scipy.sparse.lil_matrix¶
-
class
scipy.sparse.lil_matrix(arg1, shape=None, dtype=None, copy=False)[source]¶ Row-based list of lists sparse matrix
This is a structure for constructing sparse matrices incrementally. Note that inserting a single item can take linear time in the worst case; to construct a matrix efficiently, make sure the items are pre-sorted by index, per row.
- This can be instantiated in several ways:
- lil_matrix(D)
with a dense matrix or rank-2 ndarray D
- lil_matrix(S)
with another sparse matrix S (equivalent to S.tolil())
- lil_matrix((M, N), [dtype])
to construct an empty matrix with shape (M, N) dtype is optional, defaulting to dtype=’d’.
Notes
Sparse matrices can be used in arithmetic operations: they support addition, subtraction, multiplication, division, and matrix power.
- Advantages of the LIL format
supports flexible slicing
changes to the matrix sparsity structure are efficient
- Disadvantages of the LIL format
arithmetic operations LIL + LIL are slow (consider CSR or CSC)
slow column slicing (consider CSC)
slow matrix vector products (consider CSR or CSC)
- Intended Usage
LIL is a convenient format for constructing sparse matrices
once a matrix has been constructed, convert to CSR or CSC format for fast arithmetic and matrix vector operations
consider using the COO format when constructing large matrices
- Data Structure
An array (
self.rows) of rows, each of which is a sorted list of column indices of non-zero elements.The corresponding nonzero values are stored in similar fashion in
self.data.
- Attributes
Methods
__len__(self)__mul__(self, other)interpret other and call one of the following
asformat(self, format[, copy])Return this matrix in the passed format.
asfptype(self)Upcast matrix to a floating point format (if necessary)
astype(self, dtype[, casting, copy])Cast the matrix elements to a specified type.
conj(self[, copy])Element-wise complex conjugation.
conjugate(self[, copy])Element-wise complex conjugation.
copy(self)Returns a copy of this matrix.
count_nonzero(self)Number of non-zero entries, equivalent to
diagonal(self[, k])Returns the kth diagonal of the matrix.
dot(self, other)Ordinary dot product
getH(self)Return the Hermitian transpose of this matrix.
get_shape(self)Get shape of a matrix.
getcol(self, j)Returns a copy of column j of the matrix, as an (m x 1) sparse matrix (column vector).
getformat(self)Format of a matrix representation as a string.
getmaxprint(self)Maximum number of elements to display when printed.
getnnz(self[, axis])Number of stored values, including explicit zeros.
getrow(self, i)Returns a copy of the ‘i’th row.
getrowview(self, i)Returns a view of the ‘i’th row (without copying).
maximum(self, other)Element-wise maximum between this and another matrix.
mean(self[, axis, dtype, out])Compute the arithmetic mean along the specified axis.
minimum(self, other)Element-wise minimum between this and another matrix.
multiply(self, other)Point-wise multiplication by another matrix
nonzero(self)nonzero indices
power(self, n[, dtype])Element-wise power.
reshape(self, shape[, order, copy])Gives a new shape to a sparse matrix without changing its data.
resize(self, *shape)Resize the matrix in-place to dimensions given by
shapeset_shape(self, shape)See
reshape.setdiag(self, values[, k])Set diagonal or off-diagonal elements of the array.
sum(self[, axis, dtype, out])Sum the matrix elements over a given axis.
toarray(self[, order, out])Return a dense ndarray representation of this matrix.
tobsr(self[, blocksize, copy])Convert this matrix to Block Sparse Row format.
tocoo(self[, copy])Convert this matrix to COOrdinate format.
tocsc(self[, copy])Convert this matrix to Compressed Sparse Column format.
tocsr(self[, copy])Convert this matrix to Compressed Sparse Row format.
todense(self[, order, out])Return a dense matrix representation of this matrix.
todia(self[, copy])Convert this matrix to sparse DIAgonal format.
todok(self[, copy])Convert this matrix to Dictionary Of Keys format.
tolil(self[, copy])Convert this matrix to List of Lists format.
transpose(self[, axes, copy])Reverses the dimensions of the sparse matrix.
__getitem__
