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Assuming you are collecting data about traffic accidents in Melbourne in order to develop a predictive model. Would it be better to collect “more data” (e.g. the locations of accidents over many years) or “more types of data” (e.g. the types of vehicles involved, the weather conditions, etc.)? Give a brief justification.[Fill in the blank]

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Step-by-Step Analysis
When collecting data for a predictive model in traffic accidents, there are two broad strategies: increasing the quantity of data (collecting data over many years and across locations) and expanding the variety of data (adding features like vehicle types, weather, road conditions, etc.).
First, consider datasets with more data points over time. More observations can help ......Login to view full explanationLog in for full answers
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