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# The ASF licenses this file to You under the Apache License, Version 2.0
# (the "License"); you may not use this file except in compliance with
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# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
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from pyspark import keyword_only, since
from pyspark.ml.util import *
from pyspark.ml.wrapper import JavaEstimator, JavaModel
from pyspark.ml.param.shared import *
__all__ = ["FPGrowth", "FPGrowthModel"]
class HasMinSupport(Params):
"""
Mixin for param minSupport.
"""
minSupport = Param(
Params._dummy(),
"minSupport",
"Minimal support level of the frequent pattern. [0.0, 1.0]. " +
"Any pattern that appears more than (minSupport * size-of-the-dataset) " +
"times will be output in the frequent itemsets.",
typeConverter=TypeConverters.toFloat)
def setMinSupport(self, value):
"""
Sets the value of :py:attr:`minSupport`.
"""
return self._set(minSupport=value)
def getMinSupport(self):
"""
Gets the value of minSupport or its default value.
"""
return self.getOrDefault(self.minSupport)
class HasNumPartitions(Params):
"""
Mixin for param numPartitions: Number of partitions (at least 1) used by parallel FP-growth.
"""
numPartitions = Param(
Params._dummy(),
"numPartitions",
"Number of partitions (at least 1) used by parallel FP-growth. " +
"By default the param is not set, " +
"and partition number of the input dataset is used.",
typeConverter=TypeConverters.toInt)
def setNumPartitions(self, value):
"""
Sets the value of :py:attr:`numPartitions`.
"""
return self._set(numPartitions=value)
def getNumPartitions(self):
"""
Gets the value of :py:attr:`numPartitions` or its default value.
"""
return self.getOrDefault(self.numPartitions)
class HasMinConfidence(Params):
"""
Mixin for param minConfidence.
"""
minConfidence = Param(
Params._dummy(),
"minConfidence",
"Minimal confidence for generating Association Rule. [0.0, 1.0]. " +
"minConfidence will not affect the mining for frequent itemsets, " +
"but will affect the association rules generation.",
typeConverter=TypeConverters.toFloat)
def setMinConfidence(self, value):
"""
Sets the value of :py:attr:`minConfidence`.
"""
return self._set(minConfidence=value)
def getMinConfidence(self):
"""
Gets the value of minConfidence or its default value.
"""
return self.getOrDefault(self.minConfidence)
class HasItemsCol(Params):
"""
Mixin for param itemsCol: items column name.
"""
itemsCol = Param(Params._dummy(), "itemsCol",
"items column name", typeConverter=TypeConverters.toString)
def setItemsCol(self, value):
"""
Sets the value of :py:attr:`itemsCol`.
"""
return self._set(itemsCol=value)
def getItemsCol(self):
"""
Gets the value of itemsCol or its default value.
"""
return self.getOrDefault(self.itemsCol)
[docs]class FPGrowthModel(JavaModel, JavaMLWritable, JavaMLReadable):
"""
.. note:: Experimental
Model fitted by FPGrowth.
.. versionadded:: 2.2.0
"""
@property
@since("2.2.0")
def freqItemsets(self):
"""
DataFrame with two columns:
* `items` - Itemset of the same type as the input column.
* `freq` - Frequency of the itemset (`LongType`).
"""
return self._call_java("freqItemsets")
@property
@since("2.2.0")
def associationRules(self):
"""
DataFrame with three columns:
* `antecedent` - Array of the same type as the input column.
* `consequent` - Array of the same type as the input column.
* `confidence` - Confidence for the rule (`DoubleType`).
"""
return self._call_java("associationRules")
[docs]class FPGrowth(JavaEstimator, HasItemsCol, HasPredictionCol,
HasMinSupport, HasNumPartitions, HasMinConfidence,
JavaMLWritable, JavaMLReadable):
"""
.. note:: Experimental
A parallel FP-growth algorithm to mine frequent itemsets. The algorithm is described in
Li et al., PFP: Parallel FP-Growth for Query Recommendation [LI2008]_.
PFP distributes computation in such a way that each worker executes an
independent group of mining tasks. The FP-Growth algorithm is described in
Han et al., Mining frequent patterns without candidate generation [HAN2000]_
.. [LI2008] http://dx.doi.org/10.1145/1454008.1454027
.. [HAN2000] http://dx.doi.org/10.1145/335191.335372
.. note:: null values in the feature column are ignored during fit().
.. note:: Internally `transform` `collects` and `broadcasts` association rules.
>>> from pyspark.sql.functions import split
>>> data = (spark.read
... .text("data/mllib/sample_fpgrowth.txt")
... .select(split("value", "\s+").alias("items")))
>>> data.show(truncate=False)
+------------------------+
|items |
+------------------------+
|[r, z, h, k, p] |
|[z, y, x, w, v, u, t, s]|
|[s, x, o, n, r] |
|[x, z, y, m, t, s, q, e]|
|[z] |
|[x, z, y, r, q, t, p] |
+------------------------+
>>> fp = FPGrowth(minSupport=0.2, minConfidence=0.7)
>>> fpm = fp.fit(data)
>>> fpm.freqItemsets.show(5)
+---------+----+
| items|freq|
+---------+----+
| [s]| 3|
| [s, x]| 3|
|[s, x, z]| 2|
| [s, z]| 2|
| [r]| 3|
+---------+----+
only showing top 5 rows
>>> fpm.associationRules.show(5)
+----------+----------+----------+
|antecedent|consequent|confidence|
+----------+----------+----------+
| [t, s]| [y]| 1.0|
| [t, s]| [x]| 1.0|
| [t, s]| [z]| 1.0|
| [p]| [r]| 1.0|
| [p]| [z]| 1.0|
+----------+----------+----------+
only showing top 5 rows
>>> new_data = spark.createDataFrame([(["t", "s"], )], ["items"])
>>> sorted(fpm.transform(new_data).first().prediction)
['x', 'y', 'z']
.. versionadded:: 2.2.0
"""
@keyword_only
def __init__(self, minSupport=0.3, minConfidence=0.8, itemsCol="items",
predictionCol="prediction", numPartitions=None):
"""
__init__(self, minSupport=0.3, minConfidence=0.8, itemsCol="items", \
predictionCol="prediction", numPartitions=None)
"""
super(FPGrowth, self).__init__()
self._java_obj = self._new_java_obj("org.apache.spark.ml.fpm.FPGrowth", self.uid)
self._setDefault(minSupport=0.3, minConfidence=0.8,
itemsCol="items", predictionCol="prediction")
kwargs = self._input_kwargs
self.setParams(**kwargs)
[docs] @keyword_only
@since("2.2.0")
def setParams(self, minSupport=0.3, minConfidence=0.8, itemsCol="items",
predictionCol="prediction", numPartitions=None):
"""
setParams(self, minSupport=0.3, minConfidence=0.8, itemsCol="items", \
predictionCol="prediction", numPartitions=None)
"""
kwargs = self._input_kwargs
return self._set(**kwargs)
def _create_model(self, java_model):
return FPGrowthModel(java_model)