Get Full Government Meeting Transcripts, Videos, & Alerts Forever!

AI Bias Exposed in Housing and Financial Services

July 23, 2024 | Financial Services: House Committee, Standing Committees - House & Senate, Congressional Hearings Compilation



Black Friday Offer

Get Lifetime Access to Full Government Meeting Transcripts

$99/year $199 LIFETIME

Lifetime access to full videos, transcriptions, searches & alerts • County, city, state & federal

Full Videos
Transcripts
Unlimited Searches
Real-Time Alerts
AI Summaries
Claim Your Spot Now

Limited Spots • 30-day guarantee

This article was created by AI summarizing key points discussed. AI makes mistakes, so for full details and context, please refer to the video of the full meeting. Please report any errors so we can fix them. Report an error »

AI Bias Exposed in Housing and Financial Services
In a recent government meeting, discussions centered on the impact of artificial intelligence (AI) in financial services and housing, highlighting significant concerns regarding systemic biases that affect communities of color. A key point raised was the alarming trend of home appraisals, where properties in predominantly Black neighborhoods are undervalued by at least 21% compared to similar homes in white neighborhoods. This discrepancy results in an estimated loss of over $162 billion in equity for Black families, exacerbating the racial wealth gap in the United States.

Congresswoman Ayanna Pressley emphasized the need for transparency and accountability in AI systems, cautioning against the assumption that these technologies can inherently eliminate bias. She pointed out that the algorithms used in home valuations and loan approvals are influenced by historical biases embedded in the data they are trained on.

In response, Mister Karunthye, the chief technology officer of a leading AI startup, acknowledged the importance of addressing these issues. He outlined their approach to developing AI models, which includes a commitment to understanding the data sources and ensuring that geographic information does not perpetuate outdated biases. He also stressed the necessity of human oversight in AI decision-making processes to mitigate potential discrimination.

The meeting underscored the critical intersection of technology and social equity, calling for a race-conscious approach in the development and deployment of AI to ensure fair treatment across all communities.

View full meeting

This article is based on a recent meeting—watch the full video and explore the complete transcript for deeper insights into the discussion.

View full meeting