【发布时间】:2019-03-25 13:57:03
【问题描述】:
我目前正在使用 mlxtend 的 Apriori 算法进行简单的频繁模式分析。目前,我只查看所有交易。但我想根据国家/地区来区分分析。我当前的脚本如下所示:
import pandas as pd
import numpy as np
import pyodbc
from mlxtend.preprocessing import TransactionEncoder
from mlxtend.frequent_patterns import apriori
from mlxtend.frequent_patterns import association_rules
dataset = pd.read_sql_query("""some query"", cnxn)
# Transform/prep dataset into list data
dataset_tx = dataset.groupby(['ReceiptCode'])['ItemCategoryName'].apply(list).values.tolist()
# Define classifier
te = TransactionEncoder()
# Binary-transform dataset
te_ary = te.fit(dataset_tx).transform(dataset_tx)
# Fit to new dataframe (sparse dataframe)
df = pd.SparseDataFrame(te_ary, columns=te.columns_)
# Run algorithm
frequent_itemsets = apriori(df, min_support=0.10, use_colnames=True)
frequent_itemsets['length'] = frequent_itemsets['itemsets'].apply(lambda x: len(x))
rules = association_rules(frequent_itemsets, metric="confidence", min_threshold=0.3)
以下是dataset 的示例。
+----------------------+--+------------------+--+------------------+
| ReceiptCode | | ItemCategoryName | | StoreCountryName |
+----------------------+--+------------------+--+------------------+
| 0000P70322000031467 | | Food | | Denmark |
| 0000P70322000031867 | | Food | | Denmark |
| 0000P70322000051467 | | Interior | | Germany |
| 0000P70322000087468 | | Kitchen | | Switzerland |
| 0000P70322000031469 | | Leisure | | Germany |
| 0000P70322000031439 | | Food | | Switzerland |
+----------------------+--+------------------+--+------------------+
是否可以根据StoreCountryName 列“自动”创建多个数据框,然后在算法中使用它,即在分析中使用特定于国家/地区的数据框并遍历所有国家/地区?我知道我可以手动创建数据框,然后应用转换和分析。
【问题讨论】:
-
for store_country_name in dataset['StoreCountryName'].unique():... 然后传递给你的算法呢?或者,您可以将它们存储在像store_country_dict = {}、for store_country_name in dataset['StoreCountryName'].unique():、store_country_dict[store_country_name] = dataset.loc[dataset['StoreCountryName'] == store_country_name]这样的字典中