The movie distribution company Netflix has generated considerable buzz in the statistics community by offering a million dollar prize for improvements to its movie rating system. Among the statisticians and computer scientists who have disclosed their techniques, the emphasis has been on machine learning approaches. This article has the modest goal of discussing a simple model for movie rating and other forms of democratic rating. Because the model involves a large number of parameters, it is nontrivial to carry out maximum likelihood estimation. Here we derive a straightforward EM algorithm from the perspective of the more general MM algorithm. The algorithm is capable of finding the global maximum on a likelihood landscape littered with i...
The problem of ranking arises ubiquitously in almost every aspect of life, and in particular in Mach...
Accurate prediction of customer preferences on products is the key to any recommender systems to rea...
<p>Each test set corresponds to a split of the 100,000 ratings in the complete dataset into 80,000 o...
Machine Learning is improving at being able to analyze data and find patterns in it, but does machin...
<div><p>Currently, users and consumers can review and rate products through online services, which p...
Predicting movie success with machine learning algorithms has become a very popular research area. T...
A recommender system uses information from a user's past behavior to present items of interest to hi...
In this paper, I use a machine learning approach to explore the impact of movie recognition such as ...
Business organizations experience cut-throat competition in the e-commerce era, where a smart organi...
As users increasingly rely on collaborative rating sites to achieve mundane tasks such as purchasing...
Many existing approaches to collaborative filtering can neither handle very large datasets nor easil...
Previous studies on predicting the box-office performance of a movie using machine learning techniqu...
Machine Learning is impregnating every industry and every area of our lives, so it made sense that ...
This thesis report is submitted in partial fulfilment of the requirements for the degree of Bachelor...
There is a significant amount of ongoing research in the collaborative filtering field, with much of...
The problem of ranking arises ubiquitously in almost every aspect of life, and in particular in Mach...
Accurate prediction of customer preferences on products is the key to any recommender systems to rea...
<p>Each test set corresponds to a split of the 100,000 ratings in the complete dataset into 80,000 o...
Machine Learning is improving at being able to analyze data and find patterns in it, but does machin...
<div><p>Currently, users and consumers can review and rate products through online services, which p...
Predicting movie success with machine learning algorithms has become a very popular research area. T...
A recommender system uses information from a user's past behavior to present items of interest to hi...
In this paper, I use a machine learning approach to explore the impact of movie recognition such as ...
Business organizations experience cut-throat competition in the e-commerce era, where a smart organi...
As users increasingly rely on collaborative rating sites to achieve mundane tasks such as purchasing...
Many existing approaches to collaborative filtering can neither handle very large datasets nor easil...
Previous studies on predicting the box-office performance of a movie using machine learning techniqu...
Machine Learning is impregnating every industry and every area of our lives, so it made sense that ...
This thesis report is submitted in partial fulfilment of the requirements for the degree of Bachelor...
There is a significant amount of ongoing research in the collaborative filtering field, with much of...
The problem of ranking arises ubiquitously in almost every aspect of life, and in particular in Mach...
Accurate prediction of customer preferences on products is the key to any recommender systems to rea...
<p>Each test set corresponds to a split of the 100,000 ratings in the complete dataset into 80,000 o...