Turning Point Brands Inc. - EMA - MarketXLS
Data
EMA
Live47.84
Returns the Exponential Moving Average (EMA) based on historical average crossovers.
How calculated | EMA(today) = Value(today)*(Smoothing/(1+days)) + EMA(yesterday)*(1-(Smoothing/(1+days))
where Smoothing is generally kept 2 |
Example usage | =ExponentialMovingAverage("MSFT")- Returns ExponentialMovingAverage value for 30 day period =ExponentialMovingAverage("MSFT",20) - Returns ExponentialMovingAverage value for 20 day period =ExponentialMovingAverage("MSFT",20,"9/1/2022") - Returns ExponentialMovingAverage value for 20 day period with start date 1 September 2022 |
Notes | EMA is more reactive to recent price changes and hence the results are more timely and preferred more than SMA by many traders |
Assets | Stocks, ETFs, Mutual Funds, Currencies, Cryptocurrencies |
Stock | EMA |
---|---|
TPB | 47.84 |
TPB | 47.84 |
VGR | 14.99 |
Turning Point Brands Inc.
TPB NYE
Sector: Consumer Defensive
Industry: Tobacco
51.69
USD
2.09
(4.21%)
Previous close: 49.6 Open: 49.92 Bid: 51.28 Ask: 52.05
52 week range
21.20 52.51
Mkt Cap: 870 M Avg Vol (90 Days): 125,599
Last updated: Sunday 10th November 2024
Call: 1-877-778-8358
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