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Dark Data

Hodnotenie knihy

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Data represent the world, but they cannot capture everything. As measurements, data reflect only what has been recorded and may not include all relevant information for our inquiries. Ignoring what is missing can lead to misguided questions, erroneous conclusions, and poor decisions. David Hand explores the concept of "missing data," or "dark data," likening it to dark matter—known to exist but not directly measurable. He discusses how to identify missing data, the contexts in which it often occurs, and strategies to address it. Dark data can stem from various sources, such as asymmetric information in conflicts, delays in financial trading, participant dropouts in clinical trials, or selective reporting to enhance performance in various sectors. The key takeaway is that simply amassing more data, often referred to as big data, does not guarantee improved understanding or decision-making. Instead, we must remain aware of the unknowns in our data. To mitigate the impact of dark data, we can recognize its causes, design more effective data-collection methods, and formulate better questions that lead to deeper insights and improved decisions.

Vydanie

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Dark Data, David J. Hand

Jazyk
Rok vydania
2020
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3,7
Veľmi dobrá
14 Hodnotenie

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Titul
Dark Data
Jazyk
anglicky
Rok vydania
2020
Väzba
pevná
Počet strán
344
ISBN10
069118237X
ISBN13
9780691182377
Série
Hodnotenie
3,7 z 5
Anotácia
Data represent the world, but they cannot capture everything. As measurements, data reflect only what has been recorded and may not include all relevant information for our inquiries. Ignoring what is missing can lead to misguided questions, erroneous conclusions, and poor decisions. David Hand explores the concept of "missing data," or "dark data," likening it to dark matter—known to exist but not directly measurable. He discusses how to identify missing data, the contexts in which it often occurs, and strategies to address it. Dark data can stem from various sources, such as asymmetric information in conflicts, delays in financial trading, participant dropouts in clinical trials, or selective reporting to enhance performance in various sectors. The key takeaway is that simply amassing more data, often referred to as big data, does not guarantee improved understanding or decision-making. Instead, we must remain aware of the unknowns in our data. To mitigate the impact of dark data, we can recognize its causes, design more effective data-collection methods, and formulate better questions that lead to deeper insights and improved decisions.