Tag: Explainable

  • Explainable and Transparent AI and Multi-Agent Systems: 5th International Worksh



    Explainable and Transparent AI and Multi-Agent Systems: 5th International Worksh

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    op on XAI-MAS

    In today’s rapidly evolving technological landscape, the use of artificial intelligence (AI) and multi-agent systems (MAS) has become increasingly prevalent. However, concerns around the opacity and lack of transparency in these systems have led to the development of Explainable AI (XAI) and Transparent AI frameworks. These frameworks aim to ensure that AI and MAS systems are not only effective in their decision-making processes but also understandable and accountable.

    The 5th International Workshop on XAI-MAS will bring together experts from various disciplines to discuss the latest research and advancements in the field of explainable and transparent AI and MAS. Participants will have the opportunity to explore topics such as interpretability, fairness, accountability, and trust in AI and MAS systems, as well as discuss practical applications and case studies.

    Join us at the 5th International Workshop on XAI-MAS to gain insights into how we can create AI and MAS systems that are not only efficient and effective but also transparent and explainable. Let’s work together to ensure that these technologies are developed and deployed in a responsible and ethical manner.
    #Explainable #Transparent #MultiAgent #Systems #5th #International #Worksh

  • Python explainable AI (XAI) combat(Chinese Edition)

    Python explainable AI (XAI) combat(Chinese Edition)


    Price: $50.50
    (as of Dec 26,2024 23:03:01 UTC – Details)




    Publisher ‏ : ‎ Tsinghua University Press (August 1, 2022)
    Language ‏ : ‎ Chinese
    ISBN-10 ‏ : ‎ 730261329X
    ISBN-13 ‏ : ‎ 978-7302613299


    Python解释性人工智能(XAI)对抗(中文版)

    在这个帖子中,我们将探讨Python解释性人工智能(XAI)在对抗中的应用。解释性人工智能是一种能够解释其决策过程的人工智能系统,与黑盒模型相比,它更易于理解和解释。

    Python是一种流行的编程语言,被广泛用于开发人工智能系统。结合Python和解释性人工智能,我们可以构建具有可解释性和透明性的AI系统。

    在对抗中,Python解释性人工智能可以帮助我们理解机器学习模型的决策过程,从而更好地预测和应对对手的行为。通过分析模型的特征重要性和决策路径,我们可以更好地了解AI系统的工作原理,从而更好地应对不同情况。

    总的来说,Python解释性人工智能在对抗中的应用可以帮助我们更好地理解和控制AI系统的决策过程,从而提高我们在竞争中的优势。如果您对这个话题感兴趣,欢迎加入我们的讨论!
    #Python #explainable #XAI #combatChinese #Edition

  • Explainable Ai With Python, Paperback by Gianfagna, Leonida; Di Cecco, Antoni…

    Explainable Ai With Python, Paperback by Gianfagna, Leonida; Di Cecco, Antoni…



    Explainable Ai With Python, Paperback by Gianfagna, Leonida; Di Cecco, Antoni…

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    In this post, we will explore the book “Explainable AI with Python” written by Gianfagna, Leonida and Di Cecco, Antoni.

    This comprehensive guide covers the fundamentals of Explainable AI (XAI) and how it can be implemented using Python. The book provides a step-by-step approach to developing interpretable AI models, allowing users to understand the reasoning behind the decisions made by machine learning algorithms.

    Topics covered in the book include techniques such as LIME (Local Interpretable Model-agnostic Explanations), SHAP (SHapley Additive exPlanations), and feature importance analysis. Readers will learn how to visualize and interpret model predictions, making AI more transparent and trustworthy.

    Whether you are a data scientist, machine learning engineer, or AI enthusiast, “Explainable AI with Python” is a valuable resource for anyone looking to delve deeper into the world of interpretable AI. Get your hands on a copy today and unlock the power of explainability in AI.
    #Explainable #Python #Paperback #Gianfagna #Leonida #Cecco #Antoni..

  • Artificial Intelligence in Medicine: Knowledge Representation and Transparent and Explainable Systems (Lecture Notes in Artificial Intelligence)

    Artificial Intelligence in Medicine: Knowledge Representation and Transparent and Explainable Systems (Lecture Notes in Artificial Intelligence)


    Price: $54.99
    (as of Dec 26,2024 21:56:41 UTC – Details)




    Publisher ‏ : ‎ Springer; 1st ed. 2019 edition (January 4, 2020)
    Language ‏ : ‎ English
    Paperback ‏ : ‎ 188 pages
    ISBN-10 ‏ : ‎ 3030374459
    ISBN-13 ‏ : ‎ 978-3030374457
    Item Weight ‏ : ‎ 9.6 ounces
    Dimensions ‏ : ‎ 6.1 x 0.43 x 9.25 inches


    Artificial Intelligence in Medicine: Knowledge Representation and Transparent and Explainable Systems (Lecture Notes in Artificial Intelligence)

    Artificial Intelligence (AI) has the potential to revolutionize the field of medicine by improving diagnosis, treatment, and patient care. However, one of the key challenges in deploying AI in healthcare is ensuring that the systems are transparent and explainable. This is crucial for gaining trust from both healthcare providers and patients.

    In this lecture notes series on AI in Medicine, we delve into the importance of knowledge representation and building transparent and explainable AI systems. Knowledge representation is essential for capturing and organizing medical knowledge in a way that AI systems can effectively utilize. By encoding medical knowledge in a structured format, AI algorithms can make more accurate and informed decisions.

    Additionally, transparency and explainability are critical for ensuring that AI systems are trustworthy and can be easily understood by healthcare professionals. Transparent AI systems provide insights into how they arrive at their decisions, allowing doctors to validate and interpret the results. Explainable AI systems can also help patients understand the reasoning behind their diagnosis and treatment plans, leading to increased confidence in the technology.

    Overall, this lecture notes series will explore the intersection of AI, knowledge representation, and transparency in the field of medicine. By addressing these key aspects, we can pave the way for the widespread adoption of AI in healthcare, ultimately improving patient outcomes and revolutionizing the way medical professionals deliver care.
    #Artificial #Intelligence #Medicine #Knowledge #Representation #Transparent #Explainable #Systems #Lecture #Notes #Artificial #Intelligence

  • Explainable AI Applications for Human Behavior Analysis by P. Paramasivan Paperb

    Explainable AI Applications for Human Behavior Analysis by P. Paramasivan Paperb



    Explainable AI Applications for Human Behavior Analysis by P. Paramasivan Paperb

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    In the paper titled “Explainable AI Applications for Human Behavior Analysis” by P. Paramasivan, the author explores the use of explainable artificial intelligence (AI) in analyzing human behavior.

    The paper discusses how AI technologies can be used to analyze and understand human behavior in various contexts, such as healthcare, education, and social media. By using explainable AI, researchers and practitioners can gain insights into why individuals behave in certain ways, and how these behaviors can be influenced or changed.

    The author highlights the importance of transparency and interpretability in AI models, especially when dealing with sensitive topics such as human behavior. By providing explanations for the AI’s decisions and recommendations, users can better understand and trust the technology.

    Overall, the paper emphasizes the potential of explainable AI in improving our understanding of human behavior and guiding interventions to promote positive changes. It serves as a valuable resource for researchers, practitioners, and policymakers interested in leveraging AI for behavior analysis.
    #Explainable #Applications #Human #Behavior #Analysis #Paramasivan #Paperb

  • Practical Explainable AI Using Python: Artificial Intelligence Model Explanation

    Practical Explainable AI Using Python: Artificial Intelligence Model Explanation



    Practical Explainable AI Using Python: Artificial Intelligence Model Explanation

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    In this post, we will discuss the concept of explainable artificial intelligence (AI) and how to create a practical explainable AI model using Python.

    Explainable AI is the ability to understand and interpret how AI models make decisions. This is important for ensuring transparency, trust, and accountability in AI systems. By using Python, we can create AI models that are not only accurate but also explainable.

    One approach to creating explainable AI models is to use techniques such as feature importance, partial dependence plots, and SHAP (SHapley Additive exPlanations) values. These techniques help us understand which features are most important in making predictions and how they influence the model’s output.

    To demonstrate this, let’s create a simple explainable AI model using Python. We will use the popular scikit-learn library to build a decision tree classifier and then explain its decisions using feature importance and SHAP values.

    First, we will import the necessary libraries:

    
    import numpy as np<br />
    import pandas as pd<br />
    from sklearn.model_selection import train_test_split<br />
    from sklearn.tree import DecisionTreeClassifier<br />
    from sklearn.metrics import accuracy_score<br />
    import shap<br />
    ```<br />
    <br />
    Next, let's load a sample dataset and split it into training and testing sets:<br />
    <br />
    ```python<br />
    data = pd.read_csv('data.csv')<br />
    X = data.drop('target', axis=1)<br />
    y = data['target']<br />
    <br />
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=42)<br />
    ```<br />
    <br />
    Now, let's train a decision tree classifier on the training data:<br />
    <br />
    ```python<br />
    model = DecisionTreeClassifier()<br />
    model.fit(X_train, y_train)<br />
    <br />
    y_pred = model.predict(X_test)<br />
    accuracy = accuracy_score(y_test, y_pred)<br />
    print(f'Accuracy: {accuracy}')<br />
    ```<br />
    <br />
    Finally, let's explain the model's decisions using SHAP values:<br />
    <br />
    ```python<br />
    explainer = shap.TreeExplainer(model)<br />
    shap_values = explainer.shap_values(X_test)<br />
    <br />
    shap.summary_plot(shap_values, X_test, plot_type='bar')<br />
    ```<br />
    <br />
    By visualizing the SHAP values, we can see which features are most important in making predictions and how they influence the model's output. This helps us understand and interpret the decisions made by the AI model. <br />
    <br />
    In conclusion, creating explainable AI models using Python is essential for building trust and understanding in AI systems. By using techniques such as feature importance and SHAP values, we can create AI models that are not only accurate but also explainable. This allows us to better interpret and trust the decisions made by AI systems.

    #Practical #Explainable #Python #Artificial #Intelligence #Model #Explanation

  • Explainable Artificial Intelligence in Stroke from the Clinical, Rehabilitation and Nursing Perspectives

    Explainable Artificial Intelligence in Stroke from the Clinical, Rehabilitation and Nursing Perspectives


    Price: $73.14 – $64.64
    (as of Dec 26,2024 20:47:16 UTC – Details)



    Explainable Artificial Intelligence in Stroke: Insights from Clinical, Rehabilitation, and Nursing Perspectives

    Artificial intelligence (AI) has revolutionized the healthcare industry, offering innovative solutions for diagnosing, treating, and managing various medical conditions, including stroke. Explainable Artificial Intelligence (XAI) is a subset of AI that aims to make the decision-making process of AI systems understandable to humans. In the context of stroke care, XAI can provide valuable insights from multiple perspectives, including clinical, rehabilitation, and nursing.

    From a clinical perspective, XAI can help healthcare professionals in diagnosing strokes more accurately and efficiently. By analyzing a patient’s medical history, imaging data, and other relevant information, AI algorithms can assist in identifying the type of stroke, its severity, and potential complications. XAI can also predict the patient’s risk of recurrent strokes and suggest personalized treatment plans based on the individual’s medical profile.

    In stroke rehabilitation, XAI can play a crucial role in monitoring patients’ progress and adjusting their therapy programs accordingly. By analyzing data from wearable devices, motion sensors, and other monitoring tools, AI algorithms can track the patient’s motor function, cognitive abilities, and overall recovery trajectory. XAI can provide real-time feedback to rehabilitation professionals, helping them optimize the therapy sessions and tailor the interventions to the patient’s specific needs.

    From a nursing perspective, XAI can enhance the quality of care provided to stroke patients by automating routine tasks, such as medication management, vital sign monitoring, and patient education. By leveraging AI-powered chatbots and virtual assistants, nurses can streamline communication with patients, answer their questions, and deliver personalized care instructions. XAI can also help nurses in prioritizing their workload, identifying high-risk patients, and coordinating with other healthcare team members more effectively.

    Overall, Explainable Artificial Intelligence in stroke care offers a promising opportunity to improve patient outcomes, enhance clinical decision-making, and optimize healthcare delivery. By combining the expertise of healthcare professionals with the computational power of AI algorithms, we can unlock new insights, develop innovative solutions, and transform the way we approach stroke management from multiple perspectives.
    #Explainable #Artificial #Intelligence #Stroke #Clinical #Rehabilitation #Nursing #Perspectives

  • Explainable and Transparent AI and Multi-Agent Systems: Third International Work

    Explainable and Transparent AI and Multi-Agent Systems: Third International Work



    Explainable and Transparent AI and Multi-Agent Systems: Third International Work

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    In the world of artificial intelligence (AI) and multi-agent systems, there is a growing emphasis on developing systems that are not only powerful and efficient, but also explainable and transparent. These qualities are crucial for ensuring that users can trust and understand the decisions made by these systems, especially in high-stakes domains such as healthcare, finance, and national security.

    The upcoming Third International Workshop on Explainable and Transparent AI and Multi-Agent Systems aims to bring together researchers, practitioners, and policymakers to explore the latest advances in this important area. The workshop will feature presentations on cutting-edge research, panel discussions on key challenges and opportunities, and hands-on demonstrations of explainable AI and multi-agent systems in action.

    Topics to be covered at the workshop include:

    – Techniques for building explainable AI and multi-agent systems
    – Evaluation methods for assessing the transparency and interpretability of these systems
    – Ethical considerations in the design and deployment of explainable AI and multi-agent systems
    – Case studies of successful applications in real-world settings
    – Regulatory frameworks and standards for promoting transparency and accountability in AI and multi-agent systems

    By fostering collaboration and knowledge-sharing among experts in the field, the workshop aims to accelerate progress towards more transparent and accountable AI and multi-agent systems. Ultimately, the goal is to create systems that not only perform well, but also inspire trust and confidence in their users.

    Interested participants can register for the workshop and submit their research papers or project proposals online. Don’t miss this exciting opportunity to learn from and engage with leading experts in the field of explainable and transparent AI and multi-agent systems. We look forward to seeing you there!
    #Explainable #Transparent #MultiAgent #Systems #International #Work

  • Advances in Explainable Artificial Intelligence

    Advances in Explainable Artificial Intelligence


    Price: $86.66 – $75.82
    (as of Dec 26,2024 20:14:41 UTC – Details)



    Explainable Artificial Intelligence (XAI) is a rapidly evolving field that aims to make AI systems more transparent and understandable to humans. Recent advances in XAI have made great strides in improving the interpretability and accountability of AI models, paving the way for increased trust and adoption of these technologies.

    One key advancement in XAI is the development of new interpretability techniques that allow users to better understand how AI models arrive at their decisions. These techniques, such as feature importance analysis and attention mechanisms, provide insights into the inner workings of complex machine learning algorithms, helping users to identify biases, errors, and potential ethical concerns.

    Another important development in XAI is the integration of human feedback into the AI training process. By incorporating human input and preferences into the model development phase, researchers are able to create more intuitive and user-friendly AI systems that align with human values and expectations.

    Furthermore, advancements in model explanation visualization tools have made it easier for users to interact with and understand the outputs of AI systems. By providing intuitive visual representations of AI decision-making processes, these tools empower users to make informed decisions and take appropriate actions based on AI recommendations.

    Overall, the field of XAI is rapidly advancing, with researchers making significant strides in improving the transparency, interpretability, and explainability of AI systems. These advancements are crucial for building trust in AI technologies and ensuring that they are used responsibly and ethically.
    #Advances #Explainable #Artificial #Intelligence

  • Introduction to Explainable Artificial Intelligence (Full Color) (Produced by Blogpost)(Chinese Edition)

    Introduction to Explainable Artificial Intelligence (Full Color) (Produced by Blogpost)(Chinese Edition)


    Price: $60.10
    (as of Dec 26,2024 19:39:00 UTC – Details)




    Publisher ‏ : ‎ Electronic Industry Press (April 1, 2022)
    Language ‏ : ‎ Chinese
    ISBN-10 ‏ : ‎ 7121431874
    ISBN-13 ‏ : ‎ 978-7121431876


    Introduction to Explainable Artificial Intelligence (Full Color) (Produced by Blogpost) (Chinese Edition)

    In the fast-paced world of artificial intelligence, there is a growing need for transparency and understanding in the decision-making processes of AI systems. This is where Explainable AI comes into play.

    Explainable AI, or XAI, is a set of techniques and tools that aim to make AI systems more transparent and interpretable. By providing explanations for the decisions made by AI algorithms, XAI helps users understand how and why a particular outcome was reached.

    In this full color blogpost, we will delve into the world of Explainable AI and explore its importance in today’s AI-driven world. From the basics of XAI to advanced techniques and real-world applications, this post will provide a comprehensive overview of this emerging field.

    Join us as we unravel the mysteries of AI transparency and discover how Explainable AI is shaping the future of artificial intelligence. Stay tuned for an in-depth exploration of this fascinating topic in our upcoming blogpost!

    (Note: This post is written in Chinese for our Chinese-speaking audience. English translation is available upon request.)
    #Introduction #Explainable #Artificial #Intelligence #Full #Color #Produced #BlogpostChinese #Edition

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