@inproceedings{132fe00e7a7844e58eae653adf654fa8,
title = "Beating human analysts in nowcasting corporate earnings by using publicly available stock price and correlation features",
abstract = "Corporate earnings are a crucial indicator for investment and business valuation. Despite their importance and the fact that classic econometric approaches fail to match analyst forecasts by orders of magnitude, the automatic prediction of corporate earnings from public data is not in the focus of current machine learning research. In this paper, we present for the first time a fully automatized machine learning method for earnings prediction that at the same time a) only relies on publicly available data and b) can outperform human analysts. The latter is shown empirically in an experiment involving all S&P 100 companies in a test period from 2008 to 2012. The approach employs a simple linear regression model based on a novel feature space of stock market prices and their pairwise correlations. With this work we follow the recent trend of nowcast-ing, i.e., of creating accurate contemporary forecasts of undisclosed target values based on publicly observable proxy variables.",
author = "Michael Kamp and Mario Boley and Thomas G{\"a}rtner",
year = "2014",
doi = "10.1137/1.9781611973440.74",
language = "English",
series = "SIAM International Conference on Data Mining 2014, SDM 2014",
publisher = "Society for Industrial and Applied Mathematics Publications",
pages = "641--649",
editor = "Mohammed Zaki and Zoran Obradovic and Pang Ning-Tan and Arindam Banerjee and Chandrika Kamath and Srinivasan Parthasarathy",
booktitle = "SIAM International Conference on Data Mining 2014, SDM 2014",
address = "United States",
note = "14th SIAM International Conference on Data Mining, SDM 2014 ; Conference date: 24-04-2014 Through 26-04-2014",
}