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    <title>Forecasting on Latent Metrics</title>
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      <title>Time Series (State Space Models)</title>
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      <description>Time Series &amp;amp; Forecasting (state space models) There has always been an interest in looking at things over time, to see how crops grow, how the marketing campaign went, or how the stock market developed. In hindsight we can look back at events to try to understand why it happened and then make an estimate of what will happen in the future. Or maybe there are certain events that might unfold and therefore we use probabilities to find the most likely outcome.</description>
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