subject

It is important to define or select similarity measures in data analysis. However, there is no commonly accepted subjective similarity measure. Results can vary depending on the similarity measures used. Nonetheless, seemingly different similarity measures may be equivalent after some transformation. Suppose we have the following 2-D data set:A1 A2
x1 1.5 1.7
x2 2 1.9
x3 1.6 1.8
x4 1.2 1.5
x5 1.5 1.0
(a) Consider the data as 2-D data points. Given a new data point, x = .1.4, 1.6/ as a
query, rank the database points based on similarity with the query using Euclidean
distance, Manhattan distance, supremum distance, and cosine similarity.
(b) Normalize the data set to make the normof each data point equal to 1. Use Euclidean
distance on the transformed data to rank the data points.

ansver
Answers: 3

Another question on Computers and Technology

question
Computers and Technology, 21.06.2019 21:00
You should hand write your references on your resume.
Answers: 1
question
Computers and Technology, 22.06.2019 11:30
To hide gridline when you display or print a worksheet
Answers: 1
question
Computers and Technology, 22.06.2019 17:30
Rachel completed typing an official document with a word processing program. she wants to make sure that her document has no typographical errors. she also wants all headings to have the same font. which features in a word processing program should she use? rachel should use the feature in a word processing program to find typographical errors. she should apply to have uniform headings.
Answers: 1
question
Computers and Technology, 22.06.2019 18:30
The "instance" relationship shows that something is an object of a
Answers: 1
You know the right answer?
It is important to define or select similarity measures in data analysis. However, there is no commo...
Questions
question
Mathematics, 17.07.2020 01:01
question
Mathematics, 17.07.2020 01:01
question
Mathematics, 17.07.2020 01:01
question
Biology, 17.07.2020 01:01
Questions on the website: 13722359