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Paper with Finacial Event Prediction

Bankrupt

Reference Paper Data Source Model Evaluation Metric(s) Time Period Contributions Venue
Geng et al. (2015) Prediction of financial distress: An empirical study of listed Chinese companies using data mining China, CSMAR NN, DT, SVM, MV Accuracy, Recall, Precision 2001–2008 phenomenon of financial distress for 107 Chinese companies that received the label‘special treatment’ from 2001 to 2008 by the Shanghai Stock Exchange and the Shenzhen Stock Exchange Accounting
Liang et al. (2016) Financial ratios and corporate governance indicators in bankruptcy prediction: A comprehensive study Taiwan Economic Journal (TEJ) SVM, KNN, NB, CART, MLP ROC, Accuracy 1999–2009 assess the prediction performance obtained by combining seven different categories of FRs and five different categories of CGIs Accounting, market, corporate governance
Olson et al. (2012) Comparative analysis of data mining methods for bankruptcy prediction USA, Compustat DT, logit, MLP, RBFN, SVM MSE 2005–2009 Research bankruptcy data and predict bankruptcy through information Accounting
Ioannidis et al. (2010) Assessing bank soundness with classification techniques Bankscope, World Bank UTADIS, MLP, CART, KNN, Ordered logit, stacked models Accuracy 2007–2008 Use stack model to build bank warning model Accounting, country-level variables
Boyacioglu et al. (2009) Predicting bank financial failures using neural networks, support vector machines and multivariate statistical methods: A comparative analysis in the sample of savings deposit insurance fund (SDIF) transferred banks in Turkey Turkey, Banks Association of Turkey NN, SVM, MDA, K-means cluster analysis, logit Using PCA, initial Eigenvalues 1997–2004 Use financial ratio as a predictor variable to establish a regression prediction model to predict bank failure probability Accounting
Cecchini et al. (2010) Making words work: Using financial text as a predictor of financial events USA, Compustat, CRSP SVM Using defined Concept score 1994–1999 Develop a methodology for automatically analyzing text to aid in discriminating firms that encounter catastrophic financial events MD&A, Altman variables
Kim et al. (2010) Ensemble with neural networks for bankruptcy prediction Korea MLP + bagging, MLP + boosting Predictive Accuracy, Predictive error rate 2002–2005 An ensemble with neural network for improving the performance of traditional neural networks on bankruptcy prediction tasks Accounting
Mai et al. (2018) Deep learning models for bankruptcy prediction using textual disclosures USA, CRSP CNN AUC 1994-2014 Deep learning models for corporate bankruptcy forecasting using textual disclosures Accounting
Snow et al. (2020) Investigating Accounting Patterns for Bankruptcy and Filing Outcome Prediction using Machine Learning Models USA, UCLA BRD XGBClassifier ROC, AUC 1977-2016 A modern gradient boosting machine (GBM), XGBoost, to predict litigated bankruptcies and filing outcomes Accounting
Snow et al. (2020) Predicting Global Restaurant Facility Closures USA, Yelp LightGBM ROC 2006-2017 Through text mining and sentiment analysis, make survival predictions for restaurants Accounting
Mohammad et al. (2020) The Automated Venture Capitalist: Data and Methods to Predict the Fate of Startup Ventures 2015 Massachusetts Institute of Technology $100K Launch competition (open sourced) NN AUC / Investigate how the composition of early-stage start-up teams, and the properties of their ventures, predict their nomination to a premier entrepreneurship competition, and their continued operation two years following Accounting
Martin et al. (2013) Bankruptcy prediction for small- and medium-sized companies using severely imbalanced datasets / SVM, IF Accuerary 2010-2016 Unbalanced data sources Accounting

IPO

Reference Paper Data Source Model Evaluation Metric(s) Time Period Contributions Venue
Cristóbal et al. (2012) Predicting IPO Underpricing with Genetic Algorithms USA, AMEX, NASDAQ and NYSE IPOs Genetic algorithms RMSE, Precision 1999-2010 A rule system to predict first-day returns of initial public offerings based on the structure of the offerings Accounting
Zhe et al. (2019) NLP Driven Large Scale Financial Data Analysis USA, Intrinio, The Reuters dataset HAN Accuracy 2006-2013 Explores the influence of various factors on the performance of utilizing NLP knowledge to predict stock trend of a company Accounting
Jie et al. (2015) Text Mining for Studying Management’s Confidence in IPO Prospectuses and IPO Valuations USA, US SEC’s EDGA, CRSP FOCAS-IE Confusion Metrics, Accuracy 2003-2013 By analyzing MD&A, build an analysis framework FOCAS-IE, extract emotions, and use the information extracted by FOCAS-IE to build a predictive model Accounting
David et al. (2015) Fuzzy Techniques for IPO Underpricing Prediction USA, National Association Of Securities Dealers Rule-based RMSE 1999-2010 Rule-based classification Accounting

Mergers and Acquisitions

Reference Paper Data Source Model Evaluation Metric(s) Time Period Contributions Venue
Adesoji et al. (1999) Predicting Mergers and Acquisitions in the Food Industry USA, SDC Platinum Logit Models Accuracy of 74.5% 1985–1995 Explain merger and acquisition (M&A) activities in US food manufacturing using firm level data for public firms Food industry
Liu et al. (2007) Financial Characteristics and Prediction on Targets of M&A Based on SOM-Hopfield Neural Network China, Securities Journals, Web Hopfield Network STD. Error Mean 2004-2006 Apply self-organized mapping (SOM) and Hopfield neural network to cluster and predict the target of mergers and acquisitions Accounting
Chin-Sheng et al. (2014) Exploiting Technological Indicators for Effective Technology Merger and Acquisition (M&A) Predictions USA, SDC Platinum Ensemble Accuracy, AUC, Recall, Precision, F1 1997–2008 Propose a technology M&A prediction technology that takes technical indicators as independent variables and considers the technical profile of bidders and candidate target companies Accounting
B.Shao et al. (2018) Categorization of Mergers and Acquisitions in Japan Using Corporate Databases: A Fundamental Research for Prediction Tokyo, UZABASE Clustering t-SNE visualization, Accuracy 2003-2016 Use M&A data, financial data and company data for M&A analysis Accounting
Ye et al. (2011) Board connections and M&A transactions USA, SDC Platinum Logit Models ACAR, TCAR, PCAR 1996–2008 We examine M&A transactions between firms with current board connections and find that acquirers obtain higher announcement returns in transactions with a first-degree connection where the acquirer and the target share a common director Accounting
Ryan et al. (2019) Deal or No Deal: Predicting Mergers and Acquisitions at Scale USA, EDGAR Clustering ROC, AUC, LDA 1994-2018 We utilize natural language processing (NLP) techniques to vectorize each filing’s textual data. Next, we cluster firms by industry and identify keywords suggestive of upcoming M&A activity. We then train a classifier to predict acquirers and targets, which we use to forecast the most likely M&As of 2019. Lastly, we deploy an application which enables users to query our forecasts and visualize our data Accounting
Yang et al. (2020) Generating Plausible Counterfactual Explanations for Deep Transformers in Financial Text Classification U.S. Listed Companies Transformers (BERT, RoBERTa), Adversarial Training, Counterfactual Explanations MSE 2007-2019 Predict the results of a possible M&A deadls. Explain the prediction results by generating the plausible counterfactual explanations. CoLING-20
Philip et al. (2018) Predictive Power? Textual Analysis in Mergers & Acquisitions / Linear Regression Accuracy 2002-2014 M&A prediction using sentiment analysis Accounting