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SUMIE: A Synthetic Benchmark for Incremental Entity Summarization

arXiv.org Artificial Intelligence

No existing dataset adequately tests how well language models can incrementally update entity summaries - a crucial ability as these models rapidly advance. The Incremental Entity Summarization (IES) task is vital for maintaining accurate, up-to-date knowledge. To address this, we introduce SUMIE, a fully synthetic dataset designed to expose real-world IES challenges. This dataset effectively highlights problems like incorrect entity association and incomplete information presentation. Unlike common synthetic datasets, ours captures the complexity and nuances found in real-world data. We generate informative and diverse attributes, summaries, and unstructured paragraphs in sequence, ensuring high quality. The alignment between generated summaries and paragraphs exceeds 96%, confirming the dataset's quality. Extensive experiments demonstrate the dataset's difficulty - state-of-the-art LLMs struggle to update summaries with an F1 higher than 80.4%. We will open source the benchmark and the evaluation metrics to help the community make progress on IES tasks.


A Rule Search Framework for the Early Identification of Chronic Emergency Homeless Shelter Clients

arXiv.org Artificial Intelligence

This paper uses rule search techniques for the early identification of emergency homeless shelter clients who are at risk of becoming long term or chronic shelter users. Using a data set from a major North American shelter containing 12 years of service interactions with over 40,000 individuals, the optimized pruning for unordered search (OPUS) algorithm is used to develop rules that are both intuitive and effective. The rules are evaluated within a framework compatible with the real-time delivery of a housing program meant to transition high risk clients to supportive housing. Results demonstrate that the median time to identification of clients at risk of chronic shelter use drops from 297 days to 162 days when the methods in this paper are applied.


Elucidating the power of Inferential Statistics to make smarter decisions!

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Originally published on Towards AI the World's Leading AI and Technology News and Media Company. If you are building an AI-related product or service, we invite you to consider becoming an AI sponsor. At Towards AI, we help scale AI and technology startups. Let us help you unleash your technology to the masses. The strategic role of data science teams in the industry is fundamentally to help businesses to make smarter decisions.


Logistic Regression:

#artificialintelligence

Here we take the inference of the summary table, that Pseudo R-squ proves the accuracy of the model, where LLR p-value shows that at least one feature contributes into the model since p-value 0.05, blue mark shows the impact of features into the model while green mark gives the explicit explanation of each feature's contribution. The same way we predict here as well.