With R2015a, this question finally has a simple answer (see my other answer to this question for details). For releases prior to R2015a, there is such a built-in (undocumented) function: `_mergesimpts`

. A safe guess at the composition of the name is "merge similar points".

The function is called with the following syntax:

```
xMerged = builtin('_mergesimpts',x,tol,[type])
```

The data array `x`

is `N-by-D`

, where `N`

is the number of points, and `D`

is the number of dimensions. The tolerances for each dimension are specified by a `D`

-element row vector, `tol`

. The optional input argument `type`

is a string (`'first'`

(default) or `'average'`

) indicating how to merge similar elements.

The output `xMerged`

will be `M-by-D`

, where `M<=N`

. *It is sorted*.

**Examples, 1D data**:

```
>> x = [1; 1.1; 1.05]; % elements need not be sorted
>> builtin('_mergesimpts',x,eps) % but the output is sorted
ans =
1.0000
1.0500
1.1000
```

Merge types:

```
>> builtin('_mergesimpts',x,0.1,'first')
ans =
1.0000 % first of [1, 1.05] since abs(1 - 1.05) < 0.1
1.1000
>> builtin('_mergesimpts',x,0.1,'average')
ans =
1.0250 % average of [1, 1.05]
1.1000
>> builtin('_mergesimpts',x,0.2,'average')
ans =
1.0500 % average of [1, 1.1, 1.05]
```

**Examples, 2D data**:

```
>> x = [1 2; 1.06 2; 1.1 2; 1.1 2.03]
x =
1.0000 2.0000
1.0600 2.0000
1.1000 2.0000
1.1000 2.0300
```

All 2D points unique to machine precision:

```
>> xMerged = builtin('_mergesimpts',x,[eps eps],'first')
xMerged =
1.0000 2.0000
1.0600 2.0000
1.1000 2.0000
1.1000 2.0300
```

Merge based on second dimension tolerance:

```
>> xMerged = builtin('_mergesimpts',x,[eps 0.1],'first')
xMerged =
1.0000 2.0000
1.0600 2.0000
1.1000 2.0000 % first of rows 3 and 4
>> xMerged = builtin('_mergesimpts',x,[eps 0.1],'average')
xMerged =
1.0000 2.0000
1.0600 2.0000
1.1000 2.0150 % average of rows 3 and 4
```

Merge based on first dimension tolerance:

```
>> xMerged = builtin('_mergesimpts',x,[0.2 eps],'average')
xMerged =
1.0533 2.0000 % average of rows 1 to 3
1.1000 2.0300
>> xMerged = builtin('_mergesimpts',x,[0.05 eps],'average')
xMerged =
1.0000 2.0000
1.0800 2.0000 % average of rows 2 and 3
1.1000 2.0300 % row 4 not merged because of second dimension
```

Merge based on both dimensions:

```
>> xMerged = builtin('_mergesimpts',x,[0.05 .1],'average')
xMerged =
1.0000 2.0000
1.0867 2.0100 % average of rows 2 to 4
```