pre-filtering step can help to achieve both a better runtime performance as well as an increase in overall recommendation accuracy.
fields
cs.IR 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
-
Should we Embed? A Study on the Online Performance of Utilizing Embeddings for Real-Time Job Recommendations
Online study finds recency embeddings optimal for similar job recs and frequency+recency for homepage personalization on job platform.