PAMI.fuzzyFrequentPattern.basic package
Submodules
PAMI.fuzzyFrequentPattern.basic.FFIMiner module
- class PAMI.fuzzyFrequentPattern.basic.FFIMiner.FFIMiner(iFile: str, minSup: float, sep: str = '\t')[source]
Bases:
_fuzzyFrequentPatternsAbout this algorithm
- Description:
Fuzzy Frequent Pattern-Miner is desired to find all frequent fuzzy patterns which is on-trivial and challenging problem to its huge search space.we are using efficient pruning techniques to reduce the search space.
- Reference:
Lin, Chun-Wei & Li, Ting & Fournier Viger, Philippe & Hong, Tzung-Pei. (2015). A fast Algorithm for mining fuzzy frequent itemsets. Journal of Intelligent & Fuzzy Systems. 29. 2373-2379. 10.3233/IFS-151936. https://www.researchgate.net/publication/286510908_A_fast_Algorithm_for_mining_fuzzy_frequent_itemSets
- Parameters:
iFile (str) – Name of the Input file to mine complete set of correlated patterns
oFile (str) – Name of the output file to store complete set of correlated patterns
minSup (int or float or str) – The user can specify minSup either in count or proportion of database size. If the program detects the data type of minSup is integer, then it treats minSup is expressed in count.
sep (str) – This variable is used to distinguish items from one another in a transaction. The default seperator is tab space. However, the users can override their default separator.
- Attributes:
memoryUSS (float) – To store the total amount of USS memory consumed by the program.
memoryRSS (float) – To store the total amount of RSS memory consumed by the program.
startTime (float) – To record the start time of the mining process.
endTime (float) – To record the completion time of the mining process.
itemsCnt (int) – To record the number of fuzzy spatial itemSets generated.
mapItemSum (int) – To keep track of sum of Fuzzy Values of items.
joinsCnt (int) – * To keep track of the number of ffi-list that was constructed.*
BufferSize (int) – Represent the size of Buffer.
itemSetBuffer (list) – To keep track of items in buffer.
- Methods:
mine() – Mining process will start from here.
getPatterns() – Complete set of patterns will be retrieved with this function.
save(oFile) – Complete set of frequent patterns will be loaded in to a output file.
getPatternsAsDataFrame() – Complete set of frequent patterns will be loaded in to a dataframe.
getMemoryUSS() – Total amount of USS memory consumed by the mining process will be retrieved from this function.
getMemoryRSS() – Total amount of RSS memory consumed by the mining process will be retrieved from this function.
getRuntime() – Total amount of runtime taken by the mining process will be retrieved from this function.
convert(value) – To convert the given user specified value.
compareItems(o1, o2) – A Function that sort all ffi-list in ascending order of Support.
FSFIMining(prefix, prefixLen, FSFIM, minSup) – Method generate ffi from prefix.
construct(px, py) – A function to construct Fuzzy itemSet from 2 fuzzy itemSets.
findElementWithTID(uList, tid) – To find element with same tid as given.
WriteOut(prefix, prefixLen, item, sumIUtil) – To Store the pattern.
Execution methods
Terminal command
Format: (.venv) $ python3 FFIMiner.py <inputFile> <outputFile> <minSup> <sep> Example Usage: (.venv) $ python3 FFIMiner.py sampleTDB.txt output.txt 6
Note
minSup can be specified in support count or a value between 0 and 1.
Calling from a python program
from PAMI.fuzzyFrequentPattern import FFIMiner as alg iFile = 'sampleTDB.txt' minSup = 0.25 # can be specified between 0 and 1 obj = alg.CoMine(iFile, minSup, sep) obj.mine() fuzzyFrequentPattern = obj.getPatterns() print("Total number of Fuzzy Frequent Patterns:", len(fuzzyFrequentPattern)) obj.save("outputFile") memUSS = obj.getMemoryUSS() print("Total Memory in USS:", memUSS) memRSS = obj.getMemoryRSS() print("Total Memory in RSS", memRSS) run = obj.getRuntime() print("Total ExecutionTime in seconds:", run)
Credits
The complete program was written by B.Sai Chitra and revised by Tarun Sreepada under the supervision of Professor Rage Uday Kiran.
- dfs(cands)[source]
Perform depth-first search (DFS) to find frequent patterns in a database.
This method recursively combines candidate patterns and calculates their support in the database, storing frequent patterns and their support counts.
- Parameters:
cands (list) – List of candidate patterns represented as tuples.
- Returns:
None
This method does not return anything explicitly, but it updates internal attributes _finalPatterns and _Database with frequent patterns and their support counts.
- getMemoryRSS() float[source]
Total amount of RSS memory consumed by the mining process will be retrieved from this function
- Returns:
returning RSS memory consumed by the mining process
- Return type:
float
- getMemoryUSS() float[source]
Total amount of USS memory consumed by the mining process will be retrieved from this function
- Returns:
returning USS memory consumed by the mining process
- Return type:
float
- getPatterns() dict[source]
Function to send the set of frequent patterns after completion of the mining process
- Returns:
returning frequent patterns
- Return type:
dict
- getPatternsAsDataFrame() DataFrame[source]
Storing final frequent patterns in a dataframe
- Returns:
returning frequent patterns in a dataframe
- Return type:
pd.DataFrame
- getRuntime() float[source]
Calculating the total amount of runtime taken by the mining process
- Returns:
returning total amount of runtime taken by the mining process
- Return type:
float