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Marc-Anthony Taylor gileadslostson

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View GitHub Profile
View keybase.md

Keybase proof

I hereby claim:

  • I am gileadslostson on github.
  • I am the_cthulhu_kid (https://keybase.io/the_cthulhu_kid) on keybase.
  • I have a public key whose fingerprint is 7634 28BA 8682 1603 7027 C1EB 64CC 4912 6252 DB9B

To claim this, I am signing this object:

View keybase.md

Keybase proof

I hereby claim:

  • I am gileadslostson on github.
  • I am the_cthulhu_kid (https://keybase.io/the_cthulhu_kid) on keybase.
  • I have a public key whose fingerprint is 28E2 519F 2FA9 A3A3 3F4B 4510 7E85 90A1 AB7A EF58

To claim this, I am signing this object:

View working_examples_for_the_graph_databases_book
= Working examples for the 'Graph Databases' book
image::http://assets.neo4j.org/img/books/graphdatabases_thumb.gif["frontpage thumbnail",align="left"]
The examples in the 'Graph Databases' book don't work out of the box. I've modified them, so that they do work (for chapter 3, that is).
This is a graphgist version of my https://baach.de/Members/jhb/working-examples-for-the-graph-databases-book/[blog post].
If you click one of the green play buttons in the examples below, they will show in this console. Usually the code formatting is messed up, so it might be a bit ugly.
View socialNetworking.adoc

A small social networking website

This database is a small example of a networking site where users can watch movies, subscribe to TV shows and comment and rate any of the previous media. Users may follow or block other users, just like any other networking website nowadays.

  • Purpose:

The theme was chosen because of the success these type of webs have all over the world, and because in general their structure can easily and naturally be displayed as a graph with very different types of relationships and very connected data. So, in a nutshell,

View k-NN.adoc

Movie Recommendations with k-Nearest Neighbors and Cosine Similarity


Introduction

The k-nearest neighbors (k-NN) algorithm is among the simplest algorithms in the data mining field. Distances / similarities are calculated between each element in the data set using some distance / similarity metric ^[1]^ that the researcher chooses (there are many distance / similarity metrics), where the distance / similarity between any two elements is calculated based on the two elements' attributes. A data element’s k-NN are the k closest data elements according to this distance / similarity.


1. A distance metric measures distance; the higher the distance the further apart the neighbors. A similarity metric measures similarity; the higher the similarity the closer the neighbors.
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