The purpose of the study is to illustrate one application of unstructured data analysis in finance: the scoring of a text document based on its tone (sentiment) and specific events that are important for the end user. The methodology begins with the well-known practice of counting positive and negative words and progresses to illustrate the construction of relevant events. The authors show how the application of this methodology to the analysis of earnings conference call transcripts produces a signal that is incrementally additive to earnings surprises and the short-term returns around the earnings announcement. An interesting feature of the tone change extracted from the conference calls is that it has a relatively low correlation with bo...
Earnings conference calls are considered a valuable text based information source for investors. Th...
By facilitating the derivation of knowledge and qualitative measures from textual data, text mining ...
Event studies seek convincing evidence connecting behavior with a known or conjectured event. Origin...
The past decade has seen the rapid development of different techniques to retrieve additional inform...
The message, stylistic focus, language and readability of financial reports are good indicators of t...
Deep penetration of personal computers, data communication networks, and the Internet has created a ...
In this thesis, we develop a system that analyzes unstructured financial news using text classificat...
This article introduces a new sentiment analysis framework that extracts information from audio reco...
The growth in the utilization of text mining tools and techniques in the last decade has been primar...
Text and Context: Language Analytics in Finance describes the current landscape of text analytics in...
This thesis presents a novel approach to detecting weak signals in financial data for competitive in...
Rapid developments in information technologies and the increased availability of narrative disclosur...
This paper analyzes the impact of sentiment from headlines in the Wall Street Journal on earnings su...
This study uses text and data mining to investigate the relationship between the text patterns of an...
In the world of the financial economics, we have abundant text data. Articles in the Wall Street Jou...
Earnings conference calls are considered a valuable text based information source for investors. Th...
By facilitating the derivation of knowledge and qualitative measures from textual data, text mining ...
Event studies seek convincing evidence connecting behavior with a known or conjectured event. Origin...
The past decade has seen the rapid development of different techniques to retrieve additional inform...
The message, stylistic focus, language and readability of financial reports are good indicators of t...
Deep penetration of personal computers, data communication networks, and the Internet has created a ...
In this thesis, we develop a system that analyzes unstructured financial news using text classificat...
This article introduces a new sentiment analysis framework that extracts information from audio reco...
The growth in the utilization of text mining tools and techniques in the last decade has been primar...
Text and Context: Language Analytics in Finance describes the current landscape of text analytics in...
This thesis presents a novel approach to detecting weak signals in financial data for competitive in...
Rapid developments in information technologies and the increased availability of narrative disclosur...
This paper analyzes the impact of sentiment from headlines in the Wall Street Journal on earnings su...
This study uses text and data mining to investigate the relationship between the text patterns of an...
In the world of the financial economics, we have abundant text data. Articles in the Wall Street Jou...
Earnings conference calls are considered a valuable text based information source for investors. Th...
By facilitating the derivation of knowledge and qualitative measures from textual data, text mining ...
Event studies seek convincing evidence connecting behavior with a known or conjectured event. Origin...