personal story
Crafting Hanzi as Narrative Bridges: An AI Co-Creation Workshop for Elderly Migrants
Zhan, Wen, Hua, Ziqun, Lin, Peiyue, Chen, Yunfei
This paper explores how older adults, particularly aging migrants in urban China, can engage AI-assisted co-creation to express personal narratives that are often fragmented, underrepresented, or difficult to verbalize. Through a pilot workshop combining oral storytelling and the symbolic reconstruction of Hanzi, participants shared memories of migration and recreated new character forms using Xiaozhuan glyphs, suggested by the Large Language Model (LLM), together with physical materials. Supported by human facilitation and a soft AI presence, participants transformed lived experience into visual and tactile expressions without requiring digital literacy. This approach offers new perspectives on human-AI collaboration and aging by repositioning AI not as a content producer but as a supportive mechanism, and by supporting narrative agency within sociotechnical systems.
- North America > United States > California > San Francisco County > San Francisco (0.14)
- North America > Saint Martin (0.04)
- Europe > United Kingdom > England > Greater London > London (0.04)
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- Instructional Material > Course Syllabus & Notes (0.94)
- Research Report (0.64)
- Government (0.54)
- Law Enforcement & Public Safety (0.48)
- Health & Medicine (0.47)
The AI That Could Heal a Divided Internet
In the 1990s and early 2000s, technologists made the world a grand promise: new communications technologies would strengthen democracy, undermine authoritarianism, and lead to a new era of human flourishing. But today, few people would agree that the internet has lived up to that lofty goal. Today, on social media platforms, content tends to be ranked by how much engagement it receives. Over the last two decades politics, the media, and culture have all been reshaped to meet a single, overriding incentive: posts that provoke an emotional response often rise to the top. Efforts to improve the health of online spaces have long focused on content moderation, the practice of detecting and removing bad content.
- North America > United States > California (0.14)
- North America > United States > New York (0.04)
- North America > Cuba (0.04)
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AI and Creativity: The Personal Stories Behind Art and Technology
Art and technology have always been intertwined. From the earliest cave paintings to the most cutting-edge digital installations, artists have used technology to create and explore new forms of expression. But with the rise of artificial intelligence, the possibilities for creative collaboration between humans and machines are expanding in unprecedented ways.
Helping Your Team Feel the Purpose in Their Work
No one wants to be a nine-to-five robot. People want to feel inspired, find meaning, and see the impact their work has on others. And when they do, they're more engaged, innovative, and productive. If you're a leader, helping others feel a sense of purpose can be a powerful tool. So, why then do so many leaders have trouble lighting up their employees? The simple answer is it's extremely difficult to instill purpose in others.
SafeCity: Understanding Diverse Forms of Sexual Harassment Personal Stories
Karlekar, Sweta, Bansal, Mohit
With the recent rise of #MeToo, an increasing number of personal stories about sexual harassment and sexual abuse have been shared online. In order to push forward the fight against such harassment and abuse, we present the task of automatically categorizing and analyzing various forms of sexual harassment, based on stories shared on the online forum SafeCity. For the labels of groping, ogling, and commenting, our single-label CNN-RNN model achieves an accuracy of 86.5%, and our multi-label model achieves a Hamming score of 82.5%. Furthermore, we present analysis using LIME, first-derivative saliency heatmaps, activation clustering, and embedding visualization to interpret neural model predictions and demonstrate how this extracts features that can help automatically fill out incident reports, identify unsafe areas, avoid unsafe practices, and 'pin the creeps'.
- Law > Criminal Law (1.00)
- Law Enforcement & Public Safety > Crime Prevention & Enforcement (1.00)
- Health & Medicine > Therapeutic Area > Psychiatry/Psychology > Mental Health (1.00)
- Information Technology > Communications > Social Media (1.00)
- Information Technology > Artificial Intelligence > Natural Language (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning (0.94)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (0.51)
Learning Without Limits: How Indigenous Tribes Prepared Me To Master Data Science
This is the first in a series of posts on applying Tim Ferriss' accelerated learning framework to Data Science. My goal is to become a world-class (top 5%) Data Scientist in 6 months, while open-sourcing everything I find and learn along the way. Here's the story behind the journey and an invitation to follow along: There I was, ten yards out, staring my dinner in the face. The only problem was, the wild boar was still alive. For the past 4 weeks I had been backpacking solo throughout Southeast Asia, and just yesterday had decided to spend the final 2 days of my trip doing jungle survival training in Bario, Malaysia.
- Asia > Malaysia (0.25)
- Asia > Southeast Asia (0.25)
- Asia > Cambodia (0.05)
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The Emotion Journal performs real-time sentiment analysis on your most personal stories
Andrew Greenstein, an app developer from San Francisco, started journaling a few months ago. He tries to write for five minutes every day, but it's challenging to set aside the time. Still, he's read that journaling reduces stress and can help with goal-setting, so he's trying to make it a habit. At the Disrupt London Hackathon, Greenstein and his team built The Emotion Journal, a voice journaling app that performs real-time emotional analysis to detect the user's feelings and chart their emotional state over time. By day, Greenstein is the CEO of SF AppWorks, a digital agency.
Commonsense Causal Reasoning between Short Texts
Luo, Zhiyi (Shanghai Jiao Tong University) | Sha, Yuchen (Shanghai Jiao Tong University) | Zhu, Kenny Q. (Shanghai Jiao Tong University) | Hwang, Seung-Won (Yonsei University) | Wang, Zhongyuan (Microsoft Research Asia)
Commonsense causal reasoning is the process of capturing and understanding the causal dependencies amongst events and actions. Such events and actions can be expressed in terms, phrases or sentences in natural language text. Therefore, one possible way of obtaining causal knowledge is by extracting causal relations between terms or phrases from a large text corpus. However, causal relations in text are sparse, ambiguous, and sometimes implicit, and thus difficult to obtain. This paper attacks the problem of commonsense causality reasoning between short texts (phrases and sentences) using a data driven approach. We propose a framework that automatically harvests a network of causal-effect terms from a large web corpus. Backed by this network, we propose a novel and effective metric to properly model the causality strength between terms. We show these signals can be aggregated for causality reasonings between short texts, including sentences and phrases. In particular, our approach outperforms all previously reported results in the standard SEMEVAL COPA task by substantial margins.
Commonsense Causal Reasoning Using Millions of Personal Stories
Gordon, Andrew S. (University of Southern California) | Bejan, Cosmin A. (University of Southern California) | Sagae, Kenji (University of Southern California)
The personal stories that people write in their Internet weblogs include a substantial amount of information about the causal relationships between everyday events. In this paper we describe our efforts to use millions of these stories for automated commonsense causal reasoning. Casting the commonsense causal reasoning problem as a Choice of Plausible Alternatives, we describe four experiments that compare various statistical and information retrieval approaches to exploit causal information in story corpora. The top performing system in these experiments uses a simple co-occurrence statistic between words in the causal antecedent and consequent, calculated as the Pointwise Mutual Information between words in a corpus of millions of personal stories.
- North America > United States > California > Los Angeles County > Los Angeles (0.14)
- North America > United States > New York (0.05)
- North America > United States > California > Santa Clara County > San Jose (0.04)
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