# A simple explanation of Naive Bayes Classification [closed]

I am finding it hard to understand the process of Naive Bayes, and I was wondering if someone could explain it with a simple step by step process in English. I understand it takes comparisons by times occurred as a probability, but I have no idea how the training data is related to the actual dataset.

Please give me an explanation of what role the training set plays. I am giving a very simple example for fruits here, like banana for example

``````training set---
round-red
round-orange
oblong-yellow
round-red

dataset----
round-red
round-orange
round-red
round-orange
oblong-yellow
round-red
round-orange
oblong-yellow
oblong-yellow
round-red
``````
• It's quite easy if you understand Bayes' Theorem. If you haven' read on Bayes' theorem, try this link yudkowsky.net/rational/bayes. Apr 8, 2012 at 3:43
• NOTE: The accepted answer below is not a traditional example for Naïve Bayes. It's mostly a k Nearest Neighbor implementation. Read accordingly. Nov 26, 2013 at 4:01
• Here's a quick, visual description of Bayes' Theorem by Oscar Bonilla - oscarbonilla.com/2009/05/visualizing-bayes-theorem
– Will
Mar 16, 2014 at 22:37
• Well if one sees a graph with some dots that doesn't really mean that it is KNN :) How you calculate the probabilities is all up to you. Naive Bayes calculates it using prior multiplied by likelihood so that is what Yavar has shown in his answer. How to arrive at those probabilities is really not important here. The answer is absolutely correct and I see no problems in it. Dec 23, 2014 at 13:32

The accepted answer has many elements of k-NN (k-nearest neighbors), a different algorithm.

Both k-NN and NaiveBayes are classification algorithms. Conceptually, k-NN uses the idea of "nearness" to classify new entities. In k-NN 'nearness' is modeled with ideas such as Euclidean Distance or Cosine Distance. By contrast, in NaiveBayes, the concept of 'probability' is used to classify new entities.

Since the question is about Naive Bayes, here's how I'd describe the ideas and steps to someone. I'll try to do it with as few equations and in plain English as much as possible.

### First, Conditional Probability & Bayes' Rule

Before someone can understand and appreciate the nuances of Naive Bayes', they need to know a couple of related concepts first, namely, the idea of Conditional Probability, and Bayes' Rule. (If you are familiar with these concepts, skip to the section titled Getting to Naive Bayes')

Conditional Probability in plain English: What is the probability that something will happen, given that something else has already happened.

Let's say that there is some Outcome O. And some Evidence E. From the way these probabilities are defined: The Probability of having both the Outcome O and Evidence E is: (Probability of O occurring) multiplied by the (Prob of E given that O happened)

One Example to understand Conditional Probability:

Let say we have a collection of US Senators. Senators could be Democrats or Republicans. They are also either male or female.

If we select one senator completely randomly, what is the probability that this person is a female Democrat? Conditional Probability can help us answer that.

Probability of (Democrat and Female Senator)= Prob(Senator is Democrat) multiplied by Conditional Probability of Being Female given that they are a Democrat.

``````  P(Democrat & Female) = P(Democrat) * P(Female | Democrat)
``````

We could compute the exact same thing, the reverse way:

``````  P(Democrat & Female) = P(Female) * P(Democrat | Female)
``````

### Understanding Bayes Rule

Conceptually, this is a way to go from P(Evidence| Known Outcome) to P(Outcome|Known Evidence). Often, we know how frequently some particular evidence is observed, given a known outcome. We have to use this known fact to compute the reverse, to compute the chance of that outcome happening, given the evidence.

P(Outcome given that we know some Evidence) = P(Evidence given that we know the Outcome) times Prob(Outcome), scaled by the P(Evidence)

The classic example to understand Bayes' Rule:

``````Probability of Disease D given Test-positive =

P(Test is positive|Disease) * P(Disease)
_______________________________________________________________
(scaled by) P(Testing Positive, with or without the disease)
``````

Now, all this was just preamble, to get to Naive Bayes.

## Getting to Naive Bayes'

So far, we have talked only about one piece of evidence. In reality, we have to predict an outcome given multiple evidence. In that case, the math gets very complicated. To get around that complication, one approach is to 'uncouple' multiple pieces of evidence, and to treat each of piece of evidence as independent. This approach is why this is called naive Bayes.

``````P(Outcome|Multiple Evidence) =
P(Evidence1|Outcome) * P(Evidence2|outcome) * ... * P(EvidenceN|outcome) * P(Outcome)
scaled by P(Multiple Evidence)
``````

Many people choose to remember this as:

``````                      P(Likelihood of Evidence) * Prior prob of outcome
P(outcome|evidence) = _________________________________________________
P(Evidence)
``````

• If the Prob(evidence|outcome) is 1, then we are just multiplying by 1.
• If the Prob(some particular evidence|outcome) is 0, then the whole prob. becomes 0. If you see contradicting evidence, we can rule out that outcome.
• Since we divide everything by P(Evidence), we can even get away without calculating it.
• The intuition behind multiplying by the prior is so that we give high probability to more common outcomes, and low probabilities to unlikely outcomes. These are also called `base rates` and they are a way to scale our predicted probabilities.

### How to Apply NaiveBayes to Predict an Outcome?

Just run the formula above for each possible outcome. Since we are trying to classify, each outcome is called a `class` and it has a `class label.` Our job is to look at the evidence, to consider how likely it is to be this class or that class, and assign a label to each entity. Again, we take a very simple approach: The class that has the highest probability is declared the "winner" and that class label gets assigned to that combination of evidences.

### Fruit Example

Let's try it out on an example to increase our understanding: The OP asked for a 'fruit' identification example.

Let's say that we have data on 1000 pieces of fruit. They happen to be Banana, Orange or some Other Fruit. We know 3 characteristics about each fruit:

1. Whether it is Long
2. Whether it is Sweet and
3. If its color is Yellow.

This is our 'training set.' We will use this to predict the type of any new fruit we encounter.

``````Type           Long | Not Long || Sweet | Not Sweet || Yellow |Not Yellow|Total
___________________________________________________________________
Banana      |  400  |    100   || 350   |    150    ||  450   |  50      |  500
Orange      |    0  |    300   || 150   |    150    ||  300   |   0      |  300
Other Fruit |  100  |    100   || 150   |     50    ||   50   | 150      |  200
____________________________________________________________________
Total       |  500  |    500   || 650   |    350    ||  800   | 200      | 1000
___________________________________________________________________
``````

We can pre-compute a lot of things about our fruit collection.

The so-called "Prior" probabilities. (If we didn't know any of the fruit attributes, this would be our guess.) These are our `base rates.`

`````` P(Banana)      = 0.5 (500/1000)
P(Orange)      = 0.3
P(Other Fruit) = 0.2
``````

Probability of "Evidence"

``````p(Long)   = 0.5
P(Sweet)  = 0.65
P(Yellow) = 0.8
``````

Probability of "Likelihood"

``````P(Long|Banana) = 0.8
P(Long|Orange) = 0  [Oranges are never long in all the fruit we have seen.]
....

P(Yellow|Other Fruit)     =  50/200 = 0.25
P(Not Yellow|Other Fruit) = 0.75
``````

### Given a Fruit, how to classify it?

Let's say that we are given the properties of an unknown fruit, and asked to classify it. We are told that the fruit is Long, Sweet and Yellow. Is it a Banana? Is it an Orange? Or Is it some Other Fruit?

We can simply run the numbers for each of the 3 outcomes, one by one. Then we choose the highest probability and 'classify' our unknown fruit as belonging to the class that had the highest probability based on our prior evidence (our 1000 fruit training set):

``````P(Banana|Long, Sweet and Yellow)
P(Long|Banana) * P(Sweet|Banana) * P(Yellow|Banana) * P(banana)
= _______________________________________________________________
P(Long) * P(Sweet) * P(Yellow)

= 0.8 * 0.7 * 0.9 * 0.5 / P(evidence)

= 0.252 / P(evidence)

P(Orange|Long, Sweet and Yellow) = 0

P(Other Fruit|Long, Sweet and Yellow)
P(Long|Other fruit) * P(Sweet|Other fruit) * P(Yellow|Other fruit) * P(Other Fruit)
= ____________________________________________________________________________________
P(evidence)

= (100/200 * 150/200 * 50/200 * 200/1000) / P(evidence)

= 0.01875 / P(evidence)
``````

By an overwhelming margin (`0.252 >> 0.01875`), we classify this Sweet/Long/Yellow fruit as likely to be a Banana.

### Why is Bayes Classifier so popular?

Look at what it eventually comes down to. Just some counting and multiplication. We can pre-compute all these terms, and so classifying becomes easy, quick and efficient.

`Let z = 1 / P(evidence).` Now we quickly compute the following three quantities.

``````P(Banana|evidence) = z * Prob(Banana) * Prob(Evidence1|Banana) * Prob(Evidence2|Banana) ...
P(Orange|Evidence) = z * Prob(Orange) * Prob(Evidence1|Orange) * Prob(Evidence2|Orange) ...
P(Other|Evidence)  = z * Prob(Other)  * Prob(Evidence1|Other)  * Prob(Evidence2|Other)  ...
``````

Assign the class label of whichever is the highest number, and you are done.

Despite the name, Naive Bayes turns out to be excellent in certain applications. Text classification is one area where it really shines.

• Thanks for the very clear explanation! Easily one of the better ones floating around the web. Question: since each P(outcome/evidence) is multiplied by 1 / z=p(evidence) (which in the fruit case, means each is essentially the probability based solely on previous evidence), would it be correct to say that z doesn't matter at all for Naïve Bayes? Which would thus mean that if, say, one ran into a long/sweet/yellow fruit that wasn't a banana, it'd be classified incorrectly. Dec 21, 2013 at 2:30
• @E.Chow Yes, you are correct in that computing z doesn't matter for Naive Bayes. (It is a way to scale the probabilities to be between 0 and 1.) Note that z is product of the probabilities of all the evidence at hand. (It is different from the priors which is the base rate of the classes.) You are correct: If you did find a Long/Sweet/Yellow fruit that is not a banana, NB will classify it incorrectly as a banana, based on this training set. The algorithm is a 'best probabilistic guess based on evidence' and so it will mis-classify on occasion. Dec 21, 2013 at 6:35
• Absolutely great explanation. I coudn't understand this algoritm from academical papers and books. Because, esoteric explanation is generally accepted writing style maybe. That's all, and so easy. Thanks. Jan 19, 2015 at 19:42
• Thanks, I prefer this answer more than the textbook does, they try to use tons of maths notation to confuse us rather than really teach us the knowledge, but you, sir, you are the hero! Apr 2, 2016 at 15:03
• Why don't the probabilities add up to 1? The evidence is 0.26 in the example (500/100 * 650/1000 * 800/1000), and so the final P(banana|...) = 0.252 / 0.26 = 0.969, and the P(other|...) = 0.01875 / 0.26 = 0.072. Together they add up to 1.04! Apr 8, 2016 at 0:41

Your question as I understand it is divided in two parts, part one being you need a better understanding of the Naive Bayes classifier & part two being the confusion surrounding Training set.

In general all of Machine Learning Algorithms need to be trained for supervised learning tasks like classification, prediction etc. or for unsupervised learning tasks like clustering.

During the training step, the algorithms are taught with a particular input dataset (training set) so that later on we may test them for unknown inputs (which they have never seen before) for which they may classify or predict etc (in case of supervised learning) based on their learning. This is what most of the Machine Learning techniques like Neural Networks, SVM, Bayesian etc. are based upon.

So in a general Machine Learning project basically you have to divide your input set to a Development Set (Training Set + Dev-Test Set) & a Test Set (or Evaluation set). Remember your basic objective would be that your system learns and classifies new inputs which they have never seen before in either Dev set or test set.

The test set typically has the same format as the training set. However, it is very important that the test set be distinct from the training corpus: if we simply reused the training set as the test set, then a model that simply memorized its input, without learning how to generalize to new examples, would receive misleadingly high scores.

In general, for an example, 70% of our data can be used as training set cases. Also remember to partition the original set into the training and test sets randomly.

To demonstrate the concept of Naïve Bayes Classification, consider the example given below: As indicated, the objects can be classified as either `GREEN` or `RED`. Our task is to classify new cases as they arrive, i.e., decide to which class label they belong, based on the currently existing objects.

Since there are twice as many `GREEN` objects as `RED`, it is reasonable to believe that a new case (which hasn't been observed yet) is twice as likely to have membership `GREEN` rather than `RED`. In the Bayesian analysis, this belief is known as the prior probability. Prior probabilities are based on previous experience, in this case the percentage of `GREEN` and `RED` objects, and often used to predict outcomes before they actually happen.

Thus, we can write:

Prior Probability of `GREEN`: `number of GREEN objects / total number of objects`

Prior Probability of `RED`: `number of RED objects / total number of objects`

Since there is a total of `60` objects, `40` of which are `GREEN` and 20 `RED`, our prior probabilities for class membership are:

Prior Probability for `GREEN`: `40 / 60`

Prior Probability for `RED`: `20 / 60`

Having formulated our prior probability, we are now ready to classify a new object (`WHITE` circle in the diagram below). Since the objects are well clustered, it is reasonable to assume that the more `GREEN` (or `RED`) objects in the vicinity of X, the more likely that the new cases belong to that particular color. To measure this likelihood, we draw a circle around X which encompasses a number (to be chosen a priori) of points irrespective of their class labels. Then we calculate the number of points in the circle belonging to each class label. From this we calculate the likelihood:  From the illustration above, it is clear that Likelihood of `X` given `GREEN` is smaller than Likelihood of `X` given `RED`, since the circle encompasses `1` `GREEN` object and `3` `RED` ones. Thus:  Although the prior probabilities indicate that `X` may belong to `GREEN` (given that there are twice as many `GREEN` compared to `RED`) the likelihood indicates otherwise; that the class membership of `X` is `RED` (given that there are more `RED` objects in the vicinity of `X` than `GREEN`). In the Bayesian analysis, the final classification is produced by combining both sources of information, i.e., the prior and the likelihood, to form a posterior probability using the so-called Bayes' rule (named after Rev. Thomas Bayes 1702-1761). Finally, we classify X as `RED` since its class membership achieves the largest posterior probability.

• isn't this algorithm above more like k-nearest neighbors? Jun 12, 2013 at 8:46
• This answer is confusing - it mixes KNN (k nearest neighbours) and naive bayes. Sep 1, 2013 at 16:39
• The answer was proceeding nicely till the likelihood came up. So @Yavar has used K-nearest neighbours for calculating the likelihood. How correct is that? If it is, what are some other methods to calculate the likelihood? Jan 31, 2014 at 6:24
• You used a circle as an example of likelihood. I read about Gaussian Naive bayes where the likelihood is gaussian. How can that be explained? May 7, 2015 at 3:30
• Actually, the answer with knn is correct. If you don't know the distribution and thus the probability densitiy of such distribution, you have to somehow find it. This can be done via kNN or Kernels. I think there are some things missing. You can check out this presentation though. Feb 9, 2017 at 9:21

Naive Bayes comes under supervising machine learning which used to make classifications of data sets. It is used to predict things based on its prior knowledge and independence assumptions.

They call it naive because it’s assumptions (it assumes that all of the features in the dataset are equally important and independent) are really optimistic and rarely true in most real-world applications.

It is classification algorithm which makes the decision for the unknown data set. It is based on Bayes Theorem which describe the probability of an event based on its prior knowledge.

Below diagram shows how naive Bayes works Formula to predict NB: How to use Naive Bayes Algorithm ?

Let's take an example of how N.B woks

Step 1: First we find out Likelihood of table which shows the probability of yes or no in below diagram. Step 2: Find the posterior probability of each class. ``````Problem: Find out the possibility of whether the player plays in Rainy condition?

P(Yes|Rainy) = P(Rainy|Yes) * P(Yes) / P(Rainy)

P(Rainy|Yes) = 2/9 = 0.222
P(Yes) = 9/14 = 0.64
P(Rainy) = 5/14 = 0.36

Now, P(Yes|Rainy) = 0.222*0.64/0.36 = 0.39 which is lower probability which means chances of the match played is low.
``````

For more reference refer these blog.

Refer GitHub Repository Naive-Bayes-Examples

Ram Narasimhan explained the concept very nicely here below is an alternative explanation through the code example of Naive Bayes in action
It uses an example problem from this book on page 351
This is the data set that we will be using In the above dataset if we give the hypothesis = `{"Age":'<=30', "Income":"medium", "Student":'yes' , "Creadit_Rating":'fair'}` then what is the probability that he will buy or will not buy a computer.
The code below exactly answers that question.
Just create a file called named `new_dataset.csv` and paste the following content.

``````Age,Income,Student,Creadit_Rating,Buys_Computer
<=30,high,no,fair,no
<=30,high,no,excellent,no
31-40,high,no,fair,yes
>40,medium,no,fair,yes
>40,low,yes,fair,yes
>40,low,yes,excellent,no
31-40,low,yes,excellent,yes
<=30,medium,no,fair,no
<=30,low,yes,fair,yes
>40,medium,yes,fair,yes
<=30,medium,yes,excellent,yes
31-40,medium,no,excellent,yes
31-40,high,yes,fair,yes
>40,medium,no,excellent,no
``````

Here is the code the comments explains everything we are doing here! [python]

``````import pandas as pd
import pprint

class Classifier():
data = None
class_attr = None
priori = {}
cp = {}
hypothesis = None

def __init__(self,filename=None, class_attr=None ):
self.class_attr = class_attr

'''
probability(class) =    How many  times it appears in cloumn
__________________________________________
count of all class attribute
'''
def calculate_priori(self):
class_values = list(set(self.data[self.class_attr]))
class_data =  list(self.data[self.class_attr])
for i in class_values:
self.priori[i]  = class_data.count(i)/float(len(class_data))
print "Priori Values: ", self.priori

'''
Here we calculate the individual probabilites
P(outcome|evidence) =   P(Likelihood of Evidence) x Prior prob of outcome
___________________________________________
P(Evidence)
'''
def get_cp(self, attr, attr_type, class_value):
data_attr = list(self.data[attr])
class_data = list(self.data[self.class_attr])
total =1
for i in range(0, len(data_attr)):
if class_data[i] == class_value and data_attr[i] == attr_type:
total+=1

'''
Here we calculate Likelihood of Evidence and multiple all individual probabilities with priori
(Outcome|Multiple Evidence) = P(Evidence1|Outcome) x P(Evidence2|outcome) x ... x P(EvidenceN|outcome) x P(Outcome)
scaled by P(Multiple Evidence)
'''
def calculate_conditional_probabilities(self, hypothesis):
for i in self.priori:
self.cp[i] = {}
for j in hypothesis:
self.cp[i].update({ hypothesis[j]: self.get_cp(j, hypothesis[j], i)})
print "\nCalculated Conditional Probabilities: \n"
pprint.pprint(self.cp)

def classify(self):
print "Result: "
for i in self.cp:
print i, " ==> ", reduce(lambda x, y: x*y, self.cp[i].values())*self.priori[i]

if __name__ == "__main__":
c.calculate_priori()
c.hypothesis = {"Age":'<=30', "Income":"medium", "Student":'yes' , "Creadit_Rating":'fair'}

c.calculate_conditional_probabilities(c.hypothesis)
c.classify()
``````

output:

``````Priori Values:  {'yes': 0.6428571428571429, 'no': 0.35714285714285715}

Calculated Conditional Probabilities:

{
'no': {
'<=30': 0.8,
'fair': 0.6,
'medium': 0.6,
'yes': 0.4
},
'yes': {
'<=30': 0.3333333333333333,
'fair': 0.7777777777777778,
'medium': 0.5555555555555556,
'yes': 0.7777777777777778
}
}

Result:
yes  ==>  0.0720164609053
no  ==>  0.0411428571429
``````

I try to explain the Bayes rule with an example.

What is the chance that a random person selected from the society is a smoker?

You may reply 10%, and let's assume that's right.

Now, what if I say that the random person is a man and is 15 years old?

You may say 15 or 20%, but why?.

In fact, we try to update our initial guess with new pieces of evidence ( `P(smoker) vs. P(smoker | evidence)` ). The Bayes rule is a way to relate these two probabilities.

``````P(smoker | evidence) = P(smoker)* p(evidence | smoker)/P(evidence)
``````

Each evidence may increase or decrease this chance. For example, this fact that he is a man may increase the chance provided that this percentage (being a man) among non-smokers is lower.

In the other words, being a man must be an indicator of being a smoker rather than a non-smoker. Therefore, if an evidence is an indicator of something, it increases the chance.

But how do we know that this is an indicator?

For each feature, you can compare the commonness (probability) of that feature under the given conditions with its commonness alone. (`P(f | x) vs. P(f))`.

``````P(smoker | evidence) / P(smoker) = P(evidence | smoker)/P(evidence)
``````

For example, if we know that 90% of smokers are men, it's not still enough to say whether being a man is an indicator of being smoker or not. For example if the probability of being a man in the society is also 90%, then knowing that someone is a man doesn't help us `((90% / 90%) = 1`. But if men contribute to 40% of the society, but 90% of the smokers, then knowing that someone is a man increases the chance of being a smoker `(90% / 40%) = 2.25`, so it increases the initial guess (10%) by 2.25 resulting 22.5%.

However, if the probability of being a man was 95% in the society, then regardless of the fact that the percentage of men among smokers is high (90%)! the evidence that someone is a man decreases the chance of him being a smoker! `(90% / 95%) = 0.95)`.

So we have:

``````P(smoker | f1, f2, f3,... ) = P(smoker) * contribution of f1* contribution of f2 *...
=
P(smoker)*
(P(being a man | smoker)/P(being a man))*
(P(under 20 | smoker)/ P(under 20))
``````

Note that in this formula we assumed that being a man and being under 20 are independent features so we multiplied them, it means that knowing that someone is under 20 has no effect on guessing that he is man or woman. But it may not be true, for example maybe most adolescence in a society are men...

To use this formula in a classifier

The classifier is given with some features (being a man and being under 20) and it must decide if he is an smoker or not (these are two classes). It uses the above formula to calculate the probability of each class under the evidence (features), and it assigns the class with the highest probability to the input. To provide the required probabilities (90%, 10%, 80%...) it uses the training set. For example, it counts the people in the training set that are smokers and find they contribute 10% of the sample. Then for smokers checks how many of them are men or women .... how many are above 20 or under 20....In the other words, it tries to build the probability distribution of the features for each class based on the training data.