Trustworthy XAI and Application
- URL: http://arxiv.org/abs/2410.17139v1
- Date: Tue, 22 Oct 2024 16:10:10 GMT
- Title: Trustworthy XAI and Application
- Authors: MD Abdullah Al Nasim, Parag Biswas, Abdur Rashid, Angona Biswas, Kishor Datta Gupta,
- Abstract summary: The article explores XAI, reliable XAI, and several practical uses for reliable XAI.
We go over the three main components-transparency, explainability, and trustworthiness-that we determined are pertinent in this situation.
In the end, trustworthiness is crucial for establishing and maintaining trust between humans and AI systems.
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- Abstract: One of today's most significant and transformative technologies is the rapidly developing field of artificial intelligence (AI). Deined as a computer system that simulates human cognitive processes, AI is present in many aspects of our daily lives, from the self-driving cars on the road to the intelligence (AI) because some AI systems are so complex and opaque. With millions of parameters and layers, these system-deep neural networks in particular-make it difficult for humans to comprehend accountability, prejudice, and justice are raised by the opaqueness of its decision-making process. AI has a lot of potential, but it also comes with a lot of difficulties and moral dilemmas. In the context of explainable artificial intelligence (XAI), trust is crucial as it ensures that AI systems behave consistently, fairly, and ethically. In the present article, we explore XAI, reliable XAI, and several practical uses for reliable XAI. Once more, we go over the three main components-transparency, explainability, and trustworthiness of XAI-that we determined are pertinent in this situation. We present an overview of recent scientific studies that employ trustworthy XAI in various application fields. In the end, trustworthiness is crucial for establishing and maintaining trust between humans and AI systems, facilitating the integration of AI systems into various applications and domains for the benefit of society.
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