Kim, Dongwoo
Phi-4-Mini Technical Report: Compact yet Powerful Multimodal Language Models via Mixture-of-LoRAs
Microsoft, null, :, null, Abouelenin, Abdelrahman, Ashfaq, Atabak, Atkinson, Adam, Awadalla, Hany, Bach, Nguyen, Bao, Jianmin, Benhaim, Alon, Cai, Martin, Chaudhary, Vishrav, Chen, Congcong, Chen, Dong, Chen, Dongdong, Chen, Junkun, Chen, Weizhu, Chen, Yen-Chun, Chen, Yi-ling, Dai, Qi, Dai, Xiyang, Fan, Ruchao, Gao, Mei, Gao, Min, Garg, Amit, Goswami, Abhishek, Hao, Junheng, Hendy, Amr, Hu, Yuxuan, Jin, Xin, Khademi, Mahmoud, Kim, Dongwoo, Kim, Young Jin, Lee, Gina, Li, Jinyu, Li, Yunsheng, Liang, Chen, Lin, Xihui, Lin, Zeqi, Liu, Mengchen, Liu, Yang, Lopez, Gilsinia, Luo, Chong, Madan, Piyush, Mazalov, Vadim, Mitra, Arindam, Mousavi, Ali, Nguyen, Anh, Pan, Jing, Perez-Becker, Daniel, Platin, Jacob, Portet, Thomas, Qiu, Kai, Ren, Bo, Ren, Liliang, Roy, Sambuddha, Shang, Ning, Shen, Yelong, Singhal, Saksham, Som, Subhojit, Song, Xia, Sych, Tetyana, Vaddamanu, Praneetha, Wang, Shuohang, Wang, Yiming, Wang, Zhenghao, Wu, Haibin, Xu, Haoran, Xu, Weijian, Yang, Yifan, Yang, Ziyi, Yu, Donghan, Zabir, Ishmam, Zhang, Jianwen, Zhang, Li Lyna, Zhang, Yunan, Zhou, Xiren
We introduce Phi-4-Mini and Phi-4-Multimodal, compact yet highly capable language and multimodal models. Phi-4-Mini is a 3.8-billion-parameter language model trained on high-quality web and synthetic data, significantly outperforming recent open-source models of similar size and matching the performance of models twice its size on math and coding tasks requiring complex reasoning. This achievement is driven by a carefully curated synthetic data recipe emphasizing high-quality math and coding datasets. Compared to its predecessor, Phi-3.5-Mini, Phi-4-Mini features an expanded vocabulary size of 200K tokens to better support multilingual applications, as well as group query attention for more efficient long-sequence generation. Phi-4-Multimodal is a multimodal model that integrates text, vision, and speech/audio input modalities into a single model. Its novel modality extension approach leverages LoRA adapters and modality-specific routers to allow multiple inference modes combining various modalities without interference. For example, it now ranks first in the OpenASR leaderboard to date, although the LoRA component of the speech/audio modality has just 460 million parameters. Phi-4-Multimodal supports scenarios involving (vision + language), (vision + speech), and (speech/audio) inputs, outperforming larger vision-language and speech-language models on a wide range of tasks. Additionally, we experiment to further train Phi-4-Mini to enhance its reasoning capabilities. Despite its compact 3.8-billion-parameter size, this experimental version achieves reasoning performance on par with or surpassing significantly larger models, including DeepSeek-R1-Distill-Qwen-7B and DeepSeek-R1-Distill-Llama-8B.
CoPL: Collaborative Preference Learning for Personalizing LLMs
Choi, Youngbin, Cho, Seunghyuk, Lee, Minjong, Park, MoonJeong, Ko, Yesong, Ok, Jungseul, Kim, Dongwoo
Personalizing large language models (LLMs) is important for aligning outputs with diverse user preferences, yet existing methods struggle with flexibility and generalization. We propose CoPL (Collaborative Preference Learning), a graph-based collaborative filtering framework that models user-response relationships to enhance preference estimation, particularly in sparse annotation settings. By integrating a mixture of LoRA experts, CoPL efficiently fine-tunes LLMs while dynamically balancing shared and user-specific preferences. Additionally, an optimization-free adaptation strategy enables generalization to unseen users without fine-tuning. Experiments on UltraFeedback-P demonstrate that CoPL outperforms existing personalized reward models, effectively capturing both common and controversial preferences, making it a scalable solution for personalized LLM alignment.
GeoDANO: Geometric VLM with Domain Agnostic Vision Encoder
Cho, Seunghyuk, Qin, Zhenyue, Liu, Yang, Choi, Youngbin, Lee, Seungbeom, Kim, Dongwoo
We introduce GeoDANO, a geometric vision-language model (VLM) with a domain-agnostic vision encoder, for solving plane geometry problems. Although VLMs have been employed for solving geometry problems, their ability to recognize geometric features remains insufficiently analyzed. To address this gap, we propose a benchmark that evaluates the recognition of visual geometric features, including primitives such as dots and lines, and relations such as orthogonality. Our preliminary study shows that vision encoders often used in general-purpose VLMs, e.g., OpenCLIP, fail to detect these features and struggle to generalize across domains. We develop GeoCLIP, a CLIP based model trained on synthetic geometric diagram-caption pairs to overcome the limitation. Benchmark results show that GeoCLIP outperforms existing vision encoders in recognizing geometric features. We then propose our VLM, GeoDANO, which augments GeoCLIP with a domain adaptation strategy for unseen diagram styles. GeoDANO outperforms specialized methods for plane geometry problems and GPT-4o on MathVerse.
Position-Sensing Graph Neural Networks: Proactively Learning Nodes Relative Positions
Qin, Zhenyue, Anwar, Yiqun Zhang Saeed, Kim, Dongwoo, Liu, Yang, Ji, Pan, Gedeon, Tom
Most existing graph neural networks (GNNs) learn node embeddings using the framework of message passing and aggregation. Such GNNs are incapable of learning relative positions between graph nodes within a graph. To empower GNNs with the awareness of node positions, some nodes are set as anchors. Then, using the distances from a node to the anchors, GNNs can infer relative positions between nodes. However, P-GNNs arbitrarily select anchors, leading to compromising position-awareness and feature extraction. To eliminate this compromise, we demonstrate that selecting evenly distributed and asymmetric anchors is essential. On the other hand, we show that choosing anchors that can aggregate embeddings of all the nodes within a graph is NP-complete. Therefore, devising efficient optimal algorithms in a deterministic approach is practically not feasible. To ensure position-awareness and bypass NP-completeness, we propose Position-Sensing Graph Neural Networks (PSGNNs), learning how to choose anchors in a back-propagatable fashion. Experiments verify the effectiveness of PSGNNs against state-of-the-art GNNs, substantially improving performance on various synthetic and real-world graph datasets while enjoying stable scalability. Specifically, PSGNNs on average boost AUC more than 14% for pairwise node classification and 18% for link prediction over the existing state-of-the-art position-aware methods. Our source code is publicly available at: https://github.com/ZhenyueQin/PSGNN.
Towards Bridging Generalization and Expressivity of Graph Neural Networks
Li, Shouheng, Geerts, Floris, Kim, Dongwoo, Wang, Qing
Expressivity and generalization are two critical aspects of graph neural networks (GNNs). While significant progress has been made in studying the expressivity of GNNs, much less is known about their generalization capabilities, particularly when dealing with the inherent complexity of graph-structured data. In this work, we address the intricate relationship between expressivity and generalization in GNNs. Theoretical studies conjecture a trade-off between the two: highly expressive models risk overfitting, while those focused on generalization may sacrifice expressivity. However, empirical evidence often contradicts this assumption, with expressive GNNs frequently demonstrating strong generalization. We explore this contradiction by introducing a novel framework that connects GNN generalization to the variance in graph structures they can capture. This leads us to propose a $k$-variance margin-based generalization bound that characterizes the structural properties of graph embeddings in terms of their upper-bounded expressive power. Our analysis does not rely on specific GNN architectures, making it broadly applicable across GNN models. We further uncover a trade-off between intra-class concentration and inter-class separation, both of which are crucial for effective generalization. Through case studies and experiments on real-world datasets, we demonstrate that our theoretical findings align with empirical results, offering a deeper understanding of how expressivity can enhance GNN generalization.
Taming Gradient Oversmoothing and Expansion in Graph Neural Networks
Park, MoonJeong, Kim, Dongwoo
Oversmoothing has been claimed as a primary bottleneck for multi-layered graph neural networks (GNNs). Multiple analyses have examined how and why oversmoothing occurs. However, none of the prior work addressed how optimization is performed under the oversmoothing regime. In this work, we show the presence of $\textit{gradient oversmoothing}$ preventing optimization during training. We further analyze that GNNs with residual connections, a well-known solution to help gradient flow in deep architecture, introduce $\textit{gradient expansion}$, a phenomenon of the gradient explosion in diverse directions. Therefore, adding residual connections cannot be a solution for making a GNN deep. Our analysis reveals that constraining the Lipschitz bound of each layer can neutralize the gradient expansion. To this end, we provide a simple yet effective normalization method to prevent the gradient expansion. An empirical study shows that the residual GNNs with hundreds of layers can be efficiently trained with the proposed normalization without compromising performance. Additional studies show that the empirical observations corroborate our theoretical analysis.
Holistic Unlearning Benchmark: A Multi-Faceted Evaluation for Text-to-Image Diffusion Model Unlearning
Moon, Saemi, Lee, Minjong, Park, Sangdon, Kim, Dongwoo
As text-to-image diffusion models become advanced enough for commercial applications, there is also increasing concern about their potential for malicious and harmful use. Model unlearning has been proposed to mitigate the concerns by removing undesired and potentially harmful information from the pre-trained model. So far, the success of unlearning is mainly measured by whether the unlearned model can generate a target concept while maintaining image quality. However, unlearning is typically tested under limited scenarios, and the side effects of unlearning have barely been studied in the current literature. In this work, we thoroughly analyze unlearning under various scenarios with five key aspects. Our investigation reveals that every method has side effects or limitations, especially in more complex and realistic situations. By releasing our comprehensive evaluation framework with the source codes and artifacts, we hope to inspire further research in this area, leading to more reliable and effective unlearning methods.
Mitigating Oversmoothing Through Reverse Process of GNNs for Heterophilic Graphs
Park, MoonJeong, Heo, Jaeseung, Kim, Dongwoo
Graph Neural Network (GNN) resembles the diffusion process, leading to the over-smoothing of learned representations when stacking many layers. Hence, the reverse process of message passing can produce the distinguishable node representations by inverting the forward message propagation. The distinguishable representations can help us to better classify neighboring nodes with different labels, such as in heterophilic graphs. In this work, we apply the design principle of the reverse process to the three variants of the GNNs. Through the experiments on heterophilic graph data, where adjacent nodes need to have different representations for successful classification, we show that the reverse process significantly improves the prediction performance in many cases. Additional analysis reveals that the reverse mechanism can mitigate the over-smoothing over hundreds of layers. Our code is available at https://github.com/ml-postech/reverse-gnn.
Posterior Label Smoothing for Node Classification
Heo, Jaeseung, Park, Moonjeong, Kim, Dongwoo
Soft labels can improve the generalization of a neural network classifier in many domains, such as image classification. Despite its success, the current literature has overlooked the efficiency of label smoothing in node classification with graph-structured data. In this work, we propose a simple yet effective label smoothing for the transductive node classification task. We design the soft label to encapsulate the local context of the target node through the neighborhood label distribution. We apply the smoothing method for seven baseline models to show its effectiveness. The label smoothing methods improve the classification accuracy in 10 node classification datasets in most cases. In the following analysis, we find that incorporating global label statistics in posterior computation is the key to the success of label smoothing. Further investigation reveals that the soft labels mitigate overfitting during training, leading to better generalization performance.
Phi-3 Technical Report: A Highly Capable Language Model Locally on Your Phone
Abdin, Marah, Jacobs, Sam Ade, Awan, Ammar Ahmad, Aneja, Jyoti, Awadallah, Ahmed, Awadalla, Hany, Bach, Nguyen, Bahree, Amit, Bakhtiari, Arash, Bao, Jianmin, Behl, Harkirat, Benhaim, Alon, Bilenko, Misha, Bjorck, Johan, Bubeck, Sébastien, Cai, Qin, Cai, Martin, Mendes, Caio César Teodoro, Chen, Weizhu, Chaudhary, Vishrav, Chen, Dong, Chen, Dongdong, Chen, Yen-Chun, Chen, Yi-Ling, Chopra, Parul, Dai, Xiyang, Del Giorno, Allie, de Rosa, Gustavo, Dixon, Matthew, Eldan, Ronen, Fragoso, Victor, Iter, Dan, Gao, Mei, Gao, Min, Gao, Jianfeng, Garg, Amit, Goswami, Abhishek, Gunasekar, Suriya, Haider, Emman, Hao, Junheng, Hewett, Russell J., Huynh, Jamie, Javaheripi, Mojan, Jin, Xin, Kauffmann, Piero, Karampatziakis, Nikos, Kim, Dongwoo, Khademi, Mahoud, Kurilenko, Lev, Lee, James R., Lee, Yin Tat, Li, Yuanzhi, Li, Yunsheng, Liang, Chen, Liden, Lars, Liu, Ce, Liu, Mengchen, Liu, Weishung, Lin, Eric, Lin, Zeqi, Luo, Chong, Madan, Piyush, Mazzola, Matt, Mitra, Arindam, Modi, Hardik, Nguyen, Anh, Norick, Brandon, Patra, Barun, Perez-Becker, Daniel, Portet, Thomas, Pryzant, Reid, Qin, Heyang, Radmilac, Marko, Rosset, Corby, Roy, Sambudha, Ruwase, Olatunji, Saarikivi, Olli, Saied, Amin, Salim, Adil, Santacroce, Michael, Shah, Shital, Shang, Ning, Sharma, Hiteshi, Shukla, Swadheen, Song, Xia, Tanaka, Masahiro, Tupini, Andrea, Wang, Xin, Wang, Lijuan, Wang, Chunyu, Wang, Yu, Ward, Rachel, Wang, Guanhua, Witte, Philipp, Wu, Haiping, Wyatt, Michael, Xiao, Bin, Xu, Can, Xu, Jiahang, Xu, Weijian, Yadav, Sonali, Yang, Fan, Yang, Jianwei, Yang, Ziyi, Yang, Yifan, Yu, Donghan, Yuan, Lu, Zhang, Chengruidong, Zhang, Cyril, Zhang, Jianwen, Zhang, Li Lyna, Zhang, Yi, Zhang, Yue, Zhang, Yunan, Zhou, Xiren
We introduce phi-3-mini, a 3.8 billion parameter language model trained on 3.3 trillion tokens, whose overall performance, as measured by both academic benchmarks and internal testing, rivals that of models such as Mixtral 8x7B and GPT-3.5 (e.g., phi-3-mini achieves 69% on MMLU and 8.38 on MT-bench), despite being small enough to be deployed on a phone. The innovation lies entirely in our dataset for training, a scaled-up version of the one used for phi-2, composed of heavily filtered publicly available web data and synthetic data. The model is also further aligned for robustness, safety, and chat format. We also provide some initial parameter-scaling results with a 7B and 14B models trained for 4.8T tokens, called phi-3-small and phi-3-medium, both significantly more capable than phi-3-mini (e.g., respectively 75% and 78% on MMLU, and 8.7 and 8.9 on MT-bench). Moreover, we also introduce phi-3-vision, a 4.2 billion parameter model based on phi-3-mini with strong reasoning capabilities for image and text prompts.