Call for Paper: AAAI-2023 Workshop On Multimodal AI For Financial Forecasting

Venue: AAAI 2023

Location: Washington DC, USA

Workshop Date: Monday, 13 February 2023

Submission deadline: December 23, 2022

Submission Site: https://easychair.org/my/conference?conf=muffinaaai2023

Workshop Website: https://muffin-aaai23.github.io/

Abbreviated Title:  Muffin-AAAI2023

Contact Email:  [email protected]

Primary Contact: Puneet Mathur

Overview

Financial forecasting is an essential task that helps investors make sound 
investment decisions and wealth creation. With increasing public interest in 
trading stocks, cryptocurrencies, bonds, commodities, currencies, crypto coins 
and non-fungible tokens (NFTs), there have been several attempts to utilize 
unstructured data for financial forecasting. Unparalleled advances in 
multimodal deep learning have made it possible to utilize multimedia such as 
textual reports, news articles, streaming video content, audio conference 
calls, user social media posts, customer web searches, etc for identifying 
profit creation opportunities in the market. E.g., how can we leverage new and 
better information to predict movements in stocks and cryptocurrencies well 
before others? However, there are several hurdles towards realizing this goal - 
(1) large volumes of chaotic data, (2) combining text, audio, video, social 
media posts, and other modalities is non-trivial, (3) long context of media 
spanning multiple hours, days or even months, (4) user sentiment and media 
hype-driven stock/crypto price movement and volatility, (5) difficulties with 
traditional statistical methods (6) misinformation and non-interpretability of 
financial systems leading to massive losses and bankruptcies.

At the AAAI-2023 Workshop on Multimodal AI for Financial Forecasting 
(Muffin@AAAI2023), we aim to bring together researchers from natural language 
processing, computer vision, speech recognition, machine learning, statistics, 
and quantitative trading communities to expand research on the intersection of 
AI and financial time series forecasting. We will also organize 2 shared tasks 
in this workshop – (1) Stock Price and Volatility Prediction post-Monetary 
Conference Calls and (2) Cryptocurrency Bubble Detection.

This workshop will hold a research track and a shared task track. The research 
track aims to explore recent advances and challenges of multimodal AI for 
finance. As this topic is an inherently multi-modal subject, researchers from 
artificial intelligence, computer vision, speech processing, natural language 
processing, data mining, statistics, optimization, and other fields are invited 
to submit papers on recent advances, resources, tools, and challenges on the 
broad theme of Multimodal AI for finance. 

The topics of the workshop include but are not limited to the following:

Transformer models / Self-supervised / Transfer Learning on Financial Data
Machine Learning for Finance
Natural Language Processing and Speech Applications for Finance
Conversational dialogue modeling for Financial Conference Calls
Social media and User NLP for Finance
Entity extraction and linking, Named-entity recognition, information 
extraction, relationship extraction, and ontology learning in financial 
documents
Financial Document Processing
Multi-modal financial knowledge discovery
Financial Event detection from Multimedia
Visual-linguistic learning for financial video analysis
Video understanding (human behavior cognition, topic mining, facial expression 
detection, emotion detection, deception detection, gait and posture analysis, 
etc.)
Data annotation, acquisition, augmentation, and feature engineering, for 
financial/time-series analysis
Bias analysis and mitigation in financial models and data
Statistical Modeling for Time Series Forecasting
Interpretability and explainability for financial AI models
Privacy-preserving AI for finance

All papers will be double-blind peer-reviewed. Muffin workshop accepts both 
long papers and short papers:

Short Paper: Up to 4 pages of content including the references.
Upon acceptance, the authors are provided with 1 more page to address the 
reviewer's comments.

Long Paper: Up to 8 pages of content including the references.
Upon acceptance, the authors are provided with 1 more page to address the 
reviewer's comments.

Shared Task Track: Participants are invited to take part in shared tasks: (1) 
Financial Prediction from Conference Call Videos and (2) Cryptocurrency Bubble 
Detection. Participants are invited to submit a system paper of 4-8 pages of 
content including the references.

Important Dates

Paper submission deadline: December 23, 2022
Acceptance notification: January 5, 2023
Camera-ready submission: January 15, 2023
Muffin workshop at AAAI 2023: Feb 13, 2022
All deadlines are “anywhere on earth” (UTC-12)

About the Shared Task


The Multimodal AI for Finance Forecasting (Muffin) workshop will host two 
shared tasks on challenging multimodal financial forecasting problems using 
artificial intelligence. Follow this link for details on shared tasks: 
https://muffin-aaai23.github.io/shared_task.html

Task-1: Financial Prediction from Conference Call Videos

Monetary policy calls (MPC) provide important insights into the actions taken 
by a country’s central bank on economic goals related to inflation, employment, 
prices, and interest rates. Investors and analysts critically analyze these 
video calls to forecast prices of the stock market, treasury bonds, gold, and 
currency exchange rates post the conference call. Prior works in the NLP 
literature have looked at what is being said during press conferences although 
there is a greater need to focus on how it is being said. The use of multimodal 
(visual+textual+audio) input to answer this question has been largely limited. 
Non-verbal behavioral cues from conference videos such as eye movements, facial 
expressions, postures, gaits, the complexity of language, vocal tone, and 
facial expressions of the speakers may reflect emotions that subjects may not 
express through words and have been found to be strongly correlated with 
enhanced trading activities in the financial markets. Interpreting and 
extracting information from financial conference calls reveals difficult 
challenges such as (1) Gap in current multimodal AI methods for simultaneously 
leveraging visual, vocal, and verbal modalities; (2) Long length of videos 
(50min to 1 hour) with multi-page text transcripts (3) Need to explore 
few-shot, semi-supervised, and self-supervised methods due to limited training 
data; (4) Large variability in conference calls across geographies due to 
different speakers, demographics, and economic conditions causing unintended 
bias. To this end, we curated a dataset of video conference calls from 2009 to 
2022 released by central banks of 6 major English-speaking economies - USA, 
Canada, European Union, United Kingdom, New Zealand, and South Africa. The data 
has been processed to extract video frames, audio recordings, and 
utterance-aligned text transcripts. The task is to predict the volatility and 
price movement of stock market indices, gold, currency exchange rates, and bond 
prices T days after a conference call. We provide a cumulative of 25K data 
points split across training/development/testing for experimentation.
Relevant research paper: [1] MONOPOLY: Financial Prediction from MONetary 
POLicY Conference Videos Using Multimodal Cues

Task 2: Cryptocurrency Bubble Detection on Social Media

Cryptocurrency trading presents a new investment opportunity for maximizing 
profits. The rising ubiquity of speculative trading of cryptocurrencies over 
social media leads to rapid escalation and crash of price in a short period of 
time, also called bubbles, causing investment losses and bankruptcy. These 
crypto bubbles are strongly tied to user sentiment and social media usage as 
opposed to conventional value-driven stocks and equities. Such financial 
bubbles are often a result of social media hype and the intensity of contagion 
among users, rendering both conventional statistical models and contemporary ML 
models weak as they are not built to deal with large volumes of unstructured, 
user-generated text on social media. In order to identify and safeguard against 
such bubbles, we formulate the CryptoBubbles Detection Challenge - a novel 
multi-span prediction task over future days of time series price data for 
crypto assets. We have curated a dataset of the 50 most traded crypto coins by 
volume from the top 9 crypto exchanges such as Binance, Gatio, etc to obtain a 
time series of prices for 450+ crypto assets over five years accompanied by 
over 2.4 million related tweets.
Relevant research paper: [2] Cryptocurrency Bubble Detection: A New Stock 
Market Dataset, Financial Task & Hyperbolic Models
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