<?xml version="1.0" encoding="utf-8" standalone="yes"?><rss version="2.0" xmlns:atom="http://www.w3.org/2005/Atom" xmlns:content="http://purl.org/rss/1.0/modules/content/"><channel><title>Papers on Tolga Dimlioglu</title><link>https://tolgadimli.github.io/papers/</link><description>Recent content in Papers on Tolga Dimlioglu</description><generator>Hugo -- 0.147.2</generator><language>en</language><lastBuildDate>Sat, 15 Nov 2025 00:00:00 +0000</lastBuildDate><atom:link href="https://tolgadimli.github.io/papers/index.xml" rel="self" type="application/rss+xml"/><item><title>Streamlining Industrial Contract Management with Retrieval-Augmented LLMs</title><link>https://tolgadimli.github.io/papers/paper1/</link><pubDate>Sat, 15 Nov 2025 00:00:00 +0000</pubDate><guid>https://tolgadimli.github.io/papers/paper1/</guid><description>We propose a retrieval-augmented LLM system that automatically identifies and rewrites problematic industrial contract revisions, achieving high accuracy even in low-resource legal settings.</description></item><item><title>Communication-Efficient Distributed Training for Collaborative Flat Optima Recovery in Deep Learning</title><link>https://tolgadimli.github.io/papers/paper2/</link><pubDate>Tue, 15 Jul 2025 00:00:00 +0000</pubDate><guid>https://tolgadimli.github.io/papers/paper2/</guid><description>We propose a communication-efficient distributed training framework (DPPF) that introduces a pushing force to promote wide minima recovery, improving generalization without incurring significant computational or communication overhead.</description></item><item><title>Data Scaling Laws for End-to-End Autonomous Driving</title><link>https://tolgadimli.github.io/papers/paper3/</link><pubDate>Wed, 15 Jan 2025 00:00:00 +0000</pubDate><guid>https://tolgadimli.github.io/papers/paper3/</guid><description>We analyze the relationship between model performance and training dataset size for end-to-end autonomous driving.</description></item><item><title>GRAWA: Gradient-based Weighted Averaging for Distributed Training of Deep Learning Models</title><link>https://tolgadimli.github.io/papers/paper4/</link><pubDate>Fri, 15 Mar 2024 00:00:00 +0000</pubDate><guid>https://tolgadimli.github.io/papers/paper4/</guid><description>We introduce gradient-norm–weighted averaging methods for distributed deep learning that pull workers toward flatter regions of the loss landscape. The proposed model-level and layer-level variants converge in both convex and non-convex settings and empirically achieve faster training, better optima, and reduced communication compared to prior work.</description></item><item><title>Automatic Document Classification via Transformers for Regulations Compliance Management in Large Utility Companies</title><link>https://tolgadimli.github.io/papers/paper5/</link><pubDate>Mon, 28 Aug 2023 00:00:00 +0000</pubDate><guid>https://tolgadimli.github.io/papers/paper5/</guid><description>We propose an automated, bi-level document classification pipeline for regulatory text that first filters irrelevant documents using an ensemble of classical classifiers and then routes relevant documents to the appropriate departments using a transformer-based DocBERT model, significantly improving efficiency and accuracy over single-model approaches when evaluated on a large real-world corpus from Con Edison.</description></item><item><title>Continual Facial Expression Recognition: A benchmark</title><link>https://tolgadimli.github.io/papers/paper6/</link><pubDate>Sun, 28 May 2023 00:00:00 +0000</pubDate><guid>https://tolgadimli.github.io/papers/paper6/</guid><description>We introduce ConFER, a continual-learning benchmark for facial expression recognition that evaluates how well popular CL methods adapt to real-world, incremental data without catastrophic forgetting, demonstrating state-of-the-art performance across multiple FER datasets and highlighting the benefits of CL for robust affective computing.</description></item></channel></rss>