# ODINDistributionDiscriminator

## Description

The `ODINDistributionDiscriminator`

is a distribution discriminator that uses the
*out-of-distribution detector for neural networks*
(*ODIN*) method to compute distribution confidence scores. The object
contains a threshold that you can use to separate observations into in-distribution (ID) and
out-of-distribution (OOD) data sets.

## Creation

Create an `ODINDistributionDiscriminator`

object using the `networkDistributionDiscriminator`

function and setting the `method`

input
argument to `"odin"`

.

**Note**

The object type depends on the method you specify when you use the `networkDistributionDiscriminator`

function. The method determines how the
software computes the distribution confidence scores. You can set the `method`

argument
to either `"baseline"`

, `"odin"`

,
`"energy"`

, or `"hbos"`

. For more information, see
Distribution Confidence Scores.

## Properties

`Method`

— Method for computing distribution confidence scores

`"odin"`

This property is read-only.

Method for computing the distribution confidence scores, returned as
`"odin"`

. For more information, see Distribution Confidence Scores.

`Network`

— Deep learning network

`dlnetwork`

object

This property is read-only.

Deep learning network, returned as a `dlnetwork`

object.

`Temperature`

— Temperature scaling

positive scalar

This property is read-only.

Temperature scaling, returned as a positive scalar. The temperature controls the scaling of the softmax scores when the software computes the distribution confidence scores. For more information, see Distribution Confidence Scores.

**Example: **`1000`

`Threshold`

— Distribution threshold

positive scalar

This property is read-only.

Distribution threshold, returned as a positive scalar. The threshold separates the ID and OOD data using the distribution confidence scores.

**Example: **`1.2`

## Object Functions

`isInNetworkDistribution` | Determine whether data is within the distribution of the network |

`distributionScores` | Distribution confidence scores |

## Examples

### Create Distribution Discriminator Using ODIN Method

Load a pretrained classification network.

`load("digitsClassificationMLPNetwork.mat");`

Load ID data. Convert the data to a `dlarray`

object.

```
XID = digitTrain4DArrayData;
XID = dlarray(XID,"SSCB");
```

Modify the ID training data to create an OOD set.

XOOD = XID.*0.3 + 0.1;

Create a discriminator using the ODIN method. Set the temperature scaling to 1000.

method="odin"; discriminator = networkDistributionDiscriminator(net,XID,XOOD,method, ... Temperature=1000)

discriminator = ODINDistributionDiscriminator with properties: Method: "odin" Network: [1x1 dlnetwork] Temperature: 1000 Threshold: 0.1009

Assess the performance of the discriminator on the OOD data.

tf = isInNetworkDistribution(discriminator,XOOD); accuracy = sum(tf == 0)/numel(tf)

accuracy = 0.9074

## More About

### In-Distribution and Out-of-Distribution Data

*In-distribution* (*ID*) data refers to any data
that you use to construct and train your model. Additionally, any data that is sufficiently
similar to the training data is also said to be ID.

*Out-of-distribution* (*OOD*) data refers to
data that is sufficiently different to the training data. For example, data collected in a
different way, at a different time, under different conditions, or for a different task than
the data on which the model was originally trained. Models can receive OOD data when you
deploy them in an environment other than the one in which you train them. For example,
suppose you train a model on clear X-ray images but then deploy the model on images taken
with a lower-quality camera.

OOD data detection is important for assigning confidence to the predictions of a network. For more information, see OOD Data Detection.

### OOD Data Detection

OOD data detection is a technique for assessing whether the inputs to a network are OOD. For methods that you apply after training, you can construct a discriminator which acts as an additional output of the trained network that classifies an observation as ID or OOD.

The discriminator works by finding a distribution confidence score for an input. You can then specify a threshold. If the score is less than or equal to that threshold, then the input is OOD. Two groups of metrics for computing distribution confidence scores are softmax-based and density-based methods. Softmax-based methods use the softmax layer to compute the scores. Density-based methods use the outputs of layers that you specify to compute the scores. For more information about how to compute distribution confidence scores, see Distribution Confidence Scores.

These images show how a discriminator acts as an additional output of a trained neural network.

**Example Data Discriminators**

Example of Softmax-Based Discriminator | Example of Density-Based Discriminator |
---|---|

For more information, see Softmax-Based Methods. |
For more information, see Density-Based Methods. |

### Distribution Confidence Scores

Distribution confidence scores are metrics for classifying data as ID or OOD. If an input has a score less than or equal to a threshold value, then you can classify that input as OOD. You can use different techniques for finding the distribution confidence scores.

**Softmax-Based Methods**

ID data usually corresponds to a higher softmax output than OOD data [1].
Therefore, a method of defining distribution confidence scores is as a function of the
softmax scores. These methods are called *softmax-based* methods. These
methods only work for classification networks with a single softmax output.

Let *a*_{i}(*X*) be the input to the softmax layer for class *i*. The
output of the softmax layer for class *i* is given by this equation:

$${P}_{i}(X;T)=\frac{{e}^{{a}_{i}(X)/T}}{{\displaystyle \sum _{j=1}^{C}{e}^{{a}_{j}(X)/T}}},$$

where *C* is the number of classes and
*T* is a temperature scaling. When the network predicts the class label
of *X*, the temperature *T* is set to
`1`

.

The baseline, ODIN, and energy methods each define distribution confidence scores as functions of the softmax input.

The

*baseline*method [1] uses the maximum of the unscaled output values of the softmax scores:$$\text{confidence}(X)=\underset{i}{\mathrm{max}}{P}_{i}(X;1).$$

The

*out-of-distribution detector for neural networks*(*ODIN*) method [2] uses the maximum of the scaled output of the softmax scores:$$\text{confidence}(X;T)=\underset{i}{\mathrm{max}}{P}_{i}(X;T)\text{,}T0.$$

The

*energy*method [3] uses the scaled denominator of the softmax output:$$\begin{array}{l}\text{energy}(X;T)=-T\mathrm{log}\left({\displaystyle \sum _{j=1}^{C}{e}^{{a}_{j}(X)/T}}\right)\text{,}T0\\ \text{confidence}(X;T)=-\text{energy}(X;T)\text{,}T0.\end{array}$$

**Density-Based Methods**

Density-based methods compute the distribution scores by describing the underlying features learned by the network as probabilistic models. Observations falling into areas of low density correspond to OOD observations.

To model the distributions of the features, you can describe the density function for each feature using a histogram. This technique is based on the histogram-based outlier score (HBOS) method [4]. This method uses a data set of ID data, such as training data, to construct histograms representing the density distributions of the ID features. This method has three stages:

Find the principal component features for which to compute the distribution confidence scores:

For each specified layer, find the activations using the

*n*data set observations. Flatten the activations across all dimensions except the batch dimension.Compute the principal components of the flattened activations matrix. Normalize the eigenvalues such that the largest eigenvalue is 1 and corresponds to the principal component that carries the greatest variance through the layer. Denote the matrix of principal components for layer

*l*by*Q*.^{(l)}The principal components are linear combinations of the activations and represent the features that the software uses to compute the distribution scores. To compute the score, the software uses only the principal components whose eigenvalues are greater than the variance cutoff value

*σ*.**Note**The HBOS algorithm assumes that the features are statistically independent. The principal component features are pairwise linearly independent but they can have nonlinear dependencies. To investigate feature dependencies, you can use functions such as

`corr`

(Statistics and Machine Learning Toolbox). For an example showing how to investigate feature dependence, see Out-of-Distribution Data Discriminator for YOLO v4 Object Detector. If the features are not statistically independent, then the algorithm can return poor results. Using multiple layers to compute the distribution scores can increase the number of statistically dependent features.

For each of the principal component features with an eigenvalue greater than

*σ*, construct a histogram. For each histogram:Dynamically adjusts the width of the bins to create $$\sqrt{n}$$ bins of approximately equal area.

Normalize the bins heights such that the largest height is 1.

Find the distribution score for an observation by summing the logarithmic height of the bin containing the observation for each of the feature histograms, over each of the layers.

Let

*f*denote the output of layer^{(l)}(X)*l*for input*X*. Use the principal components to project the output into a lower dimensional feature space using this equation: $${\widehat{f}}^{(l)}(X)={\left({Q}^{(l)}\right)}^{T}{f}^{(l)}(X)$$.Compute the confidence score using this equation:

$$\begin{array}{l}\text{HBOS}(X;\sigma )\text{}=\text{}-{\displaystyle \sum _{l=1}^{L}\left({\displaystyle \sum _{k=1}^{{N}^{(l)}(\sigma )}\text{log}\left({\text{hist}}_{k}\left({\widehat{f}}_{k}^{(l)}(X)\right)\right)}\right)},\\ \text{confidence}(X;\sigma )\text{}=\text{}-\text{HBOS}(X;\sigma ),\end{array}$$

where

*N*is the number of number of principal component with an eigenvalue less than^{(l)}(σ)*σ*and*L*is the number of layers. A larger score corresponds to an observation that lies in the areas of higher density. If the observation lies outside of the range of any of the histograms, then the bin height for those histograms is 0 and the confidence score is`-Inf`

.**Note**The distribution scores depend on the properties of the data set used to construct the histograms [6].

## References

[1] Shalev, Gal, Gabi Shalev, and Joseph Keshet. “A Baseline
for Detecting Out-of-Distribution Examples in Image Captioning.” In
*Proceedings of the 30th ACM International Conference on
Multimedia*, 4175–84. Lisboa Portugal: ACM, 2022.
https://doi.org/10.1145/3503161.3548340.

[2] Shiyu Liang, Yixuan Li, and R. Srikant, “Enhancing The Reliability of Out-of-distribution Image Detection in Neural Networks” arXiv:1706.02690 [cs.LG], August 30, 2020, http://arxiv.org/abs/1706.02690.

[3] Weitang Liu, Xiaoyun Wang, John D. Owens, and Yixuan Li, “Energy-based Out-of-distribution Detection” arXiv:2010.03759 [cs.LG], April 26, 2021, http://arxiv.org/abs/2010.03759.

[4] Markus Goldstein and Andreas Dengel. "Histogram-based outlier score (hbos): A fast unsupervised anomaly detection algorithm." KI-2012: poster and demo track 9 (2012).

[5] Jingkang Yang, Kaiyang Zhou, Yixuan Li, and Ziwei Liu, “Generalized Out-of-Distribution Detection: A Survey” August 3, 2022, http://arxiv.org/abs/2110.11334.

[6] Lee, Kimin, Kibok Lee, Honglak Lee, and Jinwoo Shin. “A Simple Unified Framework for Detecting Out-of-Distribution Samples and Adversarial Attacks.” arXiv, October 27, 2018. http://arxiv.org/abs/1807.03888.

## Extended Capabilities

### C/C++ Code Generation

Generate C and C++ code using MATLAB® Coder™.

Usage notes and limitations:

To load a discriminator object for code generation, use the

`coder.loadNetworkDistributionDiscriminator`

function.Requires the MATLAB

^{®}Coder™ Interface for Deep Learning support package. If this support package is not installed, use the Add-On Explorer. To open the Add-On Explorer, go to the MATLAB® Toolstrip and click**Add-Ons**>**Get Add-Ons**.

### GPU Code Generation

Generate CUDA® code for NVIDIA® GPUs using GPU Coder™.

Usage notes and limitations:

To load a discriminator object for code generation, use the

`coder.loadNetworkDistributionDiscriminator`

function.Requires the GPU Coder™ Interface for Deep Learning support package. If this support package is not installed, use the Add-On Explorer. To open the Add-On Explorer, go to the MATLAB® Toolstrip and click

**Add-Ons**>**Get Add-Ons**.

## Version History

**Introduced in R2023a**

### R2023a: Code generation support (June 2023; version 23.1.1)

Generate C or C++ code using MATLAB
Coder or generate CUDA^{®} code for NVIDIA^{®} GPUs using GPU Coder. For more information, see `coder.loadNetworkDistributionDiscriminator`

.

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