# What is vector in terms of machine learning

I want to understand what is a vector in terms of machine learning.

I looked into the below 2 links. https://en.wikipedia.org/wiki/Support_vector_machine https://en.wikipedia.org/wiki/Feature_vector.

I couldn't understand fully . can someone explain in simple words

• Explain which specific part of the definition you don't understand and why it is confusing to you. – csmckelvey Jul 14 '16 at 16:55
• Is the input object in machine learning models called vector. – subho Jul 14 '16 at 17:01
• in the en.wikipedia.org/wiki/Supervised_learning link, I read that the In supervised learning, each example is a pair consisting of an input object (typically a vector) and input object is transformed into a feature vector, which contains a number of features that are descriptive of the object , so I am not able to understand the input itself called vector or input after transformation called vector – subho Jul 14 '16 at 17:07
• Think of a vector as a way of representing data, nothing more. It is a kind a matrix which shows the input values. Transformations could be performed upon this matrix and the result of transformation will be matrix again. – Maxim Haytovich Jul 14 '16 at 17:42

I would think that much of your problem comes because vector is a general term with many uses. In this case, think of it as a list of values or a row in a table. The data structure is a 1-dimensional array; a vector of N elements is an N-dimensional vector, one dimension for each element.

For instance, the input (3.14159, 2.71828, 1.618) is a vector of 3 elements, and could be represented as a point in 3-dimensional space. Your program would declare a 1x3 array (one-dimensional data structure) to hold the three items.

Does this help you visualize the basic input handling? This is not a difficult problem with a Wronkskian transformation matrix -- it's just a change in format and visualization.

The feature vector is simply one row of input. For instance, in the popular machine learning example of housing price prediction, we might have features (table columns) including a house's year of construction, number of bedrooms, area (m^2), and size of garage (auto capacity). This would give input vectors such as

``````[1988, 4, 200, 2]
[2001, 3, 220, 1]
``````

etc.

In Simple words,
Dimensions : the attributes taken for analysis
eg:
a) In health care domain : height, weight, gender, pulse rate, cholestral level
b) In banking domain : age, gender, profession, marital status etc

n-Dimensional Vector :<e1, e2, e3, ...., en> where ei is the value of dimension i and elements are ordered.
eg:
<180, 74, M, 60, 120> is a 6-Dimensional Vector where 180, 74, M, 60, 120 are the values of attributes/dimensions height, weight, gender, pulse_rate, cholesterol_level respectively.

<180, 74, M, 60, 120> and <180, M, 74, 60, 120> are not same as the order of dimensions weight and gender are changed.