1/ Financial sentiment is evolving from simple keyword counts to models that can reason across text, tone, and visuals. Our latest research explores this shift. Introducing: Adaptive Financial Sentiment Intelligence👇
2/ At the core of the framework are 3 innovations: 🧠 AIAP – Annotator Instruction Assisted Prompting 🔎 RAG – Retrieval Augmented Generation 🎧📊 Multimodal Sentiment Modeling Let’s break them down ⬇️
3/ AIAP embeds analyst-style reasoning directly into the model. Instead of guessing tone or intent, the model follows real annotation logic improving consistency and reducing interpretation errors. Accuracy boost: +9–10%. That’s massive for finance.
4/ RAG unlocks real-time market awareness. The model doesn’t rely on outdated training data it retrieves relevant filings, news, and developments on the fly. No more stale sentiment. No more blind spots.
5/ Multimodal Modeling fuses text, tone, and visuals: 📝 text sentiment 🎧 vocal tone from earnings calls 📊 charts/tables signals 🖼 contextual visuals The system reads the market like a human analyst but faster, and with more evidence.
6/ When combined, these layers produce sentiment outputs that are: ✅ evidence-backed ✅ explainable ✅ up-to-date ✅ high-confidence A true evolution from static models to adaptive reasoning systems.
7/ What does this mean for market intelligence? • Better hedging signals • More reliable sentiment divergence alerts • Improved risk assessment • Stronger alignment between human and AI interpretation This is AI that thinks, not just predicts.
1.4萬
108
本頁面內容由第三方提供。除非另有說明,OKX 不是所引用文章的作者,也不對此類材料主張任何版權。該內容僅供參考,並不代表 OKX 觀點,不作為任何形式的認可,也不應被視為投資建議或購買或出售數字資產的招攬。在使用生成式人工智能提供摘要或其他信息的情況下,此類人工智能生成的內容可能不準確或不一致。請閱讀鏈接文章,瞭解更多詳情和信息。OKX 不對第三方網站上的內容負責。包含穩定幣、NFTs 等在內的數字資產涉及較高程度的風險,其價值可能會產生較大波動。請根據自身財務狀況,仔細考慮交易或持有數字資產是否適合您。