Types of Decision Models - Group 4 - 2018/2019, Semester B, Quartile 3: Difference between revisions

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== Picking variables / attributes ==
== Picking variables / attributes ==
In order for Nearest Neighbour to work
In order for Nearest Neighbour to work
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Back to the [[PRE2018_3_Group4 | root page]].
=References=
<references />

Revision as of 15:34, 17 March 2019

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Introduction

In this section, we will investigate some different approaches for decision models.

Nearest Neighbour Strategy

NearestNeighbour, short NN, is a mathematical decision model. It is a machine learning decision model, in the sense that existing solutions, often denoted as training data, are used for NN to be able to accurately make predictions about new data such as a user which wants a solution for their airport. This decision model can make the choice which solution fits best to the user. Nearest Neighbour is based on the machine learning strategy KNearestNeighbors [1].

Picking variables / attributes

In order for Nearest Neighbour to work


Back to the root page.

References

  1. "Brilliant.org", Retrieved 17 March 2019