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SciAtlas: A Large-Scale Knowledge Graph for Automated Scientific Research

Abstract

The exponential growth of global academic output has confronted researchers and AI agents with an unprecedented information explosion,'' where fragmented and unstructured knowledge organization impedes deep interdisciplinary integration. Current academic retrieval tools predominantly rely on superficial keyword matching or vector-space semantic retrieval, which lack the topological reasoning capabilities required to navigate complex logical connections. Agentic deep-research-based frameworks are often prone to logical hallucinations and consuming high inference costs. To bridge this gap, in this report, we introduce SciAtlas, a large-scale, multi-disciplinary, heterogeneous academic resource knowledge graph designed as a panoramic scientific evolution network. By integrating over 43M papers from 26 disciplines, and a total of 157M entities and 3B triplets, SciAtlas provides a structured topological cognitive substrate that dismantles disciplinary barriers and furnishes AI agents with a global perspective. Furthermore, we develop a neuro-symbolic retrieval algorithm featuring tri-path collaborative recall and graph reranking, achieving a seamless transition from simple semantic matching to deterministic association discovery. We also present key application directions of SciAtlas, including literature review, automated research trend synthesis, idea positioning, and academic trajectory exploration, to demonstrate that SciAtlas can serve as an effectivecognitive map'' to empower the full loop of automated scientific research while significantly reducing reasoning costs. We have released the interfaces for KG retrieval and various downstream tasks in our GitHub repo.

One-sentence Summary

The authors introduce SciATLAS, a large-scale heterogeneous knowledge graph that integrates 43 million papers across 26 disciplines into 157 million entities and 3 billion triplets, employing a neuro-symbolic retrieval algorithm with tri-path collaborative recall and graph reranking to enable deterministic association discovery, significantly reduce reasoning costs, and serve as a cognitive map for automated scientific research.

Key Contributions

  • SciATLAS, a large-scale heterogeneous academic knowledge graph, integrates 43 million papers across 26 disciplines into a topological network comprising 157 million entities and 3 billion triplets. This structured substrate dismantles disciplinary barriers and equips AI agents with a deterministic cognitive foundation for interdisciplinary research.
  • A neuro-symbolic retrieval algorithm utilizing tri-path collaborative recall and graph reranking transitions literature search from semantic matching to deterministic association discovery. This method anchors large language models with explicit graph traversal to mitigate logical hallucinations and lower the inference costs of deep-research agents.
  • The framework enables key automated research workflows, including literature review, trend synthesis, idea positioning, and academic trajectory exploration. Publicly released interfaces for knowledge graph retrieval and downstream tasks confirm its utility as a scalable cognitive map for end-to-end research automation.

Introduction

The exponential growth of global academic output has created an information explosion that impedes deep interdisciplinary integration and challenges the efficiency of automated scientific research workflows. Current retrieval mechanisms struggle to support this domain because they rely on flattened keyword matching or vector-space semantic search, which lack the topological reasoning necessary to navigate complex logical connections. Furthermore, agentic deep-research frameworks often incur prohibitive inference costs and suffer from logical hallucinations due to missing deterministic cognitive maps. The authors present SciATLAS, a massive heterogeneous knowledge graph integrating over 43 million papers across 26 disciplines to provide a structured topological substrate for scientific discovery. They leverage a neuro-symbolic retrieval algorithm featuring tri-path collaborative recall and graph reranking to enable deterministic association discovery without iterative LLM calls. This approach allows AI agents to access a global cognitive perspective for tasks like idea positioning and trend synthesis while significantly reducing reasoning overhead.

Dataset

  • Source and Composition: The authors construct SciATLAS using OpenAlex as the foundational data source, which originally catalogs over 480 million academic publications. The knowledge graph centers on Papers and integrates interconnected entities including Authors, Institutions, Keywords, and a four-tier disciplinary hierarchy (Domains, Fields, Subfields, and Topics).

  • Scale and Filtering Rules: The finalized dataset contains 43.30 million papers, 109.70 million authors, 3.76 million keywords, and 0.12 million institutions. The filtering pipeline strictly retains English publications with sufficiently long abstracts and valid PDF URLs. It normalizes and deduplicates paper titles and institution names while intentionally preserving author duplicates to handle naming ambiguity. Records lacking critical attributes are removed.

  • Metadata Construction and Processing: To replace OpenAlex's sparse macroscopic concepts, the authors employ a lightweight LLM to extract three to eight reusable core keywords per paper from abstracts. Each keyword receives an importance score, and co-occurrence edges are weighted by frequency to capture conceptual links. The pipeline also generates semantic vectors using bge-large-en-v1.5 for titles, abstracts, and keywords, storing them directly as node attributes to enable hybrid retrieval.

  • Usage and Integration: The processed graph is deployed in Neo4j and organized across four relational levels: semantic (citations and relevance), conceptual (keyword co-occurrence), directional (disciplinary hierarchy), and social (authorship and institutional affiliations). Rather than relying on traditional training splits or mixture ratios, the authors leverage the knowledge graph for topological search and reasoning. They feed chronologically ordered paper sequences and author publication lists into structured LLM prompts to generate JSON outputs for research trend prediction and academic profiling.

Method

The retrieval system is designed to support a wide range of query types, including keywords, scientific questions, abstracts, idea texts, and complete papers, by mapping them into the knowledge graph (KG) through multiple distinct pathways. The framework begins with node matching, where queries are processed to identify candidate entities. For keyword-based queries, an LLM extracts a list of keywords along with their importance scores, forming a set K={(ki,sillm)}i=1m\mathcal{K} = \{(k_i, s_i^{\text{llm}})\}_{i=1}^{m}K={(ki,sillm)}i=1m. These keywords undergo exact text matching and vector-based semantic matching against the KG. For exact matches, the score is directly assigned as sillms_i^{\text{llm}}sillm, while for vector matches, the score is computed as sillmsim(ki,g)s_i^{\text{llm}} \cdot \text{sim}(k_i, \mathbf{g})sillmsim(ki,g), retaining nodes only if the similarity exceeds a threshold θkw\theta_{kw}θkw. The final weight for each keyword node ggg is the maximum of all its matching scores, resulting in the set Kseed={(g,wgkw)}\mathcal{K}_{\text{seed}} = \{(g, w_g^{kw})\}Kseed={(g,wgkw)}.

For semantic matching, the query qqq is embedded into a vector eq\mathbf{e}_qeq, and the top-60 papers are retrieved based on title and abstract embeddings. A reranker re-ranks these candidates, retaining the top-15 from each source. The final score for each paper ppp is a weighted combination of its title and abstract retrieval scores, normalized to handle missing values. Title matching is specifically applied when the query contains paper titles. GROBID extracts titles, and an LLM assigns confidence scores to each. These titles are normalized and matched against the KG using exact or fuzzy similarity, with a threshold θtitle\theta_{\text{title}}θtitle for filtering. The matching score for a paper ppp is cjm(tj,p)c_j \cdot m(t_j, p)cjm(tj,p), where m(tj,p)m(t_j, p)m(tj,p) combines LCS and token overlap. Multiple title matches are resolved by taking the maximum score.

The results from the semantic and title matching pathways are merged into a unified set of candidate paper nodes, Pseed\mathcal{P}_{\text{seed}}Pseed. To unify the scores, a dot product between the query embedding and the paper's title and abstract embeddings is computed, followed by MinMax normalization. The final pre-graph weight for each paper ppp is defined as sppre=λembs~pemb+λtitles~ptitle+bppres_p^{pre} = \lambda_{emb} \widetilde{s}_p^{emb} + \lambda_{title} \widetilde{s}_p^{title} + b_p^{pre}sppre=λembspemb+λtitlesptitle+bppre, where bppreb_p^{pre}bppre is a title bonus based on exact or fuzzy title hits. This process establishes the initial seed nodes for the retrieval.

The system then performs a 2-hop subgraph propagation from the seed nodes, treating all edges as undirected. To manage scalability, at most 500 nodes per entity type are selected at each hop. Paper importance is computed based on citation count using a logarithmic scaling to prevent dominance by highly cited papers. The unnormalized weight for each seed paper ppp is wpseed=sppre(1+γimp(p))w_p^{seed} = s_p^{pre} \cdot (1 + \gamma \cdot \text{imp}(p))wpseed=sppre(1+γimp(p)), where γ\gammaγ controls the influence of importance. For seed keywords, the weight is wqseed=wqkww_{\vec{q}}^{seed} = w_{\vec{q}}^{kw}wqseed=wqkw. The initial distribution s\mathbf{s}s over nodes is defined as sv=wvseed/Zs_v = w_v^{seed} / Zsv=wvseed/Z for nodes in the seed set S=PseedKseedS = \mathcal{P}_{\text{seed}} \cup \mathcal{K}_{\text{seed}}S=PseedKseed, with ZZZ as the normalization constant. Edge weights are assigned based on type, as defined in the table.

To explore topological relationships, a random walk with restart is performed on the graph. The transition probability from node uuu to neighbor vvv is ω(u,v)/xN(u)ω(u,x)\omega(u, v) / \sum_{x \in N(u)} \omega(u, x)ω(u,v)/xN(u)ω(u,x). The score vector r(t)\mathbf{r}^{(t)}r(t) is initialized as s\mathbf{s}s and updated iteratively as rv(t+1)=αsv+(1α)uru(t)P(vu)r_v^{(t+1)} = \alpha s_v + (1 - \alpha) \sum_u r_u^{(t)} P(v \mid u)rv(t+1)=αsv+(1α)uru(t)P(vu), where α\alphaα is the restart probability. The process terminates when the L1L_1L1 norm of the difference between consecutive iterations falls below 10610^{-6}106 or after 50 iterations. The final node score rvr_vrv is the result of this diffusion.

Finally, the system computes a comprehensive final score for each paper ppp as spfinal=min(1,λpres~ppre+λgraphs~pgraphgp+λimpimpfinal(p))s_p^{final} = \min(1, \lambda_{pre} \tilde{s}_p^{pre} + \lambda_{graph} \tilde{s}_p^{graph} g_p + \lambda_{imp} \text{imp}_{final}(p))spfinal=min(1,λpres~ppre+λgraphs~pgraphgp+λimpimpfinal(p)). The pre-graph score s~ppre\tilde{s}_p^{pre}s~ppre is MinMax-normalized, and the graph score s~pgraph\tilde{s}_p^{graph}s~pgraph is similarly normalized. The graph support factor gp=max(0.25,s~ppre)g_p = \max(0.25, \tilde{s}_p^{pre})gp=max(0.25,s~ppre) acts as a gate, ensuring that graph-discovered papers must have sufficient initial relevance to achieve high ranks. The final score combines initial relevance, topological support, and citation importance, and the top-20 papers are returned with detailed explanations.


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