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laydi/system/dataset.py
2006-10-06 10:19:19 +00:00

384 lines
12 KiB
Python

from scipy import ndarray,atleast_2d,asarray,intersect1d
from scipy import sort as array_sort
from itertools import izip
import shelve
import copy
class Dataset:
"""The Dataset base class.
A Dataset is an n-way array with defined string identifiers across
all dimensions.
example of use:
---
dim_name_rows = 'rows'
names_rows = ('row_a','row_b')
ids_1 = [dim_name_rows, names_rows]
dim_name_cols = 'cols'
names_cols = ('col_a','col_b','col_c','col_d')
ids_2 = [dim_name_cols, names_cols]
Array_X = rand(2,4)
data = Dataset(Array_X,(ids_1,ids_2),name="Testing")
dim_names = [dim for dim in data]
column_identifiers = [id for id in data['cols'].keys()]
column_index = [index for index in data['cols'].values()]
'cols' in data -> True
---
data = Dataset(rand(10,20)) (generates dims and ids (no links))
"""
def __init__(self,array,identifiers=None,name='Unnamed dataset'):
self._dims = [] #existing dimensions in this dataset
self._map = {} # internal mapping for dataset: identifier <--> index
self._name = name
self._identifiers = identifiers
self._type = 'n'
try:
array = atleast_2d(asarray(array))
except:
print "Cant cast array as numpy-array"
return
# vectors are column vectors
if array.shape[0]==1:
array = array.T
self.shape = array.shape
if identifiers!=None:
self._set_identifiers(identifiers,self._all_dims)
else:
self._identifiers = self._create_identifiers(self.shape,self._all_dims)
self._set_identifiers(self._identifiers,self._all_dims)
self._array = array
def __iter__(self):
"""Returns an iterator over dimensions of dataset."""
return self._dims.__iter__()
def __contains__(self,dim):
"""Returns True if dim is a dimension name in dataset."""
# return self._dims.__contains__(dim)
return self._map.__contains__(dim)
def __len__(self):
"""Returns the number of dimensions in the dataset"""
return len(self._map)
def __getitem__(self,dim):
"""Return the identifers along the dimension dim."""
return self._map[dim]
def _create_identifiers(self,shape,all_dims):
"""Creates dimension names and identifier names, and returns
identifiers."""
dim_names = ['rows','cols']
ids = []
for axis,n in enumerate(shape):
if axis<2:
dim_suggestion = dim_names[axis]
else:
dim_suggestion = 'dim'
dim_suggestion = self._suggest_dim_name(dim_suggestion,all_dims)
identifier_creation = [str(axis) + "_" + i for i in map(str,range(n))]
ids.append((dim_suggestion,identifier_creation))
all_dims.add(dim_suggestion)
return ids
def _set_identifiers(self,identifiers,all_dims):
"""Creates internal mapping of identifiers structure."""
for dim,ids in identifiers:
pos_map = ReverseDict()
if dim not in self._dims:
self._dims.append(dim)
all_dims.add(dim)
else:
raise ValueError, "Dimension names must be unique whitin dataset"
for pos,id in enumerate(ids):
pos_map[id] = pos
self._map[dim] = pos_map
def _suggest_dim_name(self,dim_name,all_dims):
"""Suggests a unique name for dim and returns it"""
c = 0
new_name = dim_name
while new_name in all_dims:
new_name = dim_name + "_" + str(c)
c+=1
return new_name
def asarray(self):
"""Returns the numeric array (data) of dataset"""
return self._array
def add_array(self,array):
"""Adds array as an ArrayType object.
A one-dim array is transformed to a two-dim array (row-vector)
"""
if self.shape!=array.shape:
raise ValueError, "Input array must be of similar dimensions as dataset"
self._array = atleast_2d(asarray(array))
def get_name(self):
"""Returns dataset name"""
return self._name
def get_all_dims(self):
"""Returns all dimensions in project"""
return self._all_dims
def get_dim_name(self,axis=None):
"""Returns dim name for an axis, if no axis is provided it
returns a list of dims"""
if type(axis)==int:
return self._dims[axis]
else:
return [dim for dim in self]
def get_identifiers(self, dim, indices=None,sorted=False):
"""Returns identifiers along dim, sorted by position (index)
is optional.
You can optionally provide a list/ndarray of indices to get
only the identifiers of a given position.
Identifiers are the unique names (strings) for a variable in a
given dim. Index (Indices) are the Identifiers position in a
matrix in a given dim.
"""
if indices!=None:
if len(indices)==0:# if empty list or empty array
return []
if indices != None:
# be sure to match intersection
#indices = intersect1d(self.get_indices(dim),indices)
ids = [self._map[dim].reverse[i] for i in indices]
else:
if sorted==True:
ids = [self._map[dim].reverse[i] for i in array_sort(self._map[dim].values())]
else:
ids = self._map[dim].keys()
return ids
def get_indices(self, dim, idents=None):
"""Returns indices for identifiers along dimension.
You can optionally provide a list of identifiers to retrieve a
index subset.
Identifiers are the unique names (strings) for a variable in a
given dim. Index (Indices) are the Identifiers position in a
matrix in a given dim. If none of the input identifiers are
found an empty index is returned
"""
if idents==None:
index = array_sort(self._map[dim].values())
else:
index = [self._map[dim][key]
for key in idents if self._map[dim].has_key(key)]
return asarray(index)
def copy(self):
""" Returns deepcopy of dataset.
"""
return copy.deepcopy(self)
class CategoryDataset(Dataset):
"""The category dataset class.
A dataset for representing class information as binary
matrices (0/1-matrices).
There is support for using a less memory demanding, and
fast intersection look-ups by representing the binary matrix as a
dictionary in each dimension.
Always has linked dimension in first dim:
ex matrix:
go_term1 go_term2 ...
gene_1
gene_2
gene_3
.
.
.
"""
def __init__(self,array,identifiers=None,name='C'):
Dataset.__init__(self,array,identifiers=identifiers,name=name)
self.has_dictlists = False
self._type = 'c'
def as_dict_lists(self):
"""Returns data as dict of indices along first dim.
ex: data['gene_id'] = ['map0030','map0010', ...]
"""
data={}
for name,ind in self._map[self.get_dim_name(0)].items():
data[name] = self.get_identifiers(self.get_dim_name(1),
list(self._array[ind,:].nonzero()))
self._dictlists = data
self.has_dictlists = True
return data
def as_selections(self):
"""Returns data as a list of Selection objects.
"""
ret_list = []
for cat_name,ind in self._map[self.get_dim_name(1)].items():
ids = self.get_identifiers(self.get_dim_name(0),
self._array[:,ind].nonzero()[0])
selection = Selection(cat_name)
selection.select(self.get_dim_name(0), ids)
ret_list.append(selection)
return ret_list
class GraphDataset(Dataset):
"""The graph dataset class.
A dataset class for representing graphs using an (weighted)
adjacency matrix
(aka. restricted to square symmetric matrices)
If the library NetworkX is installed, there is support for
representing the graph as a NetworkX.Graph, or NetworkX.XGraph structure.
"""
def __init__(self,array=None,identifiers=None,shape=None,all_dims=[],**kwds):
Dataset.__init__(self,array=array,identifiers=identifiers,name='A')
self._graph = None
self._type = 'g'
def asnetworkx(self,nx_type='graph'):
dim = self.get_dim_name()[0]
ids = self.get_identifiers(dim,sorted=True)
adj_mat = self.asarray()
G = self._graph_from_adj_matrix(adj_mat,labels=ids)
self._graph = G
return G
def _graph_from_adj_matrix(self,A,labels=None):
"""Creates a networkx graph class from adjacency
(possibly weighted) matrix and ordered labels.
nx_type = ['graph',['xgraph']]
labels = None, results in string-numbered labels
"""
try:
import networkx as nx
except:
print "Failed in import of NetworkX"
return
m,n = A.shape# adjacency matrix must be of type that evals to true/false for neigbours
if m!=n:
raise IOError, "Adjacency matrix must be square"
if A[A[:,0].nonzero()[0][0],0]==1: #unweighted graph
G = nx.Graph()
else:
G = nx.XGraph()
if labels==None: # if labels not provided mark vertices with numbers
labels = [str(i) for i in range(m)]
for nbrs,head in izip(A,labels):
for i,nbr in enumerate(nbrs):
if nbr:
tail = labels[i]
if type(G)==nx.XGraph:
G.add_edge(head,tail,nbr)
else:
G.add_edge(head,tail)
return G
Dataset._all_dims=set()
class ReverseDict(dict):
"""
A dictionary which can lookup values by key, and keys by value.
All values and keys must be hashable, and unique.
d = ReverseDict((['a',1],['b',2]))
print d['a'] --> 1
print d.reverse[1] --> 'a'
"""
def __init__(self, *args, **kw):
dict.__init__(self, *args, **kw)
self.reverse = dict([[v,k] for k,v in self.items()])
def __setitem__(self, key, value):
dict.__setitem__(self, key, value)
try:
self.reverse[value] = key
except:
self.reverse = {value:key}
def to_file(filepath,dataset,name=None):
"""Write dataset to file. A file may contain multiple datasets.
append to file by using option mode='a'
"""
if not name:
name = dataset._name
data = shelve.open(filepath,flag='c',protocol=2)
if data: #we have an append
names = data.keys()
if name in names:
print "Data with name: %s overwritten" %dataset._name
sub_data = {'array':dataset._array,'idents':dataset._identifiers,'type':dataset._type}
data[name] = sub_data
data.close()
def from_file(filepath):
"""Read dataset from file """
data = shelve.open(filepath,flag='r')
out_data = []
for name in data.keys():
sub_data = data[name]
if sub_data['type']=='c':
out_data.append(CategoryDataset(sub_data['array'],identifiers=sub_data['idents'],name=name))
elif sub_data['type']=='g':
out_data.append(GraphDataset(sub_data['array'],identifiers=sub_data['idents'],name=name))
else:
out_data.append(Dataset(sub_data['array'],identifiers=sub_data['idents'],name=name))
return out_data
class Selection(dict):
"""Handles selected identifiers along each dimension of a dataset"""
def __init__(self, title='Unnamed Selecton'):
self.title = title
def __getitem__(self, key):
if not self.has_key(key):
return None
return dict.__getitem__(self, key)
def dims(self):
return self.keys()
def axis_len(self, axis):
if self._selection.has_key(axis):
return len(self._selection[axis])
return 0
def select(self, axis, labels):
self[axis] = labels