Predicting Financial Crises with AI
Keywords:
Financial Crises, AI, PredictingAbstract
This is an essay on predicting financial crises with artificial intelligence, also referred to as AI. Avoiding them is of great importance. That is why a rapid gain in understanding how crises develop and unfold is crucial. In recent years, artificial intelligence has gained much popularity for numerical applications – a field that increasingly overlaps with finance. Can these new modes of prediction help us forecast when the present surge of optimism comes to an abrupt end, too? And how much of the recent rise in the price of firms might be attributed to rising profit perspectives? We will provide an overview of existing applications with a focus on neural networks, the most powerful AI tool. Why might this technology be superior to more classical methods? Do we really get our money's worth from this technology?
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References
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