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Evaluating the Usage of African-American Vernacular English in Large Language Models

TITLE New AI Research Highlights Advances and Challenges in Language, Intimacy, and Human Interaction SUBTITLE Studies on African American Vernacular English, romantic AI platforms, and human-computer interaction shed light

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TITLE New AI Research Highlights Advances and Challenges in Language, Intimacy, and Human Interaction SUBTITLE Studies on African American Vernacular English, romantic AI platforms, and human-computer interaction shed...

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  1. Source 1 · Fulqrum Sources

    Evaluating the Usage of African-American Vernacular English in Large Language Models

  2. Source 2 · Fulqrum Sources

    Cross, Dwell, or Pinch: Designing and Evaluating Around-Device Selection Methods for Unmodified Smartwatches

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Evaluating the Usage of African-American Vernacular English in Large Language Models

Here is the synthesized article: **TITLE** New AI Research Highlights Advances and Challenges in Language, Intimacy, and Human Interaction **SUBTITLE** Studies on African American Vernacular English, romantic AI platforms, and human-computer interaction shed light

Sunday, March 1, 2026 • 3 min read • 5 source references

  • 3 min read
  • 5 source references

TITLE New AI Research Highlights Advances and Challenges in Language, Intimacy, and Human Interaction

SUBTITLE Studies on African American Vernacular English, romantic AI platforms, and human-computer interaction shed light on complexities of AI development

EXCERPT Recent research in AI has made significant strides in understanding human language and behavior, but also raises concerns about bias, intimacy, and user experience. From the evaluation of African American Vernacular English in large language models to the governance of romantic AI platforms, these studies highlight the complexities of AI development.

CONTENT

The rapid advancement of artificial intelligence (AI) has led to significant breakthroughs in various fields, from natural language processing to human-computer interaction. However, these advances also raise important questions about bias, intimacy, and user experience. A series of recent studies sheds light on these complexities, highlighting both the promise and the challenges of AI development.

One study, "Evaluating the Usage of African-American Vernacular English in Large Language Models," investigates the representation of African American Vernacular English (AAVE) in large language models (LLMs). The researchers analyzed three LLMs and found that they often underuse and misuse grammatical features characteristic of AAVE, highlighting the need for more diverse and inclusive language models. This study is significant, as it demonstrates the importance of considering the linguistic diversity of human language in AI development.

Another study, "The Governance of Intimacy: A Preliminary Policy Analysis of Romantic AI Platforms," examines the data governance practices of romantic AI platforms. The researchers found that these platforms often position intimate disclosures as reusable data assets, raising concerns about user privacy and consent. This study highlights the need for more transparent and user-centered data governance practices in AI development.

In the field of human-computer interaction, a study on "Detecting UX Smells in Visual Studio Code using LLMs" presents an LLM-assisted approach to detecting user experience (UX) smells in integrated development environments (IDEs). The researchers found that the majority of UX smells are concentrated in informativeness, clarity, intuitiveness, and efficiency, qualities that developers value most. This study demonstrates the potential of AI in improving the usability and user experience of software development tools.

Two other studies, "SPGen: Stochastic scanpath generation for paintings using unsupervised domain adaptation" and "Cross, Dwell, or Pinch: Designing and Evaluating Around-Device Selection Methods for Unmodified Smartwatches," showcase the application of AI in understanding human visual attention and behavior. The first study introduces a novel deep learning model for predicting scanpaths when viewers observe paintings, while the second study presents a sonar-based around-device input system for unmodified smartwatches. These studies highlight the potential of AI in advancing our understanding of human behavior and improving human-computer interaction.

These studies demonstrate the complexities and challenges of AI development, from addressing linguistic diversity and bias to ensuring user privacy and improving user experience. As AI continues to advance and permeate various aspects of our lives, it is essential to consider these challenges and develop more inclusive, transparent, and user-centered AI systems.

TITLE New AI Research Highlights Advances and Challenges in Language, Intimacy, and Human Interaction

SUBTITLE Studies on African American Vernacular English, romantic AI platforms, and human-computer interaction shed light on complexities of AI development

EXCERPT Recent research in AI has made significant strides in understanding human language and behavior, but also raises concerns about bias, intimacy, and user experience. From the evaluation of African American Vernacular English in large language models to the governance of romantic AI platforms, these studies highlight the complexities of AI development.

CONTENT

The rapid advancement of artificial intelligence (AI) has led to significant breakthroughs in various fields, from natural language processing to human-computer interaction. However, these advances also raise important questions about bias, intimacy, and user experience. A series of recent studies sheds light on these complexities, highlighting both the promise and the challenges of AI development.

One study, "Evaluating the Usage of African-American Vernacular English in Large Language Models," investigates the representation of African American Vernacular English (AAVE) in large language models (LLMs). The researchers analyzed three LLMs and found that they often underuse and misuse grammatical features characteristic of AAVE, highlighting the need for more diverse and inclusive language models. This study is significant, as it demonstrates the importance of considering the linguistic diversity of human language in AI development.

Another study, "The Governance of Intimacy: A Preliminary Policy Analysis of Romantic AI Platforms," examines the data governance practices of romantic AI platforms. The researchers found that these platforms often position intimate disclosures as reusable data assets, raising concerns about user privacy and consent. This study highlights the need for more transparent and user-centered data governance practices in AI development.

In the field of human-computer interaction, a study on "Detecting UX Smells in Visual Studio Code using LLMs" presents an LLM-assisted approach to detecting user experience (UX) smells in integrated development environments (IDEs). The researchers found that the majority of UX smells are concentrated in informativeness, clarity, intuitiveness, and efficiency, qualities that developers value most. This study demonstrates the potential of AI in improving the usability and user experience of software development tools.

Two other studies, "SPGen: Stochastic scanpath generation for paintings using unsupervised domain adaptation" and "Cross, Dwell, or Pinch: Designing and Evaluating Around-Device Selection Methods for Unmodified Smartwatches," showcase the application of AI in understanding human visual attention and behavior. The first study introduces a novel deep learning model for predicting scanpaths when viewers observe paintings, while the second study presents a sonar-based around-device input system for unmodified smartwatches. These studies highlight the potential of AI in advancing our understanding of human behavior and improving human-computer interaction.

These studies demonstrate the complexities and challenges of AI development, from addressing linguistic diversity and bias to ensuring user privacy and improving user experience. As AI continues to advance and permeate various aspects of our lives, it is essential to consider these challenges and develop more inclusive, transparent, and user-centered AI systems.

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arxiv.org

Evaluating the Usage of African-American Vernacular English in Large Language Models

Open

arxiv.org

Unmapped bias Credibility unknown Dossier
arxiv.org

The Governance of Intimacy: A Preliminary Policy Analysis of Romantic AI Platforms

Open

arxiv.org

Unmapped bias Credibility unknown Dossier
arxiv.org

Detecting UX smells in Visual Studio Code using LLMs

Open

arxiv.org

Unmapped bias Credibility unknown Dossier
arxiv.org

SPGen: Stochastic scanpath generation for paintings using unsupervised domain adaptation

Open

arxiv.org

Unmapped bias Credibility unknown Dossier
arxiv.org

Cross, Dwell, or Pinch: Designing and Evaluating Around-Device Selection Methods for Unmodified Smartwatches

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arxiv.org

Unmapped bias Credibility unknown Dossier
Fact-checked Real-time synthesis Bias-reduced

This article was synthesized by Fulqrum AI from 5 trusted sources, combining multiple perspectives into a comprehensive summary. All source references are listed below.