time-to-botec/js/node_modules/@stdlib/stats/incr/mmape/README.md

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# incrmmape
> Compute a moving [mean absolute percentage error][mean-absolute-percentage-error] incrementally.
<section class="intro">
For a window of size `W`, the [mean absolute percentage error][mean-absolute-percentage-error] is defined as
<!-- <equation class="equation" label="eq:mean_absolute_percentage_error" align="center" raw="\operatorname{MAPE} = \frac{100}{W} \sum_{i=0}^{W-1} \biggl| \frac{a_i - f_i}{a_i} \biggr|" alt="Equation for the mean absolute percentage error."> -->
<div class="equation" align="center" data-raw-text="\operatorname{MAPE} = \frac{100}{W} \sum_{i=0}^{W-1} \biggl| \frac{a_i - f_i}{a_i} \biggr|" data-equation="eq:mean_absolute_percentage_error">
<img src="https://cdn.jsdelivr.net/gh/stdlib-js/stdlib@f13330c8d3bb837438b30381f6cd70dbccd4837c/lib/node_modules/@stdlib/stats/incr/mmape/docs/img/equation_mean_absolute_percentage_error.svg" alt="Equation for the mean absolute percentage error.">
<br>
</div>
<!-- </equation> -->
where `f_i` is the forecast value and `a_i` is the actual value.
</section>
<!-- /.intro -->
<section class="usage">
## Usage
```javascript
var incrmmape = require( '@stdlib/stats/incr/mmape' );
```
#### incrmmape( window )
Returns an accumulator `function` which incrementally computes a moving [mean absolute percentage error][mean-absolute-percentage-error]. The `window` parameter defines the number of values over which to compute the moving [mean absolute percentage error][mean-absolute-percentage-error].
```javascript
var accumulator = incrmmape( 3 );
```
#### accumulator( \[f, a] )
If provided input values `f` and `a`, the accumulator function returns an updated [mean absolute percentage error][mean-absolute-percentage-error]. If not provided input values `f` and `a`, the accumulator function returns the current [mean absolute percentage error][mean-absolute-percentage-error].
```javascript
var accumulator = incrmmape( 3 );
var m = accumulator();
// returns null
// Fill the window...
m = accumulator( 2.0, 3.0 ); // [(2.0,3.0)]
// returns ~33.33
m = accumulator( 1.0, 4.0 ); // [(2.0,3.0), (1.0,4.0)]
// returns ~54.17
m = accumulator( 3.0, 9.0 ); // [(2.0,3.0), (1.0,4.0), (3.0,9.0)]
// returns ~58.33
// Window begins sliding...
m = accumulator( 7.0, 3.0 ); // [(1.0,4.0), (3.0,9.0), (7.0,3.0)]
// returns ~91.67
m = accumulator( 5.0, 3.0 ); // [(3.0,9.0), (7.0,3.0), (5.0,3.0)]
// returns ~88.89
m = accumulator();
// returns ~88.89
```
</section>
<!-- /.usage -->
<section class="notes">
## Notes
- Input values are **not** type checked. If provided `NaN` or a value which, when used in computations, results in `NaN`, the accumulated value is `NaN` for **at least** `W-1` future invocations. If non-numeric inputs are possible, you are advised to type check and handle accordingly **before** passing the value to the accumulator function.
- As `W` (f,a) pairs are needed to fill the window buffer, the first `W-1` returned values are calculated from smaller sample sizes. Until the window is full, each returned value is calculated from all provided values.
- **Warning**: the [mean absolute percentage error][mean-absolute-percentage-error] has several shortcomings:
- The measure is **not** suitable for intermittent demand patterns (i.e., when `a_i` is `0`).
- The [mean absolute percentage error][mean-absolute-percentage-error] is not symmetrical, as the measure cannot exceed 100% for forecasts which are too "low" and has no limit for forecasts which are too "high".
- When used to compare the accuracy of forecast models (e.g., predicting demand), the measure is biased toward forecasts which are too low.
</section>
<!-- /.notes -->
<section class="examples">
## Examples
<!-- eslint no-undef: "error" -->
```javascript
var randu = require( '@stdlib/random/base/randu' );
var incrmmape = require( '@stdlib/stats/incr/mmape' );
var accumulator;
var v1;
var v2;
var i;
// Initialize an accumulator:
accumulator = incrmmape( 5 );
// For each simulated datum, update the moving mean absolute percentage error...
for ( i = 0; i < 100; i++ ) {
v1 = ( randu()*100.0 ) + 50.0;
v2 = ( randu()*100.0 ) + 50.0;
accumulator( v1, v2 );
}
console.log( accumulator() );
```
</section>
<!-- /.examples -->
<section class="links">
[mean-absolute-percentage-error]: https://en.wikipedia.org/wiki/Mean_absolute_percentage_error
</section>
<!-- /.links -->