diff --git a/README.md b/README.md index 2b20b13..71433f6 100644 --- a/README.md +++ b/README.md @@ -29,7 +29,7 @@ Are you frustrated with vector database retrieval accuracy for long professional documents? Traditional vector-based RAG relies on semantic *similarity* rather than true *relevance*. But **similarity ≠ relevance** — what we truly need in retrieval is **relevance**, and that requires **reasoning**. When working with professional documents that demand domain expertise and multi-step reasoning, similarity search often falls short. -Inspired by AlphaGo, we propose [PageIndex](https://vectify.ai/pageindex), a **reasoning-based RAG** system that simulates how **human experts** navigate and extract knowledge from long documents through **tree search**, enabling LLMs to *think* and *reason* their way to the most relevant document sections. It performs retrieval in two steps: +Inspired by AlphaGo, we propose **[PageIndex](https://vectify.ai/pageindex)**, a **reasoning-based RAG** system that simulates how **human experts** navigate and extract knowledge from long documents through **tree search**, enabling LLMs to *think* and *reason* their way to the most relevant document sections. It performs retrieval in two steps: 1. Generate a "Table-of-Contents" **tree structure index** of documents 2. Perform reasoning-based retrieval through **tree search** @@ -197,8 +197,8 @@ PageIndex's hierarchical indexing enabled precise navigation and extraction of r Leave a star if you like our project. Thank you! -

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