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How to use association rules for data mining in Python?

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Release: 2023-06-04 09:02:19
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Python is a powerful programming language that can be applied to a variety of data mining tasks. Association rules are one of the common data mining techniques, which aim to discover associations between different data points in order to better understand the data set. In this article, we will discuss how to use association rules in Python for data mining.

What is association rule

Association rule is a data mining technology used to discover the association between different data points. It is often used in shopping basket analysis, where we can discover which items are frequently purchased together in order to organize them in the store departments in which they are placed.

In association rules, we have two types of elements: itemsets and rules.

The project set contains multiple projects, and the rule is a logical relationship. For example, if the itemset contains A, B, and C, the rule A->B means that when A occurs, B is also likely to occur. Another rule, B->C, means that when B appears, C is also likely to appear.

Steps to use Python for association rule data mining

To use Python for association rule data mining, we need to follow the following steps:

1. Prepare data

First, we need to prepare the data we want to use. Association rules algorithms typically use transactional data, such as purchase history or interaction records with customers.

In Python, we can use the pandas data frame to load data and then convert it into a format suitable for the algorithm. A commonly used format is List of Lists, where each sublist represents a transaction and the elements represent the items in the transaction.

For example, the following code loads a CSV file containing sample transaction information and converts it to List of Lists format:

import pandas as pd

# Load data from CSV file
data = pd.read_csv('transactions.csv')

# Convert data to List of Lists format
transactions = []
for i, row in data.iterrows():
    transaction = []
    for col in data.columns:
        if row[col] == 1:
            transaction.append(col)
    transactions.append(transaction)
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2. Use the association rule algorithm to find the rules

Once we have transformed the data into a format suitable for the algorithm, we can use any of the association rules algorithms to find the rules. The most common algorithm is the Apriori algorithm, which follows the following steps:

  • Scan all transactions to determine item frequency.
  • Use item frequencies to generate candidate item sets.
  • Scan all transactions to determine candidate item set frequencies.
  • Generate rules based on candidate item sets.

In Python, we can use the pymining library to implement the Apriori algorithm. The following is a sample code that demonstrates how to use Pymining to find frequent itemsets:

from pymining import itemmining

relim_input = itemmining.get_relim_input(transactions)
item_sets = itemmining.relim(relim_input, min_support=2)
print(item_sets)
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In this example, we use a min_support parameter, which specifies the support threshold for determining which itemsets are frequent. In this case, we used a support of 2, which means that only itemsets that appear in at least two transactions are considered frequent itemsets.

3. Evaluate rules

After finding frequent itemsets, we can use them to generate rules. After generating the rules, we need to evaluate them to determine which rules make the most sense.

There are several commonly used evaluation metrics that can be used to evaluate rules. Two of the most common are confidence and support.

Confidence indicates the accuracy of the rule. It refers to the probability that if A occurs, B is also likely to occur. It is calculated as follows:

confidence(A->B) = support(A and B) / support(A)

Among them, support(A and B) means A appears at the same time The number of transactions with B, support(A) is the number of transactions in which A appears.

Support indicates the universality of the rule. It refers to the probability calculated by the following formula:

support(A and B) / total_transactions

where total_transactions is the number of all transactions.

In Python, we can use the pymining library to calculate confidence and support. The following is a sample code that demonstrates how to calculate the confidence of a rule:

from pymining import perftesting

rules = perftesting.association_rules(item_sets, 0.6)

for rule in rules:
    item1 = rule[0]
    item2 = rule[1]
    confidence = rule[2]
    support = rule[3]
    print(f'Rule: {item1} -> {item2}')
    print(f'Confidence: {confidence}')
    print(f'Support: {support}
')
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In this example, we use a confidence threshold of 0.6, which means that only when the confidence of the rule is higher than 0.6, it is considered Meaningful rules.

Summary
Association rules are one of the important technologies in data mining, which can help us discover the correlation between data points. In Python, we can use association rule algorithms and evaluation metrics to find rules, evaluate rules, and analyze and predict based on the results. In practice, we may need to visualize or submit the results to a machine learning model for further analysis to gain more insights from the data.

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