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How to remove bamboo from your yard

Popular Science

More information Adding us as a Preferred Source in Google by using this link indicates that you would like to see more of our content in Google News results. If bamboo appears unexpectedly in your yard, don't panic. Breakthroughs, discoveries, and DIY tips sent six days a week. Bamboo may feel like an easy landscaping win because it's a fast-growing privacy screen that can turn a plain yard into a lush retreat. But then a few shoots start popping up in random places all over your yard.


SCOPE: Language Models as One-Time Teacher for Hierarchical Planning in Text Environments

Lu, Haoye, Seshadri, Pavan, Suleman, Kaheer

arXiv.org Artificial Intelligence

Long-term planning in complex, text-based environments presents significant challenges due to open-ended action spaces, ambiguous observations, and sparse feedback. Recent research suggests that large language models (LLMs) encode rich semantic knowledge about the world, which can be valuable for guiding agents in high-level reasoning and planning across both embodied and purely textual settings. However, existing approaches often depend heavily on querying LLMs during training and inference, making them computationally expensive and difficult to deploy efficiently. In addition, these methods typically employ a pretrained, unaltered LLM whose parameters remain fixed throughout training, providing no opportunity for adaptation to the target task. To address these limitations, we introduce SCOPE (Subgoal-COnditioned Pretraining for Efficient planning), a one-shot hierarchical planner that leverages LLM-generated subgoals only at initialization to pretrain a lightweight student model. Unlike prior approaches that distill LLM knowledge by repeatedly prompting the model to adaptively generate subgoals during training, our method derives subgoals directly from example trajectories. This design removes the need for repeated LLM queries, significantly improving efficiency, though at the cost of reduced explainability and potentially suboptimal subgoals. Despite their suboptimality, our results on the TextCraft environment show that LLM-generated subgoals can still serve as a strong starting point for hierarchical goal decomposition in text-based planning tasks. Compared to the LLM-based hierarchical agent ADaPT (Prasad et al., 2024), which achieves a 0.52 success rate, our method reaches 0.56 and reduces inference time from 164.4 seconds to just 3.0 seconds.


The Impact of Negated Text on Hallucination with Large Language Models

Seo, Jaehyung, Moon, Hyeonseok, Lim, Heuiseok

arXiv.org Artificial Intelligence

Recent studies on hallucination in large language models (LLMs) have been actively progressing in natural language processing. However, the impact of negated text on hallucination with LLMs remains largely unexplored. In this paper, we set three important yet unanswered research questions and aim to address them. To derive the answers, we investigate whether LLMs can recognize contextual shifts caused by negation and still reliably distinguish hallucinations comparable to affirmative cases. We also design the NegHalu dataset by reconstructing existing hallucination detection datasets with negated expressions. Our experiments demonstrate that LLMs struggle to detect hallucinations in negated text effectively, often producing logically inconsistent or unfaithful judgments. Moreover, we trace the internal state of LLMs as they process negated inputs at the token level and reveal the challenges of mitigating their unintended effects.


BAMBOO: A Comprehensive Benchmark for Evaluating Long Text Modeling Capacities of Large Language Models

Dong, Zican, Tang, Tianyi, Li, Junyi, Zhao, Wayne Xin, Wen, Ji-Rong

arXiv.org Artificial Intelligence

Large language models (LLMs) have achieved dramatic proficiency over NLP tasks with normal length. Recently, multiple studies have committed to extending the context length and enhancing the long text modeling capabilities of LLMs. To comprehensively evaluate the long context ability of LLMs, we propose BAMBOO, a multi-task long context benchmark. BAMBOO has been designed with four principles: comprehensive capacity evaluation, avoidance of data contamination, accurate automatic evaluation, and different length levels. It consists of 10 datasets from 5 different long text understanding tasks, i.e. question answering, hallucination detection, text sorting, language modeling, and code completion, to cover core capacities and various domains of LLMs. We conduct experiments with five long context models on BAMBOO and further discuss four key research questions of long text. We also qualitatively analyze current long context models and point out future directions for enhancing long text modeling capacities. We release our data, prompts, and code at https://github.com/RUCAIBox/BAMBOO.


A Sculptural Tower Of Bamboo Has Been Installed In Beijing

#artificialintelligence

AntiStatics Architecture has designed a bamboo tower installation named "Woven Grove", that was exhibited at Design China Beijing 2019. The installation is an exploration of the inherent material behaviors of bamboo and has been inspired by the craft-based practice of weaving. As the properties of bamboo are highly pliable and flexible, they were able to weave the pieces together to create a highly rigid and lightweight structure. The designers used customized artificial intelligence algorithms as a means of generating the form, before creating small scale models from the same material, that would allow them to see how the bamboo would react before creating the full-scale version. They then created the installation in sections, which were then fastened together on-site.