This article provides a detailed description of two multi-hop logical reasoning datasets: ProofWriter and CLUTRR-SG.This article provides a detailed description of two multi-hop logical reasoning datasets: ProofWriter and CLUTRR-SG.

Evaluating Systematic Generalization: The Use of ProofWriter and CLUTRR-SG in LLM Reasoning Research

2025/10/29 02:19

Abstract and 1. Introduction

  1. Background

  2. Method

  3. Experiments

    4.1 Multi-hop Reasoning Performance

    4.2 Reasoning with Distractors

    4.3 Generalization to Real-World knowledge

    4.4 Run-time Analysis

    4.5 Memorizing Knowledge

  4. Related Work

  5. Conclusion, Acknowledgements, and References

\ A. Dataset

B. In-context Reasoning with Distractors

C. Implementation Details

D. Adaptive Learning Rate

E. Experiments with Large Language Models

A Dataset

ProofWriter The ProofWriter [73] dataset has 500k pairs of questions, answers, and proofs over natural-language rule bases. Each example in the dataset contains a set of facts, a set of rules, a hypothesis, and a label indicating whether the hypothesis is true, false, or unknown. The dataset comprise five datasets named D0, D1, D2, D3, D5, each with 100k examples. Each dataset’s questions require reasoning up to depths D (D = 0, 1, 2, 3, 5) to determine their answers. In our experiments, we only focus on the datasets that require more reasoning depths (D2, D3, D5). We show an example from the dataset in Table 7. In these datasets, a set of facts and rules are mapped to 18 questions, where the questions can be answered based on a subset of the facts and rules. Thus, some of the facts or rules can be irrelevant to some questions, and we call them distractors in Section 4.2. In the experiment for knowledge encoding with distractors, we encode all the facts in the model parameters and evaluate its ability to reproduce and reason over the correct facts. We show an example of distractor and relevant knowledge of a question in Table 9. For detailed statistics on the two datasets, please see Table 6.

\ CLUTRR-SG The CLUTRR-SG [28] is an evaluation dataset for inductive reasoning on family relations adapted from the [71] dataset for measuring systematic generalization. Each example in the dataset contains (i) a set of facts representing a family graph G = (V, E) where nodes (V ) are entities and edges (E) are the relationships. (ii) a question asking the relationship between two entities (v1, vn ∈ V ), and (iii) a target relationship e ∗ ∈ E as the answer for the question. The facts are expressed as a list of (vi , ej , vk) tuples. The two entities in the question are separated by more than one hop in the graph. There are 272 unique entities, 20 relationship types, and nearly 1.5M possible facts in the dataset. Following the authors, we define the difficulty of examples based on the number of family graph edges (i.e., the number of reasoning hops required to determine a relation), in which k edges (k-hop) correspond to k facts. We show an example from the dataset in Table 8.

\

:::info Authors:

(1) Zeming Chen, EPFL (zeming.chen@epfl.ch);

(2) Gail Weiss, EPFL (antoine.bosselut@epfl.ch);

(3) Eric Mitchell, Stanford University (eric.mitchell@cs.stanford.edu)';

(4) Asli Celikyilmaz, Meta AI Research (aslic@meta.com);

(5) Antoine Bosselut, EPFL (antoine.bosselut@epfl.ch).

:::


:::info This paper is available on arxiv under CC BY 4.0 DEED license.

:::

\

Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.
Share Insights

You May Also Like

Crypto News: Donald Trump-Aligned Fed Governor To Speed Up Fed Rate Cuts?

Crypto News: Donald Trump-Aligned Fed Governor To Speed Up Fed Rate Cuts?

The post Crypto News: Donald Trump-Aligned Fed Governor To Speed Up Fed Rate Cuts? appeared on BitcoinEthereumNews.com. In recent crypto news, Stephen Miran swore in as the latest Federal Reserve governor on September 16, 2025, slipping into the board’s last open spot right before the Federal Open Market Committee kicks off its two-day rate discussion. Traders are betting heavily on a 25-basis-point trim, which would bring the federal funds rate down to 4.00%-4.25%, based on CME FedWatch Tool figures from September 15, 2025. Miran, who’s been Trump’s top economic advisor and a supporter of his trade ideas, joins a seven-member board where just three governors come from Democratic picks, according to the Fed’s records updated that same day. Crypto News: Miran’s Background and Quick Path to Confirmation The Senate greenlit Miran on September 15, 2025, with a tight 48-47 vote, following his nomination on September 2, 2025, as per a recent crypto news update. His stint runs only until January 31, 2026, stepping in for Adriana D. Kugler, who stepped down in August 2025 for reasons not made public. Miran earned his economics Ph.D. from Harvard and worked at the Treasury back in Trump’s first go-around. Afterward, he moved to Hudson Bay Capital Management as an economist, then looped back to the White House in December 2024 to head the Council of Economic Advisers. There, he helped craft Trump’s “reciprocal tariffs” approach, aimed at fixing trade gaps with China and the EU. He wouldn’t quit his White House gig, which irked Senator Elizabeth Warren at the September 7, 2025, confirmation hearings. That limited time frame means Miran gets to cast a vote straight away at the FOMC session starting September 16, 2025. The full board now features Chair Jerome H. Powell (Trump pick, term ends 2026), Vice Chair Philip N. Jefferson (Biden, to 2036), and folks like Lisa D. Cook (Biden, to 2028) and Michael S. Barr…
Share
BitcoinEthereumNews2025/09/18 03:14
Ukrainian Drone Strikes Hit Moscow, St. Petersburg And Russia’s Economy

Ukrainian Drone Strikes Hit Moscow, St. Petersburg And Russia’s Economy

The post Ukrainian Drone Strikes Hit Moscow, St. Petersburg And Russia’s Economy appeared on BitcoinEthereumNews.com. In Kyiv, Ukraine, on December 6, 2024, President of Ukraine Volodymyr Zelenskyy, Commander-in-Chief of the Armed Forces of Ukraine Oleksandr Syrskyi, and Deputy Minister of Strategic Industries of Ukraine Anna Gvozdiar (L to R) attend the handover of the first batch of long-range Peklo (Hell) missile drones to the Defence Forces on the Day of the Armed Forces of Ukraine. Ukraine’s President Volodymyr Zelensky conveys the first batch of advanced Peklo missile drones to the military. During the event, it is reported that there have already been five successful uses. The Peklo missile drone, which has a strike range of 700 km and a speed of 700 km per hour, is launched into serial production. NO USE RUSSIA. NO USE BELARUS. (Photo by Ukrinform/NurPhoto via Getty Images) NurPhoto via Getty Images Kyiv is intensifying its air campaign, aiming not only to destroy Russian oil refineries but also to expose the vulnerabilities of the country’s elites. On September 9, a Ukrainian drone targeted Sochi on the Black Sea, just hours after President Vladimir Putin held meetings there. On September 12, a Ukrainian drone struck Russia’s Leningrad region for the first time, hitting the Primorsk oil terminal near St. Petersburg and forcing a temporary suspension at the country’s largest crude port. The drone threat also shut down St. Petersburg’s Pulkovo Airport. Ukraine’s drone offensive is showing results, intensifying pressure on the Kremlin as strikes deepen Russia’s fuel crisis and accelerate inflation. According to September data from the independent pollster Levada Center, a record 66% of respondents in Russia now say it is time to move toward peace negotiations, while just 27% support continuing military action – the lowest level ever recorded. In June, 58% also cited rising prices as their top concern. While public frustration with the war is rising, elites in…
Share
BitcoinEthereumNews2025/09/18 06:11