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1namespace Eigen {
2
3/** \eigenManualPage TutorialReductionsVisitorsBroadcasting Reductions, visitors and broadcasting
4
5This page explains Eigen's reductions, visitors and broadcasting and how they are used with
6\link MatrixBase matrices \endlink and \link ArrayBase arrays \endlink.
7
8\eigenAutoToc
9
10\section TutorialReductionsVisitorsBroadcastingReductions Reductions
11In Eigen, a reduction is a function taking a matrix or array, and returning a single
12scalar value. One of the most used reductions is \link DenseBase::sum() .sum() \endlink,
13returning the sum of all the coefficients inside a given matrix or array.
14
15<table class="example">
16<tr><th>Example:</th><th>Output:</th></tr>
17<tr><td>
18\include tut_arithmetic_redux_basic.cpp
19</td>
20<td>
21\verbinclude tut_arithmetic_redux_basic.out
22</td></tr></table>
23
24The \em trace of a matrix, as returned by the function \c trace(), is the sum of the diagonal coefficients and can equivalently be computed <tt>a.diagonal().sum()</tt>.
25
26
27\subsection TutorialReductionsVisitorsBroadcastingReductionsNorm Norm computations
28
29The (Euclidean a.k.a. \f$\ell^2\f$) squared norm of a vector can be obtained \link MatrixBase::squaredNorm() squaredNorm() \endlink. It is equal to the dot product of the vector by itself, and equivalently to the sum of squared absolute values of its coefficients.
30
31Eigen also provides the \link MatrixBase::norm() norm() \endlink method, which returns the square root of \link MatrixBase::squaredNorm() squaredNorm() \endlink.
32
33These operations can also operate on matrices; in that case, a n-by-p matrix is seen as a vector of size (n*p), so for example the \link MatrixBase::norm() norm() \endlink method returns the "Frobenius" or "Hilbert-Schmidt" norm. We refrain from speaking of the \f$\ell^2\f$ norm of a matrix because that can mean different things.
34
35If you want other \f$\ell^p\f$ norms, use the \link MatrixBase::lpNorm() lpNnorm<p>() \endlink method. The template parameter \a p can take the special value \a Infinity if you want the \f$\ell^\infty\f$ norm, which is the maximum of the absolute values of the coefficients.
36
37The following example demonstrates these methods.
38
39<table class="example">
40<tr><th>Example:</th><th>Output:</th></tr>
41<tr><td>
42\include Tutorial_ReductionsVisitorsBroadcasting_reductions_norm.cpp
43</td>
44<td>
45\verbinclude Tutorial_ReductionsVisitorsBroadcasting_reductions_norm.out
46</td></tr></table>
47
48\subsection TutorialReductionsVisitorsBroadcastingReductionsBool Boolean reductions
49
50The following reductions operate on boolean values:
51 - \link DenseBase::all() all() \endlink returns \b true if all of the coefficients in a given Matrix or Array evaluate to \b true .
52 - \link DenseBase::any() any() \endlink returns \b true if at least one of the coefficients in a given Matrix or Array evaluates to \b true .
53 - \link DenseBase::count() count() \endlink returns the number of coefficients in a given Matrix or Array that evaluate to \b true.
54
55These are typically used in conjunction with the coefficient-wise comparison and equality operators provided by Array. For instance, <tt>array > 0</tt> is an %Array of the same size as \c array , with \b true at those positions where the corresponding coefficient of \c array is positive. Thus, <tt>(array > 0).all()</tt> tests whether all coefficients of \c array are positive. This can be seen in the following example:
56
57<table class="example">
58<tr><th>Example:</th><th>Output:</th></tr>
59<tr><td>
60\include Tutorial_ReductionsVisitorsBroadcasting_reductions_bool.cpp
61</td>
62<td>
63\verbinclude Tutorial_ReductionsVisitorsBroadcasting_reductions_bool.out
64</td></tr></table>
65
66\subsection TutorialReductionsVisitorsBroadcastingReductionsUserdefined User defined reductions
67
68TODO
69
70In the meantime you can have a look at the DenseBase::redux() function.
71
72\section TutorialReductionsVisitorsBroadcastingVisitors Visitors
73Visitors are useful when one wants to obtain the location of a coefficient inside
74a Matrix or Array. The simplest examples are
75\link MatrixBase::maxCoeff() maxCoeff(&x,&y) \endlink and
76\link MatrixBase::minCoeff() minCoeff(&x,&y)\endlink, which can be used to find
77the location of the greatest or smallest coefficient in a Matrix or
78Array.
79
80The arguments passed to a visitor are pointers to the variables where the
81row and column position are to be stored. These variables should be of type
82\link DenseBase::Index Index \endlink, as shown below:
83
84<table class="example">
85<tr><th>Example:</th><th>Output:</th></tr>
86<tr><td>
87\include Tutorial_ReductionsVisitorsBroadcasting_visitors.cpp
88</td>
89<td>
90\verbinclude Tutorial_ReductionsVisitorsBroadcasting_visitors.out
91</td></tr></table>
92
93Note that both functions also return the value of the minimum or maximum coefficient if needed,
94as if it was a typical reduction operation.
95
96\section TutorialReductionsVisitorsBroadcastingPartialReductions Partial reductions
97Partial reductions are reductions that can operate column- or row-wise on a Matrix or
98Array, applying the reduction operation on each column or row and
99returning a column or row-vector with the corresponding values. Partial reductions are applied
100with \link DenseBase::colwise() colwise() \endlink or \link DenseBase::rowwise() rowwise() \endlink.
101
102A simple example is obtaining the maximum of the elements
103in each column in a given matrix, storing the result in a row-vector:
104
105<table class="example">
106<tr><th>Example:</th><th>Output:</th></tr>
107<tr><td>
108\include Tutorial_ReductionsVisitorsBroadcasting_colwise.cpp
109</td>
110<td>
111\verbinclude Tutorial_ReductionsVisitorsBroadcasting_colwise.out
112</td></tr></table>
113
114The same operation can be performed row-wise:
115
116<table class="example">
117<tr><th>Example:</th><th>Output:</th></tr>
118<tr><td>
119\include Tutorial_ReductionsVisitorsBroadcasting_rowwise.cpp
120</td>
121<td>
122\verbinclude Tutorial_ReductionsVisitorsBroadcasting_rowwise.out
123</td></tr></table>
124
125<b>Note that column-wise operations return a 'row-vector' while row-wise operations
126return a 'column-vector'</b>
127
128\subsection TutorialReductionsVisitorsBroadcastingPartialReductionsCombined Combining partial reductions with other operations
129It is also possible to use the result of a partial reduction to do further processing.
130Here is another example that finds the column whose sum of elements is the maximum
131 within a matrix. With column-wise partial reductions this can be coded as:
132
133<table class="example">
134<tr><th>Example:</th><th>Output:</th></tr>
135<tr><td>
136\include Tutorial_ReductionsVisitorsBroadcasting_maxnorm.cpp
137</td>
138<td>
139\verbinclude Tutorial_ReductionsVisitorsBroadcasting_maxnorm.out
140</td></tr></table>
141
142The previous example applies the \link DenseBase::sum() sum() \endlink reduction on each column
143though the \link DenseBase::colwise() colwise() \endlink visitor, obtaining a new matrix whose
144size is 1x4.
145
146Therefore, if
147\f[
148\mbox{m} = \begin{bmatrix} 1 & 2 & 6 & 9 \\
149 3 & 1 & 7 & 2 \end{bmatrix}
150\f]
151
152then
153
154\f[
155\mbox{m.colwise().sum()} = \begin{bmatrix} 4 & 3 & 13 & 11 \end{bmatrix}
156\f]
157
158The \link DenseBase::maxCoeff() maxCoeff() \endlink reduction is finally applied
159to obtain the column index where the maximum sum is found,
160which is the column index 2 (third column) in this case.
161
162
163\section TutorialReductionsVisitorsBroadcastingBroadcasting Broadcasting
164The concept behind broadcasting is similar to partial reductions, with the difference that broadcasting
165constructs an expression where a vector (column or row) is interpreted as a matrix by replicating it in
166one direction.
167
168A simple example is to add a certain column-vector to each column in a matrix.
169This can be accomplished with:
170
171<table class="example">
172<tr><th>Example:</th><th>Output:</th></tr>
173<tr><td>
174\include Tutorial_ReductionsVisitorsBroadcasting_broadcast_simple.cpp
175</td>
176<td>
177\verbinclude Tutorial_ReductionsVisitorsBroadcasting_broadcast_simple.out
178</td></tr></table>
179
180We can interpret the instruction <tt>mat.colwise() += v</tt> in two equivalent ways. It adds the vector \c v
181to every column of the matrix. Alternatively, it can be interpreted as repeating the vector \c v four times to
182form a four-by-two matrix which is then added to \c mat:
183\f[
184\begin{bmatrix} 1 & 2 & 6 & 9 \\ 3 & 1 & 7 & 2 \end{bmatrix}
185+ \begin{bmatrix} 0 & 0 & 0 & 0 \\ 1 & 1 & 1 & 1 \end{bmatrix}
186= \begin{bmatrix} 1 & 2 & 6 & 9 \\ 4 & 2 & 8 & 3 \end{bmatrix}.
187\f]
188The operators <tt>-=</tt>, <tt>+</tt> and <tt>-</tt> can also be used column-wise and row-wise. On arrays, we
189can also use the operators <tt>*=</tt>, <tt>/=</tt>, <tt>*</tt> and <tt>/</tt> to perform coefficient-wise
190multiplication and division column-wise or row-wise. These operators are not available on matrices because it
191is not clear what they would do. If you want multiply column 0 of a matrix \c mat with \c v(0), column 1 with
192\c v(1), and so on, then use <tt>mat = mat * v.asDiagonal()</tt>.
193
194It is important to point out that the vector to be added column-wise or row-wise must be of type Vector,
195and cannot be a Matrix. If this is not met then you will get compile-time error. This also means that
196broadcasting operations can only be applied with an object of type Vector, when operating with Matrix.
197The same applies for the Array class, where the equivalent for VectorXf is ArrayXf. As always, you should
198not mix arrays and matrices in the same expression.
199
200To perform the same operation row-wise we can do:
201
202<table class="example">
203<tr><th>Example:</th><th>Output:</th></tr>
204<tr><td>
205\include Tutorial_ReductionsVisitorsBroadcasting_broadcast_simple_rowwise.cpp
206</td>
207<td>
208\verbinclude Tutorial_ReductionsVisitorsBroadcasting_broadcast_simple_rowwise.out
209</td></tr></table>
210
211\subsection TutorialReductionsVisitorsBroadcastingBroadcastingCombined Combining broadcasting with other operations
212Broadcasting can also be combined with other operations, such as Matrix or Array operations,
213reductions and partial reductions.
214
215Now that broadcasting, reductions and partial reductions have been introduced, we can dive into a more advanced example that finds
216the nearest neighbour of a vector <tt>v</tt> within the columns of matrix <tt>m</tt>. The Euclidean distance will be used in this example,
217computing the squared Euclidean distance with the partial reduction named \link MatrixBase::squaredNorm() squaredNorm() \endlink:
218
219<table class="example">
220<tr><th>Example:</th><th>Output:</th></tr>
221<tr><td>
222\include Tutorial_ReductionsVisitorsBroadcasting_broadcast_1nn.cpp
223</td>
224<td>
225\verbinclude Tutorial_ReductionsVisitorsBroadcasting_broadcast_1nn.out
226</td></tr></table>
227
228The line that does the job is
229\code
230 (m.colwise() - v).colwise().squaredNorm().minCoeff(&index);
231\endcode
232
233We will go step by step to understand what is happening:
234
235 - <tt>m.colwise() - v</tt> is a broadcasting operation, subtracting <tt>v</tt> from each column in <tt>m</tt>. The result of this operation
236is a new matrix whose size is the same as matrix <tt>m</tt>: \f[
237 \mbox{m.colwise() - v} =
238 \begin{bmatrix}
239 -1 & 21 & 4 & 7 \\
240 0 & 8 & 4 & -1
241 \end{bmatrix}
242\f]
243
244 - <tt>(m.colwise() - v).colwise().squaredNorm()</tt> is a partial reduction, computing the squared norm column-wise. The result of
245this operation is a row-vector where each coefficient is the squared Euclidean distance between each column in <tt>m</tt> and <tt>v</tt>: \f[
246 \mbox{(m.colwise() - v).colwise().squaredNorm()} =
247 \begin{bmatrix}
248 1 & 505 & 32 & 50
249 \end{bmatrix}
250\f]
251
252 - Finally, <tt>minCoeff(&index)</tt> is used to obtain the index of the column in <tt>m</tt> that is closest to <tt>v</tt> in terms of Euclidean
253distance.
254
255*/
256
257}
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