# Transactional Database is a class used to get stats of database.
#
# **Importing this algorithm into a python program**
# --------------------------------------------------------
#
# from PAMI.extras.stats import transactionalDatabase as db
#
# obj = db.transactionalDatabase(iFile, "\t")
#
# obj.save(oFile)
#
# obj.run()
#
# obj.printStats()
#
__copyright__ = """
Copyright (C) 2021 Rage Uday Kiran
This program is free software: you can redistribute it and/or modify
it under the terms of the GNU General Public License as published by
the Free Software Foundation, either version 3 of the License, or
(at your option) any later version.
This program is distributed in the hope that it will be useful,
but WITHOUT ANY WARRANTY; without even the implied warranty of
MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
GNU General Public License for more details.
You should have received a copy of the GNU General Public License
along with this program. If not, see <https://www.gnu.org/licenses/>.
"""
import sys
import statistics
import pandas as pd
import validators
import numpy as np
from urllib.request import urlopen
from typing import List, Dict, Tuple, Set, Union, Any, Generator
import PAMI.extras.graph.plotLineGraphFromDictionary as plt
[docs]
class TransactionalDatabase:
"""
:Description: TransactionalDatabase is class to get stats of database.
:Attributes:
:param inputFile: file :
input file path
:param sep: str
separator in file. Default is tab space.
:Methods:
run()
execute readDatabase function
readDatabase()
read database from input file
getDatabaseSize()
get the size of database
getMinimumTransactionLength()
get the minimum transaction length
getAverageTransactionLength()
get the average transaction length. It is sum of all transaction length divided by database length.
getMaximumTransactionLength()
get the maximum transaction length
getStandardDeviationTransactionLength()
get the standard deviation of transaction length
getSortedListOfItemFrequencies()
get sorted list of item frequencies
getSortedListOfTransactionLength()
get sorted list of transaction length
save(data, outputFile)
store data into outputFile
getMinimumPeriod()
get the minimum period
getAveragePeriod()
get the average period
getMaximumPeriod()
get the maximum period
getStandardDeviationPeriod()
get the standard deviation period
getNumberOfTransactionsPerTimestamp()
get number of transactions per time stamp. This time stamp range is 1 to max period.
**Importing this algorithm into a python program**
--------------------------------------------------------
.. code-block:: python
from PAMI.extras.stats import TransactionalDatabase as db
obj = db.TransactionalDatabase(iFile, "\t")
obj.save(oFile)
obj.run()
obj.printStats()
"""
def __init__(self, inputFile: Union[str, pd.DataFrame], sep: str = '\t') -> None:
"""
:param inputFile: input file name or path
:type inputFile: str
:param sep: separator
:type sep: str
:return: None
"""
self.inputFile = inputFile
self.lengthList = []
self.sep = sep
self.database = {}
self.itemFrequencies = {}
[docs]
def run(self) -> None:
"""
read database from input file and store into database and size of each transaction.
"""
# self.creatingItemSets()
numberOfTransaction = 0
if isinstance(self.inputFile, pd.DataFrame):
if self.inputFile.empty:
print("its empty..")
i = self.inputFile.columns.values.tolist()
if 'tid' in i and 'Transactions' in i:
self.database = self.inputFile.set_index('tid').T.to_dict(orient='records')[0]
if 'tid' in i and 'Patterns' in i:
self.database = self.inputFile.set_index('tid').T.to_dict(orient='records')[0]
if isinstance(self.inputFile, str):
if validators.url(self.inputFile):
_data = urlopen(self.inputFile)
for line in _data:
numberOfTransaction += 1
line.strip()
line = line.decode("utf-8")
temp = [i.rstrip() for i in line.split(self.sep)]
temp = [x for x in temp if x]
self.database[numberOfTransaction] = temp
else:
try:
with open(self.inputFile, 'r', encoding='utf-8') as f:
for line in f:
numberOfTransaction += 1
line.strip()
temp = [i.rstrip() for i in line.split(self.sep)]
temp = [x for x in temp if x]
self.database[numberOfTransaction] = temp
except IOError:
print("File Not Found")
quit()
self.lengthList = [len(s) for s in self.database.values()]
[docs]
def getDatabaseSize(self) -> int:
"""
get the size of database
:return: dataset size
:rtype: int
"""
return len(self.database)
[docs]
def getTotalNumberOfItems(self) -> int:
"""
get the number of items in database.
:return: number of items
:rtype: int
"""
return len(self.getSortedListOfItemFrequencies())
[docs]
def getMinimumTransactionLength(self) -> int:
"""
get the minimum transaction length
:return: minimum transaction length
:rtype: int
"""
return min(self.lengthList)
[docs]
def getAverageTransactionLength(self) -> float:
"""
get the average transaction length. It is sum of all transaction length divided by database length.
:return: average transaction length
:rtype: float
"""
totalLength = sum(self.lengthList)
return totalLength / len(self.database)
[docs]
def getMaximumTransactionLength(self) -> int:
"""
get the maximum transaction length
:return: maximum transaction length
:rtype: int
"""
return max(self.lengthList)
[docs]
def getStandardDeviationTransactionLength(self) -> float:
"""
get the standard deviation transaction length
:return: standard deviation transaction length
:rtype: float
"""
return statistics.pstdev(self.lengthList)
[docs]
def getVarianceTransactionLength(self) -> float:
"""
get the variance transaction length
:return: variance transaction length
:rtype: float
"""
return statistics.variance(self.lengthList)
[docs]
def getNumberOfItems(self) -> int:
"""
get the number of items in database.
:return: number of items
:rtype: int
"""
return len(self.getSortedListOfItemFrequencies())
[docs]
def convertDataIntoMatrix(self) -> np.ndarray:
singleItems = self.getSortedListOfItemFrequencies()
# big_array = np.zeros((self.getDatabaseSize(), len(self.getSortedListOfItemFrequencies())))
itemsets = {}
for i in self.database:
for item in singleItems:
if item in itemsets:
if item in self.database[i]:
itemsets[item].append(1)
else:
itemsets[item].append(0)
else:
if item in self.database[i]:
itemsets[item] = [1]
else:
itemsets[item] = [0]
# new = pd.DataFrame.from_dict(itemsets)
_data = list(itemsets.values())
an_array = np.array(_data)
return an_array
[docs]
def getSparsity(self) -> float:
"""
get the sparsity of database. sparsity is percentage of 0 of database.
:return: database sparsity
:rtype: float
"""
big_array = self.convertDataIntoMatrix()
n_zeros = np.count_nonzero(big_array == 0)
return n_zeros / big_array.size
[docs]
def getDensity(self) -> float:
"""
get the sparsity of database. sparsity is percentage of 0 of database.
:return: database sparsity
:rtype: float
"""
big_array = self.convertDataIntoMatrix()
n_zeros = np.count_nonzero(big_array != 0)
return n_zeros / big_array.size
[docs]
def getSortedListOfItemFrequencies(self) -> dict:
"""
get sorted list of item frequencies
:return: item frequencies
:rtype: dict
"""
itemFrequencies = {}
for tid in self.database:
for item in self.database[tid]:
itemFrequencies[item] = itemFrequencies.get(item, 0)
itemFrequencies[item] += 1
self.itemFrequencies = {k: v for k, v in sorted(itemFrequencies.items(), key=lambda x: x[1], reverse=True)}
return self.itemFrequencies
[docs]
def getFrequenciesInRange(self) -> dict:
fre = self.getSortedListOfItemFrequencies()
rangeFrequencies = {}
maximum = max([i for i in fre.values()])
values = [int(i*maximum/6) for i in range(1,6)]
va = len({key: val for key, val in fre.items() if 0 < val < values[0]})
rangeFrequencies[va] = values[0]
for i in range(1,len(values)):
va = len({key: val for key, val in fre.items() if values[i] > val > values[i - 1]})
rangeFrequencies[va] = values[i]
return rangeFrequencies
[docs]
def getTransanctionalLengthDistribution(self) -> dict:
"""
Get transaction length
:return: a dictionary with transaction
:rtype: dict
"""
transactionLength = {}
for length in self.lengthList:
transactionLength[length] = transactionLength.get(length, 0)
transactionLength[length] += 1
return {k: v for k, v in sorted(transactionLength.items(), key=lambda x: x[0])}
[docs]
def save(self, data_: dict, outputFile: str) -> None:
"""
store data into outputFile
:param data_: input data
:type data_: dict
:param outputFile: output file name or path to store
:type outputFile: str
:return: None
"""
with open(outputFile, 'w') as f:
for key, value in data_.items():
f.write(f'{key}\t{value}\n')
[docs]
def printStats(self) -> None:
print(f'Database size (total no of transactions) : {self.getDatabaseSize()}')
print(f'Number of items : {self.getNumberOfItems()}')
print(f'Minimum Transaction Size : {self.getMinimumTransactionLength()}')
print(f'Average Transaction Size : {self.getAverageTransactionLength()}')
print(f'Maximum Transaction Size : {self.getMaximumTransactionLength()}')
print(f'Standard Deviation Transaction Size : {self.getStandardDeviationTransactionLength()}')
print(f'Variance in Transaction Sizes : {self.getVarianceTransactionLength()}')
print(f'Sparsity : {self.getSparsity()}')
[docs]
def plotGraphs(self) -> None:
# itemFrequencies = self.getFrequenciesInRange()
transactionLength = self.getTransanctionalLengthDistribution()
plt.plotLineGraphFromDictionary(self.itemFrequencies, 100, 0, 'Frequency', 'No of items', 'frequency')
plt.plotLineGraphFromDictionary(transactionLength, 100, 0, 'transaction length', 'transaction length', 'frequency')
if __name__ == '__main__':
data = {'tid': [1, 2, 3, 4, 5, 6, 7],
'Transactions': [['a', 'd', 'e'], ['b', 'a', 'f', 'g', 'h'], ['b', 'a', 'd', 'f'], ['b', 'a', 'c'],
['a', 'd', 'g', 'k'],
['b', 'd', 'g', 'c', 'i'], ['b', 'd', 'g', 'e', 'j']]}
# data = pd.DataFrame.from_dict('transactional_T10I4D100K.csv')
import PAMI.extras.graph.plotLineGraphFromDictionary as plt
import pandas as pd
# obj = TransactionalDatabase(data)
obj = TransactionalDatabase(sys.argv[1], sys.argv[2])
#obj = TransactionalDatabase(pd.DataFrame(data))
obj.run()
obj.printStats()
obj.plotGraphs()