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learning.py
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"""Learn to estimate functions from examples. (Chapters 18, 20)"""
from utils import (
removeall, unique, product, mode, argmax, argmax_random_tie, isclose, gaussian,
dotproduct, vector_add, scalar_vector_product, weighted_sample_with_replacement,
weighted_sampler, num_or_str, normalize, clip, sigmoid, print_table,
open_data, sigmoid_derivative, probability, norm, matrix_multiplication, relu, relu_derivative,
tanh, tanh_derivative, leaky_relu, leaky_relu_derivative, elu, elu_derivative
)
import copy
import heapq
import math
import random
from statistics import mean, stdev
from collections import defaultdict
# ______________________________________________________________________________
def euclidean_distance(X, Y):
return math.sqrt(sum((x - y)**2 for x, y in zip(X, Y)))
def cross_entropy_loss(X, Y):
n=len(X)
return (-1.0/n)*sum(x*math.log(y) + (1-x)*math.log(1-y) for x, y in zip(X, Y))
def rms_error(X, Y):
return math.sqrt(ms_error(X, Y))
def ms_error(X, Y):
return mean((x - y)**2 for x, y in zip(X, Y))
def mean_error(X, Y):
return mean(abs(x - y) for x, y in zip(X, Y))
def manhattan_distance(X, Y):
return sum(abs(x - y) for x, y in zip(X, Y))
def mean_boolean_error(X, Y):
return mean(int(x != y) for x, y in zip(X, Y))
def hamming_distance(X, Y):
return sum(x != y for x, y in zip(X, Y))
# ______________________________________________________________________________
class DataSet:
"""A data set for a machine learning problem. It has the following fields:
d.examples A list of examples. Each one is a list of attribute values.
d.attrs A list of integers to index into an example, so example[attr]
gives a value. Normally the same as range(len(d.examples[0])).
d.attrnames Optional list of mnemonic names for corresponding attrs.
d.target The attribute that a learning algorithm will try to predict.
By default the final attribute.
d.inputs The list of attrs without the target.
d.values A list of lists: each sublist is the set of possible
values for the corresponding attribute. If initially None,
it is computed from the known examples by self.setproblem.
If not None, an erroneous value raises ValueError.
d.distance A function from a pair of examples to a nonnegative number.
Should be symmetric, etc. Defaults to mean_boolean_error
since that can handle any field types.
d.name Name of the data set (for output display only).
d.source URL or other source where the data came from.
d.exclude A list of attribute indexes to exclude from d.inputs. Elements
of this list can either be integers (attrs) or attrnames.
Normally, you call the constructor and you're done; then you just
access fields like d.examples and d.target and d.inputs."""
def __init__(self, examples=None, attrs=None, attrnames=None, target=-1,
inputs=None, values=None, distance=mean_boolean_error,
name='', source='', exclude=()):
"""Accepts any of DataSet's fields. Examples can also be a
string or file from which to parse examples using parse_csv.
Optional parameter: exclude, as documented in .setproblem().
>>> DataSet(examples='1, 2, 3')
<DataSet(): 1 examples, 3 attributes>
"""
self.name = name
self.source = source
self.values = values
self.distance = distance
self.got_values_flag = bool(values)
# Initialize .examples from string or list or data directory
if isinstance(examples, str):
self.examples = parse_csv(examples)
elif examples is None:
self.examples = parse_csv(open_data(name + '.csv').read())
else:
self.examples = examples
# Attrs are the indices of examples, unless otherwise stated.
if self.examples is not None and attrs is None:
attrs = list(range(len(self.examples[0])))
self.attrs = attrs
# Initialize .attrnames from string, list, or by default
if isinstance(attrnames, str):
self.attrnames = attrnames.split()
else:
self.attrnames = attrnames or attrs
self.setproblem(target, inputs=inputs, exclude=exclude)
def setproblem(self, target, inputs=None, exclude=()):
"""Set (or change) the target and/or inputs.
This way, one DataSet can be used multiple ways. inputs, if specified,
is a list of attributes, or specify exclude as a list of attributes
to not use in inputs. Attributes can be -n .. n, or an attrname.
Also computes the list of possible values, if that wasn't done yet."""
self.target = self.attrnum(target)
exclude = list(map(self.attrnum, exclude))
if inputs:
self.inputs = removeall(self.target, inputs)
else:
self.inputs = [a for a in self.attrs
if a != self.target and a not in exclude]
if not self.values:
self.update_values()
self.check_me()
def check_me(self):
"""Check that my fields make sense."""
assert len(self.attrnames) == len(self.attrs)
assert self.target in self.attrs
assert self.target not in self.inputs
assert set(self.inputs).issubset(set(self.attrs))
if self.got_values_flag:
# only check if values are provided while initializing DataSet
list(map(self.check_example, self.examples))
def add_example(self, example):
"""Add an example to the list of examples, checking it first."""
self.check_example(example)
self.examples.append(example)
def check_example(self, example):
"""Raise ValueError if example has any invalid values."""
if self.values:
for a in self.attrs:
if example[a] not in self.values[a]:
raise ValueError('Bad value {} for attribute {} in {}'
.format(example[a], self.attrnames[a], example))
def attrnum(self, attr):
"""Returns the number used for attr, which can be a name, or -n .. n-1."""
if isinstance(attr, str):
return self.attrnames.index(attr)
elif attr < 0:
return len(self.attrs) + attr
else:
return attr
def update_values(self):
self.values = list(map(unique, zip(*self.examples)))
def sanitize(self, example):
"""Return a copy of example, with non-input attributes replaced by None."""
return [attr_i if i in self.inputs else None
for i, attr_i in enumerate(example)]
def classes_to_numbers(self, classes=None):
"""Converts class names to numbers."""
if not classes:
# If classes were not given, extract them from values
classes = sorted(self.values[self.target])
for item in self.examples:
item[self.target] = classes.index(item[self.target])
def remove_examples(self, value=''):
"""Remove examples that contain given value."""
self.examples = [x for x in self.examples if value not in x]
self.update_values()
def split_values_by_classes(self):
"""Split values into buckets according to their class."""
buckets = defaultdict(lambda: [])
target_names = self.values[self.target]
for v in self.examples:
item = [a for a in v if a not in target_names] # Remove target from item
buckets[v[self.target]].append(item) # Add item to bucket of its class
return buckets
def find_means_and_deviations(self):
"""Finds the means and standard deviations of self.dataset.
means : A dictionary for each class/target. Holds a list of the means
of the features for the class.
deviations: A dictionary for each class/target. Holds a list of the sample
standard deviations of the features for the class."""
target_names = self.values[self.target]
feature_numbers = len(self.inputs)
item_buckets = self.split_values_by_classes()
means = defaultdict(lambda: [0] * feature_numbers)
deviations = defaultdict(lambda: [0] * feature_numbers)
for t in target_names:
# Find all the item feature values for item in class t
features = [[] for i in range(feature_numbers)]
for item in item_buckets[t]:
for i in range(feature_numbers):
features[i].append(item[i])
# Calculate means and deviations fo the class
for i in range(feature_numbers):
means[t][i] = mean(features[i])
deviations[t][i] = stdev(features[i])
return means, deviations
def __repr__(self):
return '<DataSet({}): {:d} examples, {:d} attributes>'.format(
self.name, len(self.examples), len(self.attrs))
# ______________________________________________________________________________
def parse_csv(input, delim=','):
r"""Input is a string consisting of lines, each line has comma-delimited
fields. Convert this into a list of lists. Blank lines are skipped.
Fields that look like numbers are converted to numbers.
The delim defaults to ',' but '\t' and None are also reasonable values.
>>> parse_csv('1, 2, 3 \n 0, 2, na')
[[1, 2, 3], [0, 2, 'na']]"""
lines = [line for line in input.splitlines() if line.strip()]
return [list(map(num_or_str, line.split(delim))) for line in lines]
# ______________________________________________________________________________
class CountingProbDist:
"""A probability distribution formed by observing and counting examples.
If p is an instance of this class and o is an observed value, then
there are 3 main operations:
p.add(o) increments the count for observation o by 1.
p.sample() returns a random element from the distribution.
p[o] returns the probability for o (as in a regular ProbDist)."""
def __init__(self, observations=None, default=0):
"""Create a distribution, and optionally add in some observations.
By default this is an unsmoothed distribution, but saying default=1,
for example, gives you add-one smoothing."""
if observations is None:
observations = []
self.dictionary = {}
self.n_obs = 0
self.default = default
self.sampler = None
for o in observations:
self.add(o)
def add(self, o):
"""Add an observation o to the distribution."""
self.smooth_for(o)
self.dictionary[o] += 1
self.n_obs += 1
self.sampler = None
def smooth_for(self, o):
"""Include o among the possible observations, whether or not
it's been observed yet."""
if o not in self.dictionary:
self.dictionary[o] = self.default
self.n_obs += self.default
self.sampler = None
def __getitem__(self, item):
"""Return an estimate of the probability of item."""
self.smooth_for(item)
return self.dictionary[item] / self.n_obs
# (top() and sample() are not used in this module, but elsewhere.)
def top(self, n):
"""Return (count, obs) tuples for the n most frequent observations."""
return heapq.nlargest(n, [(v, k) for (k, v) in self.dictionary.items()])
def sample(self):
"""Return a random sample from the distribution."""
if self.sampler is None:
self.sampler = weighted_sampler(list(self.dictionary.keys()),
list(self.dictionary.values()))
return self.sampler()
# ______________________________________________________________________________
def PluralityLearner(dataset):
"""A very dumb algorithm: always pick the result that was most popular
in the training data. Makes a baseline for comparison."""
most_popular = mode([e[dataset.target] for e in dataset.examples])
def predict(example):
"""Always return same result: the most popular from the training set."""
return most_popular
return predict
# ______________________________________________________________________________
def NaiveBayesLearner(dataset, continuous=True, simple=False):
if simple:
return NaiveBayesSimple(dataset)
if continuous:
return NaiveBayesContinuous(dataset)
else:
return NaiveBayesDiscrete(dataset)
def NaiveBayesSimple(distribution):
"""A simple naive bayes classifier that takes as input a dictionary of
CountingProbDist objects and classifies items according to these distributions.
The input dictionary is in the following form:
(ClassName, ClassProb): CountingProbDist"""
target_dist = {c_name: prob for c_name, prob in distribution.keys()}
attr_dists = {c_name: count_prob for (c_name, _), count_prob in distribution.items()}
def predict(example):
"""Predict the target value for example. Calculate probabilities for each
class and pick the max."""
def class_probability(targetval):
attr_dist = attr_dists[targetval]
return target_dist[targetval] * product(attr_dist[a] for a in example)
return argmax(target_dist.keys(), key=class_probability)
return predict
def NaiveBayesDiscrete(dataset):
"""Just count how many times each value of each input attribute
occurs, conditional on the target value. Count the different
target values too."""
target_vals = dataset.values[dataset.target]
target_dist = CountingProbDist(target_vals)
attr_dists = {(gv, attr): CountingProbDist(dataset.values[attr])
for gv in target_vals
for attr in dataset.inputs}
for example in dataset.examples:
targetval = example[dataset.target]
target_dist.add(targetval)
for attr in dataset.inputs:
attr_dists[targetval, attr].add(example[attr])
def predict(example):
"""Predict the target value for example. Consider each possible value,
and pick the most likely by looking at each attribute independently."""
def class_probability(targetval):
return (target_dist[targetval] *
product(attr_dists[targetval, attr][example[attr]]
for attr in dataset.inputs))
return argmax(target_vals, key=class_probability)
return predict
def NaiveBayesContinuous(dataset):
"""Count how many times each target value occurs.
Also, find the means and deviations of input attribute values for each target value."""
means, deviations = dataset.find_means_and_deviations()
target_vals = dataset.values[dataset.target]
target_dist = CountingProbDist(target_vals)
def predict(example):
"""Predict the target value for example. Consider each possible value,
and pick the most likely by looking at each attribute independently."""
def class_probability(targetval):
prob = target_dist[targetval]
for attr in dataset.inputs:
prob *= gaussian(means[targetval][attr], deviations[targetval][attr], example[attr])
return prob
return argmax(target_vals, key=class_probability)
return predict
# ______________________________________________________________________________
def NearestNeighborLearner(dataset, k=1):
"""k-NearestNeighbor: the k nearest neighbors vote."""
def predict(example):
"""Find the k closest items, and have them vote for the best."""
best = heapq.nsmallest(k, ((dataset.distance(e, example), e)
for e in dataset.examples))
return mode(e[dataset.target] for (d, e) in best)
return predict
# ______________________________________________________________________________
def truncated_svd(X, num_val=2, max_iter=1000):
"""Compute the first component of SVD."""
def normalize_vec(X, n=2):
"""Normalize two parts (:m and m:) of the vector."""
X_m = X[:m]
X_n = X[m:]
norm_X_m = norm(X_m, n)
Y_m = [x/norm_X_m for x in X_m]
norm_X_n = norm(X_n, n)
Y_n = [x/norm_X_n for x in X_n]
return Y_m + Y_n
def remove_component(X):
"""Remove components of already obtained eigen vectors from X."""
X_m = X[:m]
X_n = X[m:]
for eivec in eivec_m:
coeff = dotproduct(X_m, eivec)
X_m = [x1 - coeff*x2 for x1, x2 in zip(X_m, eivec)]
for eivec in eivec_n:
coeff = dotproduct(X_n, eivec)
X_n = [x1 - coeff*x2 for x1, x2 in zip(X_n, eivec)]
return X_m + X_n
m, n = len(X), len(X[0])
A = [[0]*(n+m) for _ in range(n+m)]
for i in range(m):
for j in range(n):
A[i][m+j] = A[m+j][i] = X[i][j]
eivec_m = []
eivec_n = []
eivals = []
for _ in range(num_val):
X = [random.random() for _ in range(m+n)]
X = remove_component(X)
X = normalize_vec(X)
for i in range(max_iter):
old_X = X
X = matrix_multiplication(A, [[x] for x in X])
X = [x[0] for x in X]
X = remove_component(X)
X = normalize_vec(X)
# check for convergence
if norm([x1 - x2 for x1, x2 in zip(old_X, X)]) <= 1e-10:
break
projected_X = matrix_multiplication(A, [[x] for x in X])
projected_X = [x[0] for x in projected_X]
new_eigenvalue = norm(projected_X, 1)/norm(X, 1)
ev_m = X[:m]
ev_n = X[m:]
if new_eigenvalue < 0:
new_eigenvalue = -new_eigenvalue
ev_m = [-ev_m_i for ev_m_i in ev_m]
eivals.append(new_eigenvalue)
eivec_m.append(ev_m)
eivec_n.append(ev_n)
return (eivec_m, eivec_n, eivals)
# ______________________________________________________________________________
class DecisionFork:
"""A fork of a decision tree holds an attribute to test, and a dict
of branches, one for each of the attribute's values."""
def __init__(self, attr, attrname=None, default_child=None, branches=None):
"""Initialize by saying what attribute this node tests."""
self.attr = attr
self.attrname = attrname or attr
self.default_child = default_child
self.branches = branches or {}
def __call__(self, example):
"""Given an example, classify it using the attribute and the branches."""
attrvalue = example[self.attr]
if attrvalue in self.branches:
return self.branches[attrvalue](example)
else:
# return default class when attribute is unknown
return self.default_child(example)
def add(self, val, subtree):
"""Add a branch. If self.attr = val, go to the given subtree."""
self.branches[val] = subtree
def display(self, indent=0):
name = self.attrname
print('Test', name)
for (val, subtree) in self.branches.items():
print(' ' * 4 * indent, name, '=', val, '==>', end=' ')
subtree.display(indent + 1)
print() # newline
def __repr__(self):
return ('DecisionFork({0!r}, {1!r}, {2!r})'
.format(self.attr, self.attrname, self.branches))
class DecisionLeaf:
"""A leaf of a decision tree holds just a result."""
def __init__(self, result):
self.result = result
def __call__(self, example):
return self.result
def display(self, indent=0):
print('RESULT =', self.result)
def __repr__(self):
return repr(self.result)
# ______________________________________________________________________________
def DecisionTreeLearner(dataset):
"""[Figure 18.5]"""
target, values = dataset.target, dataset.values
def decision_tree_learning(examples, attrs, parent_examples=()):
if len(examples) == 0:
return plurality_value(parent_examples)
elif all_same_class(examples):
return DecisionLeaf(examples[0][target])
elif len(attrs) == 0:
return plurality_value(examples)
else:
A = choose_attribute(attrs, examples)
tree = DecisionFork(A, dataset.attrnames[A], plurality_value(examples))
for (v_k, exs) in split_by(A, examples):
subtree = decision_tree_learning(
exs, removeall(A, attrs), examples)
tree.add(v_k, subtree)
return tree
def plurality_value(examples):
"""Return the most popular target value for this set of examples.
(If target is binary, this is the majority; otherwise plurality.)"""
popular = argmax_random_tie(values[target],
key=lambda v: count(target, v, examples))
return DecisionLeaf(popular)
def count(attr, val, examples):
"""Count the number of examples that have example[attr] = val."""
return sum(e[attr] == val for e in examples)
def all_same_class(examples):
"""Are all these examples in the same target class?"""
class0 = examples[0][target]
return all(e[target] == class0 for e in examples)
def choose_attribute(attrs, examples):
"""Choose the attribute with the highest information gain."""
return argmax_random_tie(attrs,
key=lambda a: information_gain(a, examples))
def information_gain(attr, examples):
"""Return the expected reduction in entropy from splitting by attr."""
def I(examples):
return information_content([count(target, v, examples)
for v in values[target]])
N = len(examples)
remainder = sum((len(examples_i)/N) * I(examples_i)
for (v, examples_i) in split_by(attr, examples))
return I(examples) - remainder
def split_by(attr, examples):
"""Return a list of (val, examples) pairs for each val of attr."""
return [(v, [e for e in examples if e[attr] == v])
for v in values[attr]]
return decision_tree_learning(dataset.examples, dataset.inputs)
def information_content(values):
"""Number of bits to represent the probability distribution in values."""
probabilities = normalize(removeall(0, values))
return sum(-p * math.log2(p) for p in probabilities)
# ______________________________________________________________________________
def RandomForest(dataset, n=5):
"""An ensemble of Decision Trees trained using bagging and feature bagging."""
def data_bagging(dataset, m=0):
"""Sample m examples with replacement"""
n = len(dataset.examples)
return weighted_sample_with_replacement(m or n, dataset.examples, [1]*n)
def feature_bagging(dataset, p=0.7):
"""Feature bagging with probability p to retain an attribute"""
inputs = [i for i in dataset.inputs if probability(p)]
return inputs or dataset.inputs
def predict(example):
print([predictor(example) for predictor in predictors])
return mode(predictor(example) for predictor in predictors)
predictors = [DecisionTreeLearner(DataSet(examples=data_bagging(dataset),
attrs=dataset.attrs,
attrnames=dataset.attrnames,
target=dataset.target,
inputs=feature_bagging(dataset))) for _ in range(n)]
return predict
# ______________________________________________________________________________
# A decision list is implemented as a list of (test, value) pairs.
def DecisionListLearner(dataset):
"""[Figure 18.11]"""
def decision_list_learning(examples):
if not examples:
return [(True, False)]
t, o, examples_t = find_examples(examples)
if not t:
raise Exception
return [(t, o)] + decision_list_learning(examples - examples_t)
def find_examples(examples):
"""Find a set of examples that all have the same outcome under
some test. Return a tuple of the test, outcome, and examples."""
raise NotImplementedError
def passes(example, test):
"""Does the example pass the test?"""
raise NotImplementedError
def predict(example):
"""Predict the outcome for the first passing test."""
for test, outcome in predict.decision_list:
if passes(example, test):
return outcome
predict.decision_list = decision_list_learning(set(dataset.examples))
return predict
# ______________________________________________________________________________
def NeuralNetLearner(dataset, hidden_layer_sizes=[3],
learning_rate=0.01, epochs=100, activation=sigmoid):
"""Layered feed-forward network.
hidden_layer_sizes: List of number of hidden units per hidden layer
learning_rate: Learning rate of gradient descent
epochs: Number of passes over the dataset
"""
i_units = len(dataset.inputs)
o_units = len(dataset.values[dataset.target])
# construct a network
raw_net = network(i_units, hidden_layer_sizes, o_units, activation)
learned_net = BackPropagationLearner(dataset, raw_net,
learning_rate, epochs, activation)
def predict(example):
# Input nodes
i_nodes = learned_net[0]
# Activate input layer
for v, n in zip(example, i_nodes):
n.value = v
# Forward pass
for layer in learned_net[1:]:
for node in layer:
inc = [n.value for n in node.inputs]
in_val = dotproduct(inc, node.weights)
node.value = node.activation(in_val)
# Hypothesis
o_nodes = learned_net[-1]
prediction = find_max_node(o_nodes)
return prediction
return predict
def random_weights(min_value, max_value, num_weights):
return [random.uniform(min_value, max_value) for _ in range(num_weights)]
def BackPropagationLearner(dataset, net, learning_rate, epochs, activation=sigmoid):
"""[Figure 18.23] The back-propagation algorithm for multilayer networks"""
# Initialise weights
for layer in net:
for node in layer:
node.weights = random_weights(min_value=-0.5, max_value=0.5,
num_weights=len(node.weights))
examples = dataset.examples
'''
As of now dataset.target gives an int instead of list,
Changing dataset class will have effect on all the learners.
Will be taken care of later.
'''
o_nodes = net[-1]
i_nodes = net[0]
o_units = len(o_nodes)
idx_t = dataset.target
idx_i = dataset.inputs
n_layers = len(net)
inputs, targets = init_examples(examples, idx_i, idx_t, o_units)
for epoch in range(epochs):
# Iterate over each example
for e in range(len(examples)):
i_val = inputs[e]
t_val = targets[e]
# Activate input layer
for v, n in zip(i_val, i_nodes):
n.value = v
# Forward pass
for layer in net[1:]:
for node in layer:
inc = [n.value for n in node.inputs]
in_val = dotproduct(inc, node.weights)
node.value = node.activation(in_val)
# Initialize delta
delta = [[] for _ in range(n_layers)]
# Compute outer layer delta
# Error for the MSE cost function
err = [t_val[i] - o_nodes[i].value for i in range(o_units)]
# Calculate delta at output
if node.activation == sigmoid:
delta[-1] = [sigmoid_derivative(o_nodes[i].value) * err[i] for i in range(o_units)]
elif node.activation == relu:
delta[-1] = [relu_derivative(o_nodes[i].value) * err[i] for i in range(o_units)]
elif node.activation == tanh:
delta[-1] = [tanh_derivative(o_nodes[i].value) * err[i] for i in range(o_units)]
elif node.activation == elu:
delta[-1] = [elu_derivative(o_nodes[i].value) * err[i] for i in range(o_units)]
else:
delta[-1] = [leaky_relu_derivative(o_nodes[i].value) * err[i] for i in range(o_units)]
# Backward pass
h_layers = n_layers - 2
for i in range(h_layers, 0, -1):
layer = net[i]
h_units = len(layer)
nx_layer = net[i+1]
# weights from each ith layer node to each i + 1th layer node
w = [[node.weights[k] for node in nx_layer] for k in range(h_units)]
if activation == sigmoid:
delta[i] = [sigmoid_derivative(layer[j].value) * dotproduct(w[j], delta[i+1])
for j in range(h_units)]
elif activation == relu:
delta[i] = [relu_derivative(layer[j].value) * dotproduct(w[j], delta[i+1])
for j in range(h_units)]
elif activation == tanh:
delta[i] = [tanh_derivative(layer[j].value) * dotproduct(w[j], delta[i+1])
for j in range(h_units)]
elif activation == elu:
delta[i] = [elu_derivative(layer[j].value) * dotproduct(w[j], delta[i+1])
for j in range(h_units)]
else:
delta[i] = [leaky_relu_derivative(layer[j].value) * dotproduct(w[j], delta[i+1])
for j in range(h_units)]
# Update weights
for i in range(1, n_layers):
layer = net[i]
inc = [node.value for node in net[i-1]]
units = len(layer)
for j in range(units):
layer[j].weights = vector_add(layer[j].weights,
scalar_vector_product(
learning_rate * delta[i][j], inc))
return net
def PerceptronLearner(dataset, learning_rate=0.01, epochs=100):
"""Logistic Regression, NO hidden layer"""
i_units = len(dataset.inputs)
o_units = len(dataset.values[dataset.target])
hidden_layer_sizes = []
raw_net = network(i_units, hidden_layer_sizes, o_units)
learned_net = BackPropagationLearner(dataset, raw_net, learning_rate, epochs)
def predict(example):
o_nodes = learned_net[1]
# Forward pass
for node in o_nodes:
in_val = dotproduct(example, node.weights)
node.value = node.activation(in_val)
# Hypothesis
return find_max_node(o_nodes)
return predict
class NNUnit:
"""Single Unit of Multiple Layer Neural Network
inputs: Incoming connections
weights: Weights to incoming connections
"""
def __init__(self, activation=sigmoid, weights=None, inputs=None):
self.weights = weights or []
self.inputs = inputs or []
self.value = None
self.activation = activation
def network(input_units, hidden_layer_sizes, output_units, activation=sigmoid):
"""Create Directed Acyclic Network of given number layers.
hidden_layers_sizes : List number of neuron units in each hidden layer
excluding input and output layers
"""
layers_sizes = [input_units] + hidden_layer_sizes + [output_units]
net = [[NNUnit(activation) for n in range(size)]
for size in layers_sizes]
n_layers = len(net)
# Make Connection
for i in range(1, n_layers):
for n in net[i]:
for k in net[i-1]:
n.inputs.append(k)
n.weights.append(0)
return net
def init_examples(examples, idx_i, idx_t, o_units):
inputs, targets = {}, {}
for i, e in enumerate(examples):
# Input values of e
inputs[i] = [e[i] for i in idx_i]
if o_units > 1:
# One-Hot representation of e's target
t = [0 for i in range(o_units)]
t[e[idx_t]] = 1
targets[i] = t
else:
# Target value of e
targets[i] = [e[idx_t]]
return inputs, targets
def find_max_node(nodes):
return nodes.index(argmax(nodes, key=lambda node: node.value))
# ______________________________________________________________________________
def LinearLearner(dataset, learning_rate=0.01, epochs=100):
"""Define with learner = LinearLearner(data); infer with learner(x)."""
idx_i = dataset.inputs
idx_t = dataset.target # As of now, dataset.target gives only one index.
examples = dataset.examples
num_examples = len(examples)
# X transpose
X_col = [dataset.values[i] for i in idx_i] # vertical columns of X
# Add dummy
ones = [1 for _ in range(len(examples))]
X_col = [ones] + X_col
# Initialize random weigts
num_weights = len(idx_i) + 1
w = random_weights(min_value=-0.5, max_value=0.5, num_weights=num_weights)
for epoch in range(epochs):
err = []
# Pass over all examples
for example in examples:
x = [1] + example
y = dotproduct(w, x)
t = example[idx_t]
err.append(t - y)
# update weights
for i in range(len(w)):
w[i] = w[i] + learning_rate * (dotproduct(err, X_col[i]) / num_examples)
def predict(example):
x = [1] + example
return dotproduct(w, x)
return predict
# ______________________________________________________________________________
def EnsembleLearner(learners):
"""Given a list of learning algorithms, have them vote."""
def train(dataset):
predictors = [learner(dataset) for learner in learners]
def predict(example):
return mode(predictor(example) for predictor in predictors)
return predict
return train
# ______________________________________________________________________________
def AdaBoost(L, K):
"""[Figure 18.34]"""
def train(dataset):
examples, target = dataset.examples, dataset.target
N = len(examples)
epsilon = 1/(2*N)
w = [1/N]*N
h, z = [], []
for k in range(K):
h_k = L(dataset, w)
h.append(h_k)
error = sum(weight for example, weight in zip(examples, w)
if example[target] != h_k(example))
# Avoid divide-by-0 from either 0% or 100% error rates:
error = clip(error, epsilon, 1 - epsilon)
for j, example in enumerate(examples):
if example[target] == h_k(example):
w[j] *= error/(1 - error)
w = normalize(w)
z.append(math.log((1 - error)/error))
return WeightedMajority(h, z)
return train
def WeightedMajority(predictors, weights):
"""Return a predictor that takes a weighted vote."""
def predict(example):
return weighted_mode((predictor(example) for predictor in predictors),
weights)
return predict
def weighted_mode(values, weights):
"""Return the value with the greatest total weight.
>>> weighted_mode('abbaa', [1, 2, 3, 1, 2])
'b'
"""
totals = defaultdict(int)
for v, w in zip(values, weights):
totals[v] += w
return max(totals, key=totals.__getitem__)
# _____________________________________________________________________________
# Adapting an unweighted learner for AdaBoost
def WeightedLearner(unweighted_learner):
"""Given a learner that takes just an unweighted dataset, return
one that takes also a weight for each example. [p. 749 footnote 14]"""
def train(dataset, weights):
return unweighted_learner(replicated_dataset(dataset, weights))
return train
def replicated_dataset(dataset, weights, n=None):
"""Copy dataset, replicating each example in proportion to its weight."""
n = n or len(dataset.examples)
result = copy.copy(dataset)
result.examples = weighted_replicate(dataset.examples, weights, n)
return result