Computational Intelligence and Neuroscience

Interpretable Methods of Artificial Intelligence Algorithms


Publishing date
01 Jan 2023
Status
Published
Submission deadline
02 Sep 2022

Lead Editor
Guest Editors

1Beijing Jiaotong University, Beijing, China

2East China Jiaotong University, Nanchang, China

3Kookmin University, Seoul, Republic of Korea


Interpretable Methods of Artificial Intelligence Algorithms

Description

The application of artificial intelligence technology in the information field, represented by deep learning, has greatly improved the efficiency of information utilization and mining value and profoundly influenced the business form in various fields. From amongst the deeply debated issues of AI-related ethics, algorithmic discrimination, algorithmic correctness, and security, the issue of interpretability of AI algorithms represented by deep learning algorithms has arisen.

The development of human rationality has led us to believe that if a judgment or decision is interpretable, it will be easier for us to understand its strengths and weaknesses, to assess its risks, to know to what extent and in what contexts it can be trusted, and in what ways we can continuously improve it in order to maximize consensus, minimize risks, and promote the continuous development of the corresponding field. In actuality, the paradigm of reasoning and symbolic thinking that originated before the age of artificial intelligence, and evolved after it, can help in developing new interpretable methods for machine learning in order to grasp how these models can find answers. This will be crucial to building robust evidence-based and explainable models as well as to determine the performance and reliability of such models. Introducing interpretability techniques to deep learning models which use a variety of neural networks will provide explanations and empirical guidelines on how the deep learning model is generating decisions at every instance in time. These interpretable methods will shed light on the neural network black box and on how predictions are generated. However, interpretability techniques vary broadly from being machine learning specific methods to machine learning model agnostics or from being local to global. Interpretability techniques in all their varieties are crucial as they guard against embedded bias as well as preventing intensive debugging. These techniques play an increasingly important role in science, engineering, and society as they provide precise answers on how machine learning algorithms generate decisions.

This Special Issue covers several of the most common interpretability methods, their relative advantages and disadvantages, their taxonomy and application in various fields. We welcome original research and review articles.

Potential topics include but are not limited to the following:

  • Interpretability methods for explaining complex black-box machine models
  • Interpretability methods for creating white-box machine learning models
  • Interpretability methods for promoting fairness
  • Interpretability methods for analyzing the sensitivity of machine learning model predictions
  • Agnostics interpretability methods
  • Specific interpretability methods
  • Global and local interpretability methods
  • Transparency techniques for interpretability methods
  • Explainable techniques for interpretability methods
  • Retrospective approach to interpretability methods
  • Prospective approach to interpretability methods
  • Applications of interpretability machine learning methods (e.g., evidence-based healthcare, logistics)

Articles

  • Special Issue
  • - Volume 2022
  • - Article ID 4999478
  • - Research Article

Intelligent Animation Creation Method Based on Spatial Separation Perception Algorithm

Qingbo Meng
  • Special Issue
  • - Volume 2022
  • - Article ID 1900209
  • - Research Article

Research on Personalized Book Recommendation Based on Improved Similarity Calculation and Data Filling Collaborative Filtering Algorithm

Yanping Du | Lizhi Peng | ... | Xiaona Ren
  • Special Issue
  • - Volume 2022
  • - Article ID 8065767
  • - Research Article

Machine Learning Computing Migration and Management Based on Edge Computing of Multiple Data Sources in the Internet of Things

Yudong Yin
  • Special Issue
  • - Volume 2022
  • - Article ID 9137171
  • - Research Article

[Retracted] Visual Sensor Image Deconstruction in Constructing Green Building Design Space Adjustment Construction Strategy

Xiumin Xia
  • Special Issue
  • - Volume 2022
  • - Article ID 2953205
  • - Research Article

Optimization of Cold Chain Distribution Route with Mixed Time Window considering Customer Priority

Shouchen Liu | Cheng Zhang
  • Special Issue
  • - Volume 2022
  • - Article ID 2434992
  • - Research Article

Analysis of Graphic Language Expression in Visual Communication Design

Haixia Xu | LiLi Shi
  • Special Issue
  • - Volume 2022
  • - Article ID 3212681
  • - Research Article

The Public Sentiment Analysis of Double Reduction Policy on Weibo Platform

Weichen Jia | Jun Peng
  • Special Issue
  • - Volume 2022
  • - Article ID 1348991
  • - Research Article

Design of Computer-Aided Translation System Based on Naive Bayesian Algorithm

Zhiqiang Li | Juning Huang | Weixuan Zhong
  • Special Issue
  • - Volume 2022
  • - Article ID 3625502
  • - Research Article

[Retracted] Immersive VR Network Management Analysis considering Automatic Topology Discovery Algorithms

Jing He
  • Special Issue
  • - Volume 2022
  • - Article ID 1634995
  • - Research Article

[Retracted] A Hybrid Algorithm of Ant Colony and Benders Decomposition for Large-Scale Mixed Integer Linear Programming

Tingting Shan | Zhaoxuan Qiu

We have begun to integrate the 200+ Hindawi journals into Wiley’s journal portfolio. You can find out more about how this benefits our journal communities on our FAQ.